  
     
   
  
                                     
                    Biopython Tutorial and Cookbook
                    *******************************
      Jeff Chang, Brad Chapman, Iddo Friedberg, Thomas Hamelryck,
      ===========================================================
                Michiel de Hoon, Peter Cock, Tiago Antao
                ========================================
             Last Update -- 20 April 2009 (Biopython 1.50)
             =============================================
  

Contents
********
   
  
   - Chapter 1  Introduction 
     
      - 1.1  What is Biopython? 
        
         - 1.1.1  What can I find in the Biopython package 
     
      - 1.2  Installing Biopython 
      - 1.3  FAQ 
  
   - Chapter 2  Quick Start -- What can you do with Biopython? 
     
      - 2.1  General overview of what Biopython provides 
      - 2.2  Working with sequences 
      - 2.3  A usage example 
      - 2.4  Parsing sequence file formats 
        
         - 2.4.1  Simple FASTA parsing example 
         - 2.4.2  Simple GenBank parsing example 
         - 2.4.3  I love parsing -- please don't stop talking about it! 
     
      - 2.5  Connecting with biological databases 
      - 2.6  What to do next 
  
   - Chapter 3  Sequence objects 
     
      - 3.1  Sequences and Alphabets 
      - 3.2  Sequences act like strings 
      - 3.3  Slicing a sequence 
      - 3.4  Turning Seq objects into strings 
      - 3.5  Concatenating or adding sequences 
      - 3.6  Nucleotide sequences and (reverse) complements 
      - 3.7  Transcription 
      - 3.8  Translation 
      - 3.9  Translation Tables 
      - 3.10  MutableSeq objects 
      - 3.11  UnknownSeq objects 
      - 3.12  Working with directly strings 
  
   - Chapter 4  Sequence Input/Output 
     
      - 4.1  Parsing or Reading Sequences 
        
         - 4.1.1  Reading Sequence Files 
         - 4.1.2  Iterating over the records in a sequence file 
         - 4.1.3  Getting a list of the records in a sequence file 
         - 4.1.4  Extracting data 
     
      - 4.2  Parsing sequences from the net 
        
         - 4.2.1  Parsing GenBank records from the net 
         - 4.2.2  Parsing SwissProt sequences from the net 
     
      - 4.3  Sequence files as Dictionaries 
        
         - 4.3.1  Specifying the dictionary keys 
         - 4.3.2  Indexing a dictionary using the SEGUID checksum 
     
      - 4.4  Writing Sequence Files 
        
         - 4.4.1  Converting between sequence file formats 
         - 4.4.2  Converting a file of sequences to their reverse
         complements 
         - 4.4.3  Getting your SeqRecord objects as formatted strings 
     
  
   - Chapter 5  Sequence Alignment Input/Output 
     
      - 5.1  Parsing or Reading Sequence Alignments 
        
         - 5.1.1  Single Alignments 
         - 5.1.2  Multiple Alignments 
         - 5.1.3  Ambiguous Alignments 
     
      - 5.2  Writing Alignments 
        
         - 5.2.1  Converting between sequence alignment file formats 
         - 5.2.2  Getting your Alignment objects as formatted strings 
     
  
   - Chapter 6  BLAST 
     
      - 6.1  Running BLAST locally 
      - 6.2  Running BLAST over the Internet 
      - 6.3  Saving BLAST output 
      - 6.4  Parsing BLAST output 
      - 6.5  The BLAST record class 
      - 6.6  Deprecated BLAST parsers 
        
         - 6.6.1  Parsing plain-text BLAST output 
         - 6.6.2  Parsing a file full of BLAST runs 
         - 6.6.3  Finding a bad record somewhere in a huge file 
     
      - 6.7  Dealing with PSI-BLAST 
      - 6.8  Dealing with RPS-BLAST 
  
   - Chapter 7  Accessing NCBI's Entrez databases 
     
      - 7.1  Entrez Guidelines 
      - 7.2  EInfo: Obtaining information about the Entrez databases 
      - 7.3  ESearch: Searching the Entrez databases 
      - 7.4  EPost: Uploading a list of identifiers 
      - 7.5  ESummary: Retrieving summaries from primary IDs 
      - 7.6  EFetch: Downloading full records from Entrez 
      - 7.7  ELink: Searching for related items in NCBI Entrez 
      - 7.8  EGQuery: Obtaining counts for search terms 
      - 7.9  ESpell: Obtaining spelling suggestions 
      - 7.10  Specialized parsers 
        
         - 7.10.1  Parsing Medline records 
         - 7.10.2  Parsing GEO records 
     
      - 7.11  Using a proxy 
      - 7.12  Examples 
        
         - 7.12.1  PubMed and Medline 
         - 7.12.2  Searching, downloading, and parsing Entrez Nucleotide
         records 
         - 7.12.3  Searching, downloading, and parsing GenBank records 
         - 7.12.4  Finding the lineage of an organism 
     
      - 7.13  Using the history and WebEnv 
        
         - 7.13.1  Searching for and downloading sequences using the
         history 
         - 7.13.2  Searching for and downloading abstracts using the
         history 
     
  
   - Chapter 8  Swiss-Prot and ExPASy 
     
      - 8.1  Parsing Swiss-Prot files 
        
         - 8.1.1  Parsing Swiss-Prot records 
         - 8.1.2  Parsing the Swiss-Prot keyword and category list 
     
      - 8.2  Parsing Prosite records 
      - 8.3  Parsing Prosite documentation records 
      - 8.4  Parsing Enzyme records 
      - 8.5  Accessing the ExPASy server 
        
         - 8.5.1  Retrieving a Swiss-Prot record 
         - 8.5.2  Searching Swiss-Prot 
         - 8.5.3  Retrieving Prosite and Prosite documentation records 
     
      - 8.6  Scanning the Prosite database 
  
   - Chapter 9  Going 3D: The PDB module 
     
      - 9.1  Structure representation 
        
         - 9.1.1  Structure 
         - 9.1.2  Model 
         - 9.1.3  Chain 
         - 9.1.4  Residue 
         - 9.1.5  Atom 
     
      - 9.2  Disorder 
        
         - 9.2.1  General approach 
         - 9.2.2  Disordered atoms 
         - 9.2.3  Disordered residues 
     
      - 9.3  Hetero residues 
        
         - 9.3.1  Associated problems 
         - 9.3.2  Water residues 
         - 9.3.3  Other hetero residues 
     
      - 9.4  Some random usage examples 
      - 9.5  Common problems in PDB files 
        
         - 9.5.1  Examples 
         - 9.5.2  Automatic correction 
         - 9.5.3  Fatal errors 
     
      - 9.6  Other features 
  
   - Chapter 10  Bio.PopGen: Population genetics 
     
      - 10.1  GenePop 
      - 10.2  Coalescent simulation 
        
         - 10.2.1  Creating scenarios 
         - 10.2.2  Running SIMCOAL2 
     
      - 10.3  Other applications 
        
         - 10.3.1  FDist: Detecting selection and molecular adaptation 
     
      - 10.4  Future Developments 
  
   - Chapter 11  Supervised learning methods 
     
      - 11.1  The Logistic Regression Model 
        
         - 11.1.1  Background and Purpose 
         - 11.1.2  Training the logistic regression model 
         - 11.1.3  Using the logistic regression model for
         classification 
         - 11.1.4  Logistic Regression, Linear Discriminant Analysis,
         and Support Vector Machines 
     
      - 11.2  k-Nearest Neighbors 
        
         - 11.2.1  Background and purpose 
         - 11.2.2  Initializing a k-nearest neighbors model 
         - 11.2.3  Using a k-nearest neighbors model for classification 
     
      - 11.3  Naive Bayes 
      - 11.4  Maximum Entropy 
      - 11.5  Markov Models 
  
   - Chapter 12  Graphics including GenomeDiagram 
     
      - 12.1  GenomeDiagram 
        
         - 12.1.1  Introduction 
         - 12.1.2  Diagrams, tracks, feature-sets and features 
         - 12.1.3  A top down example 
         - 12.1.4  A bottom up example 
         - 12.1.5  Features without a SeqFeature 
         - 12.1.6  Feature captions 
         - 12.1.7  Feature sigils 
         - 12.1.8  A nice example 
         - 12.1.9  Further options 
         - 12.1.10  Converting old code 
     
      - 12.2  Chromosomes 
  
   - Chapter 13  Cookbook -- Cool things to do with it 
     
      - 13.1  Working with sequence files 
        
         - 13.1.1  Producing randomised genomes 
         - 13.1.2  Translating a FASTA file of CDS entries 
         - 13.1.3  Simple quality filtering for FASTQ files 
         - 13.1.4  Trimming off primer sequences 
     
      - 13.2  Sequence parsing plus simple plots 
        
         - 13.2.1  Histogram of sequence lengths 
         - 13.2.2  Plot of sequence GC% 
         - 13.2.3  Nucleotide dot plots 
     
      - 13.3  Dealing with alignments 
        
         - 13.3.1  Clustalw 
         - 13.3.2  Calculating summary information 
         - 13.3.3  Calculating a quick consensus sequence 
         - 13.3.4  Position Specific Score Matrices 
         - 13.3.5  Information Content 
         - 13.3.6  Translating between Alignment formats 
     
      - 13.4  Substitution Matrices 
        
         - 13.4.1  Using common substitution matrices 
         - 13.4.2  Creating your own substitution matrix from an
         alignment 
     
      - 13.5  BioSQL -- storing sequences in a relational database 
      - 13.6  InterPro 
  
   - Chapter 14  The Biopython testing framework 
     
      - 14.1  Running the tests 
      - 14.2  Writing tests 
        
         - 14.2.1  Writing a print-and-compare test 
         - 14.2.2  Writing a unittest-based test 
     
      - 14.3  Writing doctests 
  
   - Chapter 15  Advanced 
     
      - 15.1  The SeqRecord and SeqFeature classes 
        
         - 15.1.1  Sequence IDs and Descriptions -- dealing with
         SeqRecords 
         - 15.1.2  Features and Annotations -- SeqFeatures 
     
      - 15.2  Parser Design 
      - 15.3  Substitution Matrices 
        
         - 15.3.1  SubsMat 
         - 15.3.2  FreqTable 
     
  
   - Chapter 16  Where to go from here -- contributing to Biopython 
     
      - 16.1  Bug Reports + Feature Requests 
      - 16.2  Mailing lists and helping newcomers 
      - 16.3  Contributing Documentation 
      - 16.4  Maintaining a distribution for a platform 
      - 16.5  Contributing Unit Tests 
      - 16.6  Contributing Code 
  
   - Chapter 17  Appendix: Useful stuff about python 
     
      - 17.1  What the heck is a handle? 
        
         - 17.1.1  Creating a handle from a string 
     
  
   
  

Chapter 1    Introduction
*************************
   
  

1.1  What is Biopython?
*=*=*=*=*=*=*=*=*=*=*=*

  
  The Biopython Project is an international association of developers of
freely available python (http://www.python.org) tools for computational
molecular biology. The web site http://www.biopython.org provides an
online resource for modules, scripts, and web links for developers of
python-based software for life science research.
  Basically, we just like to program in python and want to make it as
easy as possible to use python for bioinformatics by creating
high-quality, reusable modules and scripts.
  

1.1.1  What can I find in the Biopython package
===============================================
  
  The main Biopython releases have lots of functionality, including:
  
  
   - The ability to parse bioinformatics files into python utilizable
   data structures, including support for the following formats:
 
     
      - Blast output -- both from standalone and WWW Blast 
      - Clustalw 
      - FASTA 
      - GenBank 
      - PubMed and Medline 
      - ExPASy files, like Enzyme and Prosite 
      - SCOP, including `dom' and `lin' files 
      - UniGene 
      - SwissProt 
 
 
   - Files in the supported formats can be iterated over record by
   record or indexed and accessed via a Dictionary interface.
 
   - Code to deal with popular on-line bioinformatics destinations such
   as:
 
     
      - NCBI -- Blast, Entrez and PubMed services 
      - ExPASy -- Swiss-Prot and Prosite entries, as well as Prosite
      searches 
 
 
   - Interfaces to common bioinformatics programs such as:
 
     
      - Standalone Blast from NCBI 
      - Clustalw alignment program 
      - EMBOSS command line tools 
 
 
   - A standard sequence class that deals with sequences, ids on
   sequences, and sequence features.
 
   - Tools for performing common operations on sequences, such as
   translation, transcription and weight calculations.
 
   - Code to perform classification of data using k Nearest Neighbors,
   Naive Bayes or Support Vector Machines.
 
   - Code for dealing with alignments, including a standard way to
   create and deal with substitution matrices.
 
   - Code making it easy to split up parallelizable tasks into separate
   processes.
 
   - GUI-based programs to do basic sequence manipulations,
   translations, BLASTing, etc.
 
   - Extensive documentation and help with using the modules, including
   this file, on-line wiki documentation, the web site, and the mailing
   list.
 
   - Integration with BioSQL, a sequence database schema also supported
   by the BioPerl and BioJava projects.
  
  We hope this gives you plenty of reasons to download and start using
Biopython!
  

1.2  Installing Biopython
*=*=*=*=*=*=*=*=*=*=*=*=*

  
  All of the installation information for Biopython was separated from
this document to make it easier to keep updated.
  The short version is go to our downloads page
(http://biopython.org/wiki/Download), download and install the listed
dependencies, then download and install Biopython. For Windows we
provide pre-compiled click-and-run installers, while for Unix and other
operating systems you must install from source as described in the
included README file. This is usually as simple as the standard
commands:
<<python setup.py build
  python setup.py test
  sudo python setup.py install
>>
  
  (You can in fact skip the build and test, and go straight to the
install -- but its better to make sure everything seems to be working.)
  The longer version of our installation instructions covers
installation of python, Biopython dependencies and Biopython itself. It
is available in PDF
(http://biopython.org/DIST/docs/install/Installation.pdf) and HTML
formats (http://biopython.org/DIST/docs/install/Installation.html).
  

1.3  FAQ
*=*=*=*=

  
  
 
 
   1. How do I cite Biopython in a scientific publication?
  Please cite our application note, Cock et al. 2009,
   doi:10.1093/bioinformatics/btp163 (1), and/or one of the publications
   listed on our website describing specific modules within Biopython.
 
   2. How should I capitalize "Biopython"? Is "BioPython" OK?
  The correct capitalization is "Biopython", not "BioPython" (even
   though that would have matched BioPerl, BioJava and BioRuby).
 
   3. Where is the latest version of this document?
  If you download a Biopython source code archive, it will include the
   relevant version in both HTML and PDF formats. The latest published
   version of this document is online at: 
     
      - http://biopython.org/DIST/docs/tutorial/Tutorial.html 
      - http://biopython.org/DIST/docs/tutorial/Tutorial.pdf 
 
 
   4. Which "Numerical Python" do I need?
  For Biopython 1.48 or earlier, you need the old Numeric module. For
   Biopython 1.49 onwards, you need the newer NumPy instead. Both
   Numeric and NumPy can be installed on the same machine fine. See
   also: http://numpy.scipy.org/
 
   5. Why is the 'Seq' object missing the (back) transcription &
   translation methods described in this Tutorial?
  You need Biopython 1.49 or later. Alternatively, use the 'Bio.Seq'
   module functions described in Section 3.12.
 
   6. Why doesn't 'Bio.SeqIO' work? It imports fine but there is no
   parse function etc.
  You need Biopython 1.43 or later. Older versions did contain some
   related code under the 'Bio.SeqIO' name which has since been removed
   - and this is why the import "works".
 
   7. Why doesn't 'Bio.SeqIO.read()' work? The module imports fine but
   there is no read function!
  You need Biopython 1.45 or later. Or, use Bio.SeqIO.parse(...).next()
   instead.
 
   8. Why isn't 'Bio.AlignIO' present? The module import fails!
  You need Biopython 1.46 or later.
 
   9. What file formats do 'Bio.SeqIO' and 'Bio.AlignIO' read and write?
   
  Check the built in docstrings (from Bio import SeqIO, then
   help(SeqIO)), or see http://biopython.org/wiki/SeqIO and
   http://biopython.org/wiki/AlignIO on the wiki for the latest listing.
 
   10. Why don't the  'Bio.SeqIO' and 'Bio.AlignIO' input functions let
   me provide a sequence alphabet?
  You need Biopython 1.49 or later.
 
   11. Why doesn't 'str(...)' give me the full sequence of a 'Seq'
   object?
  You need Biopython 1.45 or later. Alternatively, rather than
   'str(my_seq)', use 'my_seq.tostring()' (which will also work on
   recent versions of Biopython).
 
   12. Why doesn't 'Bio.Blast' work with the latest plain text NCBI
   blast output?
  The NCBI keep tweaking the plain text output from the BLAST tools, and
   keeping our parser up to date was an ongoing struggle. We recommend
   you use the XML output instead, which is designed to be read by a
   computer program.
 
   13. Why doesn't 'Bio.Entrez.read()' work? The module imports fine but
   there is no read function!
  You need Biopython 1.46 or later.
 
   14. Why doesn't 'Bio.PDB.MMCIFParser' work? I see an import error
   about 'MMCIFlex'
  Since Biopython 1.42, the underlying 'Bio.PDB.mmCIF.MMCIFlex' module
   has not been installed by default. It requires a third party tool
   called flex (fast lexical analyzer generator). At the time of
   writing, you'll have install flex, then tweak your Biopython
   'setup.py' file and reinstall from source.
 
   15. Why doesn't 'Bio.Blast.NCBIXML.read()' work? The module imports
   but there is no read function!
  You need Biopython 1.50 or later. Or, use
   Bio.Blast.NCBIXML.parse(...).next() instead.
 
   16. I looked in a directory for code, but I couldn't find the code
   that does something. Where's it hidden?
  One thing to know is that we put code in '__init__.py' files. If you
   are not used to looking for code in this file this can be confusing.
   The reason we do this is to make the imports easier for users. For
   instance, instead of having to do a "repetitive" import like 'from
   Bio.GenBank import GenBank', you can just use 'from Bio import
   GenBank'.
  
-----------------------------------
  
  
 (1) http://dx.doi.org/10.1093/bioinformatics/btp163
  

Chapter 2    Quick Start -- What can you do with Biopython?
***********************************************************
   
  This section is designed to get you started quickly with Biopython,
and to give a general overview of what is available and how to use it.
All of the examples in this section assume that you have some general
working knowledge of python, and that you have successfully installed
Biopython on your system. If you think you need to brush up on your
python, the main python web site provides quite a bit of free
documentation to get started with (http://www.python.org/doc/).
  Since much biological work on the computer involves connecting with
databases on the internet, some of the examples will also require a
working internet connection in order to run.
  Now that that is all out of the way, let's get into what we can do
with Biopython.
  

2.1  General overview of what Biopython provides
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  As mentioned in the introduction, Biopython is a set of libraries to
provide the ability to deal with "things" of interest to biologists
working on the computer. In general this means that you will need to
have at least some programming experience (in python, of course!) or at
least an interest in learning to program. Biopython's job is to make
your job easier as a programmer by supplying reusable libraries so that
you can focus on answering your specific question of interest, instead
of focusing on the internals of parsing a particular file format (of
course, if you want to help by writing a parser that doesn't exist and
contributing it to Biopython, please go ahead!). So Biopython's job is
to make you happy!
  One thing to note about Biopython is that it often provides multiple
ways of "doing the same thing." Things have improved in recent releases,
but this can still be frustrating as in python there should ideally be
one right way to do something. However, this can also be a real benefit
because it gives you lots of flexibility and control over the libraries.
The tutorial helps to show you the common or easy ways to do things so
that you can just make things work. To learn more about the alternative
possibilities, look in the Cookbook (Chapter 13, this has some cools
tricks and tips), the Advanced section (Chapter 15), the built in
"docstrings" (via the python help command, or the API documentation (1))
or ultimately the code itself.
  

2.2  Working with sequences
*=*=*=*=*=*=*=*=*=*=*=*=*=*

   
  Disputably (of course!), the central object in bioinformatics is the
sequence. Thus, we'll start with a quick introduction to the Biopython
mechanisms for dealing with sequences, the 'Seq' object, which we'll
discuss in more detail in Chapter 3.
  Most of the time when we think about sequences we have in my mind a
string of letters like ''AGTACACTGGT''. You can create such 'Seq' object
with this sequence as follows - the ">>>" represents the python prompt
followed by what you would type in:
<<>>> from Bio.Seq import Seq
  >>> my_seq = Seq("AGTACACTGGT")
  >>> my_seq
  Seq('AGTACACTGGT', Alphabet())
  >>> print my_seq
  AGTACACTGGT
  >>> my_seq.alphabet
  Alphabet()
>>
  
  What we have here is a sequence object with a generic alphabet -
reflecting the fact we have not specified if this is a DNA or protein
sequence (okay, a protein with a lot of Alanines, Glycines, Cysteines
and Threonines!). We'll talk more about alphabets in Chapter 3.
  In addition to having an alphabet, the 'Seq' object differs from the
python string in the methods it supports. You can't do this with a plain
string:
<<>>> my_seq
  Seq('AGTACACTGGT', Alphabet())
  >>> my_seq.complement()
  Seq('TCATGTGACCA', Alphabet())
  >>> my_seq.reverse_complement()
  Seq('ACCAGTGTACT', Alphabet())
>>
  
  The next most important class is the 'SeqRecord' or Sequence Record.
This holds a sequence (as a 'Seq' object) with additional annotation
including an identifier, name and description. The 'Bio.SeqIO' module
for reading and writing sequence file formats works with 'SeqRecord'
objects, which will be introduced below and covered in more detail by
Chapter 4.
  This covers the basic features and uses of the Biopython sequence
class. Now that you've got some idea of what it is like to interact with
the Biopython libraries, it's time to delve into the fun, fun world of
dealing with biological file formats!
  

2.3  A usage example
*=*=*=*=*=*=*=*=*=*=

   
  Before we jump right into parsers and everything else to do with
Biopython, let's set up an example to motivate everything we do and make
life more interesting. After all, if there wasn't any biology in this
tutorial, why would you want you read it?
  Since I love plants, I think we're just going to have to have a plant
based example (sorry to all the fans of other organisms out there!).
Having just completed a recent trip to our local greenhouse, we've
suddenly developed an incredible obsession with Lady Slipper Orchids (if
you wonder why, have a look at some Lady Slipper Orchids photos on
Flickr (2), or try a Google Image Search (3)).
  Of course, orchids are not only beautiful to look at, they are also
extremely interesting for people studying evolution and systematics. So
let's suppose we're thinking about writing a funding proposal to do a
molecular study of Lady Slipper evolution, and would like to see what
kind of research has already been done and how we can add to that.
  After a little bit of reading up we discover that the Lady Slipper
Orchids are in the Orchidaceae family and the Cypripedioideae sub-family
and are made up of 5 genera: Cypripedium, Paphiopedilum, Phragmipedium,
Selenipedium and Mexipedium.
  That gives us enough to get started delving for more information. So,
let's look at how the Biopython tools can help us. We'll start with
sequence parsing in Section 2.4, but the orchids will be back later on
as well - for example we'll search PubMed for papers about orchids and
extract sequence data from GenBank in Chapter 7, extract data from
Swiss-Prot from certain orchid proteins in Chapter 8, and work with
ClustalW multiple sequence alignments of orchid proteins in
Section 13.3.1.
  

2.4  Parsing sequence file formats
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

   
  A large part of much bioinformatics work involves dealing with the
many types of file formats designed to hold biological data. These files
are loaded with interesting biological data, and a special challenge is
parsing these files into a format so that you can manipulate them with
some kind of programming language. However the task of parsing these
files can be frustrated by the fact that the formats can change quite
regularly, and that formats may contain small subtleties which can break
even the most well designed parsers.
  We are now going to briefly introduce the 'Bio.SeqIO' module -- you
can find out more in Chapter 4. We'll start with an online search for
our friends, the lady slipper orchids. To keep this introduction simple,
we're just using the NCBI website by hand. Let's just take a look
through the nucleotide databases at NCBI, using an Entrez online search
(http://www.ncbi.nlm.nih.gov:80/entrez/query.fcgi?db=Nucleotide) for
everything mentioning the text Cypripedioideae (this is the subfamily of
lady slipper orchids). 
  When this tutorial was originally written, this search gave us only 94
hits, which we saved as a FASTA formatted text file and as a GenBank
formatted text file (files ls_orchid.fasta (4) and ls_orchid.gbk (5),
also included with the Biopython source code under
docs/tutorial/examples/).
  If you run the search today, you'll get hundreds of results! When
following the tutorial, if you want to see the same list of genes, just
download the two files above or copy them from 'docs/examples/' in the
Biopython source code. In Section 2.5 we will look at how to do a search
like this from within python.
  

2.4.1  Simple FASTA parsing example
===================================
   
  If you open the lady slipper orchids FASTA file ls_orchid.fasta (6) in
your favourite text editor, you'll see that the file starts like this:
<<>gi|2765658|emb|Z78533.1|CIZ78533 C.irapeanum 5.8S rRNA gene and ITS1
and ITS2 DNA
  CGTAACAAGGTTTCCGTAGGTGAACCTGCGGAAGGATCATTGATGAGACCGTGGAATAAACGATCGAGTG
  AATCCGGAGGACCGGTGTACTCAGCTCACCGGGGGCATTGCTCCCGTGGTGACCCTGATTTGTTGTTGGG
  ...
>>
  
  It contains 94 records, each has a line starting with ">"
(greater-than symbol) followed by the sequence on one or more lines. Now
try this in python:
<<from Bio import SeqIO
  handle = open("ls_orchid.fasta")
  for seq_record in SeqIO.parse(handle, "fasta") :
      print seq_record.id
      print repr(seq_record.seq)
      print len(seq_record)
  handle.close()
>>
  
  You should get something like this on your screen:
<<gi|2765658|emb|Z78533.1|CIZ78533
  Seq('CGTAACAAGGTTTCCGTAGGTGAACCTGCGGAAGGATCATTGATGAGACCGTGG...CGC',
SingleLetterAlphabet())
  740
  ...
  gi|2765564|emb|Z78439.1|PBZ78439
  Seq('CATTGTTGAGATCACATAATAATTGATCGAGTTAATCTGGAGGATCTGTTTACT...GCC',
SingleLetterAlphabet())
  592
>>
  
  Notice that the FASTA format does not specify the alphabet, so
'Bio.SeqIO' has defaulted to the rather generic 'SingleLetterAlphabet()'
rather than something DNA specific.
  

2.4.2  Simple GenBank parsing example
=====================================
  
  Now let's load the GenBank file ls_orchid.gbk (7) instead - notice
that the code to do this is almost identical to the snippet used above
for the FASTA file - the only difference is we change the filename and
the format string:
<<from Bio import SeqIO
  handle = open("ls_orchid.gbk")
  for seq_record in SeqIO.parse(handle, "genbank") :
      print seq_record.id
      print repr(seq_record.seq)
      print len(seq_record)
  handle.close()
>>
  
  This should give:
<<Z78533.1
  Seq('CGTAACAAGGTTTCCGTAGGTGAACCTGCGGAAGGATCATTGATGAGACCGTGG...CGC',
IUPACAmbiguousDNA())
  740
  ...
  Z78439.1
  Seq('CATTGTTGAGATCACATAATAATTGATCGAGTTAATCTGGAGGATCTGTTTACT...GCC',
IUPACAmbiguousDNA())
  592
>>
  
  This time 'Bio.SeqIO' has been able to choose a sensible alphabet,
IUPAC Ambiguous DNA. You'll also notice that a shorter string has been
used as the 'seq_record.id' in this case.
  

2.4.3  I love parsing -- please don't stop talking about it!
============================================================
  
  Biopython has a lot of parsers, and each has its own little special
niches based on the sequence format it is parsing and all of that.
Chapter 4 covers 'Bio.SeqIO' in more detail, while Chapter 5 introduces
'Bio.AlignIO' for sequence alignments.
  While the most popular file formats have parsers integrated into
'Bio.SeqIO' and/or 'Bio.AlignIO', for some of the rarer and unloved file
formats there is either no parser at all, or an old parser which has not
been linked in yet. Please also check the wiki pages
http://biopython.org/wiki/SeqIO and http://biopython.org/wiki/AlignIO
for the latest information, or ask on the mailing list. The wiki pages
should include an up to date list of supported file types, and some
additional examples.
  The next place to look for information about specific parsers and how
to do cool things with them is in the Cookbook (Chapter 13 of this
Tutorial). If you don't find the information you are looking for, please
consider helping out your poor overworked documentors and submitting a
cookbook entry about it! (once you figure out how to do it, that is!)
  

2.5  Connecting with biological databases
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

   
  One of the very common things that you need to do in bioinformatics is
extract information from biological databases. It can be quite tedious
to access these databases manually, especially if you have a lot of
repetitive work to do. Biopython attempts to save you time and energy by
making some on-line databases available from python scripts. Currently,
Biopython has code to extract information from the following databases:
  
  
   - Entrez (8) (and PubMed (9)) from the NCBI -- See Chapter 7. 
   - ExPASy (10) -- See Chapter 8. 
   - SCOP (11) -- See the 'Bio.SCOP.search()' function. 
  
  The code in these modules basically makes it easy to write python code
that interact with the CGI scripts on these pages, so that you can get
results in an easy to deal with format. In some cases, the results can
be tightly integrated with the Biopython parsers to make it even easier
to extract information.
  

2.6  What to do next
*=*=*=*=*=*=*=*=*=*=

  
  Now that you've made it this far, you hopefully have a good
understanding of the basics of Biopython and are ready to start using it
for doing useful work. The best thing to do now is finish reading this
tutorial, and then if you want start snooping around in the source code,
and looking at the automatically generated documentation.
  Once you get a picture of what you want to do, and what libraries in
Biopython will do it, you should take a peak at the Cookbook
(Chapter 13), which may have example code to do something similar to
what you want to do.
  If you know what you want to do, but can't figure out how to do it,
please feel free to post questions to the main Biopython list (see
http://biopython.org/wiki/Mailing_lists). This will not only help us
answer your question, it will also allow us to improve the documentation
so it can help the next person do what you want to do.
  Enjoy the code!
-----------------------------------
  
  
 (1) http://biopython.org/DIST/docs/api/
 
 (2) http://www.flickr.com/search/?q=lady+slipper+orchid&s=int&z=t
 
 (3) http://images.google.com/images?q=lady%20slipper%20orchid
 
 (4) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.fasta
 
 (5) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.gbk
 
 (6) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.fasta
 
 (7) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.gbk
 
 (8) http://www.ncbi.nlm.nih.gov/Entrez/
 
 (9) http://www.ncbi.nlm.nih.gov/PubMed/
 
 (10) http://www.expasy.org/
 
 (11) http://scop.mrc-lmb.cam.ac.uk/scop/
  

Chapter 3    Sequence objects
*****************************
   
  Biological sequences are arguably the central object in
Bioinformatics, and in this chapter we'll introduce the Biopython
mechanism for dealing with sequences, the 'Seq' object. In Chapter 4 on
Sequence Input/Output (and Section 15.1), we'll see that the 'Seq'
object is also used in the 'SeqRecord' object, which combines the
sequence information with any annotation.
  Sequences are essentially strings of letters like 'AGTACACTGGT', which
seems very natural since this is the most common way that sequences are
seen in biological file formats.
  There are two important differences between 'Seq' objects and standard
python strings. First of all, they have different methods. Although the
'Seq' object supports many of the same methods as a plain string, its
'translate()' method differs by doing biological translation, and there
are also additional biologically relevant methods like
'reverse_complement()'. Secondly, the 'Seq' object has an important
attribute, 'alphabet', which is an object describing what the individual
characters making up the sequence string "mean", and how they should be
interpreted. For example, is 'AGTACACTGGT' a DNA sequence, or just a
protein sequence that happens to be rich in Alanines, Glycines,
Cysteines and Threonines?
  

3.1  Sequences and Alphabets
*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  The alphabet object is perhaps the important thing that makes the
'Seq' object more than just a string. The currently available alphabets
for Biopython are defined in the 'Bio.Alphabet' module. We'll use the
IUPAC alphabets (http://www.chem.qmw.ac.uk/iupac/) here to deal with
some of our favorite objects: DNA, RNA and Proteins.
  'Bio.Alphabet.IUPAC' provides basic definitions for proteins, DNA and
RNA, but additionally provides the ability to extend and customize the
basic definitions. For instance, for proteins, there is a basic
IUPACProtein class, but there is an additional ExtendedIUPACProtein
class providing for the additional elements "U" (or "Sec" for
selenocysteine) and "O" (or "Pyl" for pyrrolysine), plus the ambiguous
symbols "B" (or "Asx" for asparagine or aspartic acid), "Z" (or "Glx"
for glutamine or glutamic acid), "J" (or "Xle" for leucine isoleucine)
and "X" (or "Xxx" for an unknown amino acid). For DNA you've got choices
of IUPACUnambiguousDNA, which provides for just the basic letters,
IUPACAmbiguousDNA (which provides for ambiguity letters for every
possible situation) and ExtendedIUPACDNA, which allows letters for
modified bases. Similarly, RNA can be represented by IUPACAmbiguousRNA
or IUPACUnambiguousRNA.
  The advantages of having an alphabet class are two fold. First, this
gives an idea of the type of information the Seq object contains.
Secondly, this provides a means of constraining the information, as a
means of type checking.
  Now that we know what we are dealing with, let's look at how to
utilize this class to do interesting work. You can create an ambiguous
sequence with the default generic alphabet like this:
<<>>> from Bio.Seq import Seq
  >>> my_seq = Seq("AGTACACTGGT")
  >>> my_seq
  Seq('AGTACACTGGT', Alphabet())
  >>> my_seq.alphabet
  Alphabet()
>>
  
  However, where possible you should specify the alphabet explicitly
when creating your sequence objects - in this case an unambiguous DNA
alphabet object:
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import IUPAC
  >>> my_seq = Seq("AGTACACTGGT", IUPAC.unambiguous_dna)
  >>> my_seq
  Seq('AGTACACTGGT', IUPACUnambiguousDNA())
  >>> my_seq.alphabet
  IUPACUnambiguousDNA()
>>
  
  

3.2  Sequences act like strings
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  In many ways, we can deal with Seq objects as if they were normal
python strings, for example getting the length, or iterating over the
elements:
<<from Bio.Seq import Seq
  from Bio.Alphabet import IUPAC
  my_seq = Seq("GATCGATGGGCCTATATAGGATCGAAAATCGC",
IUPAC.unambiguous_dna)
  for index, letter in enumerate(my_seq) :
      print index, letter
  print len(letter)
>>
  
  You can access elements of the sequence in the same way as for strings
(but remember, python counts from zero!):
<<>>> print my_seq[0] #first letter
  >>> print my_seq[2] #third letter
  >>> print my_seq[-1] #last letter
>>
  
  The 'Seq' object has a '.count()' method, just like a string. Note
that this means that like a python string, this gives a non-overlapping
count:
<<>>> "AAAA".count("AA")
  2
  >>> Seq("AAAA").count("AA")
  2
>>
  
  For some biological uses, you may actually want an overlapping count
(i.e. 3 in this trivial example). When searching for single letters,
this makes no difference:
<<>>> len(my_seq)
  32
  >>> my_seq.count("G")
  10
  >>> 100 * float(my_seq.count("G") + my_seq.count("C")) / len(my_seq)
  46.875
>>
  
  While you could use the above snippet of code to calculate a GC%, note
that the 'Bio.SeqUtils' module has several GC functions already built.
For example:
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import IUPAC
  >>> from Bio.SeqUtils import GC
  >>> my_seq = Seq('GATCGATGGGCCTATATAGGATCGAAAATCGC',
IUPAC.unambiguous_dna)
  >>> GC(my_seq)
  46.875
>>
  
  Note that using the 'Bio.SeqUtils.GC()' function should automatically
cope with mixed case sequences and the ambiguous nucleotide S which
means G or C.
  Also note that just like a normal python string, the 'Seq' object is
in some ways "read-only". If you need to edit your sequence, for example
simulating a point mutation, look at the Section 3.10 below which talks
about the 'MutableSeq' object.
  

3.3  Slicing a sequence
*=*=*=*=*=*=*=*=*=*=*=*

  
  A more complicated example, let's get a slice of the sequence:
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import IUPAC
  >>> my_seq = Seq("GATCGATGGGCCTATATAGGATCGAAAATCGC",
IUPAC.unambiguous_dna)
  >>> my_seq[4:12]
  Seq('GATGGGCC', IUPACUnambiguousDNA())
>>
  
  Two things are interesting to note. First, this follows the normal
conventions for python strings. So the first element of the sequence is
0 (which is normal for computer science, but not so normal for biology).
When you do a slice the first item is included (i.e. 4 in this case) and
the last is excluded (12 in this case), which is the way things work in
python, but of course not necessarily the way everyone in the world
would expect. The main goal is to stay consistent with what python does.
  The second thing to notice is that the slice is performed on the
sequence data string, but the new object produced is another 'Seq'
object which retains the alphabet information from the original 'Seq'
object.
  Also like a python string, you can do slices with a start, stop and
stride (the step size, which defaults to one). For example, we can get
the first, second and third codon positions of this DNA sequence:
<<>>> my_seq[0::3]
  Seq('GCTGTAGTAAG', IUPACUnambiguousDNA())
  >>> my_seq[1::3]
  Seq('AGGCATGCATC', IUPACUnambiguousDNA())
  >>> my_seq[2::3]
  Seq('TAGCTAAGAC', IUPACUnambiguousDNA())
>>
  
  Another stride trick you might have seen with a python string is the
use of a -1 stride to reverse the string. You can do this with a 'Seq'
object too:
<<>>> my_seq[::-1]
  Seq('CGCTAAAAGCTAGGATATATCCGGGTAGCTAG', IUPACUnambiguousDNA())
>>
  
  

3.4  Turning Seq objects into strings
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

   
  If you really do just need a plain string, for example to write to a
file, or insert into a database, then this is very easy to get: 
<<>>> str(my_seq)
  'GATCGATGGGCCTATATAGGATCGAAAATCGC'
>>
  
  Since calling 'str()' on a 'Seq' object returns the full sequence as a
string, you often don't actually have to do this conversion explicitly.
Python does this automatically with a print statement: 
<<>>> print my_seq
  GATCGATGGGCCTATATAGGATCGAAAATCGC
>>
  
  You can also use the 'Seq' object directly with a '%s' placeholder
when using the python string formatting or interpolation operator ('%'):
<<>>> fasta_format_string = ">Name\n%s\n" % my_seq
  >>> print fasta_format_string
  >Name
  GATCGATGGGCCTATATAGGATCGAAAATCGC
>>
  
  This line of code constructs a simple FASTA format record (without
worrying about line wrapping). Reading and writing FASTA format sequence
files is covered in Chapter 4, in particular Section 4.4.3 describes a
neat way to get a FASTA formatted string.
  NOTE: If you are using Biopython 1.44 or older, using 'str(my_seq)'
will give just a truncated representation. Instead use
'my_seq.tostring()' (which is still available in the current Biopython
releases for backwards compatibility):
<<>>> my_seq.tostring()
  'GATCGATGGGCCTATATAGGATCGAAAATCGC'
>>
  
  

3.5  Concatenating or adding sequences
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  Naturally, you can in principle add any two Seq objects together -
just like you can with python strings to concatenate them. However, you
can't add sequences with incompatible alphabets, such as a protein
sequence and a DNA sequence:
<<>>> protein_seq + dna_seq
  Traceback (most recent call last):
  ...
  TypeError: ('incompatable alphabets', 'IUPACProtein()',
'IUPACUnambiguousDNA()')
>>
  
  If you really wanted to do this, you'd have to first give both
sequences generic alphabets:
<<>>> from Bio.Alphabet import generic_alphabet
  >>> protein_seq.alphabet = generic_alphabet
  >>> dna_seq.alphabet = generic_alphabet
  >>> protein_seq + dna_seq
  Seq('EVRNAKACGT', Alphabet())
>>
  
  Here is an example of adding a generic nucleotide sequence to an
unambiguous IUPAC DNA sequence, resulting in an ambiguous nucleotide
sequence:
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import generic_nucleotide
  >>> from Bio.Alphabet import IUPAC
  >>> nuc_seq = Seq("GATCGATGC", generic_nucleotide)
  >>> dna_seq = Seq("ACGT", IUPAC.unambiguous_dna)
  >>> nuc_seq
  Seq('GATCGATGC', NucleotideAlphabet())
  >>> dna_seq
  Seq('ACGT', IUPACUnambiguousDNA())
  >>> nuc_seq + dna_seq
  Seq('GATCGATGCACGT', NucleotideAlphabet())
>>
  
  

3.6  Nucleotide sequences and (reverse) complements
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

   
  For nucleotide sequences, you can easily obtain the complement or
reverse complement of a 'Seq' object using its built-in methods:
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import IUPAC
  >>> my_seq = Seq("GATCGATGGGCCTATATAGGATCGAAAATCGC",
IUPAC.unambiguous_dna)
  >>> my_seq
  Seq('GATCGATGGGCCTATATAGGATCGAAAATCGC', IUPACUnambiguousDNA())
  >>> my_seq.complement()
  Seq('CTAGCTACCCGGATATATCCTAGCTTTTAGCG', IUPACUnambiguousDNA())
  >>> my_seq.reverse_complement()
  Seq('GCGATTTTCGATCCTATATAGGCCCATCGATC', IUPACUnambiguousDNA())
>>
  
  In all of these operations, the alphabet property is maintained. This
is very useful in case you accidentally end up trying to do something
weird like take the (reverse)complement of a protein sequence:
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import IUPAC
  >>> protein_seq = Seq("EVRNAK", IUPAC.protein)
  >>> protein_seq.complement()
  ...
  ValueError: Proteins do not have complements!
>>
  
  The example in Section 4.4.2 combines the 'Seq' object's reverse
complement method with 'Bio.SeqIO' for sequence input/ouput.
  

3.7  Transcription
*=*=*=*=*=*=*=*=*=

   Before talking about transcription, I want to try and clarify the
strand issue. Consider the following (made up) stretch of double
stranded DNA which encodes a short peptide:
                                                          
     DNA coding strand (aka Crick strand, strand +1)      
 5'      ATGGCCATTGTAATGGGCCGCTGAAAGGGTGCCCGATAG       3' 
         |||||||||||||||||||||||||||||||||||||||          
 3'      TACCGGTAACATTACCCGGCGACTTTCCCACGGGCTATC       5' 
    DNA template strand (aka Watson strand, strand -1)    
                                                          
                            |                             
                      Transcription                       
                                                          
                                                          
 5'      AUGGCCAUUGUAAUGGGCCGCUGAAAGGGUGCCCGAUAG       3' 
              Single stranded messenger RNA               
                                                          
  
  The actual biological transcription process works from the template
strand, doing a reverse complement (TCAG -> CUGA) to give the mRNA.
However, in Biopython and bioinformatics in general, we typically work
directly with the coding strand because this means we can get the mRNA
sequence just by switching T -> U.
  Now let's actually get down to doing a transcription in Biopython.
First, let's create 'Seq' objects for the coding and template DNA
strands: 
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import IUPAC
  >>> coding_dna = Seq("ATGGCCATTGTAATGGGCCGCTGAAAGGGTGCCCGATAG",
IUPAC.unambiguous_dna)
  >>> coding_dna
  Seq('ATGGCCATTGTAATGGGCCGCTGAAAGGGTGCCCGATAG', IUPACUnambiguousDNA())
  >>> template_dna = coding_dna.reverse_complement()
  >>> template_dna
  Seq('CTATCGGGCACCCTTTCAGCGGCCCATTACAATGGCCAT', IUPACUnambiguousDNA())
>>
  These should match the figure above - remember by convention
nucleotide sequences are normally read from the 5' to 3' direction,
while in the figure the template strand is shown reversed.
  Now let's transcribe the coding strand into the corresponding mRNA,
using the 'Seq' object's built in 'transcribe' method: 
<<>>> coding_dna
  Seq('ATGGCCATTGTAATGGGCCGCTGAAAGGGTGCCCGATAG', IUPACUnambiguousDNA())
  >>> messenger_rna = coding_dna.transcribe()
  >>> messenger_rna
  Seq('AUGGCCAUUGUAAUGGGCCGCUGAAAGGGUGCCCGAUAG', IUPACUnambiguousRNA())
>>
  As you can see, all this does is switch T -> U, and adjust the
alphabet.
  If you do want to do a true biological transcription starting with the
template strand, then this becomes a two-step process: 
<<>>> template_dna.reverse_complement().transcribe()
  Seq('AUGGCCAUUGUAAUGGGCCGCUGAAAGGGUGCCCGAUAG', IUPACUnambiguousRNA())
>>
  
  The 'Seq' object also includes a back-transcription method for going
from the mRNA to the coding strand of the DNA. Again, this is a simple U
-> T substitution and associated change of alphabet: 
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import IUPAC
  >>> messenger_rna = Seq("AUGGCCAUUGUAAUGGGCCGCUGAAAGGGUGCCCGAUAG",
IUPAC.unambiguous_rna)
  >>> messenger_rna
  Seq('AUGGCCAUUGUAAUGGGCCGCUGAAAGGGUGCCCGAUAG', IUPACUnambiguousRNA())
  >>> messenger_rna.back_transcribe()
  Seq('ATGGCCATTGTAATGGGCCGCTGAAAGGGTGCCCGATAG', IUPACUnambiguousDNA())
>>
  
  Note: The 'Seq' object's 'transcribe' and 'back_transcribe' methods
are new in Biopython 1.49. For older releases you would have to use the
'Bio.Seq' module's functions instead, see Section 3.12.
  

3.8  Translation
*=*=*=*=*=*=*=*=

    Sticking with the same example discussed in the transcription
section above, now let's translate this mRNA into the corresponding
protein sequence - again taking advantage of one of the 'Seq' object's
biological methods:
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import IUPAC
  >>> messenger_rna = Seq("AUGGCCAUUGUAAUGGGCCGCUGAAAGGGUGCCCGAUAG",
IUPAC.unambiguous_rna)
  >>> messenger_rna
  Seq('AUGGCCAUUGUAAUGGGCCGCUGAAAGGGUGCCCGAUAG', IUPACUnambiguousRNA())
  >>> messenger_rna.translate()
  Seq('MAIVMGR*KGAR*', HasStopCodon(IUPACProtein(), '*'))
>>
  
  You can also translate directly from the coding strand DNA sequence: 
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import IUPAC
  >>> coding_dna = Seq("ATGGCCATTGTAATGGGCCGCTGAAAGGGTGCCCGATAG",
IUPAC.unambiguous_dna)
  >>> coding_dna
  Seq('ATGGCCATTGTAATGGGCCGCTGAAAGGGTGCCCGATAG', IUPACUnambiguousDNA())
  >>> coding_dna.translate()
  Seq('MAIVMGR*KGAR*', HasStopCodon(IUPACProtein(), '*'))
>>
  
  You should notice in the above protein sequences that in addition to
the end stop character, there is an internal stop as well. This was a
deliberate choice of example, as it gives an excuse to talk about some
optional arguments, including different translation tables (Genetic
Codes).
  The translation tables available in Biopython are based on those from
the NCBI (1) (see the next section of this tutorial). By default,
translation will use the standard genetic code (NCBI table id 1).
Suppose we are dealing with a mitochondrial sequence. We need to tell
the translation function to use the relevant genetic code instead: 
<<>>> coding_dna.translate(table="Vertebrate Mitochondrial")
  Seq('MAIVMGRWKGAR*', HasStopCodon(IUPACProtein(), '*'))
>>
  
  You can also specify the table using the NCBI table number which is
shorter, and often included in the feature annotation of GenBank files: 
<<>>> coding_dna.translate(table=2)
  Seq('MAIVMGRWKGAR*', HasStopCodon(IUPACProtein(), '*'))
>>
  
  Now, you may want to translate the nucleotides up to the first in
frame stop codon, and then stop (as happens in nature): 
<<>>> coding_dna.translate()
  Seq('MAIVMGR*KGAR*', HasStopCodon(IUPACProtein(), '*'))
  >>> coding_dna.translate(to_stop=True)
  Seq('MAIVMGR', IUPACProtein())
  >>> coding_dna.translate(table=2)
  Seq('MAIVMGRWKGAR*', HasStopCodon(IUPACProtein(), '*'))
  >>> coding_dna.translate(table=2, to_stop=True)
  Seq('MAIVMGRWKGAR', IUPACProtein())
>>
  Notice that when you use the 'to_stop' argument, the stop codon itself
is not translated - and the stop symbol is not included at the end of
your protein sequence.
  Finally, you can even specify the stop symbol if you don't like the
default asterisk: 
<<>>> coding_dna.translate(table=2, stop_symbol="@")
  Seq('MAIVMGRWKGAR*', HasStopCodon(IUPACProtein(), '@'))
>>
  
  The example in Section 13.1.2 combines the 'Seq' object's translate
method with 'Bio.SeqIO' for sequence input/ouput.
  Note: The 'Seq' object's 'translate' method is new in Biopython 1.49.
For older releases you would have to use the 'Bio.Seq' module's
'translate' function instead, see Section 3.12.
  

3.9  Translation Tables
*=*=*=*=*=*=*=*=*=*=*=*

  
  In the previous sections we talked about the 'Seq' object translation
method (and mentioned the equivalent function in the 'Bio.Seq' module --
see Section 3.12). Internally these use codon table objects derived from
the NCBI information at
ftp://ftp.ncbi.nlm.nih.gov/entrez/misc/data/gc.prt, also shown on
http://www.ncbi.nlm.nih.gov/Taxonomy/Utils/wprintgc.cgi in a much more
readable layout.
  As before, let's just focus on two choices: the Standard translation
table, and the translation table for Vertebrate Mitochondrial DNA. 
<<>>> from Bio.Data import CodonTable
  >>> standard_table = CodonTable.unambiguous_dna_by_name["Standard"]
  >>> mito_table = CodonTable.unambiguous_dna_by_name["Vertebrate
Mitochondrial"]
>>
  
  Alternatively, these tables are labeled with ID numbers 1 and 2,
respectively: 
<<>>> from Bio.Data import CodonTable
  >>> standard_table = CodonTable.unambiguous_dna_by_id[1]
  >>> mito_table = CodonTable.unambiguous_dna_by_id[2]
>>
  
  You can compare the actual tables visually by printing them: 
<<>>> print standard_table
  Table 1 Standard, SGC0
  
    |  T      |  C      |  A      |  G      |
  --+---------+---------+---------+---------+--
  T | TTT F   | TCT S   | TAT Y   | TGT C   | T
  T | TTC F   | TCC S   | TAC Y   | TGC C   | C
  T | TTA L   | TCA S   | TAA Stop| TGA Stop| A
  T | TTG L(s)| TCG S   | TAG Stop| TGG W   | G
  --+---------+---------+---------+---------+--
  C | CTT L   | CCT P   | CAT H   | CGT R   | T
  C | CTC L   | CCC P   | CAC H   | CGC R   | C
  C | CTA L   | CCA P   | CAA Q   | CGA R   | A
  C | CTG L(s)| CCG P   | CAG Q   | CGG R   | G
  --+---------+---------+---------+---------+--
  A | ATT I   | ACT T   | AAT N   | AGT S   | T
  A | ATC I   | ACC T   | AAC N   | AGC S   | C
  A | ATA I   | ACA T   | AAA K   | AGA R   | A
  A | ATG M(s)| ACG T   | AAG K   | AGG R   | G
  --+---------+---------+---------+---------+--
  G | GTT V   | GCT A   | GAT D   | GGT G   | T
  G | GTC V   | GCC A   | GAC D   | GGC G   | C
  G | GTA V   | GCA A   | GAA E   | GGA G   | A
  G | GTG V   | GCG A   | GAG E   | GGG G   | G
  --+---------+---------+---------+---------+--
>>
  and: 
<<>>> print mito_table
  Table 2 Vertebrate Mitochondrial, SGC1
  
    |  T      |  C      |  A      |  G      |
  --+---------+---------+---------+---------+--
  T | TTT F   | TCT S   | TAT Y   | TGT C   | T
  T | TTC F   | TCC S   | TAC Y   | TGC C   | C
  T | TTA L   | TCA S   | TAA Stop| TGA W   | A
  T | TTG L   | TCG S   | TAG Stop| TGG W   | G
  --+---------+---------+---------+---------+--
  C | CTT L   | CCT P   | CAT H   | CGT R   | T
  C | CTC L   | CCC P   | CAC H   | CGC R   | C
  C | CTA L   | CCA P   | CAA Q   | CGA R   | A
  C | CTG L   | CCG P   | CAG Q   | CGG R   | G
  --+---------+---------+---------+---------+--
  A | ATT I(s)| ACT T   | AAT N   | AGT S   | T
  A | ATC I(s)| ACC T   | AAC N   | AGC S   | C
  A | ATA M(s)| ACA T   | AAA K   | AGA Stop| A
  A | ATG M(s)| ACG T   | AAG K   | AGG Stop| G
  --+---------+---------+---------+---------+--
  G | GTT V   | GCT A   | GAT D   | GGT G   | T
  G | GTC V   | GCC A   | GAC D   | GGC G   | C
  G | GTA V   | GCA A   | GAA E   | GGA G   | A
  G | GTG V(s)| GCG A   | GAG E   | GGG G   | G
  --+---------+---------+---------+---------+--
>>
  
  You may find these following properties useful -- for example if you
are trying to do your own gene finding: 
<<>>> mito_table.stop_codons
  ['TAA', 'TAG', 'AGA', 'AGG']
  >>> mito_table.start_codons
  ['ATT', 'ATC', 'ATA', 'ATG', 'GTG']
  >>> mito_table.forward_table["ACG"]
  'T'
>>
  
  

3.10  MutableSeq objects
*=*=*=*=*=*=*=*=*=*=*=*=

   
  Just like the normal python string, the 'Seq' object is "read only",
or in python terminology, immutable. Apart from wanting the 'Seq' object
to act like a string, this is also a useful default since in many
biological applications you want to ensure you are not changing your
sequence data:
<<>>> from Bio.Seq import Seq
  >>> from Bio.Alphabet import IUPAC
  >>> my_seq = Seq("GCCATTGTAATGGGCCGCTGAAAGGGTGCCCGA",
IUPAC.unambiguous_dna)
  >>> my_seq[5] = "G"
  Traceback (most recent call last):
    File "<stdin>", line 1, in ?
  AttributeError: 'Seq' instance has no attribute '__setitem__'
>>
  
  However, you can convert it into a mutable sequence (a 'MutableSeq'
object) and do pretty much anything you want with it:
<<>>> mutable_seq = my_seq.tomutable()
  >>> mutable_seq
  MutableSeq('GCCATTGTAATGGGCCGCTGAAAGGGTGCCCGA', IUPACUnambiguousDNA())
>>
  
  Alternatively, you can create a 'MutableSeq' object directly from a
string: 
<<>>> from Bio.Seq import MutableSeq
  >>> from Bio.Alphabet import IUPAC
  >>> mutable_seq = MutableSeq("GCCATTGTAATGGGCCGCTGAAAGGGTGCCCGA",
IUPAC.unambiguous_dna)
>>
  
  Either way will give you a sequence object which can be changed: 
<<>>> mutable_seq
  MutableSeq('GCCATTGTAATGGGCCGCTGAAAGGGTGCCCGA', IUPACUnambiguousDNA())
  >>> mutable_seq[5] = "T"
  >>> mutable_seq
  MutableSeq('GCCATTGTAATGGGCCGCTGAAAGGGTGCCCGA', IUPACUnambiguousDNA())
  >>> mutable_seq.remove("T")
  >>> mutable_seq
  MutableSeq('GCCATGTAATGGGCCGCTGAAAGGGTGCCCGA', IUPACUnambiguousDNA())
  >>> mutable_seq.reverse()
  >>> mutable_seq
  MutableSeq('AGCCCGTGGGAAAGTCGCCGGGTAATGTACCG', IUPACUnambiguousDNA())
>>
  
  Do note that unlike the 'Seq' object, the 'MutableSeq' object's
methods like 'reverse_complement()' and 'reverse()' act in-situ!
  An important technical difference between mutable and immutable
objects in python means that you can't use a 'MutableSeq' object as a
dictionary key, but you can use a python string or a 'Seq' object in
this way.
  Once you have finished editing your a 'MutableSeq' object, it's easy
to get back to a read-only 'Seq' object should you need to:
<<>>> new_seq = mutable_seq.toseq()
  >>> new_seq
  Seq('AGCCCGTGGGAAAGTCGCCGGGTAATGTACCG', IUPACUnambiguousDNA())
>>
  
  You can also get a string from a 'MutableSeq' object just like from a
'Seq' object (Section 3.4).
  

3.11  UnknownSeq objects
*=*=*=*=*=*=*=*=*=*=*=*=

   Biopython 1.50 introduced another basic sequence object, the
'UnknownSeq' object. This is a subclass of the basic 'Seq' object and
its purpose is to represent a sequence where we know the length, but not
the actual letters making it up. You could of course use a normal 'Seq'
object in this situation, but it wastes rather a lot of memory to hold a
string of a million "N" characters when you could just store a single
letter "N" and the desired length as an integer.
<<>>> from Bio.Seq import UnknownSeq
  >>> unk = UnknownSeq(20)
  >>> unk
  UnknownSeq(20, alphabet = Alphabet(), character = '?')
  >>> print unk
  ????????????????????
  >>> len(unk)
  20
>>
  
  You can of course specify an alphabet, meaning for nucleotide
sequences the letter defaults to "N" and for proteins "X", rather than
just "?".
<<>>> from Bio.Seq import UnknownSeq
  >>> from Bio.Alphabet import IUPAC
  >>> unk_dna = UnknownSeq(20, alphabet=IUPAC.ambiguous_dna)
  >>> unk_dna
  UnknownSeq(20, alphabet = IUPACAmbiguousDNA(), character = 'N')
  >>> print unk_dna
  NNNNNNNNNNNNNNNNNNNN
>>
  
  You can use all the usual 'Seq' object methods too, note these give
back memory saving 'UnknownSeq' objects where appropriate as you might
expect:
<<>>> unk_dna
  UnknownSeq(20, alphabet = IUPACAmbiguousDNA(), character = 'N')
  >>> unk_dna.complement()
  UnknownSeq(20, alphabet = IUPACAmbiguousDNA(), character = 'N')
  >>> unk_dna.reverse_complement()
  UnknownSeq(20, alphabet = IUPACAmbiguousDNA(), character = 'N')
  >>> unk_dna.transcribe()
  UnknownSeq(20, alphabet = IUPACAmbiguousRNA(), character = 'N')
  >>> unk_protein = unk_dna.translate()
  >>> unk_protein
  UnknownSeq(6, alphabet = ProteinAlphabet(), character = 'X')
  >>> print unk_protein
  XXXXXX
  >>> len(unk_protein)
  6
>>
  
  You may be able to find a use for the 'UnknownSeq' object in your own
code, but it is more likely that you will first come across them in a
'SeqRecord' object created by 'Bio.SeqIO' (see Chapter 4). Some sequence
file formats don't always include the actual sequence, for example
GenBank and EMBL files may include a list of features but for the
sequence just present the contig information. Alternatively, the QUAL
files used in sequencing work hold quality scores but they never contain
a sequence -- instead there is a partner FASTA file which does have the
sequence.
  

3.12  Working with directly strings
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

    To close this chapter, for those you who really don't want to use
the sequence objects (or who prefer a functional programming style to an
object orientated one), there are module level functions in 'Bio.Seq'
will accept plain python strings, 'Seq' objects (including 'UnknownSeq'
objects) or 'MutableSeq' objects:
<<>>> from Bio.Seq import reverse_complement, transcribe,
back_transcribe, translate
  >>> my_string = "GCTGTTATGGGTCGTTGGAAGGGTGGTCGTGCTGCTGGTTAG"
  >>> reverse_complement(my_string)
  'CTAACCAGCAGCACGACCACCCTTCCAACGACCCATAACAGC'
  >>> transcribe(my_string)
  'GCUGUUAUGGGUCGUUGGAAGGGUGGUCGUGCUGCUGGUUAG'
  >>> back_transcribe(my_string)
  'GCTGTTATGGGTCGTTGGAAGGGTGGTCGTGCTGCTGGTTAG'
  >>> translate(my_string)
  'AVMGRWKGGRAAG*'
>>
  
  You are, however, encouraged to work with 'Seq' objects by default.
-----------------------------------
  
  
 (1) http://www.ncbi.nlm.nih.gov/Taxonomy/Utils/wprintgc.cgi
  

Chapter 4    Sequence Input/Output
**********************************
   
  In this chapter we'll discuss in more detail the 'Bio.SeqIO' module,
which was briefly introduced in Chapter 2. This aims to provide a simple
interface for working with assorted sequence file formats in a uniform
way.
  The "catch" is that you have to work with 'SeqRecord' objects - which
contain a 'Seq' object (as described in Chapter 3) plus annotation like
an identifier and description. We'll introduce the basics of 'SeqRecord'
object in this chapter, but see Section 15.1, the 'SeqRecord' wiki page
(http://biopython.org/wiki/SeqRecord), and in the built in documentation
(also online (1)):
<<>>> from Bio.SeqRecord import SeqRecord
  >>> help(SeqRecord)
  ...
>>
  
  

4.1  Parsing or Reading Sequences
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  The workhorse function 'Bio.SeqIO.parse()' is used to read in sequence
data as SeqRecord objects. This function expects two arguments:
  
  
   1. The first argument is a handle to read the data from. A handle is
   typically a file opened for reading, but could be the output from a
   command line program, or data downloaded from the internet (see
   Section 4.2). See Section 17.1 for more about handles. 
   2. The second argument is a lower case string specifying sequence
   format -- we don't try and guess the file format for you! See
   http://biopython.org/wiki/SeqIO for a full listing of supported
   formats. 
  
  As of Biopython 1.49 there is an optional argument 'alphabet' to
specify the alphabet to be used. This is useful for file formats like
FASTA where otherwise 'Bio.SeqIO' will default to a generic alphabet.
  The 'Bio.SeqIO.parse()' function returns an iterator which gives
'SeqRecord' objects. Iterators are typically used in a for loop as shown
below.
  Sometimes you'll find yourself dealing with files which contain only a
single record. For this situation Biopython 1.45 introduced the function
'Bio.SeqIO.read()' which takes the same arguments. Provided there is one
and only one record in the file, this is returned as a 'SeqRecord'
object. Otherwise an exception is raised.
  

4.1.1  Reading Sequence Files
=============================
  
  In general 'Bio.SeqIO.parse()' is used to read in sequence files as
'SeqRecord' objects, and is typically used with a for loop like this:
<<from Bio import SeqIO
  handle = open("ls_orchid.fasta")
  for seq_record in SeqIO.parse(handle, "fasta") :
      print seq_record.id
      print repr(seq_record.seq)
      print len(seq_record)
  handle.close()
>>
  
  The above example is repeated from the introduction in Section 2.4,
and will load the orchid DNA sequences in the FASTA format file
ls_orchid.fasta (2). If instead you wanted to load a GenBank format file
like ls_orchid.gbk (3) then all you need to do is change the filename
and the format string:
<<from Bio import SeqIO
  handle = open("ls_orchid.gbk")
  for seq_record in SeqIO.parse(handle, "genbank") :
      print seq_record.id
      print seq_record.seq
      print len(seq_record)
  handle.close()
>>
  
  Similarly, if you wanted to read in a file in another file format,
then assuming 'Bio.SeqIO.parse()' supports it you would just need to
change the format string as appropriate, for example "swiss" for
SwissProt files or "embl" for EMBL text files. There is a full listing
on the wiki page (http://biopython.org/wiki/SeqIO) and in the built in
documentation (also online (4)):
<<>>> from Bio import SeqIO
  >>> help(SeqIO)
  ...
>>
  
  Another very common way to use a python iterator is within a list
comprehension (or a generator expression). For example, if all you
wanted to extract from the file was a list of the record identifiers we
can easily do this with the following list comprehension:
<<>>> from Bio import SeqIO
  >>> handle = open("ls_orchid.gbk")
  >>> identifiers = [seq_record.id for seq_record in SeqIO.parse(handle,
"genbank")]
  >>> handle.close()
  >>> identifiers
  ['Z78533.1', 'Z78532.1', 'Z78531.1', 'Z78530.1', 'Z78529.1',
'Z78527.1', ..., 'Z78439.1']
>>
  
  There are more examples using 'SeqIO.parse()' in a list comprehension
like this in Section 13.2 (e.g. for plotting sequence lengths or GC%).
  

4.1.2  Iterating over the records in a sequence file
====================================================
  
  In the above examples, we have usually used a for loop to iterate over
all the records one by one. You can use the for loop with all sorts of
python objects (including lists, tuples and strings) which support the
iteration interface.
  The object returned by 'Bio.SeqIO' is actually an iterator which
returns 'SeqRecord' objects. You get to see each record in turn, but
once and only once. The plus point is that an iterator can save you
memory when dealing with large files.
  Instead of using a for loop, can also use the '.next()' method of an
iterator to step through the entries, like this:
<<from Bio import SeqIO
  handle = open("ls_orchid.fasta")
  record_iterator = SeqIO.parse(handle, "fasta")
  
  first_record = record_iterator.next()
  print first_record.id
  print first_record.description
  
  second_record = record_iterator.next()
  print second_record.id
  print second_record.description
  
  handle.close()
>>
  
  Note that if you try and use '.next()' and there are no more results,
you'll either get back the special python object 'None' or a
'StopIteration' exception.
  One special case to consider is when your sequence files have multiple
records, but you only want the first one. In this situation the
following code is very concise:
<<from Bio import SeqIO
  first_record  = SeqIO.parse(open("ls_orchid.gbk"), "genbank").next()
>>
  
  A word of warning here -- using the '.next()' method like this will
silently ignore any additional records in the file. If your files have
one and only one record, like some of the online examples later in this
chapter, or a GenBank file for a single chromosome, then use the new
'Bio.SeqIO.read()' function instead. This will check there are no extra
unexpected records present.
  

4.1.3  Getting a list of the records in a sequence file
=======================================================
  
  In the previous section we talked about the fact that
'Bio.SeqIO.parse()' gives you a 'SeqRecord' iterator, and that you get
the records one by one. Very often you need to be able to access the
records in any order. The python 'list' data type is perfect for this,
and we can turn the record iterator into a list of 'SeqRecord' objects
using the built-in python function 'list()' like so:
<<from Bio import SeqIO
  handle = open("ls_orchid.gbk")
  records = list(SeqIO.parse(handle, "genbank"))
  handle.close()
  
  print "Found %i records" % len(records)
  
  print "The last record"
  last_record = records[-1] #using python's list tricks
  print last_record.id
  print repr(last_record.seq)
  print len(last_record)
  
  print "The first record"
  first_record = records[0] #remember, python counts from zero
  print first_record.id
  print repr(first_record.seq)
  print len(first_record)
>>
  
  Giving:
<<Found 94 records
  The last record
  Z78439.1
  Seq('CATTGTTGAGATCACATAATAATTGATCGAGTTAATCTGGAGGATCTGTTTACT...GCC',
IUPACAmbiguousDNA())
  592
  The first record
  Z78533.1
  Seq('CGTAACAAGGTTTCCGTAGGTGAACCTGCGGAAGGATCATTGATGAGACCGTGG...CGC',
IUPACAmbiguousDNA())
  740
>>
  
  You can of course still use a for loop with a list of 'SeqRecord'
objects. Using a list is much more flexible than an iterator (for
example, you can determine the number of records from the length of the
list), but does need more memory because it will hold all the records in
memory at once.
  

4.1.4  Extracting data
======================
  
  The 'SeqRecord' object and its annotation structures are described
more fully in Section 15.1. For now, as an example of how annotations
are stored, we'll look at the output from parsing the first record in
the GenBank file ls_orchid.gbk (5).
<<from Bio import SeqIO
  record_iterator = SeqIO.parse(open("ls_orchid.gbk"), "genbank")
  first_record = record_iterator.next()
  print first_record
>>
  
  That should give something like this:
<<ID: Z78533.1
  Name: Z78533
  Description: C.irapeanum 5.8S rRNA gene and ITS1 and ITS2 DNA.
  Number of features: 5
  /sequence_version=1
  /source=Cypripedium irapeanum
  /taxonomy=['Eukaryota', 'Viridiplantae', 'Streptophyta', ...,
'Cypripedium']
  /keywords=['5.8S ribosomal RNA', '5.8S rRNA gene', ..., 'ITS1',
'ITS2']
  /references=[...]
  /accessions=['Z78533']
  /data_file_division=PLN
  /date=30-NOV-2006
  /organism=Cypripedium irapeanum
  /gi=2765658
  Seq('CGTAACAAGGTTTCCGTAGGTGAACCTGCGGAAGGATCATTGATGAGACCGTGG...CGC',
IUPACAmbiguousDNA())
>>
  
  This gives a human readable summary of most of the annotation data for
the 'SeqRecord'. For any python object you can get some clues as to how
to interact with it using the python built in function 'dir()' which
lists all the properties and methods  of an object:
<<>>> dir(first_record)
  [..., 'annotations', 'dbxrefs', 'description', 'features', 'format',
'id', 'name', 'seq']
>>
  
  In the above list, we've omitted the special cases whose names start
with an underscore. You've already met the 'SeqRecord' object's
'.description', '.id' and '.name' properties (all simple strings) and
the '.seq' property (the sequence itself as a 'Seq' object). The
'.dbxrefs' property is a list of database cross-references (as strings).
We'll talk about the '.format()' method later (Section 4.4.3). 
  That leaves two more properties, '.features' which is a list of
'SeqFeature' objects (sequence annotation associated with a particular
sub-sequence, like genes -- see Section 15.1), and '.annotations' which
is a python dictionary used to hold any other annotation (associated
with the full sequence, for example a description or the species it is
from).
  The contents of this annotations dictionary were shown when we printed
the record above. You can also print them out directly: 
<<print first_record.annotations
>>
  Like any python dictionary, you can easily get a list of the keys: 
<<print first_record.annotations.keys()
>>
  or values: 
<<print first_record.annotations.values()
>>
  
  In general, the annotation values are strings, or lists of strings.
One special case is any references in the file get stored as reference
objects. 
  Suppose you wanted to extract a list of the species from the
ls_orchid.gbk (6) GenBank file. The information we want, Cypripedium
irapeanum, is held in the annotations dictionary under `source' and
`organism', which we can access like this:
<<>>> print first_record.annotations["source"]
  Cypripedium irapeanum
>>
  
  or:
<<>>> print first_record.annotations["organism"]
  Cypripedium irapeanum
>>
  
  In general, `organism' is used for the scientific name (in Latin, e.g.
Arabidopsis thaliana), while `source' will often be the common name
(e.g. thale cress). In this example, as is often the case, the two
fields are identical. 
  Now let's go through all the records, building up a list of the
species each orchid sequence is from:
<<from Bio import SeqIO
  handle = open("ls_orchid.gbk")
  all_species = []
  for seq_record in SeqIO.parse(handle, "genbank") :
      all_species.append(seq_record.annotations["organism"])
  handle.close()
  print all_species
>>
  
  Another way of writing this code is to use a list comprehension:
<<from Bio import SeqIO
  all_species = [seq_record.annotations["organism"] for seq_record in \
                 SeqIO.parse(open("ls_orchid.gbk"), "genbank")]
  print all_species
>>
  
  In either case, the result is:
<<['Cypripedium irapeanum', 'Cypripedium californicum', ...,
'Paphiopedilum barbatum']
>>
  
  Great. That was pretty easy because GenBank files are annotated in a
standardised way.
  Now, let's suppose you wanted to extract a list of the species from a
FASTA file, rather than the GenBank file. The bad news is you will have
to write some code to extract the data you want from the record's
description line - if the information is in the file in the first place!
Our example FASTA format file ls_orchid.fasta (7) starts like this:
<<>gi|2765658|emb|Z78533.1|CIZ78533 C.irapeanum 5.8S rRNA gene and ITS1
and ITS2 DNA
  CGTAACAAGGTTTCCGTAGGTGAACCTGCGGAAGGATCATTGATGAGACCGTGGAATAAACGATCGAGTG
  AATCCGGAGGACCGGTGTACTCAGCTCACCGGGGGCATTGCTCCCGTGGTGACCCTGATTTGTTGTTGGG
  ...
>>
  
  You can check by hand, but for every record the species name is in the
description line as the second word. This means if we break up each
record's '.description' at the spaces, then the species is there as
field number one (field zero is the record identifier). That means we
can do this:
<<from Bio import SeqIO
  handle = open("ls_orchid.fasta")
  all_species = []
  for seq_record in SeqIO.parse(handle, "fasta") :
      all_species.append(seq_record.description.split()[1])
  handle.close()
  print all_species
>>
  
  This gives:
<<['C.irapeanum', 'C.californicum', 'C.fasciculatum', 'C.margaritaceum',
..., 'P.barbatum']
>>
  
  The concise alternative using list comprehensions would be:
<<from Bio import SeqIO
  all_species == [seq_record.description.split()[1] for seq_record in \
                  SeqIO.parse(open("ls_orchid.fasta"), "fasta")]
  print all_species
>>
  
  In general, extracting information from the FASTA description line is
not very nice. If you can get your sequences in a well annotated file
format like GenBank or EMBL, then this sort of annotation information is
much easier to deal with.
  

4.2  Parsing sequences from the net
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

    In the previous section, we looked at parsing sequence data from a
file handle. We hinted that handles are not always from files, and in
this section we'll use handles to internet connections to download
sequences.
  Note that just because you can download sequence data and parse it
into a 'SeqRecord' object in one go doesn't mean this is a good idea. In
general, you should probably download sequences once and save them to a
file for reuse.
  

4.2.1  Parsing GenBank records from the net
===========================================
    Section 7.6 talks about the Entrez EFetch interface in more detail,
but for now let's just connect to the NCBI and get a few Opuntia
(prickly-pear) proteins from GenBank using their GI numbers.
  First of all, let's fetch just one record. If you don't care about the
annotations and features downloading a FASTA file is a good choice as
these are compact. Now remember, when you expect the handle to contain
one and only one record, use the 'Bio.SeqIO.read()' function:
<<from Bio import Entrez
  from Bio import SeqIO
  handle = Entrez.efetch(db="protein", rettype="fasta", id="6273291")
  seq_record = SeqIO.read(handle, "fasta")
  handle.close()
  print "%s with %i features" % (seq_record.id,
len(seq_record.features))
>>
  
  Expected output:
<<gi|6273291|gb|AF191665.1|AF191665 with 3 features
>>
  
  The NCBI will also let you ask for the file in other formats, in
particular as a GenBank file:
<<from Bio import Entrez
  from Bio import SeqIO
  handle = Entrez.efetch(db="nucleotide", rettype="gb", id="6273291")
  seq_record = SeqIO.read(handle, "gb") #using "gb" as an alias for
"genbank"
  handle.close()
  print "%s with %i features" % (seq_record.id,
len(seq_record.features))
>>
  
  Until Easter 2009, the Entrez EFetch API let you use "genbank" as the
return type, however the NCBI now insist on using the official return
types of "gb" (or "gp" for proteins) as described on EFetch for Sequence
and other Molecular Biology Databases (8). As a result, in Biopython
1.50 onwards, we support "gb" as an alias for "genbank" in 'Bio.SeqIO'.
  The expected output of this example is:
<<AF191665.1 with 3 features
>>
  
  Now let's fetch several records. This time the handle contains
multiple records, so we must use the 'Bio.SeqIO.parse()' function:
<<from Bio import Entrez
  from Bio import SeqIO
  handle = Entrez.efetch(db="nucleotide", rettype="gb", \
                         id="6273291,6273290,6273289")
  for seq_record in SeqIO.parse(handle, "gb") :
      print seq_record.id, seq_record.description[:50] + "..."
      print "Sequence length %i," % len(seq_record),
      print "%i features," % len(seq_record.features),
      print "from: %s" % seq_record.annotations["source"]
  handle.close()
>>
  
  That should give the following output:
<<AF191665.1 Opuntia marenae rpl16 gene; chloroplast gene for c...
  Sequence length 902, 3 features, from: chloroplast Opuntia marenae
  AF191664.1 Opuntia clavata rpl16 gene; chloroplast gene for c...
  Sequence length 899, 3 features, from: chloroplast Grusonia clavata
  AF191663.1 Opuntia bradtiana rpl16 gene; chloroplast gene for...
  Sequence length 899, 3 features, from: chloroplast Opuntia bradtianaa
>>
  
  See Chapter 7 for more about the 'Bio.Entrez' module, and make sure to
read about the NCBI guidelines for using Entrez (Section 7.1).
  

4.2.2  Parsing SwissProt sequences from the net
===============================================
    Now let's use a handle to download a SwissProt file from ExPASy,
something covered in more depth in Chapter 8. As mentioned above, when
you expect the handle to contain one and only one record, use the
'Bio.SeqIO.read()' function:
<<from Bio import ExPASy
  from Bio import SeqIO
  handle = ExPASy.get_sprot_raw("O23729")
  seq_record = SeqIO.read(handle, "swiss")
  handle.close()
  print seq_record.id
  print seq_record.name
  print seq_record.description
  print repr(seq_record.seq)
  print "Length %i" % len(seq_record)
  print seq_record.annotations["keywords"]
>>
  
  Assuming your network connection is OK, you should get back:
<<O23729
  CHS3_BROFI
  Chalcone synthase 3 (EC 2.3.1.74) (Naringenin-chalcone synthase 3).
  Seq('MAPAMEEIRQAQRAEGPAAVLAIGTSTPPNALYQADYPDYYFRITKSEHLTELK...GAE',
ProteinAlphabet())
  Length 394
  ['Acyltransferase', 'Flavonoid biosynthesis', 'Transferase']
>>
  
  

4.3  Sequence files as Dictionaries
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  The next thing that we'll do with our ubiquitous orchid files is to
show how to index them and access them like a database using the python
'dictionary' data type (like a hash in Perl). This is very useful for
large files where you only need to access certain elements of the file,
and makes for a nice quick 'n dirty database.
  You can use the function 'Bio.SeqIO.to_dict()' to make a SeqRecord
dictionary (in memory). By default this will use each record's
identifier (i.e. the '.id' attribute) as the key. Let's try this using
our GenBank file:
<<from Bio import SeqIO
  handle = open("ls_orchid.gbk")
  orchid_dict = SeqIO.to_dict(SeqIO.parse(handle, "genbank"))
  handle.close()
>>
  
  Since this variable 'orchid_dict' is an ordinary python dictionary, we
can look at all of the keys we have available:
<<>>> print orchid_dict.keys()
  ['Z78484.1', 'Z78464.1', 'Z78455.1', 'Z78442.1', 'Z78532.1',
'Z78453.1', ..., 'Z78471.1']
>>
  
  We can access a single 'SeqRecord' object via the keys and manipulate
the object as normal:
<<>>> seq_record = orchid_dict["Z78475.1"]
  >>> print seq_record.description
  P.supardii 5.8S rRNA gene and ITS1 and ITS2 DNA
  >>> print repr(seq_record.seq)
  Seq('CGTAACAAGGTTTCCGTAGGTGAACCTGCGGAAGGATCATTGTTGAGATCACAT...GGT',
IUPACAmbiguousDNA())
>>
  
  So, it is very easy to create an in memory "database" of our GenBank
records. Next we'll try this for the FASTA file instead.
  Note that those of you with prior python experience should all be able
to construct a dictionary like this "by hand". However, typical
dictionary construction methods will not deal with the case of repeated
keys very nicely. Using the 'Bio.SeqIO.to_dict()' will explicitly check
for duplicate keys, and raise an exception if any are found.
  

4.3.1  Specifying the dictionary keys
=====================================
  
  Using the same code as above, but for the FASTA file instead:
<<from Bio import SeqIO
  handle = open("ls_orchid.fasta")
  orchid_dict = SeqIO.to_dict(SeqIO.parse(handle, "fasta"))
  handle.close()
  print orchid_dict.keys()
>>
  
  This time the keys are:
<<['gi|2765596|emb|Z78471.1|PDZ78471',
'gi|2765646|emb|Z78521.1|CCZ78521', ...
   ..., 'gi|2765613|emb|Z78488.1|PTZ78488',
'gi|2765583|emb|Z78458.1|PHZ78458']
>>
  
  You should recognise these strings from when we parsed the FASTA file
earlier in Section 2.4.1. Suppose you would rather have something else
as the keys - like the accession numbers. This brings us nicely to
'SeqIO.to_dict()''s optional argument 'key_function', which lets you
define what to use as the dictionary key for your records.
  First you must write your own function to return the key you want (as
a string) when given a 'SeqRecord' object. In general, the details of
function will depend on the sort of input records you are dealing with.
But for our orchids, we can just split up the record's identifier using
the "pipe" character (the vertical line) and return the fourth entry
(field three):
<<def get_accession(record) :
      """"Given a SeqRecord, return the accession number as a string.
    
      e.g. "gi|2765613|emb|Z78488.1|PTZ78488" -> "Z78488.1"
      """
      parts = record.id.split("|")
      assert len(parts) == 5 and parts[0] == "gi" and parts[2] == "emb"
      return parts[3]
>>
  
  Then we can give this function to the 'SeqIO.to_dict()' function to
use in building the dictionary:
<<from Bio import SeqIO
  handle = open("ls_orchid.fasta")
  orchid_dict = SeqIO.to_dict(SeqIO.parse(handle, "fasta"),
key_function=get_accession)
  handle.close()
  print orchid_dict.keys()
>>
  
  Finally, as desired, the new dictionary keys:
<<>>> print orchid_dict.keys()
  ['Z78484.1', 'Z78464.1', 'Z78455.1', 'Z78442.1', 'Z78532.1',
'Z78453.1', ..., 'Z78471.1']
>>
  
  Not too complicated, I hope!
  

4.3.2  Indexing a dictionary using the SEGUID checksum
======================================================
  
  To give another example of working with dictionaries of 'SeqRecord'
objects, we'll use the SEGUID checksum function. This is a relatively
recent checksum, and collisions should be very rare (i.e. two different
sequences with the same checksum), an improvement on the CRC64 checksum.
  Once again, working with the orchids GenBank file:
<<from Bio import SeqIO
  from Bio.SeqUtils.CheckSum import seguid
  for record in SeqIO.parse(open("ls_orchid.gbk"), "genbank") :
      print record.id, seguid(record.seq)
>>
  
  This should give:
<<Z78533.1 JUEoWn6DPhgZ9nAyowsgtoD9TTo
  Z78532.1 MN/s0q9zDoCVEEc+k/IFwCNF2pY
  ...
  Z78439.1 H+JfaShya/4yyAj7IbMqgNkxdxQ
>>
  
  Now, recall the 'Bio.SeqIO.to_dict()' function's 'key_function'
argument expects a function which turns a 'SeqRecord' into a string. We
can't use the 'seguid()' function directly because it expects to be
given a 'Seq' object (or a string). However, we can use python's
'lambda' feature to create a "one off" function to give to
'Bio.SeqIO.to_dict()' instead:
<<from Bio import SeqIO
  from Bio.SeqUtils.CheckSum import seguid
  seguid_dict = SeqIO.to_dict(SeqIO.parse(open("ls_orchid.gbk"),
"genbank"),
                              lambda rec : seguid(rec.seq))
  record = seguid_dict["MN/s0q9zDoCVEEc+k/IFwCNF2pY"]
  print record.id
  print record.description
>>
  
  That should have retrieved the record Z78532.1, the second entry in
the file.
  

4.4  Writing Sequence Files
*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  We've talked about using 'Bio.SeqIO.parse()' for sequence input
(reading files), and now we'll look at 'Bio.SeqIO.write()' which is for
sequence output (writing files). This is a function taking three
arguments: some 'SeqRecord' objects, a handle to write to, and a
sequence format.
  Here is an example, where we start by creating a few 'SeqRecord'
objects the hard way (by hand, rather than by loading them from a file):
<<from Bio.Seq import Seq
  from Bio.SeqRecord import SeqRecord
  from Bio.Alphabet import generic_protein
  
  rec1 =
SeqRecord(Seq("MMYQQGCFAGGTVLRLAKDLAENNRGARVLVVCSEITAVTFRGPSETHLDSMVGQAL
FGD" \
                     
+"GAGAVIVGSDPDLSVERPLYELVWTGATLLPDSEGAIDGHLREVGLTFHLLKDVPGLISK" \
                     
+"NIEKSLKEAFTPLGISDWNSTFWIAHPGGPAILDQVEAKLGLKEEKMRATREVLSEYGNM" \
                      +"SSAC", generic_protein),
                   id="gi|14150838|gb|AAK54648.1|AF376133_1",
                   description="chalcone synthase [Cucumis sativus]")
  
  rec2 =
SeqRecord(Seq("YPDYYFRITNREHKAELKEKFQRMCDKSMIKKRYMYLTEEILKENPSMCEYMAPSLD
ARQ" \
                      +"DMVVVEIPKLGKEAAVKAIKEWGQ", generic_protein),
                   id="gi|13919613|gb|AAK33142.1|",
                   description="chalcone synthase [Fragaria vesca subsp.
bracteata]")
  
  rec3 =
SeqRecord(Seq("MVTVEEFRRAQCAEGPATVMAIGTATPSNCVDQSTYPDYYFRITNSEHKVELKEKFK
RMC" \
                     
+"EKSMIKKRYMHLTEEILKENPNICAYMAPSLDARQDIVVVEVPKLGKEAAQKAIKEWGQP" \
                     
+"KSKITHLVFCTTSGVDMPGCDYQLTKLLGLRPSVKRFMMYQQGCFAGGTVLRMAKDLAEN" \
                     
+"NKGARVLVVCSEITAVTFRGPNDTHLDSLVGQALFGDGAAAVIIGSDPIPEVERPLFELV" \
                     
+"SAAQTLLPDSEGAIDGHLREVGLTFHLLKDVPGLISKNIEKSLVEAFQPLGISDWNSLFW" \
                     
+"IAHPGGPAILDQVELKLGLKQEKLKATRKVLSNYGNMSSACVLFILDEMRKASAKEGLGT" \
                      +"TGEGLEWGVLFGFGPGLTVETVVLHSVAT",
generic_protein),
                   id="gi|13925890|gb|AAK49457.1|",
                   description="chalcone synthase [Nicotiana tabacum]")
                 
  my_records = [rec1, rec2, rec3]
>>
  
  Now we have a list of 'SeqRecord' objects, we'll write them to a FASTA
format file:
<<from Bio import SeqIO
  handle = open("my_example.faa", "w")
  SeqIO.write(my_records, handle, "fasta")
  handle.close()
>>
  
  And if you open this file in your favourite text editor it should look
like this:
<<>gi|14150838|gb|AAK54648.1|AF376133_1 chalcone synthase [Cucumis
sativus]
  MMYQQGCFAGGTVLRLAKDLAENNRGARVLVVCSEITAVTFRGPSETHLDSMVGQALFGD
  GAGAVIVGSDPDLSVERPLYELVWTGATLLPDSEGAIDGHLREVGLTFHLLKDVPGLISK
  NIEKSLKEAFTPLGISDWNSTFWIAHPGGPAILDQVEAKLGLKEEKMRATREVLSEYGNM
  SSAC
  >gi|13919613|gb|AAK33142.1| chalcone synthase [Fragaria vesca subsp.
bracteata]
  YPDYYFRITNREHKAELKEKFQRMCDKSMIKKRYMYLTEEILKENPSMCEYMAPSLDARQ
  DMVVVEIPKLGKEAAVKAIKEWGQ
  >gi|13925890|gb|AAK49457.1| chalcone synthase [Nicotiana tabacum]
  MVTVEEFRRAQCAEGPATVMAIGTATPSNCVDQSTYPDYYFRITNSEHKVELKEKFKRMC
  EKSMIKKRYMHLTEEILKENPNICAYMAPSLDARQDIVVVEVPKLGKEAAQKAIKEWGQP
  KSKITHLVFCTTSGVDMPGCDYQLTKLLGLRPSVKRFMMYQQGCFAGGTVLRMAKDLAEN
  NKGARVLVVCSEITAVTFRGPNDTHLDSLVGQALFGDGAAAVIIGSDPIPEVERPLFELV
  SAAQTLLPDSEGAIDGHLREVGLTFHLLKDVPGLISKNIEKSLVEAFQPLGISDWNSLFW
  IAHPGGPAILDQVELKLGLKQEKLKATRKVLSNYGNMSSACVLFILDEMRKASAKEGLGT
  TGEGLEWGVLFGFGPGLTVETVVLHSVAT
>>
  
  Suppose you wanted to know how many records the 'Bio.SeqIO.write()'
function wrote to the handle? If your records were in a list you could
just use 'len(my_records)', however you can't do that when your records
come from a generator/iterator. Therefore as of Biopython 1.49, the
'Bio.SeqIO.write()' function returns the number of 'SeqRecord' objects
written to the file. 
  

4.4.1  Converting between sequence file formats
===============================================
  
  In previous example we used a list of 'SeqRecord' objects as input to
the 'Bio.SeqIO.write()' function, but it will also accept a 'SeqRecord'
iterator like we get from 'Bio.SeqIO.parse()' -- this lets us do file
conversion very succinctly. For this example we'll read in the GenBank
format file ls_orchid.gbk (9) and write it out in FASTA format:
<<from Bio import SeqIO
  in_handle = open("ls_orchid.gbk", "r")
  out_handle = open("my_example.fasta", "w")
  SeqIO.write(SeqIO.parse(in_handle, "genbank"), out_handle, "fasta")
  in_handle.close()
  out_handle.close()
>>
  
  You can in fact do this in one line, by being lazy about closing the
file handles. This is arguably bad style, but it is very concise:
<<from Bio import SeqIO
  SeqIO.write(SeqIO.parse(open("ls_orchid.gbk"), "genbank"),
open("my_example.faa", "w"), "fasta")
>>
  
  

4.4.2  Converting a file of sequences to their reverse complements
==================================================================
    Suppose you had a file of nucleotide sequences, and you wanted to
turn it into a file containing their reverse complement sequences. This
time a little bit of work is required to transform the 'SeqRecord'
objects we get from our input file into something suitable for saving to
our output file.
  To start with, we'll use 'Bio.SeqIO.parse()' to load some nucleotide
sequences from a file, then print out their reverse complements using
the 'Seq' object's built in '.reverse_complement()' method (see
Section 3.6):
<<from Bio import SeqIO
  in_handle = open("ls_orchid.gbk")
  for record in SeqIO.parse(in_handle, "genbank") :
      print record.id
      print record.seq.reverse_complement()
  in_handle.close()
>>
  
  Now, if we want to save these reverse complements to a file, we'll
need to make 'SeqRecord' objects. For this I think its most elegant to
write our own function, where we can decide how to name our new records:
<<from Bio.SeqRecord import SeqRecord
  
  def make_rc_record(record) :
      """Returns a new SeqRecord with the reverse complement
sequence."""
      return SeqRecord(seq = record.seq.reverse_complement(), \
                       id = "rc_" + record.id, \
                       description = "reverse complement")
>>
  
  We can then use this to turn the input records into reverse complement
records ready for output. If you don't mind about having all the records
in memory at once, then the python 'map()' function is a very intuitive
way of doing this:
<<from Bio import SeqIO
  
  in_handle = open("ls_orchid.fasta")
  records = map(make_rc_record, SeqIO.parse(in_handle, "fasta"))
  in_handle.close()
  
  out_handle = open("rev_comp.fasta", "w")
  SeqIO.write(records, out_handle, "fasta")
  out_handle.close()
>>
  
  This is an excellent place to demonstrate the power of list
comprehensions which in their simplest are a long-winded equivalent to
using 'map()', like this:
<<records = [make_rc_record(rec) for rec in SeqIO.parse(in_handle,
"fasta")]
>>
  
  Now list comprehensions have a nice trick up their sleeves, you can
add a conditional statement:
<<records = [make_rc_record(rec) for rec in SeqIO.parse(in_handle,
"fasta") if len(rec)<700]
>>
  
  That would create an in memory list of reverse complement records
where the sequence length was under 700 base pairs. However, if you are
using Python 2.4 or later, we can do exactly the same with a generator
expression - but with the advantage that this does not create a list of
all the records in memory at once:
<<records = (make_rc_record(rec) for rec in SeqIO.parse(in_handle,
"fasta") if len(rec)<700)
>>
  
  If you don't mind being lax about closing input file handles, we have:
<<from Bio import SeqIO
  
  records = (make_rc_record(rec) for rec in \
             SeqIO.parse(open("ls_orchid.fasta"), "fasta") \
             if len(rec) < 700)
  
  out_handle = open("rev_comp.fasta", "w")
  SeqIO.write(records, out_handle, "fasta")
  out_handle.close()
>>
  
  There is a related example in Section 13.1.2, translating each record
in the FASTA file from nucleotides to amino acids.
  

4.4.3  Getting your SeqRecord objects as formatted strings
==========================================================
    Suppose that you don't really want to write your records to a file
or handle -- instead you want a string containing the records in a
particular file format. The 'Bio.SeqIO' interface is based on handles,
but python has a useful built in module which provides a string based
handle.
  For an example of how you might use this, let's load in a bunch of
'SeqRecord' objects from our orchids GenBank file, and create a string
containing the records in FASTA format:
<<from Bio import SeqIO
  from StringIO import StringIO
  
  records = SeqIO.parse(open("ls_orchid.gbk"), "genbank")
  
  out_handle = StringIO()
  SeqIO.write(records, out_handle, "fasta")
  fasta_data = out_handle.getvalue()
  
  print fasta_data
>>
  
  This isn't entirely straightforward the first time you see it! On the
bright side, for the special case where you would like a string
containing a single record in a particular file format, Biopython 1.48
added a new 'format()' method to the 'SeqRecord' class:
<<from Bio.Seq import Seq
  from Bio.SeqRecord import SeqRecord
  from Bio.Alphabet import generic_protein
  
  record =
SeqRecord(Seq("MMYQQGCFAGGTVLRLAKDLAENNRGARVLVVCSEITAVTFRGPSETHLDSMVGQAL
FGD" \
                       
+"GAGAVIVGSDPDLSVERPLYELVWTGATLLPDSEGAIDGHLREVGLTFHLLKDVPGLISK" \
                       
+"NIEKSLKEAFTPLGISDWNSTFWIAHPGGPAILDQVEAKLGLKEEKMRATREVLSEYGNM" \
                        +"SSAC", generic_protein),
                     id="gi|14150838|gb|AAK54648.1|AF376133_1",
                     description="chalcone synthase [Cucumis sativus]")
                     
  print record.format("fasta")
>>
  which should give: 
<<>gi|14150838|gb|AAK54648.1|AF376133_1 chalcone synthase [Cucumis
sativus]
  MMYQQGCFAGGTVLRLAKDLAENNRGARVLVVCSEITAVTFRGPSETHLDSMVGQALFGD
  GAGAVIVGSDPDLSVERPLYELVWTGATLLPDSEGAIDGHLREVGLTFHLLKDVPGLISK
  NIEKSLKEAFTPLGISDWNSTFWIAHPGGPAILDQVEAKLGLKEEKMRATREVLSEYGNM
  SSAC
>>
  
  This 'format' method takes a single mandatory argument, a lower case
string which is supported by 'Bio.SeqIO' as an output format. However,
some of the file formats 'Bio.SeqIO' can write to require more than one
record (typically the case for multiple sequence alignment formats), and
thus won't work via this 'format()' method.
  Note that although we don't encourage it, you can use the 'format()'
method to write to a file, like this: 
<<from Bio import SeqIO
  record_iterator = SeqIO.parse(open("ls_orchid.gbk"), "genbank")
  out_handle = open("ls_orchid.tab", "w")
  for record in record_iterator :
      out_handle.write(record.format("tab"))
  out_handle.close()
>>
  While this style of code will work for a simple sequential file format
like FASTA or the simple tab separated format used in this example, it
will not work for more complex or interlaced file formats. This is why
we still recommend using 'Bio.SeqIO.write()', as in the following
example: 
<<from Bio import SeqIO
  record_iterator = SeqIO.parse(open("ls_orchid.gbk"), "genbank")
  out_handle = open("ls_orchid.tab", "w")
  SeqIO.write(record_iterator, out_handle, "tab")
  out_handle.close()
>>
  
-----------------------------------
  
  
 (1) http://biopython.org/DIST/docs/api/Bio.SeqRecord.SeqRecord-class.ht
   ml
 
 (2) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.fasta
 
 (3) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.gbk
 
 (4) http://biopython.org/DIST/docs/api/Bio.SeqIO-module.html
 
 (5) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.gbk
 
 (6) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.gbk
 
 (7) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.fasta
 
 (8) http://www.ncbi.nlm.nih.gov/entrez/query/static/efetchseq_help.html
 
 (9) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.gbk
  

Chapter 5    Sequence Alignment Input/Output
********************************************
   
  In this chapter we'll discuss the 'Bio.AlignIO' module, which is very
similar to the 'Bio.SeqIO' module from the previous chapter, but deals
with 'Alignment' objects rather than 'SeqRecord' objects.  This is new
interface in Biopython 1.46, which aims to provide a simple interface
for working with assorted sequence alignment file formats in a uniform
way.
  Note that both 'Bio.SeqIO' and 'Bio.AlignIO' can read and write
sequence alignment files. The appropriate choice will depend largely on
what you want to do with the data.
  

5.1  Parsing or Reading Sequence Alignments
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  We have two functions for reading in sequence alignments,
'Bio.AlignIO.read()' and 'Bio.AlignIO.parse()' which following the
convention introduced in 'Bio.SeqIO' are for files containing one or
multiple alignments respectively.
  Using 'Bio.AlignIO.parse()' will return an iterator which gives
'Alignment' objects. Iterators are typically used in a for loop.
Examples of situations where you will have multiple different alignments
include resampled alignments from the PHYLIP tool 'seqboot', or multiple
pairwise alignments from the EMBOSS tools 'water' or 'needle', or Bill
Pearson's FASTA tools.
  However, in many situations you will be dealing with files which
contain only a single alignment. In this case, you should use the
'Bio.AlignIO.read()' function which returns a single 'Alignment' object.
  Both functions expect two mandatory arguments:
  
  
   1. The first argument is a handle to read the data from, typically an
   open file (see Section 17.1). 
   2. The second argument is a lower case string specifying the
   alignment format. As in 'Bio.SeqIO' we don't try and guess the file
   format for you! See http://biopython.org/wiki/AlignIO for a full
   listing of supported formats. 
  
  There is also an optional 'seq_count' argument which is discussed in
Section 5.1.3 below for dealing with ambiguous file formats which may
contain more than one alignment.
  Biopython 1.49 introduced a further optional 'alphabet' argument
allowing you to specify the expected alphabet. This can be useful as
many alignment file formats do not explicitly label the sequences as
RNA, DNA or protein -- which means 'Bio.AlignIO' will default to using a
generic alphabet.
  

5.1.1  Single Alignments
========================
   As an example, consider the following annotation rich protein
alignment in the PFAM or Stockholm file format:
<<# STOCKHOLM 1.0
  #=GS COATB_BPIKE/30-81  AC P03620.1
  #=GS COATB_BPIKE/30-81  DR PDB; 1ifl ; 1-52;
  #=GS Q9T0Q8_BPIKE/1-52  AC Q9T0Q8.1
  #=GS COATB_BPI22/32-83  AC P15416.1
  #=GS COATB_BPM13/24-72  AC P69541.1
  #=GS COATB_BPM13/24-72  DR PDB; 2cpb ; 1-49;
  #=GS COATB_BPM13/24-72  DR PDB; 2cps ; 1-49;
  #=GS COATB_BPZJ2/1-49   AC P03618.1
  #=GS Q9T0Q9_BPFD/1-49   AC Q9T0Q9.1
  #=GS Q9T0Q9_BPFD/1-49   DR PDB; 1nh4 A; 1-49;
  #=GS COATB_BPIF1/22-73  AC P03619.2
  #=GS COATB_BPIF1/22-73  DR PDB; 1ifk ; 1-50;
  COATB_BPIKE/30-81            
AEPNAATNYATEAMDSLKTQAIDLISQTWPVVTTVVVAGLVIRLFKKFSSKA
  #=GR COATB_BPIKE/30-81  SS   
-HHHHHHHHHHHHHH--HHHHHHHH--HHHHHHHHHHHHHHHHHHHHH----
  Q9T0Q8_BPIKE/1-52            
AEPNAATNYATEAMDSLKTQAIDLISQTWPVVTTVVVAGLVIKLFKKFVSRA
  COATB_BPI22/32-83            
DGTSTATSYATEAMNSLKTQATDLIDQTWPVVTSVAVAGLAIRLFKKFSSKA
  COATB_BPM13/24-72            
AEGDDP...AKAAFNSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFTSKA
  #=GR COATB_BPM13/24-72  SS   
---S-T...CHCHHHHCCCCTCCCTTCHHHHHHHHHHHHHHHHHHHHCTT--
  COATB_BPZJ2/1-49             
AEGDDP...AKAAFDSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFASKA
  Q9T0Q9_BPFD/1-49             
AEGDDP...AKAAFDSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFTSKA
  #=GR Q9T0Q9_BPFD/1-49   SS   
------...-HHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHHH--
  COATB_BPIF1/22-73            
FAADDATSQAKAAFDSLTAQATEMSGYAWALVVLVVGATVGIKLFKKFVSRA
  #=GR COATB_BPIF1/22-73  SS   
XX-HHHH--HHHHHH--HHHHHHH--HHHHHHHHHHHHHHHHHHHHHHH---
  #=GC SS_cons                 
XHHHHHHHHHHHHHHHCHHHHHHHHCHHHHHHHHHHHHHHHHHHHHHHHC--
  #=GC seq_cons                
AEssss...AptAhDSLpspAT-hIu.sWshVsslVsAsluIKLFKKFsSKA
  //
>>
  
  This is the seed alignment for the Phage_Coat_Gp8 (PF05371) PFAM
entry, downloaded as a compressed archive from
http://pfam.sanger.ac.uk/family/alignment/download/gzipped?acc=PF05371&a
lnType=seed. We can load this file as follows (assuming it has been
saved to disk as "PF05371_seed.sth" in the current working directory):
<<from Bio import AlignIO
  alignment = AlignIO.read(open("PF05371_seed.sth"), "stockholm")
  print alignment
>>
  
  This code will print out a summary of the alignment:
<<SingleLetterAlphabet() alignment with 7 rows and 52 columns
  AEPNAATNYATEAMDSLKTQAIDLISQTWPVVTTVVVAGLVIRL...SKA COATB_BPIKE/30-81
  AEPNAATNYATEAMDSLKTQAIDLISQTWPVVTTVVVAGLVIKL...SRA Q9T0Q8_BPIKE/1-52
  DGTSTATSYATEAMNSLKTQATDLIDQTWPVVTSVAVAGLAIRL...SKA COATB_BPI22/32-83
  AEGDDP---AKAAFNSLQASATEYIGYAWAMVVVIVGATIGIKL...SKA COATB_BPM13/24-72
  AEGDDP---AKAAFDSLQASATEYIGYAWAMVVVIVGATIGIKL...SKA COATB_BPZJ2/1-49
  AEGDDP---AKAAFDSLQASATEYIGYAWAMVVVIVGATIGIKL...SKA Q9T0Q9_BPFD/1-49
  FAADDATSQAKAAFDSLTAQATEMSGYAWALVVLVVGATVGIKL...SRA COATB_BPIF1/22-73
>>
  
  You'll notice in the above output the sequences have been truncated.
We could instead write our own code to format this as we please by
iterating over the rows as 'SeqRecord' objects:
<<from Bio import AlignIO
  alignment = AlignIO.read(open("PF05371_seed.sth"), "stockholm")
  print "Alignment length %i" % alignment.get_alignment_length()
  for record in alignment :
      print "%s - %s" % (record.seq, record.id)
>>
  
  This will give the following output:
<<Alignment length 52
  AEPNAATNYATEAMDSLKTQAIDLISQTWPVVTTVVVAGLVIRLFKKFSSKA -
COATB_BPIKE/30-81
  AEPNAATNYATEAMDSLKTQAIDLISQTWPVVTTVVVAGLVIKLFKKFVSRA -
Q9T0Q8_BPIKE/1-52
  DGTSTATSYATEAMNSLKTQATDLIDQTWPVVTSVAVAGLAIRLFKKFSSKA -
COATB_BPI22/32-83
  AEGDDP---AKAAFNSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFTSKA -
COATB_BPM13/24-72
  AEGDDP---AKAAFDSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFASKA -
COATB_BPZJ2/1-49
  AEGDDP---AKAAFDSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFTSKA -
Q9T0Q9_BPFD/1-49
  FAADDATSQAKAAFDSLTAQATEMSGYAWALVVLVVGATVGIKLFKKFVSRA -
COATB_BPIF1/22-73
>>
  
  You could also use the alignment object's 'format' method to show it
in a particular file format -- see Section 5.2.2 for details.
  Did you notice in the raw file above that several of the sequences
include database cross-references to the PDB and the associated known
secondary structure? Try this:
<<for record in alignment :
      if record.dbxrefs :
          print record.id, record.dbxrefs
>>
  
  giving:
<<COATB_BPIKE/30-81 ['PDB; 1ifl ; 1-52;']
  COATB_BPM13/24-72 ['PDB; 2cpb ; 1-49;', 'PDB; 2cps ; 1-49;']
  Q9T0Q9_BPFD/1-49 ['PDB; 1nh4 A; 1-49;']
  COATB_BPIF1/22-73 ['PDB; 1ifk ; 1-50;']
>>
  
  To have a look at all the sequence annotation, try this:
<<for record in alignment :
      print record
>>
  
  Sanger provide a nice web interface at
http://pfam.sanger.ac.uk/family?acc=PF05371 which will actually let you
download this alignment in several other formats. This is what the file
looks like in the FASTA file format:
<<>COATB_BPIKE/30-81
  AEPNAATNYATEAMDSLKTQAIDLISQTWPVVTTVVVAGLVIRLFKKFSSKA
  >Q9T0Q8_BPIKE/1-52
  AEPNAATNYATEAMDSLKTQAIDLISQTWPVVTTVVVAGLVIKLFKKFVSRA
  >COATB_BPI22/32-83
  DGTSTATSYATEAMNSLKTQATDLIDQTWPVVTSVAVAGLAIRLFKKFSSKA
  >COATB_BPM13/24-72
  AEGDDP---AKAAFNSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFTSKA
  >COATB_BPZJ2/1-49
  AEGDDP---AKAAFDSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFASKA
  >Q9T0Q9_BPFD/1-49
  AEGDDP---AKAAFDSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFTSKA
  >COATB_BPIF1/22-73
  FAADDATSQAKAAFDSLTAQATEMSGYAWALVVLVVGATVGIKLFKKFVSRA
>>
  
  Note the website should have an option about showing gaps as periods
(dots) or dashes, we've shown dashes above. Assuming you download and
save this as file "PF05371_seed.faa" then you can load it with almost
exactly the same code:
<<from Bio import AlignIO
  alignment = AlignIO.read(open("PF05371_seed.faa"), "fasta")
  print alignment
>>
  
  All that has changed in this code is the filename and the format
string. You'll get the same output as before, the sequences and record
identifiers are the same. However, as you should expect, if you check
each 'SeqRecord' there is no annotation nor database cross-references
because these are not included in the FASTA file format.
  Note that rather than using the Sanger website, you could have used
'Bio.AlignIO' to convert the original Stockholm format file into a FASTA
file yourself (see below).
  With any supported file format, you can load an alignment in exactly
the same way just by changing the format string. For example, use
"phylip" for PHYLIP files, "nexus" for NEXUS files or "emboss" for the
alignments output by the EMBOSS tools. There is a full listing on the
wiki page (http://biopython.org/wiki/AlignIO) and in the built in
documentation (also online (1)):
<<>>> from Bio import AlignIO
  >>> help(AlignIO)
  ...
>>
  
  

5.1.2  Multiple Alignments
==========================
  
  The previous section focused on reading files containing a single
alignment. In general however, files can contain more than one
alignment, and to read these files we must use the 'Bio.AlignIO.parse()'
function.
  Suppose you have a small alignment in PHYLIP format:
<<    5    6
  Alpha     AACAAC
  Beta      AACCCC
  Gamma     ACCAAC
  Delta     CCACCA
  Epsilon   CCAAAC
>>
  
  If you wanted to bootstrap a phylogenetic tree using the PHYLIP tools,
one of the steps would be to create a set of many resampled alignments
using the tool 'bootseq'. This would give output something like this,
which has been abbreviated for conciseness:
<<    5     6
  Alpha     AAACCA
  Beta      AAACCC
  Gamma     ACCCCA
  Delta     CCCAAC
  Epsilon   CCCAAA
      5     6
  Alpha     AAACAA
  Beta      AAACCC
  Gamma     ACCCAA
  Delta     CCCACC
  Epsilon   CCCAAA
      5     6
  Alpha     AAAAAC
  Beta      AAACCC
  Gamma     AACAAC
  Delta     CCCCCA
  Epsilon   CCCAAC
  ...
      5     6
  Alpha     AAAACC
  Beta      ACCCCC
  Gamma     AAAACC
  Delta     CCCCAA
  Epsilon   CAAACC
>>
  
  If you wanted to read this in using 'Bio.AlignIO' you could use:
<<from Bio import AlignIO
  alignments = AlignIO.parse(open("resampled.phy"), "phylip")
  for alignment in alignments :
      print alignment
      print
>>
  
  This would give the following output, again abbreviated for display:
<<SingleLetterAlphabet() alignment with 5 rows and 6 columns
  AAACCA Alpha
  AAACCC Beta
  ACCCCA Gamma
  CCCAAC Delta
  CCCAAA Epsilon
  
  SingleLetterAlphabet() alignment with 5 rows and 6 columns
  AAACAA Alpha
  AAACCC Beta
  ACCCAA Gamma
  CCCACC Delta
  CCCAAA Epsilon
  
  SingleLetterAlphabet() alignment with 5 rows and 6 columns
  AAAAAC Alpha
  AAACCC Beta
  AACAAC Gamma
  CCCCCA Delta
  CCCAAC Epsilon
  
  ...
  
  SingleLetterAlphabet() alignment with 5 rows and 6 columns
  AAAACC Alpha
  ACCCCC Beta
  AAAACC Gamma
  CCCCAA Delta
  CAAACC Epsilon
>>
  
  As with the function 'Bio.SeqIO.parse()', using 'Bio.AlignIO.parse()'
returns an iterator. If you want to keep all the alignments in memory at
once, which will allow you to access them in any order, then turn the
iterator into a list:
<<from Bio import AlignIO
  alignments = list(AlignIO.parse(open("resampled.phy"), "phylip"))
  last_align = alignments[-1]
  first_align = alignments[0]
>>
  
  

5.1.3  Ambiguous Alignments
===========================
    Many alignment file formats can explicitly store more than one
alignment, and the division between each alignment is clear. However,
when a general sequence file format has been used there is no such block
structure. The most common such situation is when alignments have been
saved in the FASTA file format. For example consider the following:
<<>Alpha
  ACTACGACTAGCTCAG--G
  >Beta
  ACTACCGCTAGCTCAGAAG
  >Gamma
  ACTACGGCTAGCACAGAAG
  >Alpha
  ACTACGACTAGCTCAGG--
  >Beta
  ACTACCGCTAGCTCAGAAG
  >Gamma
  ACTACGGCTAGCACAGAAG
>>
  
  This could be a single alignment containing six sequences (with
repeated identifiers). Or, judging from the identifiers, this is
probably two different alignments each with three sequences, which
happen to all have the same length.
  What about this next example?
<<>Alpha
  ACTACGACTAGCTCAG--G
  >Beta
  ACTACCGCTAGCTCAGAAG
  >Alpha
  ACTACGACTAGCTCAGG--
  >Gamma
  ACTACGGCTAGCACAGAAG
  >Alpha
  ACTACGACTAGCTCAGG--
  >Delta
  ACTACGGCTAGCACAGAAG
>>
  
  Again, this could be a single alignment with six sequences. However
this time based on the identifiers we might guess this is three pairwise
alignments which by chance have all got the same lengths.
  This final example is similar:
<<>Alpha
  ACTACGACTAGCTCAG--G
  >XXX
  ACTACCGCTAGCTCAGAAG
  >Alpha
  ACTACGACTAGCTCAGG
  >YYY
  ACTACGGCAAGCACAGG
  >Alpha
  --ACTACGAC--TAGCTCAGG
  >ZZZ
  GGACTACGACAATAGCTCAGG
>>
  
  In this third example, because of the differing lengths, this cannot
be treated as a single alignment containing all six records. However, it
could be three pairwise alignments.
  Clearly trying to store more than one alignment in a FASTA file is not
ideal. However, if you are forced to deal with these as input files
'Bio.AlignIO' can cope with the most common situation where all the
alignments have the same number of records. One example of this is a
collection of pairwise alignments, which can be produced by the EMBOSS
tools 'needle' and 'water' -- although in this situation, 'Bio.AlignIO'
should be able to understand their native output using "emboss" as the
format string.
  To interpret these FASTA examples as several separate alignments, we
can use 'Bio.AlignIO.parse()' with the optional 'seq_count' argument
which specifies how many sequences are expected in each alignment (in
these examples, 3, 2 and 2 respectively). For example, using the third
example as the input data:
<<for alignment in AlignIO.parse(handle, "fasta", seq_count=2) :
      print "Alignment length %i" % alignment.get_alignment_length()
      for record in alignment :
          print "%s - %s" % (record.seq, record.id)
      print
>>
  
  giving:
<<Alignment length 19
  ACTACGACTAGCTCAG--G - Alpha
  ACTACCGCTAGCTCAGAAG - XXX
  
  Alignment length 17
  ACTACGACTAGCTCAGG - Alpha
  ACTACGGCAAGCACAGG - YYY
  
  Alignment length 21
  --ACTACGAC--TAGCTCAGG - Alpha
  GGACTACGACAATAGCTCAGG - ZZZ
>>
  
  Using 'Bio.AlignIO.read()' or 'Bio.AlignIO.parse()' without the
'seq_count' argument would give a single alignment containing all six
records for the first two examples. For the third example, an exception
would be raised because the lengths differ preventing them being turned
into a single alignment.
  If the file format itself has a block structure allowing 'Bio.AlignIO'
to determine the number of sequences in each alignment directly, then
the 'seq_count' argument is not needed. If it is supplied, and doesn't
agree with the file contents, an error is raised.
  Note that this optional 'seq_count' argument assumes each alignment in
the file has the same number of sequences. Hypothetically you may come
across stranger situations, for example a FASTA file containing several
alignments each with a different number of sequences -- although I would
love to hear of a real world example of this. Assuming you cannot get
the data in a nicer file format, there is no straight forward way to
deal with this using 'Bio.AlignIO'. In this case, you could consider
reading in the sequences themselves using 'Bio.SeqIO' and batching them
together to create the alignments as appropriate.
  

5.2  Writing Alignments
*=*=*=*=*=*=*=*=*=*=*=*

  
  We've talked about using 'Bio.AlignIO.read()' and
'Bio.AlignIO.parse()' for alignment input (reading files), and now we'll
look at 'Bio.AlignIO.write()' which is for alignment output (writing
files). This is a function taking three arguments: some 'Alignment'
objects, a handle to write to, and a sequence format.
  Here is an example, where we start by creating a few 'Alignment'
objects the hard way (by hand, rather than by loading them from a file):
<<from Bio.Align.Generic import Alignment
  from Bio.Alphabet import IUPAC, Gapped
  alphabet = Gapped(IUPAC.unambiguous_dna)
  
  align1 = Alignment(alphabet)
  align1.add_sequence("Alpha", "ACTGCTAGCTAG")
  align1.add_sequence("Beta",  "ACT-CTAGCTAG")
  align1.add_sequence("Gamma", "ACTGCTAGDTAG")
  
  align2 = Alignment(alphabet)
  align2.add_sequence("Delta",  "GTCAGC-AG")
  align2.add_sequence("Epislon","GACAGCTAG")
  align2.add_sequence("Zeta",   "GTCAGCTAG")
  
  align3 = Alignment(alphabet)
  align3.add_sequence("Eta",   "ACTAGTACAGCTG")
  align3.add_sequence("Theta", "ACTAGTACAGCT-")
  align3.add_sequence("Iota",  "-CTACTACAGGTG")
  
  my_alignments = [align1, align2, align3]
>>
  
  Now we have a list of 'Alignment' objects, we'll write them to a
PHYLIP format file:
<<from Bio import AlignIO
  handle = open("my_example.phy", "w")
  SeqIO.write(my_alignments, handle, "phylip")
  handle.close()
>>
  
  And if you open this file in your favourite text editor it should look
like this:
<< 3 12
  Alpha      ACTGCTAGCT AG
  Beta       ACT-CTAGCT AG
  Gamma      ACTGCTAGDT AG
   3 9
  Delta      GTCAGC-AG
  Epislon    GACAGCTAG
  Zeta       GTCAGCTAG
   3 13
  Eta        ACTAGTACAG CTG
  Theta      ACTAGTACAG CT-
  Iota       -CTACTACAG GTG
>>
  
  Its more common to want to load an existing alignment, and save that,
perhaps after some simple manipulation like removing certain rows or
columns.
  Suppose you wanted to know how many alignments the
'Bio.AlignIO.write()' function wrote to the handle? If your alignments
were in a list like the example above, you could just use
'len(my_alignments)', however you can't do that when your records come
from a generator/iterator. Therefore as of Biopython 1.49, the
'Bio.AlignIO.write()' function returns the number of alignments written
to the file. 
  

5.2.1  Converting between sequence alignment file formats
=========================================================
   
  Converting between sequence alignment file formats with 'Bio.AlignIO'
works in the same way as converting between sequence file formats with
'Bio.SeqIO' -- we load generally the alignment(s) using
'Bio.AlignIO.parse()' and then save them using the
'Bio.AlignIO.write()'.
  For this example, we'll load the PFAM/Stockholm format file used
earlier and save it as a Clustal W format file:
<<from Bio import AlignIO
  alignments = AlignIO.parse(open("PF05371_seed.sth"), "stockholm")
  handle = open("PF05371_seed.aln","w")
  AlignIO.write(alignments, handle, "clustal")
  handle.close()
>>
  
  The 'Bio.AlignIO.write()' function expects to be given multiple
alignment objects. In the example above we gave it the alignment
iterator returned by 'Bio.AlignIO.parse()'.
  In this case, we know there is only one alignment in the file so we
could have used 'Bio.AlignIO.read()' instead, but notice we have to pass
this alignment to 'Bio.AlignIO.write()' as a single element list:
<<from Bio import AlignIO
  alignment = AlignIO.read(open("PF05371_seed.sth"), "stockholm")
  handle = open("PF05371_seed.aln","w")
  AlignIO.write([alignment], handle, "clustal")
  handle.close()
>>
  
  Either way, you should end up with the same new Clustal W format file
"PF05371_seed.aln" with the following content:
<<CLUSTAL X (1.81) multiple sequence alignment
  
  
  COATB_BPIKE/30-81                  
AEPNAATNYATEAMDSLKTQAIDLISQTWPVVTTVVVAGLVIRLFKKFSS
  Q9T0Q8_BPIKE/1-52                  
AEPNAATNYATEAMDSLKTQAIDLISQTWPVVTTVVVAGLVIKLFKKFVS
  COATB_BPI22/32-83                  
DGTSTATSYATEAMNSLKTQATDLIDQTWPVVTSVAVAGLAIRLFKKFSS
  COATB_BPM13/24-72                  
AEGDDP---AKAAFNSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFTS
  COATB_BPZJ2/1-49                   
AEGDDP---AKAAFDSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFAS
  Q9T0Q9_BPFD/1-49                   
AEGDDP---AKAAFDSLQASATEYIGYAWAMVVVIVGATIGIKLFKKFTS
  COATB_BPIF1/22-73                  
FAADDATSQAKAAFDSLTAQATEMSGYAWALVVLVVGATVGIKLFKKFVS
  
  COATB_BPIKE/30-81                   KA
  Q9T0Q8_BPIKE/1-52                   RA
  COATB_BPI22/32-83                   KA
  COATB_BPM13/24-72                   KA
  COATB_BPZJ2/1-49                    KA
  Q9T0Q9_BPFD/1-49                    KA
  COATB_BPIF1/22-73                   RA
>>
  
  Alternatively, you could make a PHYLIP format file which we'll name
"PF05371_seed.phy":
<<from Bio import AlignIO
  alignment = AlignIO.read(open("PF05371_seed.sth"), "stockholm")
  handle = open("PF05371_seed.phy","w")
  AlignIO.write([alignment], handle, "phylip")
  handle.close()
>>
  
  This time the output looks like this:
<< 7 52
  COATB_BPIK AEPNAATNYA TEAMDSLKTQ AIDLISQTWP VVTTVVVAGL VIRLFKKFSS
  Q9T0Q8_BPI AEPNAATNYA TEAMDSLKTQ AIDLISQTWP VVTTVVVAGL VIKLFKKFVS
  COATB_BPI2 DGTSTATSYA TEAMNSLKTQ ATDLIDQTWP VVTSVAVAGL AIRLFKKFSS
  COATB_BPM1 AEGDDP---A KAAFNSLQAS ATEYIGYAWA MVVVIVGATI GIKLFKKFTS
  COATB_BPZJ AEGDDP---A KAAFDSLQAS ATEYIGYAWA MVVVIVGATI GIKLFKKFAS
  Q9T0Q9_BPF AEGDDP---A KAAFDSLQAS ATEYIGYAWA MVVVIVGATI GIKLFKKFTS
  COATB_BPIF FAADDATSQA KAAFDSLTAQ ATEMSGYAWA LVVLVVGATV GIKLFKKFVS
  
             KA
             RA
             KA
             KA
             KA
             KA
             RA
>>
  
  One of the big handicaps of the PHYLIP alignment file format is that
the sequence identifiers are strictly truncated at ten characters. In
this example, as you can see the resulting names are still unique - but
they are not very readable. In this particular case, there is no clear
way to compress the identifers, but for the sake of argument you may
want to assign your own names or numbering system. This following bit of
code manipulates the record identifiers before saving the output:
<<from Bio import AlignIO
  alignment = AlignIO.read(open("PF05371_seed.sth"), "stockholm")
  name_mapping = {}
  for i, record in enumerate(alignment) :
      name_mapping[i] = record.id
      record.id = "seq%i" % i
  print name_mapping
  
  handle = open("PF05371_seed.phy","w")
  AlignIO.write([alignment], handle, "phylip")
  handle.close()
>>
  
  This code used a python dictionary to record a simple mapping from the
new sequence system to the original identifier: 
<<{0: 'COATB_BPIKE/30-81', 1: 'Q9T0Q8_BPIKE/1-52', 2:
'COATB_BPI22/32-83', ...}
>>
  
  Here is the new PHYLIP format output: 
<< 7 52
  seq0       AEPNAATNYA TEAMDSLKTQ AIDLISQTWP VVTTVVVAGL VIRLFKKFSS
  seq1       AEPNAATNYA TEAMDSLKTQ AIDLISQTWP VVTTVVVAGL VIKLFKKFVS
  seq2       DGTSTATSYA TEAMNSLKTQ ATDLIDQTWP VVTSVAVAGL AIRLFKKFSS
  seq3       AEGDDP---A KAAFNSLQAS ATEYIGYAWA MVVVIVGATI GIKLFKKFTS
  seq4       AEGDDP---A KAAFDSLQAS ATEYIGYAWA MVVVIVGATI GIKLFKKFAS
  seq5       AEGDDP---A KAAFDSLQAS ATEYIGYAWA MVVVIVGATI GIKLFKKFTS
  seq6       FAADDATSQA KAAFDSLTAQ ATEMSGYAWA LVVLVVGATV GIKLFKKFVS
  
             KA
             RA
             KA
             KA
             KA
             KA
             RA
>>
  
  In general, because of the identifier limitation, working with PHYLIP
file formats shouldn't be your first choice. Using the PFAM/Stockholm
format on the other hand allows you to record a lot of additional
annotation too.
  

5.2.2  Getting your Alignment objects as formatted strings
==========================================================
    The 'Bio.AlignIO' interface is based on handles, which means if you
want to get your alignment(s) into a string in a particular file format
you need to do a little bit more work (see below).  However, you will
probably prefer to take advantage of the new 'format()' method added to
the 'Alignment' object in Biopython 1.48. This takes a single mandatory
argument, a lower case string which is supported by 'Bio.AlignIO' as an
output format. For example:
<<from Bio import AlignIO
  alignment = AlignIO.read(open("PF05371_seed.sth"), "stockholm")
  print alignment.format("clustal")
>>
  
  As described in Section 4.4.3, the 'SeqRecord' object has a similar
method using output formats supported by 'Bio.SeqIO'.
  Internally the 'format()' method is using the 'StringIO' string based
handle and calling 'Bio.AlignIO.write()'. You can do this in your own
code if for example you are using an older version of Biopython:
<<from Bio import AlignIO
  from StringIO import StringIO
  
  alignments = AlignIO.parse(open("PF05371_seed.sth"), "stockholm")
  
  out_handle = StringIO()
  AlignIO.write(alignments, out_handle, "clustal")
  clustal_data = out_handle.getvalue()
  
  print clustal_data
>>
  
-----------------------------------
  
  
 (1) http://biopython.org/DIST/docs/api/Bio.AlignIO-module.html
  

Chapter 6    BLAST
******************
    Hey, everybody loves BLAST right? I mean, geez, how can get it get
any easier to do comparisons between one of your sequences and every
other sequence in the known world? But, of course, this section isn't
about how cool BLAST is, since we already know that. It is about the
problem with BLAST -- it can be really difficult to deal with the volume
of data generated by large runs, and to automate BLAST runs in general.
  Fortunately, the Biopython folks know this only too well, so they've
developed lots of tools for dealing with BLAST and making things much
easier. This section details how to use these tools and do useful things
with them.
  Dealing with BLAST can be split up into two steps, both of which can
be done from within Biopython. Firstly, running BLAST for your query
sequence(s), and getting some output. Secondly, parsing the BLAST output
in python for further analysis. We'll start by talking about running the
BLAST command line tools locally, and then discuss running BLAST via the
web.
  

6.1  Running BLAST locally
*=*=*=*=*=*=*=*=*=*=*=*=*=

   
  Running BLAST locally (as opposed to over the internet, see
Section 6.2) has two advantages: 
  
   - Local BLAST may be faster than BLAST over the internet; 
   - Local BLAST allows you to make your own database to search for
   sequences against. 
   Dealing with proprietary or unpublished sequence data can be another
reason to run BLAST locally. You may not be allowed to redistribute the
sequences, so submitting them to the NCBI as a BLAST query would not be
an option.
  Biopython provides lots of nice code to enable you to call local BLAST
executables from your scripts, and have full access to the many command
line options that these executables provide. You can obtain local BLAST
precompiled for a number of platforms at
ftp://ftp.ncbi.nlm.nih.gov/blast/executables/, or can compile it
yourself in the NCBI toolbox (ftp://ftp.ncbi.nlm.nih.gov/toolbox/).
  The code for calling local "standalone" BLAST is found in
'Bio.Blast.NCBIStandalone', specifically the functions 'blastall',
'blastpgp' and 'rpsblast', which correspond with the BLAST executables
that their names imply.
  Let's use these functions to run 'blastall' against a local database
and return the results. First, we want to set up the paths to everything
that we'll need to do the BLAST. What we need to know is the path to the
database (which should have been prepared using 'formatdb', see
ftp://ftp.ncbi.nlm.nih.gov/blast/documents/formatdb.html) to search
against, the path to the file we want to search, and the path to the
'blastall' executable.
  On Linux or Mac OS X your paths might look like this:
<<>>> my_blast_db = "/home/mdehoon/Data/Genomes/Databases/bsubtilis"
  # I used formatdb to create a BLAST database named bsubtilis
  # (for Bacillus subtilis) consisting of the following three files:
  # /home/mdehoon/Data/Genomes/Databases/bsubtilis.nhr
  # /home/mdehoon/Data/Genomes/Databases/bsubtilis.nin
  # /home/mdehoon/Data/Genomes/Databases/bsubtilis.nsq
  
  >>> my_blast_file = "m_cold.fasta"
  # A FASTA file with the sequence I want to BLAST
  
  >>> my_blast_exe = "/usr/local/blast/bin/blastall"
  # The name of my BLAST executable
>>
  
  while on Windows you might have something like this:
<<>>> my_blast_db = r"C:\Blast\Data\bsubtilis"
  # Assuming you used formatdb to create a BLAST database named
bsubtilis
  # (for Bacillus subtilis) consisting of the following three files:
  # C:\Blast\Data\bsubtilis\bsubtilis.nhr
  # C:\Blast\Data\bsubtilis\bsubtilis.nin
  # C:\Blast\Data\bsubtilis\bsubtilis.nsq
  >>> my_blast_file = "m_cold.fasta"
  >>> my_blast_exe =r"C:\Blast\bin\blastall.exe"
>>
  
  The FASTA file used in this example is available here (1) as well as
online (2).
  Now that we've got that all set, we are ready to run the BLAST and
collect the results. We can do this with two lines:
<<>>> from Bio.Blast import NCBIStandalone
  >>> result_handle, error_handle =
NCBIStandalone.blastall(my_blast_exe, "blastn",
                                                      my_blast_db,
my_blast_file)
>>
  
  Note that the Biopython interfaces to local blast programs returns two
values. The first is a handle to the blast output, which is ready to
either be saved or passed to a parser. The second is the possible error
output generated by the blast command. See Section 17.1 for more about
handles.
  The error info can be hard to deal with, because if you try to do a
'error_handle.read()' and there was no error info returned, then the
'read()' call will block and not return, locking your script. In my
opinion, the best way to deal with the error is only to print it out if
you are not getting 'result_handle' results to be parsed, but otherwise
to leave it alone.
  This command will generate BLAST output in XML format, as that is the
format expected by the XML parser, described in Section 6.4. For plain
text output, use the 'align_view="0"' keyword. To parse text output
instead of XML output, see Section 6.6 below. However, parsing text
output is not recommended, as the BLAST plain text output changes
frequently, breaking our parsers.
  If you are interested in saving your results to a file before parsing
them, see Section 6.3. To find out how to parse the BLAST results, go to
Section 6.4
  

6.2  Running BLAST over the Internet
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

   
  We use the function 'qblast()' in the 'Bio.Blast.NCBIWWW' module call
the online version of BLAST. This has three non-optional arguments: 
  
   - The first argument is the blast program to use for the search, as a
   lower case string. The options and descriptions of the programs are
   available at http://www.ncbi.nlm.nih.gov/BLAST/blast_program.html.
   Currently 'qblast' only works with blastn, blastp, blastx, tblast and
   tblastx. 
   - The second argument specifies the databases to search against.
   Again, the options for this are available on the NCBI web pages at
   http://www.ncbi.nlm.nih.gov/BLAST/blast_databases.html. 
   - The third argument is a string containing your query sequence. This
   can either be the sequence itself, the sequence in fasta format, or
   an identifier like a GI number. 
  
  The 'qblast' function also take a number of other option arguments
which are basically analogous to the different parameters you can set on
the BLAST web page. We'll just highlight a few of them here:
  
  
   - The 'qblast' function can return the BLAST results in various
   formats, which you can choose with the optional 'format_type'
   keyword: '"HTML"', '"Text"', '"ASN.1"', or '"XML"'. The default is
   '"XML"', as that is the format expected by the parser, described in
   section 6.4 below. 
   - The argument 'expect' sets the expectation or e-value threshold. 
  
  For more about the optional BLAST arguments, we refer you to the
NCBI's own documentation, or that built into Biopython:
<<>>> from Bio.Blast import NCBIWWW
  >>> help(NCBIWWW.qblast)
>>
  
  For example, if you have a nucleotide sequence you want to search
against the non-redundant database using BLASTN, and you know the GI
number of your query sequence, you can use:
<<>>> from Bio.Blast import NCBIWWW
  >>> result_handle = NCBIWWW.qblast("blastn", "nr", "8332116")
>>
  
  Alternatively, if we have our query sequence already in a FASTA
formatted file, we just need to open the file and read in this record as
a string, and use that as the query argument:
<<>>> from Bio.Blast import NCBIWWW
  >>> fasta_string = open("m_cold.fasta").read()
  >>> result_handle = NCBIWWW.qblast("blastn", "nr", fasta_string)
>>
  
  We could also have read in the FASTA file as a 'SeqRecord' and then
supplied just the sequence itself:
<<>>> from Bio.Blast import NCBIWWW
  >>> from Bio import SeqIO
  >>> record = SeqIO.read(open("m_cold.fasta"), format="fasta")
  >>> result_handle = NCBIWWW.qblast("blastn", "nr", record.seq)
>>
  
  Supplying just the sequence means that BLAST will assign an identifier
for your sequence automatically. You might prefer to use the 'SeqRecord'
object's format method to make a fasta string (which will include the
existing identifier):
<<>>> from Bio.Blast import NCBIWWW
  >>> from Bio import SeqIO
  >>> record = SeqIO.read(open("m_cold.fasta"), format="fasta")
  >>> result_handle = NCBIWWW.qblast("blastn", "nr",
record.format("fasta"))
>>
  
  This approach makes more sense if you have your sequence(s) in a
non-FASTA file format which you can extract using 'Bio.SeqIO' (see
Chapter 4).
  Whatever arguments you give the 'qblast()' function, you should get
back your results in a handle object (by default in XML format). The
next step would be to parse the XML output into python objects
representing the search results (Section 6.4), but you might want to
save a local copy of the output file first.
  

6.3  Saving BLAST output
*=*=*=*=*=*=*=*=*=*=*=*=

   
  Before parsing the results, it is often useful to save them into a
file so that you can use them later without having to go back and
re-blasting everything. I find this especially useful when debugging my
code that extracts info from the BLAST files, but it could also be
useful just for making backups of things you've done.
  If you don't want to save the BLAST output, you can skip to
section 6.4. If you do, read on.
  We need to be a bit careful since we can use 'result_handle.read()' to
read the BLAST output only once -- calling 'result_handle.read()' again
returns an empty string. First, we use 'read()' and store all of the
information from the handle into a string:
<<>>> blast_results = result_handle.read()
>>
  
  Next, we save this string in a file:
<<>>> save_file = open("my_blast.xml", "w")
  >>> save_file.write(blast_results)
  >>> save_file.close()
>>
  
  After doing this, the results are in the file 'my_blast.xml' and the
variable 'blast_results' contains the BLAST results in a string form.
However, the 'parse' function of the BLAST parser (described in 6.4)
takes a file-handle-like object, not a plain string. To get a handle,
there are two things you can do: 
  
   - Use the python standard library module 'cStringIO'. The following
   code will turn the plain string into a handle, which we can feed
   directly into the BLAST parser: 
   <<>>> import cStringIO
     >>> result_handle = cStringIO.StringIO(blast_results)
   >>
 
   - Open the saved file for reading. Duh. 
   <<>>> result_handle = open("my_blast.xml")
   >>
  
  Now that we've got the BLAST results back into a handle again, we are
ready to do something with them, so this leads us right into the parsing
section.
  

6.4  Parsing BLAST output
*=*=*=*=*=*=*=*=*=*=*=*=*

   
  As mentioned above, BLAST can generate output in various formats, such
as XML, HTML, and plain text. Originally, Biopython had a parser for
BLAST plain text and HTML output, as these were the only output formats
supported by BLAST. Unfortunately, the BLAST output in these formats
kept changing, each time breaking the Biopython parsers. As keeping up
with changes in BLAST became a hopeless endeavor, especially with users
running different BLAST versions, we now recommend to parse the output
in XML format, which can be generated by recent versions of BLAST. Not
only is the XML output more stable than the plain text and HTML output,
it is also much easier to parse automatically, making Biopython a whole
lot more stable.
  Though deprecated, the parsers for BLAST output in plain text or HTML
output are still available in Biopython (see Section 6.6). Use them at
your own risk: they may or may not work, depending on which BLAST
version you're using.
  You can get BLAST output in XML format in various ways. For the
parser, it doesn't matter how the output was generated, as long as it is
in the XML format. 
  
   - You can use Biopython to run BLAST locally, as described in
   section 6.1. 
   - You can use Biopython to run BLAST over the internet, as described
   in section 6.2. 
   - You can do the BLAST search yourself on the NCBI site through your
   web browser, and then save the results. You need to choose XML as the
   format in which to receive the results, and save the final BLAST page
   you get (you know, the one with all of the interesting results!) to a
   file. 
   - You can also run BLAST locally without using Biopython, and save
   the output in a file. Again, you need to choose XML as the format in
   which to receive the results. 
   The important point is that you do not have to use Biopython scripts
to fetch the data in order to be able to parse it.
  Doing things in one of these ways, you then need to get a handle to
the results. In python, a handle is just a nice general way of
describing input to any info source so that the info can be retrieved
using 'read()' and 'readline()' functions. This is the type of input the
BLAST parser (and most other Biopython parsers) take.
  If you followed the code above for interacting with BLAST through a
script, then you already have 'result_handle', the handle to the BLAST
results. For example, using a GI number to do an online search:
<<>>> from Bio.Blast import NCBIWWW
  >>> result_handle = NCBIWWW.qblast("blastn", "nr", "8332116")
>>
  
  If instead you ran BLAST some other way, and have the BLAST output (in
XML format) in the file 'my_blast.xml', all you need to do is to open
the file for reading:
<<>>> result_handle = open("my_blast.xml")
>>
  
  Now that we've got a handle, we are ready to parse the output. The
code to parse it is really quite small. If you expect a single BLAST
result (i.e. you used a single query):
<<>>> from Bio.Blast import NCBIXML
  >>> blast_record = NCBIXML.read(result_handle)
>>
  
  or, if you have lots of results (i.e. multiple query sequences):
<<>>> from Bio.Blast import NCBIXML
  >>> blast_records = NCBIXML.parse(result_handle)
>>
  
  Just like 'Bio.SeqIO' and 'Bio.AlignIO' (see Chapters 4 and 5), we
have a pair of input functions, 'read' and 'parse', where 'read' is for
when you have exactly one object, and 'parse' is an iterator for when
you can have lots of objects -- but instead of getting 'SeqRecord' or
'Alignment' objects, we get BLAST record objects.
  To be able to handle the situation where the BLAST file may be huge,
containing thousands of results, 'NCBIXML.parse()' returns an iterator.
In plain English, an iterator allows you to step through the BLAST
output, retrieving BLAST records one by one for each BLAST search
result:
<<>>> from Bio.Blast import NCBIXML
  >>> blast_records = NCBIXML.parse(result_handle)
  >>> blast_record = blast_records.next()
  # ... do something with blast_record
  >>> blast_record = blast_records.next()
  # ... do something with blast_record
  >>> blast_record = blast_records.next()
  # ... do something with blast_record
  >>> blast_record = blast_records.next()
  Traceback (most recent call last):
    File "<stdin>", line 1, in <module>
  StopIteration
  # No further records
>>
  
  Or, you can use a 'for'-loop: 
<<>>> for blast_record in blast_records:
  ...     # Do something with blast_record
>>
  
  Note though that you can step through the BLAST records only once.
Usually, from each BLAST record you would save the information that you
are interested in. If you want to save all returned BLAST records, you
can convert the iterator into a list: 
<<>>> blast_records = list(blast_records)
>>
  Now you can access each BLAST record in the list with an index as
usual. If your BLAST file is huge though, you may run into memory
problems trying to save them all in a list.
  Usually, you'll be running one BLAST search at a time. Then, all you
need to do is to pick up the first (and only) BLAST record in
'blast_records': 
<<>>> from Bio.Blast import NCBIXML
  >>> blast_records = NCBIXML.parse(result_handle)
  >>> blast_record = blast_records.next()
>>
  or more elegantly: 
<<>>> from Bio.Blast import NCBIXML
  >>> blast_record = NCBIXML.read(result_handle)
>>
  
  I guess by now you're wondering what is in a BLAST record.
  

6.5  The BLAST record class
*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  A BLAST Record contains everything you might ever want to extract from
the BLAST output. Right now we'll just show an example of how to get
some info out of the BLAST report, but if you want something in
particular that is not described here, look at the info on the record
class in detail, and take a gander into the code or automatically
generated documentation -- the docstrings have lots of good info about
what is stored in each piece of information.
  To continue with our example, let's just print out some summary info
about all hits in our blast report greater than a particular threshold.
The following code does this:
<<>>> E_VALUE_THRESH = 0.04
  
  >>> for alignment in blast_record.alignments:
  ...     for hsp in alignment.hsps:
  ...         if hsp.expect < E_VALUE_THRESH:
  ...             print '****Alignment****'
  ...             print 'sequence:', alignment.title
  ...             print 'length:', alignment.length
  ...             print 'e value:', hsp.expect
  ...             print hsp.query[0:75] + '...'
  ...             print hsp.match[0:75] + '...'
  ...             print hsp.sbjct[0:75] + '...'
>>
  
  This will print out summary reports like the following:
<<****Alignment****
  sequence: >gb|AF283004.1|AF283004 Arabidopsis thaliana cold
acclimation protein WCOR413-like protein
  alpha form mRNA, complete cds
  length: 783
  e value: 0.034
  tacttgttgatattggatcgaacaaactggagaaccaacatgctcacgtcacttttagtcccttacatat
tcctc...
  ||||||||| | ||||||||||| || ||||  || || |||||||| |||||| |  | ||||||||
||| ||...
  tacttgttggtgttggatcgaaccaattggaagacgaatatgctcacatcacttctcattccttacatct
tcttc...
>>
  
  Basically, you can do anything you want to with the info in the BLAST
report once you have parsed it. This will, of course, depend on what you
want to use it for, but hopefully this helps you get started on doing
what you need to do!
  An important consideration for extracting information from a BLAST
report is the type of objects that the information is stored in. In
Biopython, the parsers return 'Record' objects, either 'Blast' or
'PSIBlast' depending on what you are parsing. These objects are defined
in 'Bio.Blast.Record' and are quite complete.
  Here are my attempts at UML class diagrams for the 'Blast' and
'PSIBlast' record classes. If you are good at UML and see
mistakes/improvements that can be made, please let me know. The Blast
class diagram is shown in Figure 6.5.
    *images/BlastRecord.png* 
  
  The PSIBlast record object is similar, but has support for the rounds
that are used in the iteration steps of PSIBlast. The class diagram for
PSIBlast is shown in Figure 6.5.
    *images/PSIBlastRecord.png* 
  
  

6.6  Deprecated BLAST parsers
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

   
  Older versions of Biopython had parsers for BLAST output in plain text
or HTML format. Over the years, we discovered that it is very hard to
maintain these parsers in working order. Basically, any small change to
the BLAST output in newly released BLAST versions tends to cause the
plain text and HTML parsers to break. We therefore recommend parsing
BLAST output in XML format, as described in section 6.4.
  The HTML parser in 'Bio.Blast.NCBIWWW' has been officially deprecated
and will issue warnings if you try and use it. We plan to remove this
completely in a few releases time.
  Our plain text BLAST parser works a bit better, but use it at your own
risk. It may or may not work, depending on which BLAST versions or
programs you're using.
  

6.6.1  Parsing plain-text BLAST output
======================================
  
  The plain text BLAST parser is located in 'Bio.Blast.NCBIStandalone'.
  As with the XML parser, we need to have a handle object that we can
pass to the parser. The handle must implement the 'readline()' method
and do this properly. The common ways to get such a handle are to either
use the provided 'blastall' or 'blastpgp' functions to run the local
blast, or to run a local blast via the command line, and then do
something like the following:
<<>>> result_handle = open("my_file_of_blast_output.txt")
>>
  
  Well, now that we've got a handle (which we'll call 'result_handle'),
we are ready to parse it. This can be done with the following code:
<<>>> from Bio.Blast import NCBIStandalone
  >>> blast_parser = NCBIStandalone.BlastParser()
  >>> blast_record = blast_parser.parse(result_handle)
>>
  
  This will parse the BLAST report into a Blast Record class (either a
Blast or a PSIBlast record, depending on what you are parsing) so that
you can extract the information from it. In our case, let's just use
print out a quick summary of all of the alignments greater than some
threshold value.
<<>>> E_VALUE_THRESH = 0.04
  >>> for alignment in blast_record.alignments:
  ...     for hsp in alignment.hsps:
  ...         if hsp.expect < E_VALUE_THRESH:
  ...             print '****Alignment****'
  ...             print 'sequence:', alignment.title
  ...             print 'length:', alignment.length
  ...             print 'e value:', hsp.expect
  ...             print hsp.query[0:75] + '...'
  ...             print hsp.match[0:75] + '...'
  ...             print hsp.sbjct[0:75] + '...'
>>
  
  If you also read the section 6.4 on parsing BLAST XML output, you'll
notice that the above code is identical to what is found in that
section. Once you parse something into a record class you can deal with
it independent of the format of the original BLAST info you were
parsing. Pretty snazzy!
  Sure, parsing one record is great, but I've got a BLAST file with tons
of records -- how can I parse them all? Well, fear not, the answer lies
in the very next section.
  

6.6.2  Parsing a file full of BLAST runs
========================================
  
  Of course, local blast is cool because you can run a whole bunch of
sequences against a database and get back a nice report on all of it.
So, Biopython definitely has facilities to make it easy to parse
humongous files without memory problems.
  We can do this using the blast iterator. To set up an iterator, we
first set up a parser, to parse our blast reports in Blast Record
objects:
<<>>> from Bio.Blast import NCBIStandalone
  >>> blast_parser = NCBIStandalone.BlastParser()
>>
  
  Then we will assume we have a handle to a bunch of blast records,
which we'll call 'result_handle'. Getting a handle is described in full
detail above in the blast parsing sections.
  Now that we've got a parser and a handle, we are ready to set up the
iterator with the following command:
<<>>> blast_iterator = NCBIStandalone.Iterator(result_handle,
blast_parser)
>>
  
  The second option, the parser, is optional. If we don't supply a
parser, then the iterator will just return the raw BLAST reports one at
a time.
  Now that we've got an iterator, we start retrieving blast records
(generated by our parser) using 'next()':
<<>>> blast_record = blast_iterator.next()
>>
  
  Each call to next will return a new record that we can deal with. Now
we can iterate through this records and generate our old favorite, a
nice little blast report:
<<>>> for blast_record in blast_iterator :
  ...     E_VALUE_THRESH = 0.04
  ...     for alignment in blast_record.alignments:
  ...         for hsp in alignment.hsps:
  ...             if hsp.expect < E_VALUE_THRESH:
  ...                 print '****Alignment****'
  ...                 print 'sequence:', alignment.title
  ...                 print 'length:', alignment.length
  ...                 print 'e value:', hsp.expect
  ...                 if len(hsp.query) > 75:
  ...                     dots = '...'
  ...                 else:
  ...                     dots = ''
  ...                 print hsp.query[0:75] + dots
  ...                 print hsp.match[0:75] + dots
  ...                 print hsp.sbjct[0:75] + dots
>>
  
  The iterator allows you to deal with huge blast records without any
memory problems, since things are read in one at a time. I have parsed
tremendously huge files without any problems using this.
  

6.6.3  Finding a bad record somewhere in a huge file
====================================================
  
  One really ugly problem that happens to me is that I'll be parsing a
huge blast file for a while, and the parser will bomb out with a
ValueError. This is a serious problem, since you can't tell if the
ValueError is due to a parser problem, or a problem with the BLAST. To
make it even worse, you have no idea where the parse failed, so you
can't just ignore the error, since this could be ignoring an important
data point.
  We used to have to make a little script to get around this problem,
but the 'Bio.Blast' module now includes a 'BlastErrorParser' which
really helps make this easier. The 'BlastErrorParser' works very similar
to the regular 'BlastParser', but it adds an extra layer of work by
catching ValueErrors that are generated by the parser, and attempting to
diagnose the errors.
  Let's take a look at using this parser -- first we define the file we
are going to parse and the file to write the problem reports to:
<<>>> import os
  >>> blast_file = os.path.join(os.getcwd(), "blast_out",
"big_blast.out")
  >>> error_file = os.path.join(os.getcwd(), "blast_out",
"big_blast.problems")
>>
  
  Now we want to get a 'BlastErrorParser':
<<>>> from Bio.Blast import NCBIStandalone
  >>> error_handle = open(error_file, "w")
  >>> blast_error_parser = NCBIStandalone.BlastErrorParser(error_handle)
>>
  
  Notice that the parser take an optional argument of a handle. If a
handle is passed, then the parser will write any blast records which
generate a ValueError to this handle. Otherwise, these records will not
be recorded.
  Now we can use the 'BlastErrorParser' just like a regular blast
parser. Specifically, we might want to make an iterator that goes
through our blast records one at a time and parses them with the error
parser:
<<>>> result_handle = open(blast_file)
  >>> iterator = NCBIStandalone.Iterator(result_handle,
blast_error_parser)
>>
  
  We can read these records one a time, but now we can catch and deal
with errors that are due to problems with Blast (and not with the parser
itself):
<<>>> try:
  ...     next_record = iterator.next()
  ... except NCBIStandalone.LowQualityBlastError, info:
  ...     print "LowQualityBlastError detected in id %s" % info[1]
>>
  
  The '.next()' method is normally called indirectly via a 'for'-loop.
Right now the 'BlastErrorParser' can generate the following errors:
  
  
   - 'ValueError' -- This is the same error generated by the regular
   BlastParser, and is due to the parser not being able to parse a
   specific file. This is normally either due to a bug in the parser, or
   some kind of discrepancy between the version of BLAST you are using
   and the versions the parser is able to handle.
 
   - 'LowQualityBlastError' -- When BLASTing a sequence that is of
   really bad quality (for example, a short sequence that is basically a
   stretch of one nucleotide), it seems that Blast ends up masking out
   the entire sequence and ending up with nothing to parse. In this case
   it will produce a truncated report that causes the parser to generate
   a ValueError. 'LowQualityBlastError' is reported in these cases. This
   error returns an info item with the following information: 
     
      - 'item[0]' -- The error message 
      - 'item[1]' -- The id of the input record that caused the error.
      This is really useful if you want to record all of the records
      that are causing problems. 
  
  
  As mentioned, with each error generated, the BlastErrorParser will
write the offending record to the specified 'error_handle'. You can then
go ahead and look and these and deal with them as you see fit. Either
you will be able to debug the parser with a single blast report, or will
find out problems in your blast runs. Either way, it will definitely be
a useful experience!
  Hopefully the 'BlastErrorParser' will make it much easier to debug and
deal with large Blast files.
  

6.7  Dealing with PSI-BLAST
*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  You can run the standalone verion of PSI-BLAST (the command line tool
'blastpgp') using the 'blastpgp' function in the
'Bio.Blast.NCBIStandalone' module. At the time of writing, the NCBI do
not appear to support tools running a PSI-BLAST search via the internet.
  Note that the 'Bio.Blast.NCBIXML' parser can read the XML output from
current versions of PSI-BLAST, but information like which sequences in
each iteration is new or reused isn't present in the XML file. If you
care about this information you may have more joy with the plain text
output and the 'PSIBlastParser' in 'Bio.Blast.NCBIStandalone'.
  

6.8  Dealing with RPS-BLAST
*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  You can run the standalone verion of RPS-BLAST (the command line tool
'rpsblast') using the 'rpsblast' function in the
'Bio.Blast.NCBIStandalone' module. At the time of writing, the NCBI do
not appear to support tools running an RPS-BLAST search via the
internet.
  You can use the 'Bio.Blast.NCBIXML' parser to read the XML output from
current versions of RPS-BLAST.
-----------------------------------
  
  
 (1) examples/m_cold.fasta
 
 (2) http://biopython.org/DIST/docs/tutorial/examples/m_cold.fasta
  

Chapter 7    Accessing NCBI's Entrez databases
**********************************************
   
  Entrez (http://www.ncbi.nlm.nih.gov/Entrez) is a data retrieval system
that provides users access to NCBI's databases such as PubMed, GenBank,
GEO, and many others. You can access Entrez from a web browser to
manually enter queries, or you can use Biopython's 'Bio.Entrez' module
for programmatic access to Entrez. The latter allows you for example to
search PubMed or download GenBank records from within a python script.
  The 'Bio.Entrez' module makes use of the Entrez Programming Utilities
(also known as EUtils), consisting of eight tools that are described in
detail on NCBI's page at http://www.ncbi.nlm.nih.gov/entrez/utils/. Each
of these tools corresponds to one python function in the 'Bio.Entrez'
module, as described in the sections below. This module makes sure that
the correct URL is used for the queries, and that not more than one
request is made every three seconds, as required by NCBI.
  The output returned by the Entrez Programming Utilities is typically
in XML format. To parse such output, you have several options: 
  
   1. Use 'Bio.Entrez''s parser to parse the XML output into a python
   object; 
   2. Use the DOM (Document Object Model) parser in python's standard
   library; 
   3. Use the SAX (Simple API for XML) parser in python's standard
   library; 
   4. Read the XML output as raw text, and parse it by string searching
   and manipulation. 
   For the DOM and SAX parsers, see the python documentation. The parser
in 'Bio.Entrez' is discussed below.
  NCBI uses DTD (Document Type Definition) files to describe the
structure of the information contained in XML files. Most of the DTD
files used by NCBI are included in the Biopython distribution. The
'Bio.Entrez' parser makes use of the DTD files when parsing an XML file
returned by NCBI Entrez.
  Occasionally, you may find that the DTD file associated with a
specific XML file is missing in the Biopython distribution. In
particular, this may happen when NCBI updates its DTD files. If this
happens, 'Entrez.read' will give an error message showing which DTD file
is missing. You can download the DTD file from NCBI; most can be found
at http://www.ncbi.nlm.nih.gov/dtd/ or
http://eutils.ncbi.nlm.nih.gov/entrez/query/DTD/. After downloading, the
DTD file should be stored in the directory
'...site-packages/Bio/Entrez/DTDs', containing the other DTD files.
Alternatively, if you installed Biopython from source, you can add the
DTD file to the source code's 'Bio/Entrez/DTDs' directory, and reinstall
Biopython. This will install the new DTD file in the correct location
together with the other DTD files.
  The Entrez Programming Utilities can also generate output in other
formats, such as the Fasta or GenBank file formats for sequence
databases, or the MedLine format for the literature database, discussed
in Section 7.10.
  

7.1  Entrez Guidelines
*=*=*=*=*=*=*=*=*=*=*=

    Before using Biopython to access the NCBI's online resources (via
'Bio.Entrez' or some of the other modules), please read the NCBI's
Entrez User Requirements (1). If the NCBI finds you are abusing their
systems, they can and will ban your access! 
  To paraphrase:
  
  
   - For any series of more than 100 requests, do this at weekends or
   outside USA peak times. This is up to you to obey. 
   - Use the http://eutils.ncbi.nlm.nih.gov address, not the standard
   NCBI Web address. Biopython uses this web address. 
   - Make no more than three requests every seconds (relaxed from at
   most one request every three seconds in early 2009). This is
   automatically enforced by Biopython. 
   - Use the optional email parameter so the NCBI can contact you if
   there is a problem. You can either explicitly set the email address
   as a parameter with each call to Entrez (e.g., include email =
   "A.N.Other@example.com" in the argument list), or as of Biopython
   1.48, you can set a global email address: 
   <<>>> from Bio import Entrez
     >>> Entrez.email = "A.N.Other@example.com"
   >>
 Bio.Entrez will then use this email address with each call to Entrez.
   The example.com address is a reserved domain name specifically for
   documentation (RFC 2606). Please DO NOT use a random email -- it's
   better not to give an email at all. 
   - If you are using Biopython within some larger software suite, use
   the tool parameter to specify this. The tool parameter will default
   to Biopython. 
   - For large queries, the NCBI also recommend using their session
   history feature (the WebEnv session cookie string, see Section 7.13).
   This is only slightly more complicated. 
  
  In conclusion, be sensible with your usage levels. If you plan to
download lots of data, consider other options. For example, if you want
easy access to all the human genes, consider fetching each chromosome by
FTP as a GenBank file, and importing these into your own BioSQL database
(see Section 13.5).
  

7.2  EInfo: Obtaining information about the Entrez databases
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  EInfo provides field index term counts, last update, and available
links for each of NCBI's databases. In addition, you can use EInfo to
obtain a list of all database names accessible through the Entrez
utilities: 
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.einfo()
  >>> result = handle.read()
>>
  The variable 'result' now contains a list of databases in XML format: 
<<>>> print result
  <?xml version="1.0"?>
  <!DOCTYPE eInfoResult PUBLIC "-//NLM//DTD eInfoResult, 11 May
2002//EN"
   "http://www.ncbi.nlm.nih.gov/entrez/query/DTD/eInfo_020511.dtd">
  <eInfoResult>
  <DbList>
          <DbName>pubmed</DbName>
          <DbName>protein</DbName>
          <DbName>nucleotide</DbName>
          <DbName>nuccore</DbName>
          <DbName>nucgss</DbName>
          <DbName>nucest</DbName>
          <DbName>structure</DbName>
          <DbName>genome</DbName>
          <DbName>books</DbName>
          <DbName>cancerchromosomes</DbName>
          <DbName>cdd</DbName>
          <DbName>gap</DbName>
          <DbName>domains</DbName>
          <DbName>gene</DbName>
          <DbName>genomeprj</DbName>
          <DbName>gensat</DbName>
          <DbName>geo</DbName>
          <DbName>gds</DbName>
          <DbName>homologene</DbName>
          <DbName>journals</DbName>
          <DbName>mesh</DbName>
          <DbName>ncbisearch</DbName>
          <DbName>nlmcatalog</DbName>
          <DbName>omia</DbName>
          <DbName>omim</DbName>
          <DbName>pmc</DbName>
          <DbName>popset</DbName>
          <DbName>probe</DbName>
          <DbName>proteinclusters</DbName>
          <DbName>pcassay</DbName>
          <DbName>pccompound</DbName>
          <DbName>pcsubstance</DbName>
          <DbName>snp</DbName>
          <DbName>taxonomy</DbName>
          <DbName>toolkit</DbName>
          <DbName>unigene</DbName>
          <DbName>unists</DbName>
  </DbList>
  </eInfoResult>
>>
  
  Since this is a fairly simple XML file, we could extract the
information it contains simply by string searching. Using 'Bio.Entrez''s
parser instead, we can directly parse this XML file into a python
object: 
<<>>> from Bio import Entrez
  >>> handle = Entrez.einfo()
  >>> record = Entrez.read(handle)
>>
  Now 'record' is a dictionary with exactly one key: 
<<>>> record.keys()
  [u'DbList']
>>
  The values stored in this key is the list of database names shown in
the XML above: 
<<>>> record["DbList"]
  ['pubmed', 'protein', 'nucleotide', 'nuccore', 'nucgss', 'nucest',
   'structure', 'genome', 'books', 'cancerchromosomes', 'cdd', 'gap',
   'domains', 'gene', 'genomeprj', 'gensat', 'geo', 'gds', 'homologene',
   'journals', 'mesh', 'ncbisearch', 'nlmcatalog', 'omia', 'omim',
'pmc',
   'popset', 'probe', 'proteinclusters', 'pcassay', 'pccompound',
   'pcsubstance', 'snp', 'taxonomy', 'toolkit', 'unigene', 'unists']
>>
  
  For each of these databases, we can use EInfo again to obtain more
information: 
<<>>> handle = Entrez.einfo(db="pubmed")
  >>> record = Entrez.read(handle)
  >>> record["DbInfo"]["Description"]
  'PubMed bibliographic record'
  >>> record["DbInfo"]["Count"]
  '17989604'
  >>> record["DbInfo"]["LastUpdate"]
  '2008/05/24 06:45'
>>
  Try 'record["DbInfo"].keys()' for other information stored in this
record.
  

7.3  ESearch: Searching the Entrez databases
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

    To search any of these databases, we use 'Bio.Entrez.esearch()'. For
example, let's search in PubMed for publications related to Biopython: 
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.esearch(db="pubmed", term="biopython")
  >>> record = Entrez.read(handle)
  >>> record["IdList"]
  ['16403221', '16377612', '14871861', '14630660', '12230038']
>>
  In this output, you see five PubMed IDs (16403221, 16377612, 14871861,
14630660, 12230038), which can be retrieved by EFetch (see section 7.6).
  You can also use ESearch to search GenBank. Here we'll do a quick
search for the matK gene in Cypripedioideae orchids:
<<>>> handle =
Entrez.esearch(db="nucleotide",term="Cypripedioideae[Orgn] AND
matK[Gene]")
  >>> record = Entrez.read(handle)
  >>> record["Count"]
  '25'
  >>> record["IdList"]
  ['186972394', '186972384', '186972382', '186972378', ..., '61585484']
>>
  Each of the IDs (186972394, 186972384, 186972382, ...) is a GenBank
identifier. See section 7.6 for information on how to actually download
these GenBank records.
  As a final example, let's get a list of computational journal titles: 
<<>>> handle = Entrez.esearch(db="journals", term="computational")
  >>> record = Entrez.read(handle)
  >>> record["Count"]
  '16'
  >>> record["IdList"]
  ['30367', '33843', '33823', '32989', '33190', '33009', '31986',
   '34502', '8799', '22857', '32675', '20258', '33859', '32534',
   '32357', '32249']
>>
  Again, we could use EFetch to obtain more information for each of
these journal IDs.
  ESearch has many useful options --- see the ESearch help page (2) for
more information.
  

7.4  EPost: Uploading a list of identifiers
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

   EPost uploads a list of UIs for use in subsequent search strategies;
see the EPost help page (3) for more information. It is available from
Biopython through the 'Bio.Entrez.epost()' function.
  To give an example of when this is useful, suppose you have a long
list of IDs you want to download using EFetch (maybe sequences, maybe
citations -- anything). When you make a request with EFetch your list of
IDs, the database etc, are all turned into a long URL sent to the
server. If your list of IDs is long, this URL gets long, and long URLs
can break (e.g. some proxies don't cope well).
  Instead, you can break this up into two steps, first uploading the
list of IDs using EPost (this uses an "HTML post" internally, rather
than an "HTML get", getting round the long URL problem). With the
history support, you can then refer to this long list of IDs, and
download the associated data with EFetch.
  Let's look at a simple example to see how EPost works -- uploading
some PubMed identifiers: 
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> id_list = ['18606172', '16403221', '16377612', '14871861',
'14630660']
  >>> print Entrez.epost("pubmed", id=",".join(id_list)).read()
  <?xml version="1.0"?>
  <!DOCTYPE ePostResult PUBLIC "-//NLM//DTD ePostResult, 11 May
2002//EN"
   "http://www.ncbi.nlm.nih.gov/entrez/query/DTD/ePost_020511.dtd">
  <ePostResult>
   <QueryKey>1</QueryKey>
   <WebEnv>06QtR6pVc1VZEbFZYgmSORUbB71DSx9I5N6bFCcW46LpYQ1Y...0002SID</W
ebEnv>
  </ePostResult>
>>
  The returned XML includes two important strings, 'QueryKey' and
'WebEnv' which together define your history session. You would extract
these values for use with another Entrez call such as EFetch: 
<<from Bio import Entrez
  Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who you
are
  id_list = ['18606172', '16403221', '16377612', '14871861', '14630660']
  search_results = Entrez.read(Entrez.epost("pubmed",
id=",".join(id_list)))
  webenv = search_results["WebEnv"]
  query_key = search_results["QueryKey"] 
>>
  Section 7.13 shows how to use the history feature.
  

7.5  ESummary: Retrieving summaries from primary IDs
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

   ESummary retrieves document summaries from a list of primary IDs (see
the ESummary help page (4) for more information). In Biopython, ESummary
is available as 'Bio.Entrez.esummary()'. Using the search result above,
we can for example find out more about the journal with ID 30367: 
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.esummary(db="journals", id="30367")
  >>> record = Entrez.read(handle)
  >>> record[0]["Id"]
  '30367'
  >>> record[0]["Title"]
  'Computational biology and chemistry'
  >>> record[0]["Publisher"]
  'Pergamon,'
>>
  
  

7.6  EFetch: Downloading full records from Entrez
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

   
  EFetch is what you use when you want to retrieve a full record from
Entrez. This covers several possible databases, as described on the main
EFetch Help page (5).
  From the Cypripedioideae example above, we can download GenBank record
186972394 using 'Bio.Entrez.efetch' (see the documentation on EFetch for
Sequence and other Molecular Biology Databases (6)):
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.efetch(db="nucleotide", id="186972394",
rettype="gb")
  >>> print handle.read()
  LOCUS       EU490707                1302 bp    DNA     linear   PLN
05-MAY-2008
  DEFINITION  Selenipedium aequinoctiale maturase K (matK) gene, partial
cds;
              chloroplast.
  ACCESSION   EU490707
  VERSION     EU490707.1  GI:186972394
  KEYWORDS    .
  SOURCE      chloroplast Selenipedium aequinoctiale
    ORGANISM  Selenipedium aequinoctiale
              Eukaryota; Viridiplantae; Streptophyta; Embryophyta;
Tracheophyta;
              Spermatophyta; Magnoliophyta; Liliopsida; Asparagales;
Orchidaceae;
              Cypripedioideae; Selenipedium.
  REFERENCE   1  (bases 1 to 1302)
    AUTHORS   Neubig,K.M., Whitten,W.M., Carlsward,B.S., Blanco,M.A.,
              Endara,C.L., Williams,N.H. and Moore,M.J.
    TITLE     Phylogenetic utility of ycf1 in orchids
    JOURNAL   Unpublished
  REFERENCE   2  (bases 1 to 1302)
    AUTHORS   Neubig,K.M., Whitten,W.M., Carlsward,B.S., Blanco,M.A.,
              Endara,C.L., Williams,N.H. and Moore,M.J.
    TITLE     Direct Submission
    JOURNAL   Submitted (14-FEB-2008) Department of Botany, University
of
              Florida, 220 Bartram Hall, Gainesville, FL 32611-8526, USA
  FEATURES             Location/Qualifiers
       source          1..1302
                       /organism="Selenipedium aequinoctiale"
                       /organelle="plastid:chloroplast"
                       /mol_type="genomic DNA"
                       /specimen_voucher="FLAS:Blanco 2475"
                       /db_xref="taxon:256374"
       gene            <1..>1302
                       /gene="matK"
       CDS             <1..>1302
                       /gene="matK"
                       /codon_start=1
                       /transl_table=11
                       /product="maturase K"
                       /protein_id="ACC99456.1"
                       /db_xref="GI:186972395"
                      
/translation="IFYEPVEIFGYDNKSSLVLVKRLITRMYQQNFLISSVNDSNQKG
                      
FWGHKHFFSSHFSSQMVSEGFGVILEIPFSSQLVSSLEEKKIPKYQNLRSIHSIFPFL
                      
EDKFLHLNYVSDLLIPHPIHLEILVQILQCRIKDVPSLHLLRLLFHEYHNLNSLITSK
                      
KFIYAFSKRKKRFLWLLYNSYVYECEYLFQFLRKQSSYLRSTSSGVFLERTHLYVKIE
                      
HLLVVCCNSFQRILCFLKDPFMHYVRYQGKAILASKGTLILMKKWKFHLVNFWQSYFH
                      
FWSQPYRIHIKQLSNYSFSFLGYFSSVLENHLVVRNQMLENSFIINLLTKKFDTIAPV
                      
ISLIGSLSKAQFCTVLGHPISKPIWTDFSDSDILDRFCRICRNLCRYHSGSSKKQVLY
                       RIKYILRLSCARTLARKHKSTVRTFMRRLGSGLLEEFFMEEE"
  ORIGIN      
          1 attttttacg aacctgtgga aatttttggt tatgacaata aatctagttt
agtacttgtg
         61 aaacgtttaa ttactcgaat gtatcaacag aattttttga tttcttcggt
taatgattct
        121 aaccaaaaag gattttgggg gcacaagcat tttttttctt ctcatttttc
ttctcaaatg
        181 gtatcagaag gttttggagt cattctggaa attccattct cgtcgcaatt
agtatcttct
        241 cttgaagaaa aaaaaatacc aaaatatcag aatttacgat ctattcattc
aatatttccc
        301 tttttagaag acaaattttt acatttgaat tatgtgtcag atctactaat
accccatccc
        361 atccatctgg aaatcttggt tcaaatcctt caatgccgga tcaaggatgt
tccttctttg
        421 catttattgc gattgctttt ccacgaatat cataatttga atagtctcat
tacttcaaag
        481 aaattcattt acgccttttc aaaaagaaag aaaagattcc tttggttact
atataattct
        541 tatgtatatg aatgcgaata tctattccag tttcttcgta aacagtcttc
ttatttacga
        601 tcaacatctt ctggagtctt tcttgagcga acacatttat atgtaaaaat
agaacatctt
        661 ctagtagtgt gttgtaattc ttttcagagg atcctatgct ttctcaagga
tcctttcatg
        721 cattatgttc gatatcaagg aaaagcaatt ctggcttcaa agggaactct
tattctgatg
        781 aagaaatgga aatttcatct tgtgaatttt tggcaatctt attttcactt
ttggtctcaa
        841 ccgtatagga ttcatataaa gcaattatcc aactattcct tctcttttct
ggggtatttt
        901 tcaagtgtac tagaaaatca tttggtagta agaaatcaaa tgctagagaa
ttcatttata
        961 ataaatcttc tgactaagaa attcgatacc atagccccag ttatttctct
tattggatca
       1021 ttgtcgaaag ctcaattttg tactgtattg ggtcatccta ttagtaaacc
gatctggacc
       1081 gatttctcgg attctgatat tcttgatcga ttttgccgga tatgtagaaa
tctttgtcgt
       1141 tatcacagcg gatcctcaaa aaaacaggtt ttgtatcgta taaaatatat
acttcgactt
       1201 tcgtgtgcta gaactttggc acggaaacat aaaagtacag tacgcacttt
tatgcgaaga
       1261 ttaggttcgg gattattaga agaattcttt atggaagaag aa
  //
>>
  
  The argument 'rettype="gb"' lets us download this record in the
GenBank format. Note that until Easter 2009, the Entrez EFetch API let
you use "genbank" as the return type, however the NCBI now insist on
using the official return types of "gb" (or "gp" for proteins) as
described on online. Alternatively, you could for example use
'rettype="fasta"' to get the Fasta-format; see the EFetch Sequences Help
page (7) for other options. The available formats depend on which
database you are downloading from - see the main EFetch Help page (8).
  If you fetch the record in one of the formats accepted by 'Bio.SeqIO'
(see Chapter 4), you could directly parse it into a 'SeqRecord':
<<>>> from Bio import Entrez, SeqIO
  >>> handle = Entrez.efetch(db="nucleotide",
id="186972394",rettype="gb")
  >>> record = SeqIO.read(handle, "genbank")
  >>> print record
  ID: EU490707.1
  Name: EU490707
  Description: Selenipedium aequinoctiale maturase K (matK) gene,
partial cds; chloroplast.
  Number of features: 3
  ...
  Seq('ATTTTTTACGAACCTGTGGAAATTTTTGGTTATGACAATAAATCTAGTTTAGTA...GAA',
IUPACAmbiguousDNA())>>
  
  Note that a more typical use would be to save the sequence data to a
local file, and then parse it with 'Bio.SeqIO'. This can save you having
to re-download the same file repeatedly while working on your script,
and in particular places less load on the NCBI's servers. For example:
<<import os
  from Bio import SeqIO
  from Bio import Entrez
  Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who you
are
  filename = "gi_186972394.gbk"
  if not os.path.isfile(filename) :
      print "Downloading..."
      net_handle =
Entrez.efetch(db="nucleotide",id="186972394",rettype="gb")
      out_handle = open(filename, "w")
      out_handle.write(net_handle.read())
      out_handle.close()
      net_handle.close()
      print "Saved"
  
  print "Parsing..."
  record = SeqIO.read(open(filename), "genbank")
  print record
>>
  
  To get the output in XML format, which you can parse using the
'Bio.Entrez.read()' function, use 'retmode="xml"':
<<>>> from Bio import Entrez
  >>> handle = Entrez.efetch(db="nucleotide", id="186972394",
retmode="xml")
  >>> record = Entrez.read(handle)
  >>> record[0]["GBSeq_definition"] 
  'Selenipedium aequinoctiale maturase K (matK) gene, partial cds;
chloroplast'
  >>> record[0]["GBSeq_source"] 
  'chloroplast Selenipedium aequinoctiale'
>>
  
  If you want to perform a search with 'Bio.Entrez.esearch()', and then
download the records with 'Bio.Entrez.efetch()', you should use the
WebEnv history feature -- see Section 7.13.
  

7.7  ELink: Searching for related items in NCBI Entrez
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  ELink, available from Biopython as 'Bio.Entrez.elink()', can be used
to find related items in the NCBI Entrez databases. For example, let's
try to find articles related to the one Harry Mangalam wrote in 2002
about the BioPerl, Biopython, and BioJava projects (Briefings in
Bioinformatics, 3(3): 296-302). The PubMed ID of this article is
12230038. Now we use 'Bio.Entrez.elink' to find all related items to
this article:
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"
  >>> pmid = "12230038"
  >>> handle = Entrez.elink(dbfrom='pubmed', id=pmid)
  >>> record = Entrez.read(handle)
>>
  
  The 'record' variable consists of a python list, one for each database
in which we searched. Since we specified only one PubMed ID to search
for, 'record' contains only one item. This item is a dictionary
containing information about our search term, as well as all the related
items that were found:
<<>>> record[0]['DbFrom']
  'pubmed'
  >>> record[0]['IdList']
  ['12230038']
>>
  
  The '"LinkSetDb"' key contains the search results, stored as a list
consisting of one item for each target database. In our search results,
we only find hits in the PubMed database:
<<>>> len(record[0]['LinkSetDb'])
  1
  >>> record[0]['LinkSetDb'][0]['DbTo']
  'pubmed'
>>
  
  The actual search results are stored as under the '"Link"' key. In
total, 134 items were found:
<<>>> len(record[0]['LinkSetDb'][0]['Link'])
  134
>>
  
  Let's now at the first search result: 
<<>>> record[0]['LinkSetDb'][0]['Link'][0]
  {u'Score': '2147483647', u'Id': '12230038'}
>>
  
  This is the article we searched for, which doesn't help us much, so
let's look at the second search result:
<<>>> record[0]['LinkSetDb'][0]['Link'][1]
  {u'Score': '36245843', u'Id': '17316423'}
>>
  
  This paper, with PubMed ID 17316423, is most closely related to the
paper by Harry Mangalam. If you look up this paper in PubMed, you'll see
that this is a paper published in BMC Bioinformatics about the Bioclipse
software project.
  We can use a loop to print out all PubMed IDs: 
<<>>> for link in record[0]["LinkSetDb"][0]['Link'] :
  ...     print link
  ...
  {u'Score': '2147483647', u'Id': '12230038'}
  {u'Score': '36245843', u'Id': '17316423'}
  {u'Score': '34527046', u'Id': '18174185'}
  {u'Score': '33170001', u'Id': '11928498'}
  {u'Score': '32284469', u'Id': '17441614'}
  {u'Score': '31719319', u'Id': '17291351'}
  {u'Score': '31123154', u'Id': '15572471'}
  {u'Score': '31002490', u'Id': '16539535'}
  {u'Score': '30946408', u'Id': '17384428'}
  ......
>>
  
  For help on ELink, see the ELink help page (9).
  

7.8  EGQuery: Obtaining counts for search terms
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

   EGQuery provides counts for a search term in each of the Entrez
databases. This is particularly useful to find out how many items your
search terms would find in each database without actually performing
lots of separate searches with ESearch (see the example in 7.12.2
below).
  In this example, we use 'Bio.Entrez.egquery()' to obtain the counts
for "Biopython":
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.egquery(term="biopython")
  >>> record = Entrez.read(handle)
  >>> for row in record["eGQueryResult"]: print row["DbName"],
row["Count"]
  ...
  pubmed 6
  pmc 62
  journals 0
  ...
>>
  See the EGQuery help page (10) for more information.
  

7.9  ESpell: Obtaining spelling suggestions
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

   ESpell retrieves spelling suggestions. In this example, we use
'Bio.Entrez.espell()' to obtain the correct spelling of Biopython:
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.espell(term="biopythooon")
  >>> record = Entrez.read(handle)
  >>> record["Query"]
  'biopythooon'
  >>> record["CorrectedQuery"]
  'biopython'
>>
  See the ESpell help page (11) for more information.
  

7.10  Specialized parsers
*=*=*=*=*=*=*=*=*=*=*=*=*

   
  The 'Bio.Entrez.read()' function can parse most (if not all) XML
output returned by Entrez. Entrez typically allows you to retrieve
records in other formats, which may have some advantages compared to the
XML format in terms of readability (or download size).
  To request a specific file format from Entrez using
'Bio.Entrez.efetch()' requires specifying the 'rettype' and/or 'retmode'
optional arguments. The different combinations are described for each
database type on the NCBI efetch webpage (12).
  One obvious case is you may prefer to download sequences in the FASTA
or GenBank/GenPept plain text formats (which can then be parsed with
'Bio.SeqIO', see Sections 4.2.1 and 7.6). For the literature databases,
Biopython contains a parser for the 'MEDLINE' format used in PubMed.
  

7.10.1  Parsing Medline records
===============================
    You can find the Medline parser in 'Bio.Medline'. Suppose we want to
parse the file 'pubmed_result1.txt', containing one Medline record. You
can find this file in Biopython's 'Tests\Medline' directory. The file
looks like this:
<<PMID- 12230038
  OWN - NLM
  STAT- MEDLINE
  DA  - 20020916
  DCOM- 20030606
  LR  - 20041117
  PUBM- Print
  IS  - 1467-5463 (Print)
  VI  - 3
  IP  - 3
  DP  - 2002 Sep
  TI  - The Bio* toolkits--a brief overview.
  PG  - 296-302
  AB  - Bioinformatics research is often difficult to do with commercial
software. The
        Open Source BioPerl, BioPython and Biojava projects provide
toolkits with
  ...
>>
  We first open the file and then parse it: 
<<>>> from Bio import Medline
  >>> input = open("pubmed_result1.txt")
  >>> record = Medline.read(input)
>>
  The 'record' now contains the Medline record as a python dictionary: 
<<>>> record["PMID"]
  '12230038'
  >>> record["AB"]
  'Bioinformatics research is often difficult to do with commercial
software.
  The Open Source BioPerl, BioPython and Biojava projects provide
toolkits with
  multiple functionality that make it easier to create customised
pipelines or
  analysis. This review briefly compares the quirks of the underlying
languages
  and the functionality, documentation, utility and relative advantages
of the
  Bio counterparts, particularly from the point of view of the beginning
  biologist programmer.'
>>
  The key names used in a Medline record can be rather obscure; use 
<<>>> help(record)
>>
  for a brief summary.
  To parse a file containing multiple Medline records, you can use the
'parse' function instead: 
<<>>> from Bio import Medline
  >>> input = open("pubmed_result2.txt")
  >>> records = Medline.parse(input)
  >>> for record in records:
  ...     print record["TI"]
  A high level interface to SCOP and ASTRAL implemented in python.
  GenomeDiagram: a python package for the visualization of large-scale
genomic data.
  Open source clustering software.
  PDB file parser and structure class implemented in Python.
>>
  
  Instead of parsing Medline records stored in files, you can also parse
Medline records downloaded by 'Bio.Entrez.efetch'. For example, let's
look at all Medline records in PubMed related to Biopython: 
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.esearch(db="pubmed",term="biopython")
  >>> record = Entrez.read(handle)
  >>> record["IdList"]
  ['18606172', '16403221', '16377612', '14871861', '14630660',
'12230038']
>>
  We now use 'Bio.Entrez.efetch' to download these Medline records: 
<<>>> idlist = record["IdList"]
  >>> handle =
Entrez.efetch(db="pubmed",id=idlist,rettype="medline",retmode="text")
>>
  Here, we specify 'rettype="medline", retmode="text"' to obtain the
Medline records in plain-text Medline format. Now we use 'Bio.Medline'
to parse these records: 
<<>>> from Bio import Medline
  >>> records = Medline.parse(handle)
  >>> for record in records:
  ...     print record["AU"]
  ['Munteanu CR', 'Gonzalez-Diaz H', 'Magalhaes AL']
  ['Casbon JA', 'Crooks GE', 'Saqi MA']
  ['Pritchard L', 'White JA', 'Birch PR', 'Toth IK']
  ['de Hoon MJ', 'Imoto S', 'Nolan J', 'Miyano S']
  ['Hamelryck T', 'Manderick B']
  ['Mangalam H']
>>
  
  For comparison, here we show an example using the XML format: 
<<>>> idlist = record["IdList"]
  >>> handle =
Entrez.efetch(db="pubmed",id=idlist,rettype="medline",retmode="xml")
  >>> records = Entrez.read(handle)
  >>> for record in records:
  ...     print record["MedlineCitation"]["Article"]["ArticleTitle"]
  Enzymes/non-enzymes classification model complexity based on
composition, sequence, 3D
   and topological indices.
  A high level interface to SCOP and ASTRAL implemented in python.
  GenomeDiagram: a python package for the visualization of large-scale
genomic data.
  Open source clustering software.
  PDB file parser and structure class implemented in Python.
  The Bio* toolkits--a brief overview.
>>
  
  

7.10.2  Parsing GEO records
===========================
  
  GEO (Gene Expression Omnibus (13)) is a data repository of
high-throughput gene expression and hybridization array data. The
'Bio.Geo' module can be used to parse GEO-formatted data.
  The following code fragment shows how to parse the example GEO file
'GSE16.txt' into a record and print the record:
<<>>> from Bio import Geo
  >>> handle = open("GSE16.txt")
  >>> records = Geo.parse(handle)
  >>> for record in records:
  ...     print record
>>
  
  You can search the "gds" database (GEO datasets) with ESearch:
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com" # Always tell NCBI who you
are
  >>> handle = Entrez.esearch(db="gds",term="GSE16")
  >>> record = Entrez.read(handle)
  >>> record["Count"]
  2
  >>> record["IdList"]
  ['200000016', '100000028']
>>
  
  From the Entrez website, UID "200000016" is GDS16 while the other hit
"100000028" is for the associated platform, GPL28. Unfortunately, at the
time of writing the NCBI don't seem to support downloading GEO files
using Entrez (not as XML, nor in the Simple Omnibus Format in Text
(SOFT) format).
  However, it is actually pretty straight forward to download the GEO
files by FTP from ftp://ftp.ncbi.nih.gov/pub/geo/ instead. In this case
you might want
ftp://ftp.ncbi.nih.gov/pub/geo/DATA/SOFT/by_series/GSE16/GSE16_family.so
ft.gz (a compressed file, see the python module gzip).
  

7.11  Using a proxy
*=*=*=*=*=*=*=*=*=*

  
  Normally you won't have to worry about using a proxy, but if this is
an issue on your network here is how to deal with it. Internally,
'Bio.Entrez' uses the standard python library 'urllib' for accessing the
NCBI servers. This will check an environment variable called
'http_proxy' to configure any simple proxy automatically. Unfortunately
this module does not support the use of proxies which require
authentication.
  You may choose to set the 'http_proxy' environment variable once (how
you do this will depend on your operating system). Alternatively you can
set this within python at the start of your script, for example:
<<import os
  os.environ["http_proxy"] = "http://proxyhost.example.com:8080"
>>
  
  See the urllib documentation (14) for more details.
  

7.12  Examples
*=*=*=*=*=*=*=

   
  

7.12.1  PubMed and Medline
==========================
   
  If you are in the medical field or interested in human issues (and
many times even if you are not!), PubMed
(http://www.ncbi.nlm.nih.gov/PubMed/) is an excellent source of all
kinds of goodies. So like other things, we'd like to be able to grab
information from it and use it in python scripts.
  In this example, we will query PubMed for all articles having to do
with orchids (see section 2.3 for our motivation). We first check how
many of such articles there are:
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.egquery(term="orchid")
  >>> record = Entrez.read(handle)
  >>> for row in record["eGQueryResult"]:
  ...     if row["DbName"]=="pubmed":
  ...         print row["Count"]
  463
>>
  
  Now we use the 'Bio.Entrez.efetch' function to download the PubMed IDs
of these 463 articles: 
<<>>> handle = Entrez.esearch(db="pubmed", term="orchid", retmax=463)
  >>> record = Entrez.read(handle)
  >>> idlist = record["IdList"]
  >>> print idlist
>>
  
  This returns a python list containing all of the PubMed IDs of
articles related to orchids: 
<<['18680603', '18665331', '18661158', '18627489', '18627452',
'18612381',
  '18594007', '18591784', '18589523', '18579475', '18575811',
'18575690',
  ...
>>
  
  Now that we've got them, we obviously want to get the corresponding
Medline records and extract the information from them. Here, we'll
download the Medline records in the Medline flat-file format, and use
the 'Bio.Medline' module to parse them: 
<<>>> from Bio import Medline
  >>> handle = Entrez.efetch(db="pubmed", id=idlist, rettype="medline",
                             retmode="text")
  >>> records = Medline.parse(handle)
>>
  
  NOTE - We've just done a separate search and fetch here, the NCBI much
prefer you to take advantage of their history support in this situation.
See Section 7.13.
  Keep in mind that 'records' is an iterator, so you can iterate through
the records only once. If you want to save the records, you can convert
them to a list: 
<<>>> records = list(records)
>>
  
  Let's now iterate over the records to print out some information about
each record: 
<<>>> for record in records:
  ...     print "title:", record["TI"]
  ...     if "AU" in records:
  ...         print "authors:", record["AU"]
  ...     print "source:", record["CO"]
  ...     print
>>
  
  The output for this looks like: 
<<title: Sex pheromone mimicry in the early spider orchid (ophrys
sphegodes):
  patterns of hydrocarbons as the key mechanism for pollination by
sexual
  deception [In Process Citation]
  authors: ['Schiestl FP', 'Ayasse M', 'Paulus HF', 'Lofstedt C',
'Hansson BS',
  'Ibarra F', 'Francke W']
  source: J Comp Physiol [A] 2000 Jun;186(6):567-74
>>
  
  Especially interesting to note is the list of authors, which is
returned as a standard python list. This makes it easy to manipulate and
search using standard python tools. For instance, we could loop through
a whole bunch of entries searching for a particular author with code
like the following: 
<<>>> search_author = "Waits T"
  
  >>> for record in records:
  ...     if not "AU" in record:
  ...         continue
  ...     if search_author in record[" AU"]:
  ...         print "Author %s found: %s" % (search_author,
record["SO"])
>>
  
  Hopefully this section gave you an idea of the power and flexibility
of the Entrez and Medline interfaces and how they can be used together.
  

7.12.2  Searching, downloading, and parsing Entrez Nucleotide records
=====================================================================
   
  Here we'll show a simple example of performing a remote Entrez query.
In section 2.3 of the parsing examples, we talked about using NCBI's
Entrez website to search the NCBI nucleotide databases for info on
Cypripedioideae, our friends the lady slipper orchids. Now, we'll look
at how to automate that process using a python script. In this example,
we'll just show how to connect, get the results, and parse them, with
the Entrez module doing all of the work.
  First, we use EGQuery to find out the number of results we will get
before actually downloading them. EGQuery will tell us how many search
results were found in each of the databases, but for this example we are
only interested in nucleotides: 
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.egquery(term="Cypripedioideae")
  >>> record = Entrez.read(handle)
  >>> for row in record["eGQueryResult"]:
  ...     if row["DbName"]=="nuccore":
  ...         print row["Count"]
  814
>>
  
  So, we expect to find 814 Entrez Nucleotide records (this is the
number I obtained in 2008; it is likely to increase in the future). If
you find some ridiculously high number of hits, you may want to
reconsider if you really want to download all of them, which is our next
step: 
<<>>> from Bio import Entrez
  >>> handle = Entrez.esearch(db="nucleotide", term="Cypripedioideae",
retmax=814)
  >>> record = Entrez.read(handle)
>>
  
  Here, 'record' is a python dictionary containing the search results
and some auxiliary information. Just for information, let's look at what
is stored in this dictionary: 
<<>>> print record.keys()
  [u'Count', u'RetMax', u'IdList', u'TranslationSet', u'RetStart',
u'QueryTranslation']
>>
  First, let's check how many results were found: 
<<>>> print record["Count"]
  '814'
>>
  which is the number we expected. The 814 results are stored in
'record['IdList']': 
<<>>> print len(record["IdList"])
  814
>>
  Let's look at the first five results: 
<<>>> print record["IdList"][:5]
  ['187237168', '187372713', '187372690', '187372688', '187372686']
>>
  
   We can download these records using 'efetch'. While you could
download these records one by one, to reduce the load on NCBI's servers,
it is better to fetch a bunch of records at the same time, shown below.
However, in this situation you should ideally be using the history
feature described later in Section 7.13.
<<>>> idlist = ",".join(record["IdList"][:5])
  >>> print idlist
  187237168,187372713,187372690,187372688,187372686
  >>> handle = Entrez.efetch(db="nucleotide", id=idlist, retmode="xml")
  >>> records = Entrez.read(handle)
  >>> print len(records)
  5
>>
  Each of these records corresponds to one GenBank record. 
<<>>> print records[0].keys()
  [u'GBSeq_moltype', u'GBSeq_source', u'GBSeq_sequence',
   u'GBSeq_primary-accession', u'GBSeq_definition',
u'GBSeq_accession-version',
   u'GBSeq_topology', u'GBSeq_length', u'GBSeq_feature-table',
   u'GBSeq_create-date', u'GBSeq_other-seqids', u'GBSeq_division',
   u'GBSeq_taxonomy', u'GBSeq_references', u'GBSeq_update-date',
   u'GBSeq_organism', u'GBSeq_locus', u'GBSeq_strandedness']
  
  >>> print records[0]["GBSeq_primary-accession"]
  DQ110336
  
  >>> print records[0]["GBSeq_other-seqids"]
  ['gb|DQ110336.1|', 'gi|187237168']
  
  >>> print records[0]["GBSeq_definition"]
  Cypripedium calceolus voucher Davis 03-03 A maturase (matR) gene,
partial cds;
  mitochondrial
  
  >>> print records[0]["GBSeq_organism"]
  Cypripedium calceolus
>>
  
  You could use this to quickly set up searches -- but for heavy usage,
see Section 7.13.
  

7.12.3  Searching, downloading, and parsing GenBank records
===========================================================
   
  The GenBank record format is a very popular method of holding
information about sequences, sequence features, and other associated
sequence information. The format is a good way to get information from
the NCBI databases at http://www.ncbi.nlm.nih.gov/.
  In this example we'll show how to query the NCBI databases,to retrieve
the records from the query, and then parse them using 'Bio.SeqIO' -
something touched on in Section 4.2.1. For simplicity, this example does
not take advantage of the WebEnv history feature -- see Section 7.13 for
this.
  First, we want to make a query and find out the ids of the records to
retrieve. Here we'll do a quick search for one of our favorite
organisms, Opuntia (prickly-pear cacti). We can do quick search and get
back the GIs (GenBank identifiers) for all of the corresponding records.
First we check how many records there are:
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.egquery(term="Opuntia AND rpl16")
  >>> record = Entrez.read(handle)
  >>> for row in record["eGQueryResult"]:
  ...     if row["DbName"]=="nuccore":
  ...         print row["Count"]
  ...
  9
>>
  Now we download the list of GenBank identifiers: 
<<>>> handle = Entrez.esearch(db="nuccore", term="Opuntia AND rpl16")
  >>> record = Entrez.read(handle)
  >>> gi_list = record["IdList"]
  >>> gi_list
  ['57240072', '57240071', '6273287', '6273291', '6273290', '6273289',
'6273286',
  '6273285', '6273284']
>>
  
  Now we use these GIs to download the GenBank records - note that you
have to supply a comma separated list of GI numbers to Entrez:
<<>>> gi_str = ",".join(gi_list)
  >>> handle = Entrez.efetch(db="nuccore", id=gi_str, rettype="gb")
>>
  
  If you want to look at the raw GenBank files, you can read from this
handle and print out the result:
<<>>> text = handle.read()
  >>> print text
  LOCUS       AY851612                 892 bp    DNA     linear   PLN
10-APR-2007
  DEFINITION  Opuntia subulata rpl16 gene, intron; chloroplast.
  ACCESSION   AY851612
  VERSION     AY851612.1  GI:57240072
  KEYWORDS    .
  SOURCE      chloroplast Austrocylindropuntia subulata
    ORGANISM  Austrocylindropuntia subulata
              Eukaryota; Viridiplantae; Streptophyta; Embryophyta;
Tracheophyta;
              Spermatophyta; Magnoliophyta; eudicotyledons; core
eudicotyledons;
              Caryophyllales; Cactaceae; Opuntioideae;
Austrocylindropuntia.
  REFERENCE   1  (bases 1 to 892)
    AUTHORS   Butterworth,C.A. and Wallace,R.S.
  ...
>>
  
  In this case, we are just getting the raw records. To get the records
in a more python-friendly form, we can use 'Bio.SeqIO' to parse the
GenBank data into 'SeqRecord' objects, including 'SeqFeature' objects
(see Chapter 4):
<<>>> from Bio import SeqIO
  >>> handle = Entrez.efetch(db="nuccore", id=gi_str, rettype="gb")
  >>> records = SeqIO.parse(handle, "gb")
>>
  
  We can now step through the records and look at the information we are
interested in: 
<<>>> for record in records: 
  >>> ...    print "%s, length %i, with %i features" \
  >>> ...           % (record.name, len(record), len(record.features))
  AY851612, length 892, with 3 features
  AY851611, length 881, with 3 features
  AF191661, length 895, with 3 features
  AF191665, length 902, with 3 features
  AF191664, length 899, with 3 features
  AF191663, length 899, with 3 features
  AF191660, length 893, with 3 features
  AF191659, length 894, with 3 features
  AF191658, length 896, with 3 features
>>
  
  Using these automated query retrieval functionality is a big plus over
doing things by hand. Although the module should obey the NCBI's
three-second rule, the NCBI have other recommendations like avoiding
peak hours. See Section 7.1. In particular, please note that for
simplicity, this example does not use the WebEnv history feature. You
should use this for any non-trivial search and download work, see
Section 7.13.
  Finally, if plan to repeat your analysis, rather than downloading the
files from the NCBI and parsing them immediately (as shown in this
example), you should just download the records once and save them to
your hard disk, and then parse the local file.
  

7.12.4  Finding the lineage of an organism
==========================================
  
  Staying with a plant example, let's now find the lineage of the
Cypripedioideae orchid family. First, we search the Taxonomy database
for Cypripedioideae, which yields exactly one NCBI taxonomy identifier: 
<<>>> from Bio import Entrez
  >>> Entrez.email = "A.N.Other@example.com"     # Always tell NCBI who
you are
  >>> handle = Entrez.esearch(db="Taxonomy", term="Cypripedioideae")
  >>> record = Entrez.read(handle)
  >>> record["IdList"]
  ['158330']
  >>> record["IdList"][0]
  '158330'
>>
  Now, we use 'efetch' to download this entry in the Taxonomy database,
and then parse it: 
<<>>> handle = Entrez.efetch(db="Taxonomy", id="158330", retmode="xml")
  >>> records = Entrez.read(handle)
>>
  Again, this record stores lots of information: 
<<>>> records[0].keys()
  [u'Lineage', u'Division', u'ParentTaxId', u'PubDate', u'LineageEx',
   u'CreateDate', u'TaxId', u'Rank', u'GeneticCode', u'ScientificName',
   u'MitoGeneticCode', u'UpdateDate']
>>
  We can get the lineage directly from this record: 
<<>>> records[0]["Lineage"]
  'cellular organisms; Eukaryota; Viridiplantae; Streptophyta;
Streptophytina;
   Embryophyta; Tracheophyta; Euphyllophyta; Spermatophyta;
Magnoliophyta;
   Liliopsida; Asparagales; Orchidaceae'
>>
  
  The record data contains much more than just the information shown
here - for example look under "LineageEx" instead of "Lineage" and
you'll get the NCBI taxon identifiers of the lineage entries too.
  

7.13  Using the history and WebEnv
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

   
  Often you will want to make a series of linked queries. Most
typically, running a search, perhaps refining the search, and then
retrieving detailed search results. You can do this by making a series
of separate calls to Entrez. However, the NCBI prefer you to take
advantage of their history support - for example combining ESearch and
EFetch.
  Another typical use of the history support would be to combine EPost
and EFetch. You use EPost to upload a list of identifiers, which starts
a new history session. You then download the records with EFetch by
referring to the session (instead of the identifiers).
  

7.13.1  Searching for and downloading sequences using the history
=================================================================
   Suppose we want to search and download all the Opuntia rpl16
nucleotide sequences, and store them in a FASTA file. As shown in
Section 7.12.3, we can naively combine 'Bio.Entrez.esearch()' to get a
list of GI numbers, and then call 'Bio.Entrez.efetch()' to download them
all.
  However, the approved approach is to run the search with the history
feature. Then, we can fetch the results by reference to the search
results - which the NCBI can anticipate and cache.
  To do this, you call 'Bio.Entrez.esearch()' as normal, but with the
additional argument of 'usehistory="y"',
<<>>> from Bio import Entrez
  >>> Entrez.email = "history.user@example.com"
  >>> search_handle = Entrez.esearch(db="nucleotide",term="Opuntia and
rpl16",
                                     usehistory="y")
  >>> search_results = Entrez.read(search_handle)
  >>> search_handle.close()
>>
  
  When you get the XML output back, it will still include the usual
search results:
<<>>> gi_list = search_results["IdList"]
  >>> count = int(search_results["Count"])
  >>> assert count == len(gi_list)
>>
  
  However, you also get given two additional pieces of information, the
WebEnv session cookie, and the QueryKey:
<<>>> webenv = search_results["WebEnv"]
  >>> query_key = search_results["QueryKey"] 
>>
  
  Having stored these values in variables session_cookie and query_key
we can use them as parameters to 'Bio.Entrez.efetch()' instead of giving
the GI numbers as identifiers. 
  While for small searches you might be OK downloading everything at
once, its better download in batches. You use the retstart and retmax
parameters to specify which range of search results you want returned
(starting entry using zero-based counting, and maximum number of results
to return). For example,
<<batch_size = 3
  out_handle = open("orchid_rpl16.fasta", "w")
  for start in range(0,count,batch_size) :
      end = min(count, start+batch_size)
      print "Going to download record %i to %i" % (start+1, end)
      fetch_handle = Entrez.efetch(db="nucleotide", rettype="fasta",
                                   retstart=start, retmax=batch_size,
                                   webenv=webenv, query_key=query_key)
      data = fetch_handle.read()
      fetch_handle.close()
      out_handle.write(data)
  out_handle.close()
>>
  
  For illustrative purposes, this example downloaded the FASTA records
in batches of three. Unless you are downloading genomes or chromosomes,
you would normally pick a larger batch size.
  

7.13.2  Searching for and downloading abstracts using the history
=================================================================
   Here is another history example, searching for papers published in
the last year about the Opuntia, and then downloading them into a file
in MedLine format:
<<from Bio import Entrez
  Entrez.email = "history.user@example.com"
  search_results = Entrez.read(Entrez.esearch(db="pubmed",
                                              term="Opuntia[ORGN]",
                                              reldate=365,
datetype="pdat",
                                              usehistory="y"))
  count = int(search_results["Count"])
  print "Found %i results" % count
  
  batch_size = 10
  out_handle = open("recent_orchid_papers.txt", "w")
  for start in range(0,count,batch_size) :
      end = min(count, start+batch_size)
      print "Going to download record %i to %i" % (start+1, end)
      fetch_handle = Entrez.efetch(db="pubmed", rettype="medline",
                                   retstart=start, retmax=batch_size,
                                   webenv=search_results["WebEnv"],
                                   query_key=search_results["QueryKey"])
      data = fetch_handle.read()
      fetch_handle.close()
      out_handle.write(data)
  out_handle.close()
>>
  
  At the time of writing, this gave 28 matches - but because this is a
date dependent search, this will of course vary. As described in
Section 7.10.1 above, you can then use 'Bio.Medline' to parse the saved
records.
  And finally, don't forget to include your own email address in the
Entrez calls.
-----------------------------------
  
  
 (1) http://www.ncbi.nlm.nih.gov/entrez/query/static/eutils_help.html#Us
   erSystemRequirements
 
 (2) http://www.ncbi.nlm.nih.gov/entrez/query/static/esearch_help.html
 
 (3) http://www.ncbi.nlm.nih.gov/entrez/query/static/epost_help.html
 
 (4) http://www.ncbi.nlm.nih.gov/entrez/query/static/esummary_help.html
 
 (5) http://eutils.ncbi.nlm.nih.gov/entrez/query/static/efetch_help.html
 
 (6) http://www.ncbi.nlm.nih.gov/entrez/query/static/efetchseq_help.html
 
 (7) http://www.ncbi.nlm.nih.gov/entrez/query/static/efetchseq_help.html
 
 (8) http://eutils.ncbi.nlm.nih.gov/entrez/query/static/efetch_help.html
 
 (9) http://www.ncbi.nlm.nih.gov/entrez/query/static/elink_help.html
 
 (10) http://www.ncbi.nlm.nih.gov/entrez/query/static/egquery_help.html
 
 (11) http://www.ncbi.nlm.nih.gov/entrez/query/static/espell_help.html
 
 (12) http://www.ncbi.nlm.nih.gov/entrez/query/static/efetch_help.html
 
 (13) http://www.ncbi.nlm.nih.gov/geo/
 
 (14) http://www.python.org/doc/lib/module-urllib.html
  

Chapter 8    Swiss-Prot and ExPASy
**********************************
   
  

8.1  Parsing Swiss-Prot files
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  Swiss-Prot (http://www.expasy.org/sprot) is a hand-curated database of
protein sequences. Biopython can parse the "plain text" Swiss-Prot file
format, which is still used for the UniProt Knowledgebase which combined
Swiss-Prot, TrEMBL and PIR-PSD. We do not (yet) support the UniProtKB
XML file format.
  

8.1.1  Parsing Swiss-Prot records
=================================
  
  In Section 4.2.2, we described how to extract the sequence of a
Swiss-Prot record as a 'SeqRecord' object. Alternatively, you can store
the Swiss-Prot record in a 'Bio.SwissProt.Record' object, which in fact
stores the complete information contained in the Swiss-Prot record. In
this Section, we describe how to extract 'Bio.SwissProt.Record' objects
from a Swiss-Prot file.
  To parse a Swiss-Prot record, we first get a handle to a Swiss-Prot
record. There are several ways to do so, depending on where and how the
Swiss-Prot record is stored: 
  
   - Open a Swiss-Prot file locally:
 '>>> handle = open("myswissprotfile.dat")' 
   - Open a gzipped Swiss-Prot file: 
   <<>>> import gzip
     >>> handle = gzip.open("myswissprotfile.dat.gz")
   >>
 
   - Open a Swiss-Prot file over the internet: 
   <<>>> import urllib
     >>> handle =
   urllib.urlopen("http://www.somelocation.org/data/someswissprotfile.da
   t")
   >>
 
   - Open a Swiss-Prot file over the internet from the ExPASy database
   (see section 8.5.1): 
   <<>>> from Bio import ExPASy
     >>> handle = ExPASy.get_sprot_raw(myaccessionnumber)
   >>
   The key point is that for the parser, it doesn't matter how the
handle was created, as long as it points to data in the Swiss-Prot
format.
  We can use 'Bio.SeqIO' as described in Section 4.2.2 to get file
format agnostic 'SeqRecord' objects. Alternatively, we can use
'Bio.SwissProt' get 'Bio.SwissProt.Record' objects, which are a much
closer match to the underlying file format.
  To read one Swiss-Prot record from the handle, we use the function
'read()': 
<<>>> from Bio import SwissProt
  >>> record = SwissProt.read(handle)
>>
  This function should be used if the handle points to exactly one
Swiss-Prot record. It raises a 'ValueError' if no Swiss-Prot record was
found, and also if more than one record was found.
  We can now print out some information about this record: 
<<>>> print record.description
  CHALCONE SYNTHASE 3 (EC 2.3.1.74) (NARINGENIN-CHALCONE SYNTHASE 3).
  >>> for ref in record.references:
  ...     print "authors:", ref.authors
  ...     print "title:", ref.title
  ...
  authors: Liew C.F., Lim S.H., Loh C.S., Goh C.J.;
  title: "Molecular cloning and sequence analysis of chalcone synthase
cDNAs of
  Bromheadia finlaysoniana.";
  >>> print record.organism_classification
  ['Eukaryota', 'Viridiplantae', 'Embryophyta', 'Tracheophyta',
'Spermatophyta',
  'Magnoliophyta', 'Liliopsida', 'Asparagales', 'Orchidaceae',
'Bromheadia']
>>
  
  To parse a file that contains more than one Swiss-Prot record, we use
the 'parse' function instead. This function allows us to iterate over
the records in the file.
  For example, let's parse the full Swiss-Prot database and collect all
the descriptions. You can download this from the ExPAYs FTP site (1) as
a single gzipped-file 'uniprot_sprot.dat.gz' (about 300MB). This is a
compressed file containing a single file, 'uniprot_sprot.dat' (over
1.5GB).
  As described at the start of this section, you can use the python
library 'gzip' to open and uncompress a .gz file, like this:
<<import gzip
  handle = gzip.open("uniprot_sprot.dat.gz")
>>
  
  However, uncompressing a large file takes time, and each time you open
the file for reading in this way, it has to be decompressed on the fly.
So, if you can spare the disk space you'll save time in the long run if
you first decompress the file to disk, to get the 'uniprot_sprot.dat'
file inside. Then you can open the file for reading as usual:
<<handle = open("uniprot_sprot.dat")
>>
  
  As of August 2008, the full Swiss-Prot database downloaded from ExPASy
contained 290484 Swiss-Prot records. One concise way to build up a list
of the record descriptions is with a list comprehension:  
<<>>> from Bio import SwissProt
  >>> handle = open("uniprot_sprot.dat")
  >>> descriptions = [record.description for record in
SwissProt.parse(handle)]
  >>> len(descriptions)
  290484
  >>> descriptions[:3]
  ['104 kDa microneme/rhoptry antigen precursor (p104).',
   '104 kDa microneme/rhoptry antigen precursor (p104).',
   'Protein 108 precursor.']
>>
  
  Or, using a for loop over the record iterator: 
<<>>> from Bio import SwissProt
  >>> descriptions = []
  >>> handle = open("uniprot_sprot.dat")
  >>> for record in SwissProt.parse(handle) :
  ...     descriptions.append(record.description)
  ...
  >>> len(descriptions)
  290484
>>
  
  Because this is such a large input file, either way takes about seven
minutes on my new desktop computer (using the uncompressed
'uniprot_sprot.dat' file as input).
  It is equally easy to extract any kind of information you'd like from
Swiss-Prot records. To see the members of a Swiss-Prot record, use 
<<>>> dir(record)
  ['__doc__', '__init__', '__module__', 'accessions',
'annotation_update',
  'comments', 'created', 'cross_references', 'data_class',
'description',
  'entry_name', 'features', 'gene_name', 'host_organism', 'keywords',
  'molecule_type', 'organelle', 'organism', 'organism_classification',
  'references', 'seqinfo', 'sequence', 'sequence_length',
  'sequence_update', 'taxonomy_id']
>>
  
  

8.1.2  Parsing the Swiss-Prot keyword and category list
=======================================================
  
  Swiss-Prot also distributes a file 'keywlist.txt', which lists the
keywords and categories used in Swiss-Prot. The file contains entries in
the following form:
<<ID   2Fe-2S.
  AC   KW-0001
  DE   Protein which contains at least one 2Fe-2S iron-sulfur cluster: 2
iron
  DE   atoms complexed to 2 inorganic sulfides and 4 sulfur atoms of
  DE   cysteines from the protein.
  SY   Fe2S2; [2Fe-2S] cluster; [Fe2S2] cluster; Fe2/S2 (inorganic)
cluster;
  SY   Di-mu-sulfido-diiron; 2 iron, 2 sulfur cluster binding.
  GO   GO:0051537; 2 iron, 2 sulfur cluster binding
  HI   Ligand: Iron; Iron-sulfur; 2Fe-2S.
  HI   Ligand: Metal-binding; 2Fe-2S.
  CA   Ligand.
  //
  ID   3D-structure.
  AC   KW-0002
  DE   Protein, or part of a protein, whose three-dimensional structure
has
  DE   been resolved experimentally (for example by X-ray
crystallography or
  DE   NMR spectroscopy) and whose coordinates are available in the PDB
  DE   database. Can also be used for theoretical models.
  HI   Technical term: 3D-structure.
  CA   Technical term.
  //
  ID   3Fe-4S.
  ...
>>
  
  The entries in this file can be parsed by the 'parse' function in the
'Bio.SwissProt.KeyWList' module. Each entry is then stored as a
'Bio.SwissProt.KeyWList.Record', which is a python dictionary.
<<>>> from Bio.SwissProt import KeyWList
  >>> handle = open("keywlist.txt")
  >>> records = KeyWList.parse(handle)
  >>> for record in records:
  ...     print record['ID']
  ...     print record['DE']
>>
  
  This prints 
<<2Fe-2S.
  Protein which contains at least one 2Fe-2S iron-sulfur cluster: 2 iron
atoms
  complexed to 2 inorganic sulfides and 4 sulfur atoms of cysteines from
the
  protein.
  ...
>>
  
  

8.2  Parsing Prosite records
*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  Prosite is a database containing protein domains, protein families,
functional sites, as well as the patterns and profiles to recognize
them. Prosite was developed in parallel with Swiss-Prot. In Biopython, a
Prosite record is represented by the 'Bio.ExPASy.Prosite.Record' class,
whose members correspond to the different fields in a Prosite record.
  In general, a Prosite file can contain more than one Prosite records.
For example, the full set of Prosite records, which can be downloaded as
a single file ('prosite.dat') from the ExPASy FTP site (2), contains
2073 records (version 20.24 released on 4 December 2007). To parse such
a file, we again make use of an iterator:
<<>>> from Bio.ExPASy import Prosite
  >>> handle = open("myprositefile.dat")
  >>> records = Prosite.parse(handle)
>>
  
  We can now take the records one at a time and print out some
information. For example, using the file containing the complete Prosite
database, we'd find 
<<>>> from Bio.ExPASy import Prosite
  >>> handle = open("prosite.dat")
  >>> records = Prosite.parse(handle)
  >>> record = records.next()
  >>> record.accession
  'PS00001'
  >>> record.name
  'ASN_GLYCOSYLATION'
  >>> record.pdoc
  'PDOC00001'
  >>> record = records.next()
  >>> record.accession
  'PS00004'
  >>> record.name
  'CAMP_PHOSPHO_SITE'
  >>> record.pdoc
  'PDOC00004'
  >>> record = records.next()
  >>> record.accession
  'PS00005'
  >>> record.name
  'PKC_PHOSPHO_SITE'
  >>> record.pdoc
  'PDOC00005'
>>
  and so on. If you're interested in how many Prosite records there are,
you could use 
<<>>> from Bio.ExPASy import Prosite
  >>> handle = open("prosite.dat")
  >>> records = Prosite.parse(handle)
  >>> n = 0
  >>> for record in records: n+=1
  ...
  >>> print n
  2073
>>
  
  To read exactly one Prosite from the handle, you can use the 'read'
function: 
<<>>> from Bio.ExPASy import Prosite
  >>> handle = open("mysingleprositerecord.dat")
  >>> record = Prosite.read(handle)
>>
  This function raises a ValueError if no Prosite record is found, and
also if more than one Prosite record is found.
  

8.3  Parsing Prosite documentation records
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  In the Prosite example above, the 'record.pdoc' accession numbers
''PDOC00001'', ''PDOC00004'', ''PDOC00005'' and so on refer to Prosite
documentation. The Prosite documentation records are available from
ExPASy as individual files, and as one file ('prosite.doc') containing
all Prosite documentation records.
  We use the parser in 'Bio.ExPASy.Prodoc' to parse Prosite
documentation records. For example, to create a list of all accession
numbers of Prosite documentation record, you can use
<<>>> from Bio.ExPASy import Prodoc
  >>> handle = open("prosite.doc")
  >>> records = Prodoc.parse(handle)
  >>> accessions = [record.accession for record in records]
>>
  
  Again a 'read()' function is provided to read exactly one Prosite
documentation record from the handle.
  

8.4  Parsing Enzyme records
*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  ExPASy's Enzyme database is a repository of information on enzyme
nomenclature. A typical Enzyme record looks as follows:
<<ID   3.1.1.34
  DE   Lipoprotein lipase.
  AN   Clearing factor lipase.
  AN   Diacylglycerol lipase.
  AN   Diglyceride lipase.
  CA   Triacylglycerol + H(2)O = diacylglycerol + a carboxylate.
  CC   -!- Hydrolyzes triacylglycerols in chylomicrons and very
low-density
  CC       lipoproteins (VLDL).
  CC   -!- Also hydrolyzes diacylglycerol.
  PR   PROSITE; PDOC00110;
  DR   P11151, LIPL_BOVIN ;  P11153, LIPL_CAVPO ;  P11602, LIPL_CHICK ;
  DR   P55031, LIPL_FELCA ;  P06858, LIPL_HUMAN ;  P11152, LIPL_MOUSE ;
  DR   O46647, LIPL_MUSVI ;  P49060, LIPL_PAPAN ;  P49923, LIPL_PIG   ;
  DR   Q06000, LIPL_RAT   ;  Q29524, LIPL_SHEEP ;
  //
>>
  
  In this example, the first line shows the EC (Enzyme Commission)
number of lipoprotein lipase (second line). Alternative names of
lipoprotein lipase are "clearing factor lipase", "diacylglycerol
lipase", and "diglyceride lipase" (lines 3 through 5). The line starting
with "CA" shows the catalytic activity of this enzyme. Comment lines
start with "CC". The "PR" line shows references to the Prosite
Documentation records, and the "DR" lines show references to Swiss-Prot
records. Not of these entries are necessarily present in an Enzyme
record.
  In Biopython, an Enzyme record is represented by the
'Bio.ExPASy.Enzyme.Record' class. This record derives from a python
dictionary and has keys corresponding to the two-letter codes used in
Enzyme files. To read an Enzyme file containing one Enzyme record, use
the 'read' function in 'Bio.ExPASy.Enzyme':
<<>>> from Bio.ExPASy import Enzyme
  >>> handle = open("lipoprotein.txt")
  >>> record = Enzyme.read(handle)
  >>> record["ID"]
  '3.1.1.34'
  >>> record["DE"]
  'Lipoprotein lipase.'
  >>> record["AN"]
  ['Clearing factor lipase.', 'Diacylglycerol lipase.', 'Diglyceride
lipase.']
  >>> record["CA"]
  'Triacylglycerol + H(2)O = diacylglycerol + a carboxylate.'
  >>> record["CC"]
  ['Hydrolyzes triacylglycerols in chylomicrons and very low-density
lipoproteins
  (VLDL).', 'Also hydrolyzes diacylglycerol.']
  >>> record["PR"]
  ['PDOC00110']
  >>> record["DR"]
  [['P11151', 'LIPL_BOVIN'], ['P11153', 'LIPL_CAVPO'], ['P11602',
'LIPL_CHICK'],
  ['P55031', 'LIPL_FELCA'], ['P06858', 'LIPL_HUMAN'], ['P11152',
'LIPL_MOUSE'],
  ['O46647', 'LIPL_MUSVI'], ['P49060', 'LIPL_PAPAN'], ['P49923',
'LIPL_PIG'],
  ['Q06000', 'LIPL_RAT'], ['Q29524', 'LIPL_SHEEP']]
>>
  The 'read' function raises a ValueError if no Enzyme record is found,
and also if more than one Enzyme record is found.
  The full set of Enzyme records can be downloaded as a single file
('enzyme.dat') from the ExPASy FTP site (3), containing 4877 records
(release of 3 March 2009). To parse such a file containing multiple
Enzyme records, use the 'parse' function in 'Bio.ExPASy.Enzyme' to
obtain an iterator:
<<>>> from Bio.ExPASy import Enzyme
  >>> handle = open("enzyme.dat")
  >>> records = Enzyme.parse(handle)
>>
  
  We can now iterate over the records one at a time. For example, we can
make a list of all EC numbers for which an Enzyme record is available: 
<<>>> ecnumbers = [record["ID"] for record in records]
>>
  
  

8.5  Accessing the ExPASy server
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  Swiss-Prot, Prosite, and Prosite documentation records can be
downloaded from the ExPASy web server at http://www.expasy.org. Six
kinds of queries are available from ExPASy: 
  
 get_prodoc_entry To download a Prosite documentation record in HTML
   format 
 get_prosite_entry To download a Prosite record in HTML format 
 get_prosite_raw To download a Prosite or Prosite documentation record
   in raw format 
 get_sprot_raw To download a Swiss-Prot record in raw format 
 sprot_search_ful To search for a Swiss-Prot record 
 sprot_search_de To search for a Swiss-Prot record 
   To access this web server from a python script, we use the
'Bio.ExPASy' module.
  

8.5.1  Retrieving a Swiss-Prot record
=====================================
   
  Let's say we are looking at chalcone synthases for Orchids (see
section 2.3 for some justification for looking for interesting things
about orchids). Chalcone synthase is involved in flavanoid biosynthesis
in plants, and flavanoids make lots of cool things like pigment colors
and UV protectants. 
  If you do a search on Swiss-Prot, you can find three orchid proteins
for Chalcone Synthase, id numbers O23729, O23730, O23731. Now, let's
write a script which grabs these, and parses out some interesting
information.
  First, we grab the records, using the 'get_sprot_raw()' function of
'Bio.ExPASy'. This function is very nice since you can feed it an id and
get back a handle to a raw text record (no html to mess with!). We can
the use 'Bio.SwissProt.read' to pull out the Swiss-Prot record, or
'Bio.SeqIO.read' to get a SeqRecord. The following code accomplishes
what I just wrote:
<<>>> from Bio import ExPASy
  >>> from Bio import SwissProt
  
  >>> accessions = ["O23729", "O23730", "O23731"]
  >>> records = []
  
  >>> for accession in accessions:
  ...     handle = ExPASy.get_sprot_raw(accession)
  ...     record = SwissProt.read(handle)
  ...     records.append(record)
>>
  
  If the accession number you provided to 'ExPASy.get_sprot_raw' does
not exist, then 'SwissProt.read(handle)' will raise a 'ValueError'. You
can catch 'ValueException' exceptions to detect invalid accession
numbers:
<<>>> for accession in accessions:
  ...     handle = ExPASy.get_sprot_raw(accession)
  ...     try:
  ...         record = SwissProt.read(handle)
  ...     except ValueException:
  ...         print "WARNING: Accession %s not found" % accession
  ...     records.append(record)
>>
  
  

8.5.2  Searching Swiss-Prot
===========================
  
  Now, you may remark that I knew the records' accession numbers
beforehand. Indeed, 'get_sprot_raw()' needs either the entry name or an
accession number. When you don't have them handy, you can use one of the
'sprot_search_de()' or 'sprot_search_ful()' functions.
  'sprot_search_de()' searches in the ID, DE, GN, OS and OG lines;
'sprot_search_ful()' searches in (nearly) all the fields. They are
detailed on http://www.expasy.org/cgi-bin/sprot-search-de and
http://www.expasy.org/cgi-bin/sprot-search-ful respectively. Note that
they don't search in TrEMBL by default (argument 'trembl'). Note also
that they return html pages; however, accession numbers are quite easily
extractable:
<<>>> from Bio import ExPASy
  >>> import re
  
  >>> handle = ExPASy.sprot_search_de("Orchid Chalcone Synthase")
  >>> # or:
  >>> # handle = ExPASy.sprot_search_ful("Orchid and {Chalcone
Synthase}")
  >>> html_results = handle.read()
  >>> if "Number of sequences found" in html_results:
  ...     ids = re.findall(r'HREF="/uniprot/(\w+)"', html_results)
  ... else:
  ...     ids = re.findall(r'href="/cgi-bin/niceprot\.pl\?(\w+)"',
html_results)
>>
  
  

8.5.3  Retrieving Prosite and Prosite documentation records
===========================================================
  
  Prosite and Prosite documentation records can be retrieved either in
HTML format, or in raw format. To parse Prosite and Prosite
documentation records with Biopython, you should retrieve the records in
raw format. For other purposes, however, you may be interested in these
records in HTML format.
  To retrieve a Prosite or Prosite documentation record in raw format,
use 'get_prosite_raw()'. For example, to download a Prosite record and
print it out in raw text format, use
<<>>> from Bio import ExPASy
  >>> handle = ExPASy.get_prosite_raw('PS00001')
  >>> text = handle.read()
  >>> print text
>>
  
  To retrieve a Prosite record and parse it into a 'Bio.Prosite.Record'
object, use
<<>>> from Bio import ExPASy
  >>> from Bio import Prosite
  >>> handle = ExPASy.get_prosite_raw('PS00001')
  >>> record = Prosite.read(handle)
>>
  
  The same function can be used to retrieve a Prosite documentation
record and parse it into a 'Bio.ExPASy.Prodoc.Record' object:
<<>>> from Bio import ExPASy
  >>> from Bio.ExPASy import Prodoc
  >>> handle = ExPASy.get_prosite_raw('PDOC00001')
  >>> record = Prodoc.read(handle)
>>
  
  For non-existing accession numbers, 'ExPASy.get_prosite_raw' returns a
handle to an emptry string. When faced with an empty string,
'Prosite.read' and 'Prodoc.read' will raise a ValueError. You can catch
these exceptions to detect invalid accession numbers.
  The functions 'get_prosite_entry()' and 'get_prodoc_entry()' are used
to download Prosite and Prosite documentation records in HTML format. To
create a web page showing one Prosite record, you can use
<<>>> from Bio import ExPASy
  >>> handle = ExPASy.get_prosite_entry('PS00001')
  >>> html = handle.read()
  >>> output = open("myprositerecord.html", "w")
  >>> output.write(html)
  >>> output.close()
>>
  
  and similarly for a Prosite documentation record:
<<>>> from Bio import ExPASy
  >>> handle = ExPASy.get_prodoc_entry('PDOC00001')
  >>> html = handle.read()
  >>> output = open("myprodocrecord.html", "w")
  >>> output.write(html)
  >>> output.close()
>>
  
  For these functions, an invalid accession number returns an error
message in HTML format.
  

8.6  Scanning the Prosite database
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  ScanProsite (4) allows you to scan protein sequences online against
the Prosite database by providing a UniProt or PDB sequence identifier
or the sequence itself. For more information about ScanProsite, please
see the ScanProsite documentation (5) as well as the documentation for
programmatic access of ScanProsite (6).
  You can use Biopython's 'Bio.ExPASy.ScanProsite' module to scan the
Prosite database from python. This module both helps you to access
ScanProsite programmatically, and to parse the results returned by
ScanProsite. To scan for Prosite patterns in the following protein
sequence:
<<MEHKEVVLLLLLFLKSGQGEPLDDYVNTQGASLFSVTKKQLGAGSIEECAAKCEEDEEFT
  CRAFQYHSKEQQCVIMAENRKSSIIIRMRDVVLFEKKVYLSECKTGNGKNYRGTMSKTKN
>>
  
  you can use the following code:
<<>>> sequence =
"MEHKEVVLLLLLFLKSGQGEPLDDYVNTQGASLFSVTKKQLGAGSIEECAAKCEEDEEFT
  CRAFQYHSKEQQCVIMAENRKSSIIIRMRDVVLFEKKVYLSECKTGNGKNYRGTMSKTKN"
  >>> from Bio.ExPASy import ScanProsite
  >>> handle = ScanProsite.scan(seq=sequence)
>>
  
  By executing 'handle.read()', you can obtain the search results in raw
XML format. Instead, let's use 'Bio.ExPASy.ScanProsite.read' to parse
the raw XML into a python object:
<<>>> result = ScanProsite.read(handle)
  >>> type(result)
  <class 'Bio.ExPASy.ScanProsite.Record'>
>>
  
  A 'Bio.ExPASy.ScanProsite.Record' object is derived from a list, with
each element in the list storing one ScanProsite hit. This object also
stores the number of hits, as well as the number of search sequences, as
returned by ScanProsite. This ScanProsite search resulted in six hits:
<<>>> result.n_seq
  1
  >>> result.n_match
  6
  >>> len(result)
  6
  >>> result[0]
  {'signature_ac': u'PS50948', 'level': u'0', 'stop': 98, 'sequence_ac':
u'USERSEQ1', 'start': 16, 'score': u'8.873'}
  >>> result[1]
  {'start': 37, 'stop': 39, 'sequence_ac': u'USERSEQ1', 'signature_ac':
u'PS00005'}
  >>> result[2]
  {'start': 45, 'stop': 48, 'sequence_ac': u'USERSEQ1', 'signature_ac':
u'PS00006'}
  >>> result[3]
  {'start': 60, 'stop': 62, 'sequence_ac': u'USERSEQ1', 'signature_ac':
u'PS00005'}
  >>> result[4]
  {'start': 80, 'stop': 83, 'sequence_ac': u'USERSEQ1', 'signature_ac':
u'PS00004'}
  >>> result[5]
  {'start': 106, 'stop': 111, 'sequence_ac': u'USERSEQ1',
'signature_ac': u'PS00008'}
>>
  
  Other ScanProsite parameters can be passed as keyword arguments; see
the documentation for programmatic access of ScanProsite (7) for more
information. As an example, passing 'lowscore=1' to include matches with
low level scores lets use find one additional hit:
<<>>> handle = ScanProsite.scan(seq=sequence, lowscore=1)
  >>> result = ScanProsite.read(handle)
  >>> result.n_match
  7
>>
  
-----------------------------------
  
  
 (1) ftp://ftp.expasy.org/databases/uniprot/current_release/knowledgebas
   e/complete/uniprot_sprot.dat.gz
 
 (2) ftp://ftp.expasy.org/databases/prosite/prosite.dat
 
 (3) ftp://ftp.expasy.org/databases/enzyme/enzyme.dat
 
 (4) http://www.expasy.org/tools/scanprosite/
 
 (5) http://www.expasy.org/tools/scanprosite/scanprosite-doc.html
 
 (6) http://www.expasy.org/tools/scanprosite/ScanPrositeREST.html
 
 (7) http://www.expasy.org/tools/scanprosite/ScanPrositeREST.html
  

Chapter 9    Going 3D: The PDB module
*************************************
  
  Biopython also allows you to explore the extensive realm of
macromolecular structure. Biopython comes with a PDBParser class that
produces a Structure object. The Structure object can be used to access
the atomic data in the file in a convenient manner.
  

9.1  Structure representation
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  A macromolecular structure is represented using a structure, model
chain, residue, atom (or SMCRA) hierarchy.  The figure below   shows a
UML class diagram of the SMCRA data structure. Such a data structure is
not necessarily best suited for the representation of the macromolecular
content of a structure, but it is absolutely necessary for a good
interpretation of the data present in a file that describes the
structure (typically a PDB or MMCIF file). If this hierarchy cannot
represent the contents of a structure file, it is fairly certain that
the file contains an error or at least does not describe the structure
unambiguously. If a SMCRA data structure cannot be generated, there is
reason to suspect a problem. Parsing a PDB file can thus be used to
detect likely problems. We will give several examples of this in section
9.5.1.
   *images/smcra.png*  
  
  Structure, Model, Chain and Residue are all subclasses of the Entity
base class. The Atom class only (partly) implements the Entity interface
(because an Atom does not have children).
  For each Entity subclass, you can extract a child by using a unique id
for that child as a key (e.g. you can extract an Atom object from a
Residue object by using an atom name string as a key, you can extract a
Chain object from a Model object by using its chain identifier as a
key).
  Disordered atoms and residues are represented by DisorderedAtom and
DisorderedResidue classes, which are both subclasses of the
DisorderedEntityWrapper base class. They hide the complexity associated
with disorder and behave exactly as Atom and Residue objects.
  In general, a child Entity object (i.e. Atom, Residue, Chain, Model)
can be extracted from its parent (i.e. Residue, Chain, Model, Structure,
respectively) by using an id as a key.
<<child_entity=parent_entity[child_id]
>>
  
  You can also get a list of all child Entities of a parent Entity
object. Note that this list is sorted in a specific way (e.g. according
to chain identifier for Chain objects in a Model object).
<<child_list=parent_entity.get_list()
>>
  
  You can also get the parent from a child.
<<parent_entity=child_entity.get_parent()
>>
  
  At all levels of the SMCRA hierarchy, you can also extract a full id.
The full id is a tuple containing all id's starting from the top object
(Structure) down to the current object. A full id for a Residue object
e.g. is something like:
<<full_id=residue.get_full_id()
  
  print full_id
  
  ("1abc", 0, "A", ("", 10, "A"))
>>
  
  This corresponds to:
  
  
   - The Structure with id "1abc" 
   - The Model with id 0 
   - The Chain with id "A" 
   - The Residue with id (" ", 10, "A"). 
   The Residue id indicates that the residue is not a hetero-residue
(nor a water) because it has a blanc hetero field, that its sequence
identifier is 10 and that its insertion code is "A".
  Some other useful methods:
<<# get the entity's id
  
  entity.get_id()
  
  # check if there is a child with a given id
  
  entity.has_id(entity_id)
  
  # get number of children
  
  nr_children=len(entity)
>>
  
  It is possible to delete, rename, add, etc. child entities from a
parent entity, but this does not include any sanity checks (e.g. it is
possible to add two residues with the same id to one chain). This really
should be done via a nice Decorator class that includes integrity
checking, but you can take a look at the code (Entity.py) if you want to
use the raw interface.
  

9.1.1  Structure
================
  
  The Structure object is at the top of the hierarchy. Its id is a user
given string. The Structure contains a number of Model children. Most
crystal structures (but not all) contain a single model, while NMR
structures typically consist of several models. Disorder in crystal
structures of large parts of molecules can also result in several
models.
  

9.1.1.1  Constructing a Structure object
----------------------------------------
  
  A Structure object is produced by a PDBParser object:
<<from Bio.PDB.PDBParser import PDBParser
  
  p=PDBParser(PERMISSIVE=1)
  
  structure_id="1fat"
  
  filename="pdb1fat.ent"
  
  s=p.get_structure(structure_id, filename)
>>
  
  The PERMISSIVE flag indicates that a number of common problems (see
9.5.1) associated with PDB files will be ignored (but note that some
atoms and/or residues will be missing). If the flag is not present a
PDBConstructionException will be generated during the parse operation.
  

9.1.1.2  Header and trailer
---------------------------
  
  You can extract the header and trailer (simple lists of strings) of
the PDB file from the PDBParser object with the get_header and
get_trailer methods.
  

9.1.2  Model
============
  
  The id of the Model object is an integer, which is derived from the
position of the model in the parsed file (they are automatically
numbered starting from 0). The Model object stores a list of Chain
children.
  

9.1.2.1  Example
----------------
  
  Get the first model from a Structure object.
<<first_model=structure[0]
>>
  
  

9.1.3  Chain
============
  
  The id of a Chain object is derived from the chain identifier in the
structure file, and can be any string. Each Chain in a Model object has
a unique id. The Chain object stores a list of Residue children.
  

9.1.3.1  Example
----------------
  
  Get the Chain object with identifier "A" from a Model object.
<<chain_A=model["A"]
>>
  
  

9.1.4  Residue
==============
  
  Unsurprisingly, a Residue object stores a set of Atom children. In
addition, it also contains a string that specifies the residue name
(e.g. "ASN") and the segment identifier of the residue (well known to
X-PLOR users, but not used in the construction of the SMCRA data
structure).
  The id of a Residue object is composed of three parts: the hetero
field (hetfield), the sequence identifier (resseq) and the insertion
code (icode).
  The hetero field is a string : it is "W" for waters, "H_" followed by
the residue name (e.g. "H_FUC") for other hetero residues and blank for
standard amino and nucleic acids. This scheme is adopted for reasons
described in section 9.3.1.
  The second field in the Residue id is the sequence identifier, an
integer describing the position of the residue in the chain.
  The third field is a string, consisting of the insertion code. The
insertion code is sometimes used to preserve a certain desirable residue
numbering scheme. A Ser 80 insertion mutant (inserted e.g. between a Thr
80 and an Asn 81 residue) could e.g. have sequence identifiers and
insertion codes as followed: Thr 80 A, Ser 80 B, Asn 81. In this way the
residue numbering scheme stays in tune with that of the wild type
structure.
  Let's give some examples. Asn 10 with a blank insertion code would
have residue id (" ", 10, " "). Water 10 would have residue id ("W", 10,
" "). A glucose molecule (a hetero residue with residue name GLC) with
sequence identifier 10 would have residue id ("H_GLC", 10, " "). In this
way, the three residues (with the same insertion code and sequence
identifier) can be part of the same chain because their residue id's are
distinct.
  In most cases, the hetflag and insertion code fields will be blank,
e.g. (" ", 10, " "). In these cases, the sequence identifier can be used
as a shortcut for the full id:
<<# use full id
  
  res10=chain[("", 10, "")]
  
  # use shortcut
  
  res10=chain[10]
>>
  
  Each Residue object in a Chain object should have a unique id.
However, disordered residues are dealt with in a special way, as
described in section 9.2.3.2.
  A Residue object has a number of additional methods:
<<r.get_resname()  # return residue name, e.g. "ASN"
  r.get_segid()  # return the SEGID, e.g. "CHN1"
>>
  
  

9.1.5  Atom
===========
  
  The Atom object stores the data associated with an atom, and has no
children. The id of an atom is its atom name (e.g. "OG" for the side
chain oxygen of a Ser residue). An Atom id needs to be unique in a
Residue. Again, an exception is made for disordered atoms, as described
in section 9.2.2.
  In a PDB file, an atom name consists of 4 chars, typically with
leading and trailing spaces. Often these spaces can be removed for ease
of use (e.g. an amino acid C alpha  atom is labeled ".CA." in a PDB
file, where the dots represent spaces). To generate an atom name (and
thus an atom id) the spaces are removed, unless this would result in a
name collision in a Residue (i.e. two Atom objects with the same atom
name and id). In the latter case, the atom name including spaces is
tried. This situation can e.g. happen when one residue contains atoms
with names ".CA." and "CA..", although this is not very likely.
  The atomic data stored includes the atom name, the atomic coordinates
(including standard deviation if present), the B factor (including
anisotropic B factors and standard deviation if present), the altloc
specifier and the full atom name including spaces. Less used items like
the atom element number or the atomic charge sometimes specified in a
PDB file are not stored.
  An Atom object has the following additional methods:
<<a.get_name()       # atom name (spaces stripped, e.g. "CA")
  a.get_id()         # id (equals atom name)
  a.get_coord()      # atomic coordinates
  a.get_bfactor()    # B factor
  a.get_occupancy()  # occupancy
  a.get_altloc()     # alternative location specifie
  a.get_sigatm()     # std. dev. of atomic parameters
  a.get_siguij()     # std. dev. of anisotropic B factor
  a.get_anisou()     # anisotropic B factor
  a.get_fullname()   # atom name (with spaces, e.g. ".CA.")
>>
  
  To represent the atom coordinates, siguij, anisotropic B factor and
sigatm Numpy arrays are used.
  

9.2  Disorder
*=*=*=*=*=*=*

  
  

9.2.1  General approach
=======================
  
  Disorder should be dealt with from two points of view: the atom and
the residue points of view. In general, we have tried to encapsulate all
the complexity that arises from disorder. If you just want to loop over
all C alpha  atoms, you do not care that some residues have a disordered
side chain. On the other hand it should also be possible to represent
disorder completely in the data structure. Therefore, disordered atoms
or residues are stored in special objects that behave as if there is no
disorder. This is done by only representing a subset of the disordered
atoms or residues. Which subset is picked (e.g. which of the two
disordered OG side chain atom positions of a Ser residue is used) can be
specified by the user.
  

9.2.2  Disordered atoms
=======================
  
  Disordered atoms are represented by ordinary Atom objects, but all
Atom objects that represent the same physical atom are stored in a
DisorderedAtom object. Each Atom object in a DisorderedAtom object can
be uniquely indexed using its altloc specifier. The DisorderedAtom
object forwards all uncaught method calls to the selected Atom object,
by default the one that represents the atom with with the highest
occupancy. The user can of course change the selected Atom object,
making use of its altloc specifier. In this way atom disorder is
represented correctly without much additional complexity. In other
words, if you are not interested in atom disorder, you will not be
bothered by it.
  Each disordered atom has a characteristic altloc identifier. You can
specify that a DisorderedAtom object should behave like the Atom object
associated with a specific altloc identifier:
<<atom.disordered\_select("A")  # select altloc A atom
  
  print atom.get_altloc()
  "A"
  
  atom.disordered_select("B")     # select altloc B atom
  print atom.get_altloc()
  "B"
>>
  
  

9.2.3  Disordered residues
==========================
  
  

9.2.3.1  Common case
--------------------
  
  The most common case is a residue that contains one or more disordered
atoms. This is evidently solved by using DisorderedAtom objects to
represent the disordered atoms, and storing the DisorderedAtom object in
a Residue object just like ordinary Atom objects. The DisorderedAtom
will behave exactly like an ordinary atom (in fact the atom with the
highest occupancy) by forwarding all uncaught method calls to one of the
Atom objects (the selected Atom object) it contains.
  

9.2.3.2  Point mutations
------------------------
  
  A special case arises when disorder is due to a point mutation, i.e.
when two or more point mutants of a polypeptide are present in the
crystal. An example of this can be found in PDB structure 1EN2.
  Since these residues belong to a different residue type (e.g. let's
say Ser 60 and Cys 60) they should not be stored in a single Residue
object as in the common case. In this case, each residue is represented
by one Residue object, and both Residue objects are stored in a
DisorderedResidue object.
  The DisorderedResidue object forwards all uncaught methods to the
selected Residue object (by default the last Residue object added), and
thus behaves like an ordinary residue. Each Residue object in a
DisorderedResidue object can be uniquely identified by its residue name.
In the above example, residue Ser 60 would have id "SER" in the
DisorderedResidue object, while residue Cys 60 would have id "CYS". The
user can select the active Residue object in a DisorderedResidue object
via this id.
  

9.3  Hetero residues
*=*=*=*=*=*=*=*=*=*=

  
  

9.3.1  Associated problems
==========================
  
  A common problem with hetero residues is that several hetero and
non-hetero residues present in the same chain share the same sequence
identifier (and insertion code). Therefore, to generate a unique id for
each hetero residue, waters and other hetero residues are treated in a
different way.
  Remember that Residue object have the tuple (hetfield, resseq, icode)
as id. The hetfield is blank (" ") for amino and nucleic acids, and a
string for waters and other hetero residues. The content of the hetfield
is explained below.
  

9.3.2  Water residues
=====================
  
  The hetfield string of a water residue consists of the letter "W". So
a typical residue id for a water is ("W", 1, " ").
  

9.3.3  Other hetero residues
============================
  
  The hetfield string for other hetero residues starts with "H_"
followed by the residue name. A glucose molecule e.g. with residue name
"GLC" would have hetfield "H_GLC". It's residue id could e.g. be
("H_GLC", 1, " ").
  

9.4  Some random usage examples
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  Parse a PDB file, and extract some Model, Chain, Residue and Atom
objects.
<<from Bio.PDB.PDBParser import PDBParser
  
  parser=PDBParser()
  
  structure=parser.get_structure("test", "1fat.pdb")
  model=structure[0]
  chain=model["A"]
  residue=chain[1]
  atom=residue["CA"]
>>
  
  Extract a hetero residue from a chain (e.g. a glucose (GLC) moiety
with resseq 10).
<<residue_id=("H_GLC", 10, " ")
  residue=chain[residue_id]
>>
  
  Print all hetero residues in chain.
<<for residue in chain.get_list():
   residue_id=residue.get_id()
   hetfield=residue_id[0]
   if hetfield[0]=="H":
    print residue_id
>>
  
  Print out the coordinates of all CA atoms in a structure with B factor
greater than 50.
<<for model in structure.get_list():
    for chain in model.get_list():
      for residue in chain.get_list():
        if residue.has_id("CA"):
          ca=residue["CA"]
          if ca.get_bfactor()>50.0:
            print ca.get_coord()
>>
  
  Print out all the residues that contain disordered atoms.
<<for model in structure.get_list():
    for chain in model.get_list():
      for residue in chain.get_list():
        if residue.is_disordered():
          resseq=residue.get_id()[1]
          resname=residue.get_resname()
          model_id=model.get_id()
          chain_id=chain.get_id()
          print model_id, chain_id, resname, resseq
>>
  
  Loop over all disordered atoms, and select all atoms with altloc A (if
present). This will make sure that the SMCRA data structure will behave
as if only the atoms with altloc A are present.
<<for model in structure.get_list():
    for chain in model.get_list():
      for residue in chain.get_list():
        if residue.is_disordered():
          for atom in residue.get_list():
            if atom.is_disordered():
              if atom.disordered_has_id("A"):
                atom.disordered_select("A")
>>
  
  Suppose that a chain has a point mutation at position 10, consisting
of a Ser and a Cys residue. Make sure that residue 10 of this chain
behaves as the Cys residue.
<<residue=chain[10]
  residue.disordered_select("CYS")
>>
  
  

9.5  Common problems in PDB files
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  

9.5.1  Examples
===============
  
  The PDBParser/Structure class was tested on about 800 structures (each
belonging to a unique SCOP superfamily). This takes about 20 minutes, or
on average 1.5 seconds per structure. Parsing the structure of the large
ribosomal subunit (1FKK), which contains about 64000 atoms, takes 10
seconds on a 1000 MHz PC.
  Three exceptions were generated in cases where an unambiguous data
structure could not be built. In all three cases, the likely cause is an
error in the PDB file that should be corrected. Generating an exception
in these cases is much better than running the chance of incorrectly
describing the structure in a data structure.
  

9.5.1.1  Duplicate residues
---------------------------
  
  One structure contains two amino acid residues in one chain with the
same sequence identifier (resseq 3) and icode. Upon inspection it was
found that this chain contains the residues Thr A3, ..., Gly A202, Leu
A3, Glu A204. Clearly, Leu A3 should be Leu A203. A couple of similar
situations exist for structure 1FFK (which e.g. contains Gly B64, Met
B65, Glu B65, Thr B67, i.e. residue Glu B65 should be Glu B66).
  

9.5.1.2  Duplicate atoms
------------------------
  
  Structure 1EJG contains a Ser/Pro point mutation in chain A at
position 22. In turn, Ser 22 contains some disordered atoms. As
expected, all atoms belonging to Ser 22 have a non-blank altloc
specifier (B or C). All atoms of Pro 22 have altloc A, except the N atom
which has a blank altloc. This generates an exception, because all atoms
belonging to two residues at a point mutation should have non-blank
altloc. It turns out that this atom is probably shared by Ser and Pro
22, as Ser 22 misses the N atom. Again, this points to a problem in the
file: the N atom should be present in both the Ser and the Pro residue,
in both cases associated with a suitable altloc identifier.
  

9.5.2  Automatic correction
===========================
  
  Some errors are quite common and can be easily corrected without much
risk of making a wrong interpretation. These cases are listed below.
  

9.5.2.1  A blank altloc for a disordered atom
---------------------------------------------
  
  Normally each disordered atom should have a non-blanc altloc
identifier. However, there are many structures that do not follow this
convention, and have a blank and a non-blank identifier for two
disordered positions of the same atom. This is automatically interpreted
in the right way.
  

9.5.2.2  Broken chains
----------------------
  
  Sometimes a structure contains a list of residues belonging to chain
A, followed by residues belonging to chain B, and again followed by
residues belonging to chain A, i.e. the chains are "broken". This is
correctly interpreted.
  

9.5.3  Fatal errors
===================
  
  Sometimes a PDB file cannot be unambiguously interpreted. Rather than
guessing and risking a mistake, an exception is generated, and the user
is expected to correct the PDB file. These cases are listed below.
  

9.5.3.1  Duplicate residues
---------------------------
  
  All residues in a chain should have a unique id. This id is generated
based on:
  
  
   - The sequence identifier (resseq). 
   - The insertion code (icode). 
   - The hetfield string ("W" for waters and "H_" followed by the
   residue name for other hetero residues) 
   - The residue names of the residues in the case of point mutations
   (to store the Residue objects in a DisorderedResidue object). 
   If this does not lead to a unique id something is quite likely wrong,
and an exception is generated.
  

9.5.3.2  Duplicate atoms
------------------------
  
  All atoms in a residue should have a unique id. This id is generated
based on:
  
  
   - The atom name (without spaces, or with spaces if a problem arises).
   
   - The altloc specifier. 
   If this does not lead to a unique id something is quite likely wrong,
and an exception is generated.
  

9.6  Other features
*=*=*=*=*=*=*=*=*=*

  
  There are also some tools to analyze a crystal structure. Tools exist
to superimpose two coordinate sets (SVDSuperimposer), to extract
polypeptides from a structure (Polypeptide), to perform neighbor lookup
(NeighborSearch) and to write out PDB files (PDBIO). The neighbor lookup
is done using a KD tree module written in C++. It is very fast and also
includes a fast method to find all point pairs within a certain distance
of each other.
  A Polypeptide object is simply a UserList of Residue objects. You can
construct a list of Polypeptide objects from a Structure object as
follows:
<<model_nr=1
  polypeptide_list=build_peptides(structure, model_nr)
  
  for polypeptide in polypeptide_list:
      print polypeptide
>>
  
  The Polypeptide objects are always created from a single Model (in
this case model 1).
  

Chapter 10    Bio.PopGen: Population genetics
*********************************************
  
  Bio.PopGen is a new Biopython module supporting population genetics,
available in Biopython 1.44 onwards.
  The medium term objective for the module is to support widely used
data formats, applications and databases. This module is currently under
intense development and support for new features should appear at a
rather fast pace. Unfortunately this might also entail some instability
on the API, especially if you are using a CVS version. APIs that are
made available on public versions should be much stabler.
  

10.1  GenePop
*=*=*=*=*=*=*

  
  GenePop (http://genepop.curtin.edu.au/) is a popular population
genetics software package supporting Hardy-Weinberg tests, linkage
desiquilibrium, population diferentiation, basic statistics, F_st and
migration estimates, among others. GenePop does not supply sequence
based statistics as it doesn't handle sequence data. The GenePop file
format is supported by a wide range of other population genetic software
applications, thus making it a relevant format in the population
genetics field.
  Bio.PopGen provides a parser and generator of GenePop file format.
Utilities to manipulate the content of a record are also provided. Here
is an example on how to read a GenePop file (you can find example
GenePop data files in the Test/PopGen directory of Biopython):
<<from Bio.PopGen import GenePop
  
  handle = open("example.gen")
  rec = GenePop.parse(handle)
  handle.close()
>>
  
  This will read a file called example.gen and parse it. If you do print
rec, the record will be output again, in GenePop format.
  The most important information in rec will be the loci names and
population information (but there is more -- use help(GenePop.Record) to
check the API documentation). Loci names can be found on rec.loci_list.
Population information can be found on rec.populations. Populations is a
list with one element per population. Each element is itself a list of
individuals, each individual is a pair composed by individual name and a
list of alleles (2 per marker), here is an example for rec.populations:
<<[
      [
          ('Ind1', [(1, 2),    (3, 3), (200, 201)],
          ('Ind2', [(2, None), (3, 3), (None, None)],
      ],
      [
          ('Other1', [(1, 1),  (4, 3), (200, 200)],
      ]
  ]
>>
  
  So we have two populations, the first with two individuals, the second
with only one. The first individual of the first population is called
Ind1, allelic information for each of the 3 loci follows. Please note
that for any locus, information might be missing (see as an example,
Ind2 above).
  A few utility functions to manipulate GenePop records are made
available, here is an example:
<<from Bio.PopGen import GenePop
  
  #Imagine that you have loaded rec, as per the code snippet above...
  
  rec.remove_population(pos)
  #Removes a population from a record, pos is the population position in
  #  rec.populations, remember that it starts on position 0.
  #  rec is altered.
  
  rec.remove_locus_by_position(pos)
  #Removes a locus by its position, pos is the locus position in
  #  rec.loci_list, remember that it starts on position 0.
  #  rec is altered.
  
  rec.remove_locus_by_name(name)
  #Removes a locus by its name, name is the locus name as in
  #  rec.loci_list. If the name doesn't exist the function fails
  #  silently.
  #  rec is altered.
  
  rec_loci = rec.split_in_loci()
  #Splits a record in loci, that is, for each loci, it creates a new
  #  record, with a single loci and all populations.
  #  The result is returned in a dictionary, being each key the locus
name.
  #  The value is the GenePop record.
  #  rec is not altered.
  
  rec_pops =  rec.split_in_pops(pop_names)
  #Splits a record in populations, that is, for each population, it
creates
  #  a new record, with a single population and all loci.
  #  The result is returned in a dictionary, being each key
  #  the population name. As population names are not available in
GenePop,
  #  they are passed in array (pop_names).
  #  The value of each dictionary entry is the GenePop record.
  #  rec is not altered.
>>
  
  GenePop does not support population names, a limitation which can be
cumbersome at times. Functionality to enable population names is
currently being planned for Biopython. These extensions won't break
compatibility in any way with the standard format. In the medium term,
we would also like to support the GenePop web service.
  

10.2  Coalescent simulation
*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  A coalescent simulation is a backward model of population genetics
with relation to time. A simulation of ancestry is done until the Most
Recent Common Ancestor (MRCA) is found. This ancestry relationship
starting on the MRCA and ending on the current generation sample is
sometimes called a genealogy. Simple cases assume a population of
constant size in time, haploidy, no population structure, and simulate
the alleles of a single locus under no selection pressure.
  Coalescent theory is used in many fields like selection detection,
estimation of demographic parameters of real populations or disease gene
mapping.
  The strategy followed in the Biopython implementation of the
coalescent was not to create a new, built-in, simulator from scratch but
to use an existing one, SIMCOAL2
(http://cmpg.unibe.ch/software/simcoal2/). SIMCOAL2 allows for, among
others, population structure, multiple demographic events, simulation of
multiple types of loci (SNPs, sequences, STRs/microsatellites and RFLPs)
with recombination, diploidy multiple chromosomes or ascertainment bias.
Notably SIMCOAL2 doesn't support any selection model. We recommend
reading SIMCOAL2's documentation, available in the link above.
  The input for SIMCOAL2 is a file specifying the desired demography and
genome, the output is a set of files (typically around 1000) with the
simulated genomes of a sample of individuals per subpopulation. This set
of files can be used in many ways, like to compute confidence intervals
where which certain statistics (e.g., F_st or Tajima D) are expected to
lie. Real population genetics datasets statistics can then be compared
to those confidence intervals.
  Biopython coalescent code allows to create demographic scenarios and
genomes and to run SIMCOAL2.
  

10.2.1  Creating scenarios
==========================
  
  Creating a scenario involves both creating a demography and a
chromosome structure. In many cases (e.g. when doing Approximate
Bayesian Computations -- ABC) it is important to test many parameter
variations (e.g. vary the effective population size, N_e, between 10,
50, 500 and 1000 individuals). The code provided allows for the
simulation of scenarios with different demographic parameters very
easily.
  Below we see how we can create scenarios and then how simulate them.
  

10.2.1.1  Demography
--------------------
  
  A few predefined demographies are built-in, all have two shared
parameters: sample size (called sample_size on the template, see below
for its use) per deme and deme size, i.e. subpopulation size (pop_size).
All demographies are available as templates where all parameters can be
varied, each template has a system name. The prefedined
demographies/templates are:
  
  
 Single population, constant size  The standard parameters are enough to
   specifity it. Template name: simple. 
 Single population, bottleneck  As seen on figure 10.2.1.1. The
   parameters are current population size (pop_size on template ne3 on
   figure), time of expansion, given as the generation in the past when
   it occured (expand_gen),  effective population size during bottleneck
   (ne2), time of contraction (contract_gen) and original size in the
   remote past (ne3). Template name: bottle. 
 Island model  The typical island model. The total number of demes is
   specified by total_demes and the migration rate by mig. Template name
   island. 
 Stepping stone model - 1 dimension  The stepping stone model in 1
   dimension, extremes disconnected. The total number of demes is
   total_demes, migration rate is mig. Template name is ssm_1d. 
 Stepping stone model - 2 dimensions  The stepping stone model in 2
   dimensions, extremes disconnected. The parameters are x for the
   horizontal dimension and y for the vertical (being the total number
   of demes x times y), migration rate is mig. Template name is ssm_2d. 
  
    *images/bottle.png* 
  
  In our first example, we will generate a template for a single
population, constant size model with a sample size of 30 and a deme size
of 500. The code for this is:
<<from Bio.PopGen.SimCoal.Template import generate_simcoal_from_template
  
  generate_simcoal_from_template('simple',
      [(1, [('SNP', [24, 0.0005, 0.0])])],
      [('sample_size', [30]),
      ('pop_size', [100])])
>>
  
  Executing this code snippet will generate a file on the current
directory called simple_100_300.par this file can be given as input to
SIMCOAL2 to simulate the demography (below we will see how Biopython can
take care of calling SIMCOAL2).
  This code consists of a single function call, let's discuss it
parameter by parameter.
  The first parameter is the template id (from the list above). We are
using the id 'simple' which is the template for a single population of
constant size along time.
  The second parameter is the chromosome structure. Please ignore it for
now, it will be explained in the next section.
  The third parameter is a list of all required parameters (recall that
the simple model only needs sample_size and pop_size) and possible
values (in this case each parameter only has a possible value).
  Now, let's consider an example where we want to generate several
island models, and we are interested in varying the number of demes: 10,
50 and 100 with a migration rate of 1%. Sample size and deme size will
be the same as before. Here is the code:
<<from Bio.PopGen.SimCoal.Template import generate_simcoal_from_template
  
  generate_simcoal_from_template('island',
      [(1, [('SNP', [24, 0.0005, 0.0])])],
      [('sample_size', [30]),
      ('pop_size', [100]),
      ('mig', [0.01]),
      ('total_demes', [10, 50, 100])])
>>
  
  In this case, 3 files will be generated: island_100_0.01_100_30.par,
island_10_0.01_100_30.par and island_50_0.01_100_30.par. Notice the rule
to make file names: template name, followed by parameter values in
reverse order.
  A few, arguably more esoteric template demographies exist (please
check the Bio/PopGen/SimCoal/data directory on Biopython source tree).
Furthermore it is possible for the user to create new templates. That
functionality will be discussed in a future version of this document.
  

10.2.1.2  Chromosome structure
------------------------------
  
  We strongly recommend reading SIMCOAL2 documentation to understand the
full potential available in modeling chromosome structures. In this
subsection we only discuss how to implement chromosome structures using
the Biopython interface, not the underlying SIMCOAL2 capabilities.
  We will start by implementing a single chromosome, with 24 SNPs with a
recombination rate immediately on the right of each locus of 0.0005 and
a minimum frequency of the minor allele of 0. This will be specified by
the following list (to be passed as second parameter to the function
generate_simcoal_from_template):
<<[(1, [('SNP', [24, 0.0005, 0.0])])]
>>
  
  This is actually the chromosome structure used in the above examples.
  The chromosome structure is represented by a list of chromosomes, each
chromosome (i.e., each element in the list) is composed by a tuple (a
pair): the first element is the number of times the chromosome is to be
repeated (as there might be interest in repeating the same chromosome
many times). The second element is a list of the actual components of
the chromosome. Each element is again a pair, the first member is the
locus type and the second element the parameters for that locus type.
Confused? Before showing more examples let's review the example above:
We have a list with one element (thus one chromosome), the chromosome is
a single instance (therefore not to be repeated), it is composed of 24
SNPs, with a recombination rate of 0.0005 between each consecutive SNP,
the minimum frequency of the minor allele is 0.0 (i.e, it can be absent
from a certain population).
  Let's see a more complicated example:
<<[
    (5, [
         ('SNP', [24, 0.0005, 0.0])
        ]
    ),
    (2, [
         ('DNA', [10, 0.0, 0.00005, 0.33]),
         ('RFLP', [1, 0.0, 0.0001]),
         ('MICROSAT', [1, 0.0, 0.001, 0.0, 0.0])
        ]
    )
  ]
>>
  
  We start by having 5 chromosomes with the same structure as above
(i.e., 24 SNPs). We then have 2 chromosomes which have a DNA sequence
with 10 nucleotides, 0.0 recombination rate, 0.0005 mutation rate, and a
transition rate of 0.33. Then we have an RFLP with 0.0 recombination
rate to the next locus and a 0.0001 mutation rate. Finally we have a
microsatellite (or STR), with 0.0 recombination rate to the next locus
(note, that as this is a single microsatellite which has no loci
following, this recombination rate here is irrelevant), with a mutation
rate of 0.001, geometric paramater of 0.0 and a range constraint of 0.0
(for information about this parameters please consult the SIMCOAL2
documentation, you can use them to simulate various mutation models,
including the typical -- for microsatellites -- stepwise mutation model
among others).
  

10.2.2  Running SIMCOAL2
========================
  
  We now discuss how to run SIMCOAL2 from inside Biopython. It is
required that the binary for SIMCOAL2 is called simcoal2 (or
simcoal2.exe on Windows based platforms), please note that the typical
name when downloading the program is in the format simcoal2_x_y. As
such, when installing SIMCOAL2 you will need to rename of the downloaded
executable so that Biopython can find it.
  It is possible to run SIMCOAL2 on files that were not generated using
the method above (e.g., writing a parameter file by hand), but we will
show an example by creating a model using the framework presented above.
<<from Bio.PopGen.SimCoal.Template import generate_simcoal_from_template
  from Bio.PopGen.SimCoal.Controller import SimCoalController
  
  
  generate_simcoal_from_template('simple',
      [
        (5, [
             ('SNP', [24, 0.0005, 0.0])
            ]
        ),
        (2, [
             ('DNA', [10, 0.0, 0.00005, 0.33]),
             ('RFLP', [1, 0.0, 0.0001]),
             ('MICROSAT', [1, 0.0, 0.001, 0.0, 0.0])
            ]
        )
      ],
      [('sample_size', [30]),
      ('pop_size', [100])])
  
  ctrl = SimCoalController('.')
  ctrl.run_simcoal('simple_100_30.par', 50)
>>
  
  The lines of interest are the last two (plus the new import). Firstly
a controller for the application is created. The directory where the
binary is located has to be specified.
  The simulator is then run on the last line: we know, from the rules
explained above, that the input file name is simple_100_30.par for the
simulation parameter file created. We then specify that we want to run
50 independent simulations, by default Biopython requests a simulation
of diploid data, but a third parameter can be added to simulate haploid
data (adding as a parameter the string '0'). SIMCOAL2 will now run
(please note that this can take quite a lot of time) and will create a
directory with the simulation results. The results can now be analysed
(typically studying the data with Arlequin3). In the future Biopython
might support reading the Arlequin3 format and thus allowing for the
analysis of SIMCOAL2 data inside Biopython.
  

10.3  Other applications
*=*=*=*=*=*=*=*=*=*=*=*=

  
  Here we discuss interfaces and utilities to deal with population
genetics' applications which arguably have a smaller user base.
  

10.3.1  FDist: Detecting selection and molecular adaptation
===========================================================
  
  FDist is a selection detection application suite based on computing
(i.e. simulating) a "neutral" confidence interval based on F_st and
heterozygosity. Markers (which can be SNPs, microsatellites, AFLPs among
others) which lie outside the "neutral" interval are to be considered as
possible candidates for being under selection.
  FDist is mainly used when the number of markers is considered enough
to estimate an average F_st, but not enough to either have outliers
calculated from the dataset directly or, with even more markers for
which the relative positions in the genome are known, to use approaches
based on, e.g., Extended Haplotype Heterozygosity (EHH).
  The typical usage pattern for FDist is as follows:
  
  
   1. Import a dataset from an external format into FDist format. 
   2. Compute average F_st. This is done by datacal inside FDist. 
   3. Simulate "neutral" markers based on the average F_st and expected
   number of total populations. This is the core operation, done by
   fdist inside FDist. 
   4. Calculate the confidence interval, based on the desired confidence
   boundaries (typically 95% or 99%). This is done by cplot and is
   mainly used to plot the interval. 
   5. Assess each marker status against the simulation "neutral"
   confidence interval. Done by pv. This is used to detect the outlier
   status of each marker against the simulation. 
  
  We will now discuss each step with illustrating example code (for this
example to work FDist binaries have to be on the executable PATH).
  The FDist data format is application specific and is not used at all
by other applications, as such you will probably have to convert your
data for use with FDist. Biopython can help you do this. Here is an
example converting from GenePop format to FDist format (along with
imports that will be needed on examples further below):
<<from Bio.PopGen import GenePop
  from Bio.PopGen import FDist
  from Bio.PopGen.FDist import Controller
  from Bio.PopGen.FDist.Utils import convert_genepop_to_fdist
  
  gp_rec = GenePop.parse(open("example.gen"))
  fd_rec = convert_genepop_to_fdist(gp_rec)
  in_file = open("infile", "w")
  in_file.write(str(fd_rec))
  in_file.close()
>>
  
  In this code we simply parse a GenePop file and convert it to a FDist
record.
  Printing an FDist record will generate a string that can be directly
saved to a file and supplied to FDist. FDist requires the input file to
be called infile, therefore we save the record on a file with that name.
  The most important fields on a FDist record are: num_pops, the number
of populations; num_loci, the number of loci and loci_data with the
marker data itself. Most probably the details of the record are of no
interest to the user, as the record only purpose is to be passed to
FDist.
  The next step is to calculate the average F_st of the dataset (along
with the sample size):
<<ctrl = Controller.FDistController()
  fst, samp_size = ctrl.run_datacal()
>>
  
  On the first line we create an object to control the call of FDist
suite, this object will be used further on in order to call other suite
applications.
  On the second line we call the datacal application which computes the
average F_st and the sample size. It is worth noting that the F_st
computed by datacal is a variation of Weir and Cockerham's theta.
  We can now call the main fdist application in order to simulate
neutral markers.
<<sim_fst = ctrl.run_fdist(npops = 15, nsamples = fd_rec.num_pops, fst =
fst,
      sample_size = samp_size, mut = 0, num_sims = 40000)
>>
  
  
  
 npops  Number of populations existing in nature. This is really a
   "guestimate". Has to be lower than 100. 
 nsamples  Number of populations sampled, has to be lower than npops. 
 fst  Average F_st. 
 sample_size  Average number of individuals sampled on each population. 
 mut  Mutation model: 0 - Infinite alleles; 1 - Stepwise mutations 
 num_sims  Number of simulations to perform. Typically a number around
   40000 will be OK, but if you get a confidence interval that looks
   sharp (this can be detected when plotting the confidence interval
   computed below) the value can be increased (a suggestion would be
   steps of 10000 simulations). 
  
  The confusion in wording between number of samples and sample size
stems from the original application.
  A file named out.dat will be created with the simulated
heterozygosities and F_sts, it will have as many lines as the number of
simulations requested.
  Note that fdist returns the average F_st that it was capable of
simulating, for more details about this issue please read below the
paragraph on approximating the desired average F_st.
  The next (optional) step is to calculate the confidence interval:
<<cpl_interval = ctrl.run_cplot(ci=0.99)
>>
  
  You can only call cplot after having run fdist.
  This will calculate the confidence intervals (99% in this case) for a
previous fdist run. A list of quadruples is returned. The first element
represents the heterozygosity, the second the lower bound of F_st
confidence interval for that heterozygosity, the third the average and
the fourth the upper bound. This can be used to trace the confidence
interval contour. This list is also written to a file, out.cpl.
  The main purpose of this step is return a set of points which can be
easily used to plot a confidence interval. It can be skipped if the
objective is only to assess the status of each marker against the
simulation, which is the next step...
<<pv_data = ctrl.run_pv()
>>
  
  You can only call cplot after having run datacal and fdist.
  This will use the simulated markers to assess the status of each
individual real marker. A list, in the same order than the loci_list
that is on the FDist record (which is in the same order that the GenePop
record) is returned. Each element in the list is a quadruple, the
fundamental member of each quadruple is the last element (regarding the
other elements, please refer to the pv documentation -- for the sake of
simplicity we will not discuss them here) which returns the probability
of the simulated F_st being lower than the marker F_st. Higher values
would indicate a stronger candidate for positive selection, lower values
a candidate for balancing selection, and intermediate values a possible
neutral marker. What is "higher", "lower" or "intermediate" is really a
subjective issue, but taking a "confidence interval" approach and
considering a 95% confidence interval, "higher" would be between 0.95
and 1.0, "lower" between 0.0 and 0.05 and "intermediate" between 0.05
and 0.95.
  

10.3.1.1  Approximating the desired average F_st
------------------------------------------------
  
  Fdist tries to approximate the desired average F_st by doing a
coalescent simulation using migration rates based on the formula
                                  1 - F   
                                          
                             N         st 
                                = ------- 
                              m    4F     
                                          
                                     st   
  
  This formula assumes a few premises like an infinite number of
populations.
  In practice, when the number of populations is low, the mutation model
is stepwise and the sample size increases, fdist will not be able to
simulate an acceptable approximate average F_st.
  To address that, a function is provided to iteratively approach the
desired value by running several fdists in sequence. This approach is
computationally more intensive than running a single fdist run, but
yields good results. The following code runs fdist approximating the
desired F_st:
<<sim_fst = ctrl.run_fdist_force_fst(npops = 15, nsamples =
fd_rec.num_pops,
      fst = fst, sample_size = samp_size, mut = 0, num_sims = 40000,
      limit = 0.05)
>>
  
  The only new optional parameter, when comparing with run_fdist, is
limit which is the desired maximum error. run_fdist can (and probably
should) be safely replaced with run_fdist_force_fst.
  

10.3.1.2  Final notes
---------------------
  
  The process to determine the average F_st can be more sophisticated
than the one presented here. For more information we refer you to the
FDist README file. Biopython's code can be used to implement more
sophisticated approaches.
  

10.4  Future Developments
*=*=*=*=*=*=*=*=*=*=*=*=*

  
  The most desired future developments would be the ones you add
yourself ;) .
  That being said, already existing fully functional code is currently
being incorporated in Bio.PopGen, that code covers the applications
FDist and SimCoal2, the HapMap and UCSC Table Browser databases and some
simple statistics like F_st, or allele counts.
  

Chapter 11    Supervised learning methods
*****************************************
  
  Note the supervised learning methods described in this chapter all
require Numerical Python (numpy) to be installed.
  

11.1  The Logistic Regression Model
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

   
  

11.1.1  Background and Purpose
==============================
  
  Logistic regression is a supervised learning approach that attempts to
distinguish K classes from each other using a weighted sum of some
predictor variables x_i. The logistic regression model is used to
calculate the weights beta_i of the predictor variables. In Biopython,
the logistic regression model is currently implemented for two classes
only (K = 2); the number of predictor variables has no predefined limit.
  As an example, let's try to predict the operon structure in bacteria.
An operon is a set of adjacent genes on the same strand of DNA that are
transcribed into a single mRNA molecule. Translation of the single mRNA
molecule then yields the individual proteins. For Bacillus subtilis,
whose data we will be using, the average number of genes in an operon is
about 2.4.
  As a first step in understanding gene regulation in bacteria, we need
to know the operon structure. For about 10% of the genes in Bacillus
subtilis, the operon structure is known from experiments. A supervised
learning method can be used to predict the operon structure for the
remaining 90% of the genes.
  For such a supervised learning approach, we need to choose some
predictor variables x_i that can be measured easily and are somehow
related to the operon structure. One predictor variable might be the
distance in base pairs between genes. Adjacent genes belonging to the
same operon tend to be separated by a relatively short distance, whereas
adjacent genes in different operons tend to have a larger space between
them to allow for promoter and terminator sequences. Another predictor
variable is based on gene expression measurements. By definition, genes
belonging to the same operon have equal gene expression profiles, while
genes in different operons are expected to have different expression
profiles. In practice, the measured expression profiles of genes in the
same operon are not quite identical due to the presence of measurement
errors. To assess the similarity in the gene expression profiles, we
assume that the measurement errors follow a normal distribution and
calculate the corresponding log-likelihood score.
  We now have two predictor variables that we can use to predict if two
adjacent genes on the same strand of DNA belong to the same operon: 
  
   - x_1: the number of base pairs between them; 
   - x_2: their similarity in expression profile. 
  
  In a logistic regression model, we use a weighted sum of these two
predictors to calculate a joint score S: 
               S = beta  + beta  x  + beta  x             
                                              .     (11.1)
                       0       1  1       2  2            
   The logistic regression model gives us appropriate values for the
parameters beta_0, beta_1, beta_2 using two sets of example genes: 
  
   - OP: Adjacent genes, on the same strand of DNA, known to belong to
   the same operon; 
   - NOP: Adjacent genes, on the same strand of DNA, known to belong to
   different operons. 
  
  In the logistic regression model, the probability of belonging to a
class depends on the score via the logistic function. For the two
classes OP and NOP, we can write this as 
                                  (beta  + beta  x  + beta  x           
                                       
                               exp                            )         
                                       
                 |x , x                0       1  1       2  2          
                                       
            Pr(OP       )  =  ----------------------------------        
                                (11.2) 
                   1   2           (beta  + beta  x  + beta  x          
                                       
                              1+exp                            )        
                                       
                                        0       1  1       2  2         
                                       
                                              1                         
                                       
                 |x , x       ----------------------------------        
                                       
           Pr(NOP       )  =       (beta  + beta  x  + beta  x          
                                (11.3) 
                   1   2      1+exp                            )        
                                       
                                        0       1  1       2  2         
                                       
   Using a set of gene pairs for which it is known whether they belong
to the same operon (class OP) or to different operons (class NOP), we
can calculate the weights beta_0, beta_1, beta_2 by maximizing the
log-likelihood corresponding to the probability functions (11.2) and
(11.3).
  

11.1.2  Training the logistic regression model
==============================================
   
        --------------------------------------------------------
   
                                     
  Table 11.1: Adjacent gene pairs known to belong to the same operon
(class OP) or to different operons (class NOP). Intergene distances are
negative if the two genes overlap.
                                     
------------------------------------------------------------------------
                                  ----
    |   Gene pair   |Intergene distance (x_1)|Gene expression score
                              (x_2)|Class|
------------------------------------------------------------------------
                                  ----
 |cotJA --- cotJB|          -53           |          -200.78          |
                                 OP  |
 | yesK --- yesL |          117           |          -267.14          |
                                 OP  |
 | lplA --- lplB |           57           |          -163.47          |
                                 OP  |
 | lplB --- lplC |           16           |          -190.30          |
                                 OP  |
 | lplC --- lplD |           11           |          -220.94          |
                                 OP  |
 | lplD --- yetF |           85           |          -193.94          |
                                 OP  |
 | yfmT --- yfmS |           16           |          -182.71          |
                                 OP  |
 | yfmF --- yfmE |           15           |          -180.41          |
                                 OP  |
 | citS --- citT |          -26           |          -181.73          |
                                 OP  |
 | citM --- yflN |           58           |          -259.87          |
                                 OP  |
 | yfiI --- yfiJ |          126           |          -414.53          |
                                 NOP |
 | lipB --- yfiQ |          191           |          -249.57          |
                                 NOP |
 | yfiU --- yfiV |          113           |          -265.28          |
                                 NOP |
 | yfhH --- yfhI |          145           |          -312.99          |
                                 NOP |
 | cotY --- cotX |          154           |          -213.83          |
                                 NOP |
 | yjoB --- rapA |          147           |          -380.85          |
                                 NOP |
 | ptsI --- splA |           93           |          -291.13          |
                                 NOP |
------------------------------------------------------------------------
                                  ----
                                      
   
        --------------------------------------------------------
  
  Table 11.1 lists some of the Bacillus subtilis gene pairs for which
the operon structure is known. Let's calculate the logistic regression
model from these data:
<<>>> from Bio import LogisticRegression
  >>> xs = [[-53, -200.78],
            [117, -267.14],
            [57, -163.47],
            [16, -190.30],
            [11, -220.94],
            [85, -193.94],
            [16, -182.71],
            [15, -180.41],
            [-26, -181.73],
            [58, -259.87],
            [126, -414.53],
            [191, -249.57],
            [113, -265.28],
            [145, -312.99],
            [154, -213.83],
            [147, -380.85],
            [93, -291.13]]
  >>> ys = [1,
            1,
            1,
            1,
            1,
            1,
            1,
            1,
            1,
            1,
            0,
            0,
            0,
            0,
            0,
            0,
            0]
  >>> model = LogisticRegression.train(xs, ys)
>>
  
  Here, 'xs' and 'ys' are the training data: 'xs' contains the predictor
variables for each gene pair, and 'ys' specifies if the gene pair
belongs to the same operon ('1', class OP) or different operons ('0',
class NOP). The resulting logistic regression model is stored in
'model', which contains the weights beta_0, beta_1, and beta_2:
<<>>> model.beta
  [8.9830290157144681, -0.035968960444850887, 0.02181395662983519]
>>
  
  Note that beta_1 is negative, as gene pairs with a shorter intergene
distance have a higher probability of belonging to the same operon
(class OP). On the other hand, beta_2 is positive, as gene pairs
belonging to the same operon typically have a higher similarity score of
their gene expression profiles. The parameter beta_0 is positive due to
the higher prevalence of operon gene pairs than non-operon gene pairs in
the training data.
  The function 'train' has two optional arguments: 'update_fn' and
'typecode'. The 'update_fn' can be used to specify a callback function,
taking as arguments the iteration number and the log-likelihood. With
the callback function, we can for example track the progress of the
model calculation (which uses a Newton-Raphson iteration to maximize the
log-likelihood function of the logistic regression model):
<<>>> def show_progress(iteration, loglikelihood):
          print "Iteration:", iteration, "Log-likelihood function:",
loglikelihood
  >>>
  >>> model = LogisticRegression.train(xs, ys, update_fn=show_progress)
  Iteration: 0 Log-likelihood function: -11.7835020695
  Iteration: 1 Log-likelihood function: -7.15886767672
  Iteration: 2 Log-likelihood function: -5.76877209868
  Iteration: 3 Log-likelihood function: -5.11362294338
  Iteration: 4 Log-likelihood function: -4.74870642433
  Iteration: 5 Log-likelihood function: -4.50026077146
  Iteration: 6 Log-likelihood function: -4.31127773737
  Iteration: 7 Log-likelihood function: -4.16015043396
  Iteration: 8 Log-likelihood function: -4.03561719785
  Iteration: 9 Log-likelihood function: -3.93073282192
  Iteration: 10 Log-likelihood function: -3.84087660929
  Iteration: 11 Log-likelihood function: -3.76282560605
  Iteration: 12 Log-likelihood function: -3.69425027154
  Iteration: 13 Log-likelihood function: -3.6334178602
  Iteration: 14 Log-likelihood function: -3.57900855837
  Iteration: 15 Log-likelihood function: -3.52999671386
  Iteration: 16 Log-likelihood function: -3.48557145163
  Iteration: 17 Log-likelihood function: -3.44508206139
  Iteration: 18 Log-likelihood function: -3.40799948447
  Iteration: 19 Log-likelihood function: -3.3738885624
  Iteration: 20 Log-likelihood function: -3.3423876581
  Iteration: 21 Log-likelihood function: -3.31319343769
  Iteration: 22 Log-likelihood function: -3.2860493346
  Iteration: 23 Log-likelihood function: -3.2607366863
  Iteration: 24 Log-likelihood function: -3.23706784091
  Iteration: 25 Log-likelihood function: -3.21488073614
  Iteration: 26 Log-likelihood function: -3.19403459259
  Iteration: 27 Log-likelihood function: -3.17440646052
  Iteration: 28 Log-likelihood function: -3.15588842703
  Iteration: 29 Log-likelihood function: -3.13838533947
  Iteration: 30 Log-likelihood function: -3.12181293595
  Iteration: 31 Log-likelihood function: -3.10609629966
  Iteration: 32 Log-likelihood function: -3.09116857282
  Iteration: 33 Log-likelihood function: -3.07696988017
  Iteration: 34 Log-likelihood function: -3.06344642288
  Iteration: 35 Log-likelihood function: -3.05054971191
  Iteration: 36 Log-likelihood function: -3.03823591619
  Iteration: 37 Log-likelihood function: -3.02646530573
  Iteration: 38 Log-likelihood function: -3.01520177394
  Iteration: 39 Log-likelihood function: -3.00441242601
  Iteration: 40 Log-likelihood function: -2.99406722296
  Iteration: 41 Log-likelihood function: -2.98413867259
>>
  
  The iteration stops once the increase in the log-likelihood function
is less than 0.01. If no convergence is reached after 500 iterations,
the 'train' function returns with an 'AssertionError'.
  The optional keyword 'typecode' can almost always be ignored. This
keyword allows the user to choose the type of Numeric matrix to use. In
particular, to avoid memory problems for very large problems, it may be
necessary to use single-precision floats (Float8, Float16, etc.) rather
than double, which is used by default.
  

11.1.3  Using the logistic regression model for classification
==============================================================
  
  Classification is performed by calling the 'classify' function. Given
a logistic regression model and the values for x_1 and x_2 (e.g. for a
gene pair of unknown operon structure), the 'classify' function returns
'1' or '0', corresponding to class OP and class NOP, respectively. For
example, let's consider the gene pairs yxcE, yxcD and yxiB, yxiA:
        --------------------------------------------------------
   
                                     
  Table 11.2: Adjacent gene pairs of unknown operon status.
                                     
    ----------------------------------------------------------------
    |  Gene pair  |Intergene distance x_1|Gene expression score x_2|
    ----------------------------------------------------------------
    |yxcE --- yxcD|          6           |     -173.143442352      |
    |yxiB --- yxiA|         309          |     -271.005880394      |
    ----------------------------------------------------------------
                                     
   
        --------------------------------------------------------
  
  The logistic regression model classifies yxcE, yxcD as belonging to
the same operon (class OP), while yxiB, yxiA are predicted to belong to
different operons: 
<<>>> print "yxcE, yxcD:", LogisticRegression.classify(model,
[6,-173.143442352])
  yxcE, yxcD: 1
  >>> print "yxiB, yxiA:", LogisticRegression.classify(model, [309,
-271.005880394])
  yxiB, yxiA: 0
>>
  (which, by the way, agrees with the biological literature).
  To find out how confident we can be in these predictions, we can call
the 'calculate' function to obtain the probabilities (equations (11.2)
and 11.3) for class OP and NOP. For yxcE, yxcD we find 
<<>>> q, p = LogisticRegression.calculate(model, [6,-173.143442352])
  >>> print "class OP: probability =", p, "class NOP: probability =", q
  class OP: probability = 0.993242163503 class NOP: probability =
0.00675783649744
>>
  and for yxiB, yxiA 
<<>>> q, p = LogisticRegression.calculate(model, [309, -271.005880394])
  >>> print "class OP: probability =", p, "class NOP: probability =", q
  class OP: probability = 0.000321211251817 class NOP: probability =
0.999678788748
>>
  
  To get some idea of the prediction accuracy of the logistic regression
model, we can apply it to the training data: 
<<>>> for i in range(len(ys)):
          print "True:", ys[i], "Predicted:",
LogisticRegression.classify(model, xs[i])
  True: 1 Predicted: 1
  True: 1 Predicted: 0
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
>>
  showing that the prediction is correct for all but one of the gene
pairs. A more reliable estimate of the prediction accuracy can be found
from a leave-one-out analysis, in which the model is recalculated from
the training data after removing the gene to be predicted: 
<<>>> for i in range(len(ys)):
          model = LogisticRegression.train(xs[:i]+xs[i+1:],
ys[:i]+ys[i+1:])
          print "True:", ys[i], "Predicted:",
LogisticRegression.classify(model, xs[i])
  True: 1 Predicted: 1
  True: 1 Predicted: 0
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 1
  True: 0 Predicted: 0
  True: 0 Predicted: 0
>>
  The leave-one-out analysis shows that the prediction of the logistic
regression model is incorrect for only two of the gene pairs, which
corresponds to a prediction accuracy of 88%.
  

11.1.4  Logistic Regression, Linear Discriminant Analysis, and Support
======================================================================
Vector Machines
===============
  
  The logistic regression model is similar to linear discriminant
analysis. In linear discriminant analysis, the class probabilities also
follow equations (11.2) and (11.3). However, instead of estimating the
coefficients beta directly, we first fit a normal distribution to the
predictor variables x. The coefficients beta are then calculated from
the means and covariances of the normal distribution. If the
distribution of x is indeed normal, then we expect linear discriminant
analysis to perform better than the logistic regression model. The
logistic regression model, on the other hand, is more robust to
deviations from normality.
  Another similar approach is a support vector machine with a linear
kernel. Such an SVM also uses a linear combination of the predictors,
but estimates the coefficients beta from the predictor variables x near
the boundary region between the classes. If the logistic regression
model (equations (11.2) and (11.3)) is a good description for x away
from the boundary region, we expect the logistic regression model to
perform better than an SVM with a linear kernel, as it relies on more
data. If not, an SVM with a linear kernel may perform better.
  Trevor Hastie, Robert Tibshirani, and Jerome Friedman: The Elements of
Statistical Learning. Data Mining, Inference, and Prediction. Springer
Series in Statistics, 2001. Chapter 4.4.
  

11.2  k-Nearest Neighbors
*=*=*=*=*=*=*=*=*=*=*=*=*

  
  

11.2.1  Background and purpose
==============================
  
  The k-nearest neighbors method is a supervised learning approach that
does not need to fit a model to the data. Instead, data points are
classified based on the categories of the k nearest neighbors in the
training data set.
  In Biopython, the k-nearest neighbors method is available in
'Bio.kNN'. To illustrate the use of the k-nearest neighbor method in
Biopython, we will use the same operon data set as in section 11.1.
  

11.2.2  Initializing a k-nearest neighbors model
================================================
  
  Using the data in Table 11.1, we create and initialize a k-nearest
neighbors model as follows:
<<>>> from Bio import kNN
  >>> k = 3
  >>> model = kNN.train(xs, ys, k)
>>
  
  where 'xs' and 'ys' are the same as in Section 11.1.2. Here, 'k' is
the number of neighbors k that will be considered for the
classification. For classification into two classes, choosing an odd
number for k lets you avoid tied votes. The function name 'train' is a
bit of a misnomer, since no model training is done: this function simply
stores 'xs', 'ys', and 'k' in 'model'.
  

11.2.3  Using a k-nearest neighbors model for classification
============================================================
  
  To classify new data using the k-nearest neighbors model, we use the
'classify' function. This function takes a data point (x_1,x_2) and
finds the k-nearest neighbors in the training data set 'xs'. The data
point (x_1, x_2) is then classified based on which category ('ys')
occurs most among the k neighbors.
  For the example of the gene pairs yxcE, yxcD and yxiB, yxiA, we find: 
<<>>> x = [6, -173.143442352]
  >>> print "yxcE, yxcD:", kNN.classify(model, x)
  yxcE, yxcD: 1
  >>> x = [309, -271.005880394]
  >>> print "yxiB, yxiA:", kNN.classify(model, x)
  yxiB, yxiA: 0
>>
  In agreement with the logistic regression model, yxcE, yxcD are
classified as belonging to the same operon (class OP), while yxiB, yxiA
are predicted to belong to different operons.
  The 'classify' function lets us specify both a distance function and a
weight function as optional arguments. The distance function affects
which k neighbors are chosen as the nearest neighbors, as these are
defined as the neighbors with the smallest distance to the query point
(x, y). By default, the Euclidean distance is used. Instead, we could
for example use the city-block (Manhattan) distance:
<<>>> def cityblock(x1, x2):
  ...    assert len(x1)==2
  ...    assert len(x2)==2
  ...    distance = abs(x1[0]-x2[0]) + abs(x1[1]-x2[1])
  ...    return distance
  ...
  >>> x = [6, -173.143442352]
  >>> print "yxcE, yxcD:", kNN.classify(model, x, distance_fn =
cityblock)
  yxcE, yxcD: 1
>>
  
  The weight function can be used for weighted voting. For example, we
may want to give closer neighbors a higher weight than neighbors that
are further away:
<<>>> def weight(x1, x2):
  ...    assert len(x1)==2
  ...    assert len(x2)==2
  ...    return exp(-abs(x1[0]-x2[0]) - abs(x1[1]-x2[1]))
  ...
  >>> x = [6, -173.143442352]
  >>> print "yxcE, yxcD:", kNN.classify(model, x, weight_fn = weight)
  yxcE, yxcD: 1
>>
  By default, all neighbors are given an equal weight.
  To find out how confident we can be in these predictions, we can call
the 'calculate' function, which will calculate the total weight assigned
to the classes OP and NOP. For the default weighting scheme, this
reduces to the number of neighbors in each category. For yxcE, yxcD, we
find 
<<>>> x = [6, -173.143442352]
  >>> weight = kNN.calculate(model, x)
  >>> print "class OP: weight =", weight[0], "class NOP: weight =",
weight[1]
  class OP: weight = 0.0 class NOP: weight = 3.0
>>
  which means that all three neighbors of 'x1', 'x2' are in the NOP
class. As another example, for yesK, yesL we find
<<>>> x = [117, -267.14]
  >>> weight = kNN.calculate(model, x)
  >>> print "class OP: weight =", weight[0], "class NOP: weight =",
weight[1]
  class OP: weight = 2.0 class NOP: weight = 1.0
>>
  which means that two neighbors are operon pairs and one neighbor is a
non-operon pair.
  To get some idea of the prediction accuracy of the k-nearest neighbors
approach, we can apply it to the training data: 
<<>>> for i in range(len(ys)):
          print "True:", ys[i], "Predicted:", kNN.classify(model, xs[i])
  True: 1 Predicted: 1
  True: 1 Predicted: 0
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
>>
  showing that the prediction is correct for all but two of the gene
pairs. A more reliable estimate of the prediction accuracy can be found
from a leave-one-out analysis, in which the model is recalculated from
the training data after removing the gene to be predicted: 
<<>>> for i in range(len(ys)):
          model = kNN.train(xs[:i]+xs[i+1:], ys[:i]+ys[i+1:])
          print "True:", ys[i], "Predicted:", kNN.classify(model, xs[i])
  True: 1 Predicted: 1
  True: 1 Predicted: 0
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 1
  True: 1 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 1
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 0
  True: 0 Predicted: 1
>>
  The leave-one-out analysis shows that k-nearest neighbors model is
correct for 13 out of 17 gene pairs, which corresponds to a prediction
accuracy of 76%.
  

11.3  Naive Bayes
*=*=*=*=*=*=*=*=*

  
  This section will describe the 'Bio.NaiveBayes' module.
  

11.4  Maximum Entropy
*=*=*=*=*=*=*=*=*=*=*

  
  This section will describe the 'Bio.MaximumEntropy' module.
  

11.5  Markov Models
*=*=*=*=*=*=*=*=*=*

  
  This section will describe the 'Bio.MarkovModel' and/or
'Bio.HMM.MarkovModel' modules.
  

Chapter 12    Graphics including GenomeDiagram
**********************************************
   
  The 'Bio.Graphics' module depends on the third party python library
ReportLab (1). Although focused on producing PDF files, ReportLab can
also create encapsulated postscript (EPS) and (SVG) files. In addition
to these vector based images, provided certain further dependencies such
as the Python Imaging Library (PIL) (2) are installed, ReportLab can
also output bitmap images (including JPEG, PNG, GIF, BMP and PICT
formats).
  

12.1  GenomeDiagram
*=*=*=*=*=*=*=*=*=*



12.1.1  Introduction
====================
  
  The 'Bio.Graphics.GenomeDiagram' module is a new addition to Biopython
1.50, having previously been available as a separate python module
dependent on Biopython. GenomeDiagram is described in the Bioinformatics
journal publication Pritchard et al. (2006),
doi:10.1093/bioinformatics/btk021 (3), and there are several examples
images and documentation for the old separate version available at
http://bioinf.scri.ac.uk/lp/programs.php#genomediagram.
  As the name might suggest, GenomeDiagram was designed for drawing
whole genomes, in particular prokaryotic genomes, either as linear
diagrams (optionally broken up into fragments to fit better) or as
circular wheel diagrams. It proves also well suited to drawing quite
detailed figures for smaller genomes such as phage, plasmids or
mitochrondia.
  This module is easiest to use if you have your genome loaded as a
'SeqRecord' object containing lots of 'SeqFeature' objects - for example
as loaded from a GenBank file (see Chapter 4).
  

12.1.2  Diagrams, tracks, feature-sets and features
===================================================
  
  GenomeDiagram uses a nested set of objects. At the top level, you have
a diagram object representing a sequence (or sequence region) along the
horizontal axis (or circle). A diagram can contain one or more tracks,
shown stacked vertically (or radially on circular diagrams). These will
all have the same length and represent the same sequence region. You
might use one track to show the gene locations, another to show
regulatory regions, and a third track to show the GC percentage.
  The most commonly used type of track will contain features, bundled
together in feature-sets. You might choose to use one feature-set for
all your CDS features, and another for tRNA features. This isn't
required - they can all go in the same feature-set, but it makes it
easier to update the properties of just selected features (e.g. make all
the tRNA features red).
  There are two main ways to build up a complete diagram. Firstly, the
top down approach where you create a diagram object, and then using its
methods add track(s), and use the track methods to add feature-set(s),
and use their methods to add the features. Secondly, you can create the
individual objects separately (in whatever order suits your code), and
them combine them.
  

12.1.3  A top down example
==========================
   
  We're going to draw a whole genome from a 'SeqRecord' object read in
from a GenBank file (see Chapter 4). This example uses the pPCP1 plasmid
from Yersinia pestis biovar Microtus, the file is included with the
Biopython unit tests under the GenBank folder, or online
NC_005816.gb (4) from our website.
<<from reportlab.lib import colors
  from reportlab.lib.units import cm
  from Bio.Graphics import GenomeDiagram
  from Bio import SeqIO
  record = SeqIO.read(open("NC_005816.gb"), "genbank")
>>
  
  We're using a top down approach, so after loading in our sequence we
next create an empty diagram, then add an (empty) track, and to that add
an (empty) feature set:
<<gd_diagram = GenomeDiagram.Diagram("Yersinia pestis biovar Microtus
plasmid pPCP1")
  gd_track_for_features = gd_diagram.new_track(1, name="Annotated
Features")
  gd_feature_set = gd_track_for_features.new_set()
>>
  
  Now the fun part - we take each gene 'SeqFeature' objects in our
'SeqRecord', and use it to generate a feature on the diagram. I'm going
color them blue, alternating between a dark blue and a light blue. 
<<for feature in record.features:
      if feature.type != "gene" :
          #Exclude this feature
          continue
      if len(gd_feature_set) % 2 == 0 :
          color = colors.blue
      else :
          color = colors.lightblue
      gd_feature_set.add_feature(feature, color=color, label=True)
>>
  
  Now we come to actually making the output file. This happens in two
steps, first we call the 'draw' method, which creates all the shapes
using ReportLab objects. Then we call the 'write' method which renders
these to the requested file format. Note you can output in multiple file
formats:
<<gd_diagram.draw(format="linear", orientation="landscape",
pagesize='A4',
                  fragments=4, start=0, end=len(record))
  gd_diagram.write("plasmid_linear.pdf", "PDF")
  gd_diagram.write("plasmid_linear.eps", "EPS")
  gd_diagram.write("plasmid_linear.svg", "SVG")
>>
  
  Also, provided you have the dependencies installed, you can also do
bitmaps, for example:
<<gd_diagram.write("plasmid_linear.png", "PNG")
>>
  
   *images/plasmid_linear.png*
    Notice that the 'fragments' argument which we set to four controls
how many pieces the genome gets broken up into.
  If you want to do a circular figure, then try this:
<<gd_diagram.move_track(1,3) # move track to make an empty space in the
middle
  gd_diagram.draw(format="circular", circular=True,
pagesize=(20*cm,20*cm),
                  start=0, end=len(record))
  gd_diagram.write("plasmid_circular.pdf", "PDF")
>>
  
   *images/plasmid_circular.png*
    These figures are not very exciting, but we've only just got
started.
  

12.1.4  A bottom up example
===========================
   Now let's produce exactly the same figures, but using the bottom up
approach. This means we create the different objects directly (and this
can be done in almost any order) and then combine them.
<<from reportlab.lib import colors
  from reportlab.lib.units import cm
  from Bio.Graphics import GenomeDiagram
  from Bio import SeqIO
  record = SeqIO.read(open("NC_005816.gb"), "genbank")
  
  #Create the feature set and its feature objects,
  gd_feature_set = GenomeDiagram.FeatureSet()
  for feature in record.features:
      if feature.type != "gene" :
          #Exclude this feature
          continue
      if len(gd_feature_set) % 2 == 0 :
          color = colors.blue
      else :
          color = colors.lightblue
      gd_feature_set.add_feature(feature, color=color, label=True)
  #(this for loop is the same as in the previous example)
  
  #Create a track, and a diagram
  gd_track_for_features = GenomeDiagram.Track(name="Annotated Features")
  gd_diagram = GenomeDiagram.Diagram("Yersinia pestis biovar Microtus
plasmid pPCP1")
  
  #Now have to glue the bits together...
  gd_track_for_features.add_set(gd_feature_set)
  gd_diagram.add_track(gd_track_for_features, 1)
>>
  
  You can now call the 'draw' and 'write' methods as before to produce a
linear or circular diagram, using the code at the end of the top-down
example above. The figures should be identical.
  

12.1.5  Features without a SeqFeature
=====================================
   
  In the above example we used a 'SeqRecord''s 'SeqFeature' objects to
build our diagram. Sometimes you won't have 'SeqFeature' objects, but
just the coordinates for a feature you want to draw. You have to create
minimal 'SeqFeature' object, but this is easy:
<<from Bio.SeqFeature import SeqFeature, FeatureLocation
  my_seq_feature = SeqFeature(FeatureLocation(50,100),strand=+1)
>>
  
  For strand, use +1 for the forward strand, -1 for the reverse strand,
and None for both. Here is a short self contained example:
<<from Bio.SeqFeature import SeqFeature, FeatureLocation
  from Bio.Graphics import GenomeDiagram
  from reportlab.lib.units import cm
  
  gdd = GenomeDiagram.Diagram('Test Diagram')
  gdt_features = gdd.new_track(1, greytrack=False)
  gds_features = gdt_features.new_set()
  
  #Add three features to show the strand options,
  feature = SeqFeature(FeatureLocation(25, 125), strand=+1)
  gds_features.add_feature(feature, name="Forward", label=True)
  feature = SeqFeature(FeatureLocation(150, 250), strand=None)
  gds_features.add_feature(feature, name="Standless", label=True)
  feature = SeqFeature(FeatureLocation(275, 375), strand=-1)
  gds_features.add_feature(feature, name="Reverse", label=True)
  
  gdd.draw(format='linear', pagesize=(15*cm,4*cm), fragments=1,
           start=0, end=400)
  gdd.write("GD_labels_default.pdf", "pdf")
>>
  
   The top part of the image in the next subsection shows the output  
(in the default feature color, pale green).
  Notice that we have used the name argument here to specify the caption
text for these features. This is discussed in more detail next.
  

12.1.6  Feature captions
========================
   
  Recall we used the following (where feature was a 'SeqFeature' object)
to add a feature to the diagram:
<<gd_feature_set.add_feature(feature, color=color, label=True)
>>
  
  In the example above the 'SeqFeature' annotation was used to pick a
sensible caption for the features. By default the following possible
entries under the 'SeqFeature' object's qualifiers dictionary are used:
gene, label, name, locus_tag, and product. More simply, you can specify
a name directly:
<<gd_feature_set.add_feature(feature, color=color, label=True, name="My
Gene")
>>
  
  In addition to the caption text for each feature's label, you can also
choose the font, position (this defaults to the start of the sigil, you
can also choose the middle or at the end) and orientation (for linear
diagrams only, this defaults to rotated by 45 degrees:
<<#Large font, parallel with the track
  gd_feature_set.add_feature(feature, label=True, color="green",
                             label_size=25, label_angle=0)
  
  #Very small font, perpendicular to the track (towards it)
  gd_feature_set.add_feature(feature, label=True, color="purple",
                             label_position="end",
                             label_size=4, label_angle=90)
  
  #Small font, perpendicular to the track (away from it)
  gd_feature_set.add_feature(feature, label=True, color="blue",
                             label_position="middle",
                             label_size=6, label_angle=-90)
>>
  
  Combining each of these three fragments with the complete example in
the previous section should give something like  this:
  *images/GD_sigil_labels.png* 
   
  We've not shown it here, but you can also set label_color to control
the label's color (used in Section 12.1.8).
  You'll notice the default font is quite small - this makes sense
because you will usually be drawing many (small) features on a page, not
just a few large ones as shown here.
  

12.1.7  Feature sigils
======================
   
  The examples above have all just used the default sigil for the
feature, a plain box, but you can also use arrows instead. Note this
wasn't available in the last publically released standalone version of
GenomeDiagram.
<<#Default uses a BOX sigil
  gd_feature_set.add_feature(feature)
  
  #You can make this explicit:
  gd_feature_set.add_feature(feature, sigil="BOX")
  
  #Or opt for an arrow:
  gd_feature_set.add_feature(feature, sigil="BOX")
>>
  
  The default arrows are show at the top of  the next two images.   The
arrows fit into a bounding box (as given by the default BOX sigil).
  There are two additional options to adjust the shapes of the arrows,
firstly the thickness of the arrow shaft, given as a proportion of the
height of the bounding box:
<<#Full height shafts, giving pointed boxes:
  gd_feature_set.add_feature(feature, sigil="ARROW", color="brown",
                             arrowshaft_height=1.0)
  #Or, thin shafts:                      
  gd_feature_set.add_feature(feature, sigil="ARROW", color="teal",
                             arrowshaft_height=0.2)
  #Or, very thin shafts:
  gd_feature_set.add_feature(feature, sigil="ARROW", color="darkgreen",
                             arrowshaft_height=0.1)
>>
  
   The results are shown below:
  *images/GD_sigil_arrow_shafts.png*
   
  Secondly, the length of the arrow head - given as a proportion of the
height of the bounding box (defaulting to 0.5, or 50%):
<<#Short arrow heads:
  gd_feature_set.add_feature(feature, sigil="ARROW", color="blue",
                             arrowhead_length=0.25)
  #Or, longer arrow heads:
  gd_feature_set.add_feature(feature, sigil="ARROW", color="orange",
                             arrowhead_length=1)
  #Or, very very long arrow heads (i.e. all head, no shaft, so
triangles):
  gd_feature_set.add_feature(feature, sigil="ARROW", color="red",
                             arrowhead_length=10000)
>>
  
   The results are shown below:
  *images/GD_sigil_arrow_heads.png*
   
  

12.1.8  A nice example
======================
   
  Now let's return to the pPCP1 plasmid from Yersinia pestis biovar
Microtus, and the top down approach used in Section 12.1.3, but take
advantage of the sigil options we've now discussed. This time we'll use
arrows for the genes, and overlay them with strandless features (as
plain boxes) showing the position of some restriction digest sites.
<<from reportlab.lib import colors
  from Bio.Graphics import GenomeDiagram
  from Bio import SeqIO
  from Bio.SeqFeature import SeqFeature, FeatureLocation
  
  record = SeqIO.read(open("NC_005816.gb"), "genbank")
  
  gd_diagram = GenomeDiagram.Diagram("Yersinia pestis biovar Microtus
plasmid pPCP1")
  gd_track_for_features = gd_diagram.new_track(1, name="Annotated
Features")
  gd_feature_set = gd_track_for_features.new_set()
  
  for feature in record.features:
      if feature.type != "gene" :
          #Exclude this feature
          continue
      if len(gd_feature_set) % 2 == 0 :
          color = colors.blue
      else :
          color = colors.lightblue
      gd_feature_set.add_feature(feature, sigil="ARROW",
                                 color=color, label=True,
                                 label_size = 14, label_angle=0)
  
  #I want to include some strandless features, so for an example
  #will use EcoRI recognition sites etc.
  for site, name, color in [("GAATTC","EcoRI",colors.green),
                            ("CCCGGG","SmaI",colors.orange),
                            ("AAGCTT","HindIII",colors.red),
                            ("GGATCC","BamHI",colors.purple)] :
      index = 0
      while True :
          index  = record.seq.find(site, start=index)
          if index == -1 : break
          feature = SeqFeature(FeatureLocation(index, index+len(site)))
          gd_feature_set.add_feature(feature, color=color, name=name,
                                     label=True, label_size = 10,
                                     label_color=color)
          index += len(site)
  
  gd_diagram.draw(format="linear", pagesize='A4', fragments=4,
                  start=0, end=len(record))
  gd_diagram.write("plasmid_linear_nice.pdf", "PDF")
  gd_diagram.write("plasmid_linear_nice.eps", "EPS")
  gd_diagram.write("plasmid_linear_nice.svg", "SVG")
>>
  
   And the output:
  *images/plasmid_linear_nice.png*
   
  

12.1.9  Further options
=======================
  
  All the examples so far have used a single track, but you can have
more than one track -- for example show the genes on one, and repeat
regions on another. You can also enable tick marks to show the scale --
after all every graph should show its units.
  Also, we have only used the 'FeatureSet' so far. GenomeDiagram also
has a 'GraphSet' which can be used for show line graphs, bar charts and
heat plots (e.g. to show plots of GC% on a track parallel to the
features).
  These options are not covered here yet, so for now we refer you to the
User Guide (PDF) (5) included with the standalone version of
GenomeDiagram (but please read the next section first), and the
docstrings.
  

12.1.10  Converting old code
============================
  
  If you have old code written using the standalone version of
GenomeDiagram, and you want to switch it over to using the new version
included with Biopython then you will have to make a few changes - most
importantly to your import statements.
  Also, the older version of GenomeDiagram used only the UK spellings of
color and center (colour and centre). As part of the integration into
Biopython, both forms can now be used for argument names. However, at
some point in the future the UK spellings may be deprecated.
  For example, if you used to have: 
<<from GenomeDiagram import GDFeatureSet, GDDiagram
  from GenomeDiagram.GDColours import GDColourTranslator
  
  gdd = GDDiagram("An example")
  ...
>>
  you could just switch the import statements like this: 
<<from Bio.Graphics.GenomeDiagram import FeatureSet as GDFeatureSet,
Diagram as GDDiagram
  
  gdd = GDDiagram("An example")
  ...
>>
  and hopefully that should be enough. In the long term you might want
to switch to the new names, but you would have to change more of your
code: 
<<from Bio.Graphics.GenomeDiagram import FeatureSet, Diagram
  
  gdd = Diagram("An example")
  ...
>>
  or: 
<<from Bio.Graphics import GenomeDiagram
  
  gdd = GenomeDiagram.Diagram("An example")
  ...
>>
  
  If you run into difficulties, please ask on the Biopython mailing list
for advice. One catch is that for Biopython 1.50, we have not yet
included the old module 'GenomeDiagram.GDUtilities' yet. This included a
number of GC% related functions, which will probably be merged under
'Bio.SeqUtils' later on.
  

12.2  Chromosomes
*=*=*=*=*=*=*=*=*

  
  The 'Bio.Graphics.BasicChromosome' module allows drawing of simple
chromosomes. Here is a very simple example - for which we'll use
Arabidopsis thaliana.
  I first downloaded the five sequenced chromosomes from the NCBI's FTP
site ftp://ftp.ncbi.nlm.nih.gov/genomes/Arabidopsis_thaliana and then
parsed them with 'Bio.SeqIO' to find out their lengths. You could use
the GenBank files for this, but it is faster to use the FASTA files for
the whole chromosomes:
<<from Bio import SeqIO
  entries = [("Chr I","CHR_I/NC_003070.fna"),
            ("Chr II","CHR_II/NC_003071.fna"),
            ("Chr III","CHR_III/NC_003074.fna"),
            ("Chr IV","CHR_IV/NC_003075.fna"),
            ("Chr V","CHR_V/NC_003076.fna")]
  for (name, filename) in entries :
     record = SeqIO.read(open(filename),"fasta")
     print name, len(record)
>>
  
  This gave the lengths of the five chromosomes, which we'll now use in
the following short demonstration of the ' BasicChromosome' module:
<<from Bio.Graphics import BasicChromosome
  
  entries = [("Chr I", 30432563),
             ("Chr II", 19705359),
             ("Chr III", 23470805),
             ("Chr IV", 18585042),
             ("Chr V", 26992728)]
  
  max_length = max([length for name, length in entries])
            
  chr_diagram = BasicChromosome.Organism()
  for name, length in entries :
     cur_chromosome = BasicChromosome.Chromosome(name)
     #Set the length, adding and extra 20 percent for the tolomeres:
     cur_chromosome.scale_num = max_length * 1.2
     
     #Add an opening telomere
     start = BasicChromosome.TelomereSegment()
     start.scale = 0.1 * max_length
     cur_chromosome.add(start)
  
     #Add a body - using bp as the scale length here.
     body = BasicChromosome.ChromosomeSegment()
     body.scale = length
     cur_chromosome.add(body)
  
     #Add a closing telomere
     end = BasicChromosome.TelomereSegment(inverted=True)
     end.scale = 0.1 * max_length
     cur_chromosome.add(end)
  
     #This chromosome is done
     chr_diagram.add(cur_chromosome)
  
  chr_diagram.draw("simple_chrom.pdf", "Arabidopsis thaliana")
>>
  
  This should create a very simple PDF file, shown  here:
  *images/simple_chrom.png*
    This example is deliberately short and sweet. One thing you might
want to try is showing the location of features of interest - perhaps
SNPs or genes. Currently the 'ChromosomeSegment' object doesn't support
sub-segments which would be one approach. Instead, you must replace the
single large segment with lots of smaller segments, maybe white ones for
the boring regions, and colored ones for the regions of interest.
-----------------------------------
  
  
 (1) http://www.reportlab.org
 
 (2) http://www.pythonware.com/products/pil/
 
 (3) http://dx.doi.org/10.1093/bioinformatics/btk021
 
 (4) http://biopython.org/SRC/biopython/Tests/GenBank/NC_005816.gb
 
 (5) http://bioinf.scri.ac.uk/lp/downloads/programs/genomediagram/usergu
   ide.pdf
  

Chapter 13    Cookbook -- Cool things to do with it
***************************************************
   
  

13.1  Working with sequence files
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  This section shows some more examples of sequence input/output, using
the 'Bio.SeqIO' module described in Chapter 4.
  

13.1.1  Producing randomised genomes
====================================
  
  Let's suppose you are looking at genome sequence, hunting for some
sequence feature -- maybe extreme local GC% bias, or possible
restriction digest sites. Once you've got your python code working on
the real genome it may be sensible to try running the same search on
randomised versions of the same genome for statistical analysis (after
all, any "features" you've found could just be there just by chance).
  For this discussion, we'll use the GenBank file for the pPCP1 plasmid
from Yersinia pestis biovar Microtus. The file is included with the
Biopython unit tests under the GenBank folder, or you can get it from
our website, NC_005816.gb (1).  This file contains one and only one
record, so we can read it in as a 'SeqRecord' using the
'Bio.SeqIO.read()' function:
<<from Bio import SeqIO
  original_rec = SeqIO.read(open("NC_005816.gb"),"genbank")
>>
  
  So, how can we generate a shuffled versions of the original sequence?
I would use the built in python 'random' module for this, in particular
the function 'random.shuffle' -- but this works on a python list. Our
sequence is a 'Seq' object, so in order to shuffle it we need to turn it
into a list:
<<import random
  nuc_list = list(original_rec.seq)
  random.shuffle(nuc_list) #acts in situ!
>>
  
  Now, in order to use 'Bio.SeqIO' to output the shuffled sequence, we
need to construct a new 'SeqRecord' with a new 'Seq' object using this
shuffled list. In order to do this, we need to turn the list of
nucleotides (single letter strings) into a long string -- the standard
python way to do this is with the string object's join method.
<<from Bio.Seq import Seq
  from Bio.SeqRecord import SeqRecord
  shuffled_rec = SeqRecord(Seq("".join(nuc_list),
original_rec.seq.alphabet), \
                           id="Shuffled", description="Based on %s" %
original_rec.id)
>>
  
  Let's put all these pieces together to make a complete python script
which generates a single FASTA file containing 30 randomly shuffled
versions of the original sequence.
  This first version just uses a big for loop and writes out the records
one by one (using the 'SeqRecord''s format method described in
Section 4.4.3):
<<import random
  from Bio.Seq import Seq
  from Bio.SeqRecord import SeqRecord
  from Bio import SeqIO
  
  original_rec = SeqIO.read(open("NC_005816.gb"),"genbank")
  
  handle = open("shuffled.fasta", "w")
  for i in range(30) :
      nuc_list = list(original_rec.seq)
      random.shuffle(nuc_list)
      shuffled_rec = SeqRecord(Seq("".join(nuc_list),
original_rec.seq.alphabet), \
                               id="Shuffled%i" % (i+1), \
                               description="Based on %s" %
original_rec.id)
      handle.write(shuffled_rec.format("fasta"))
  handle.close()
>>
  
  Personally I prefer the following version using a function to shuffle
the record and a generator expression instead of the for loop:
<<import random
  from Bio.Seq import Seq
  from Bio.SeqRecord import SeqRecord
  from Bio import SeqIO
  
  def make_shuffle_record(record, new_id) :
      nuc_list = list(record.seq)
      random.shuffle(nuc_list)
      return SeqRecord(Seq("".join(nuc_list), record.seq.alphabet), \
             id=new_id, description="Based on %s" % original_rec.id)
     
  original_rec = SeqIO.read(open("NC_005816.gb"),"genbank")
  shuffled_recs = (make_shuffle_record(original_rec, "Shuffled%i" %
(i+1)) \
                   for i in range(30))
  handle = open("shuffled.fasta", "w")
  SeqIO.write(shuffled_recs, handle, "fasta")
  handle.close()
>>
  
  

13.1.2  Translating a FASTA file of CDS entries
===============================================
    Suppose you've got an input file of CDS entries for some organism,
and you want to generate a new FASTA file containing their protein
sequences. i.e. Take each nucleotide sequence from the original file,
and translate it.
  Back in Section 3.8 we saw how to use the 'Seq' object's translate
method. We can combine this with 'Bio.SeqIO' as shown in the reverse
complement example in Section 4.4.2. The key point is that for each
nucleotide 'SeqRecord', we need to create a protein 'SeqRecord' - and
take care of naming it.
  You can write you own function to do this, choosing suitable protein
identifiers for your sequences, and the appropriate genetic code. In
this example we just use the default table and add a prefix to the
identifier:
<<from Bio.SeqRecord import SeqRecord
  def make_protein_record(nuc_record) :
      """Returns a new SeqRecord with the translated sequence (default
table)."""
      return SeqRecord(seq = nuc_record.seq.translate(to_stop=True), \
                       id = "trans_" + nuc_record.id, \
                       description = "translation to first stop, with
default table")
>>
  
  We can then use this function to turn the input nucleotide records
into protein records ready for output. An elegant way and memory
efficient way to do this is with a generator expression:
<<from Bio import SeqIO
  
  proteins = (make_protein_record(nuc_rec) for nuc_rec in \
              SeqIO.parse(open("ls_orchid.fasta"), "fasta"))
  
  out_handle = open("translations.fasta", "w")
  SeqIO.write(proteins, out_handle, "fasta")
  out_handle.close()
>>
  
  This should work on any FASTA file of coding sequences. We're just
reused ls_orchid.fasta (2) as an example here, but you'll find several
of the translations it gives are actually very very short -- if you
recall many of these orchid sequences are actually rRNA sequences so
translating them isn't actually biologically meaningful.
  

13.1.3  Simple quality filtering for FASTQ files
================================================
  
  The FASTQ file format was introduced at Sanger and is now widely used
for holding nucleotide sequencing reads together with their quality
scores. FASTQ files (and the related QUAL files) are an excellent
example of per-letter-annotation, because for each nucleotide in the
sequence there is an associated quality score. Any per-letter-annotation
is held in a 'SeqRecord' in the 'letter_annotations' dictionary as a
list, tuple or string (with the same number of elements as the sequence
length).
  One common task is taking a large set of sequencing reads and
filtering them (or cropping them) based on their quality scores. The
following example is very simplistic, but should illustrate the basics
of working with quality data in a 'SeqRecord' object. All we are going
to do here is read in a file of FASTQ data, and filter it to pick out
only those records whose PHRED quality scores are all above some
threshold (here 20).
  For this example we'll use some real data downloaded from the NCBI,
ftp://ftp.ncbi.nlm.nih.gov/sra/static/SRX003/SRX003639/SRR014849.fastq.g
z (8MB) which unzips to a 23MB file SRR014849.fastq.
<<from Bio import SeqIO
  
  good_reads = (record for record in \
               SeqIO.parse(open("SRR014849.fastq"), "fastq") \
               if min(record.letter_annotations["phred_quality"]) >= 20)
  
  out_handle = open("good_quality.fastq", "w")
  count = SeqIO.write(good_reads, out_handle, "fastq")
  out_handle.close()
  print "Saved %i reads" % count
>>
  
  This pulled out only 412 reads - maybe this dataset hasn't been
quality trimmed yet?
  FASTQ files can contain millions of entries, so it is best to avoid
loading them all into memory at once. This example uses a generator
expression, which means only one 'SeqRecord' is created at a time -
avoiding any memory limitations.
  

13.1.4  Trimming off primer sequences
=====================================
  
  For this example I'm going to pretend that GTTGGAACCG is a 3' primer
sequence we want to look for in some FASTQ formatted read data. As in
the example above, we'll use the SRR014849.fastq file downloaded from
the NCBI
(ftp://ftp.ncbi.nlm.nih.gov/sra/static/SRX003/SRX003639/SRR014849.fastq.
gz). The same approach would work with any other supported file format
(e.g. FASTA files).
  This code uses 'Bio.SeqIO' with a generator expression (to avoid
loading all the sequences into memory at once), and the 'Seq' object's
'startswith' method to spot the primer sequence:
<<from Bio import SeqIO
  primer_reads = (record for record in \
                  SeqIO.parse(open("SRR014849.fastq"), "fastq") \
                  if record.seq.startswith("GTTGGAACCG"))
  out_handle = open("with_primer.fastq", "w")
  count = SeqIO.write(primer_reads, out_handle, "fastq")
  out_handle.close()
  print "Saved %i reads" % count
>>
  
  That should find 500 reads from SRR014849.fastq and save them to a new
FASTQ file, with_primer.fastq.
  Now suppose that instead you wanted to make a FASTQ file containing
these 500 reads but with the primer sequence removed? That's just a
small change as we can slice the 'SeqRecord' to remove the first ten
letters (the length of our primer):
<<from Bio import SeqIO
  trimmed_primer_reads = (record[10:] for record in \
                          SeqIO.parse(open("SRR014849.fastq"), "fastq")
\
                          if record.seq.startswith("GTTGGAACCG"))
  out_handle = open("with_primer_trimmed.fastq", "w")
  count = SeqIO.write(trimmed_primer_reads, out_handle, "fastq")
  out_handle.close()
  print "Saved %i reads" % count
>>
  
  Again, that should pull out the 500 reads from SRR014849.fastq, but
this time strip off the first ten characters, and save them to another
new FASTQ file, with_primer_trimmed.fastq.
  Finally, suppose you want to create a new FASTQ file where these 500
reads have their primer removed, but all the other reads are kept as
they were?
<<from Bio import SeqIO
  def trim_primer(record, primer) :
      if record.seq.startswith(primer) :
          return record[len(primer):]
      else :
          return record
  
  trimmed_reads = (trim_primer(record, "GTTGGAACCG") for record in \
                   SeqIO.parse(open("SRR014849.fastq"), "fastq"))
  out_handle = open("trimmed.fastq", "w")
  count = SeqIO.write(trimmed_reads, out_handle, "fastq")
  out_handle.close()
  print "Saved %i reads" % count
>>
  
  This takes longer, as this time the output file contains all 94696
reads. Again, we're used a generator expression to avoid any memory
problems. You might prefer to use a for loop:
<<from Bio import SeqIO
  out_handle = open("trimmed.fastq", "w")
  for record in SeqIO.parse(open("SRR014849.fastq"),"fastq") :
      if record.seq.startswith("GTTGGAACCG") :
          out_handle.write(record[10:].format("fastq"))
      else :
          out_handle.write(record.format("fastq"))
  out_handle.close()
>>
  
  In this case the for loop looks simpler, but putting the trim logic
into a function is more tidy, and makes it easier to adjust the trimming
later on. For example, you might decide to look for a 5' primer as well.
  

13.2  Sequence parsing plus simple plots
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

   
  This section shows some more examples of sequence parsing, using the
'Bio.SeqIO' module described in Chapter 4, plus the python library
matplotlib's 'pylab' plotting interface (see the matplotlib website for
a tutorial (3)). Note that to follow these examples you will need
matplotlib installed - but without it you can still try the data parsing
bits.
  

13.2.1  Histogram of sequence lengths
=====================================
  
  There are lots of times when you might want to visualise the
distribution of sequence lengths in a dataset -- for example the range
of contig sizes in a genome assembly project. In this example we'll
reuse our orchid FASTA file ls_orchid.fasta (4) which has only 94
sequences.
  First of all, we will use 'Bio.SeqIO' to parse the FASTA file and
compile a list of all the sequence lengths. You could do this with a for
loop, but I find a list comprehension more pleasing:
<<>>> from Bio import SeqIO
  >>> handle = open("ls_orchid.fasta")
  >>> sizes = [len(seq_record) for seq_record in SeqIO.parse(handle,
"fasta")]
  >>> handle.close()
  >>> len(sizes), min(sizes), max(sizes)
  (94, 572, 789)
  >>> sizes
  [740, 753, 748, 744, 733, 718, 730, 704, 740, 709, 700, 726, ..., 592]
>>
  
  Now that we have the lengths of all the genes (as a list of integers),
we can use the matplotlib histogram function to display it.
<<from Bio import SeqIO
  handle = open("ls_orchid.fasta")
  sizes = [len(seq_record) for seq_record in SeqIO.parse(handle,
"fasta")]
  handle.close()
  
  import pylab
  pylab.hist(sizes, bins=20)
  pylab.title("%i orchid sequences\nLengths %i to %i" \
              % (len(sizes),min(sizes),max(sizes)))
  pylab.xlabel("Sequence length (bp)")
  pylab.ylabel("Count")
  pylab.show()
>>
  
   That should pop up a new window containing the following graph:
  *images/hist_plot.png*
    Notice that most of these orchid sequences are about 740 bp long,
and there could be two distinct classes of sequence here with a subset
of shorter sequences.
  Tip: Rather than using 'pylab.show()' to show the plot in a window,
you can also use 'pylab.savefig(...)' to save the figure to a file (e.g.
as a PNG or PDF).
  

13.2.2  Plot of sequence GC%
============================
  
  Another easily calculated quantity of a nucleotide sequence is the
GC%. You might want to look at the GC% of all the genes in a bacterial
genome for example, and investigate any outliers which could have been
recently acquired by horizontal gene transfer. Again, for this example
we'll reuse our orchid FASTA file ls_orchid.fasta (5).
  First of all, we will use 'Bio.SeqIO' to parse the FASTA file and
compile a list of all the GC percentages. Again, you could do this with
a for loop, but I prefer the list comprehension used here:
<<from Bio import SeqIO
  from Bio.SeqUtils import GC
  
  handle = open("ls_orchid.fasta")
  gc_values = [GC(seq_record.seq) for seq_record in SeqIO.parse(handle,
"fasta")]
  gc_values.sort()
  handle.close()
>>
  
  Having read in each sequence and calculated the GC%, we then sorted
them into ascending order. Now we'll take this list of floating point
values and plot them with matplotlib:
<<import pylab
  pylab.plot(gc_values)
  pylab.title("%i orchid sequences\nGC%% %0.1f to %0.1f" \
              % (len(gc_values),min(gc_values),max(gc_values)))
  pylab.xlabel("Genes")
  pylab.ylabel("GC%")
  pylab.show()
>>
  
   As in the previous example, that should pop up a new window
containing a graph:
  *images/gc_plot.png*
    If you tried this on the full set of genes from one organism, you'd
probably get a much smoother plot than this.
  

13.2.3  Nucleotide dot plots
============================
   A dot plot is a way of visually comparing two nucleotide sequences
for similarity to each other. A sliding window is used to compare short
sub-sequences to each other, often with a mis-match threshold. Here for
simplicity we'll only look for perfect matches (shown in black   in the
plot below). 
  
  To start off, we'll need two sequences. For the sake of argument,
we'll just take the first two from our orchid FASTA file
ls_orchid.fasta (6):
<<from Bio import SeqIO
  handle = open("ls_orchid.fasta")
  record_iterator = SeqIO.parse(handle, "fasta")
  rec_one = record_iterator.next()
  rec_two = record_iterator.next()
  handle.close()
>>
  
  We're going to show two approaches. Firstly, a simple naive
implementation which compares all the window sized sub-sequences to each
other to compiles a similarity matrix. You could construct a matrix or
array object, but here we just use a list of lists of booleans created
with a nested list comprehension:
<<window = 7
  seq_one = str(rec_one.seq).upper()
  seq_two = str(rec_two.seq).upper()
  data = [[(seq_one[i:i+window] <> seq_two[j:j+window]) \
          for j in range(len(seq_one)-window)] \
         for i in range(len(seq_two)-window)]
>>
  
  Note that we have not checked for reverse complement matches here. Now
we'll use the matplotlib's 'pylab.imshow()' function to display this
data, first requesting the gray color scheme so this is done in black
and white:
<<import pylab
  pylab.gray()
  pylab.imshow(data)
  pylab.xlabel("%s (length %i bp)" % (rec_one.id, len(rec_one)))
  pylab.ylabel("%s (length %i bp)" % (rec_two.id, len(rec_two)))
  pylab.title("Dot plot using window size %i\n(allowing no mis-matches)"
% window)
  pylab.show()
>>
  
   That should pop up a new window containing a graph like this:
  *images/dot_plot.png*
    As you might have expected, these two sequences are very similar
with a partial line of window sized matches along the diagonal. There
are no off diagonal matches which would be indicative of inversions or
other interesting events.
  The above code works fine on small examples, but there are two
problems applying this to larger sequences, which we will address below.
First off all, this brute force approach to the all against all
comparisons is very slow. Instead, we'll compile dictionaries mapping
the window sized sub-sequences to their locations, and then take the set
intersection to find those sub-sequences found in both sequences. This
uses more memory, but is much faster. Secondly, the 'pylab.imshow()'
function is limited in the size of matrix it can display. As an
alternative, we'll use the 'pylab.scatter()' function.
  We start by creating dictionaries mapping the window-sized
sub-sequences to locations: 
<<window = 7
  dict_one = {}
  dict_two = {}
  for (seq, section_dict) in [(str(rec_one.seq).upper(), dict_one),
                              (str(rec_two.seq).upper(), dict_two)] :
      for i in range(len(seq)-window) :
          section = seq[i:i+window]
          try :
              section_dict[section].append(i)
          except KeyError :
              section_dict[section] = [i]
  #Now find any sub-sequences found in both sequences
  #(Python 2.3 would require slightly different code here)
  matches = set(dict_one).intersection(dict_two)
  print "%i unique matches" % len(matches)
>>
  In order to use the 'pylab.scatter()' we need separate lists for the x
and y co-ordinates: 
<<#Create lists of x and y co-ordinates for scatter plot
  x = []
  y = []
  for section in matches :
      for i in dict_one[section] :
          for j in dict_two[section] :
              x.append(i)
              y.append(j)
>>
  We are now ready to draw the revised dot plot as a scatter plot: 
<<import pylab
  pylab.cla() #clear any prior graph
  pylab.gray()
  pylab.scatter(x,y)
  pylab.xlim(0, len(rec_one)-window)
  pylab.ylim(0, len(rec_two)-window)
  pylab.xlabel("%s (length %i bp)" % (rec_one.id, len(rec_one)))
  pylab.ylabel("%s (length %i bp)" % (rec_two.id, len(rec_two)))
  pylab.title("Dot plot using window size %i\n(allowing no mis-matches)"
% window)
  pylab.show()
>>
   That should pop up a new window containing a graph like this:
  *images/dot_plot_scatter.png*
    Personally I find this second plot much easier to read! Again note
that we have not checked for reverse complement matches here -- you
could extend this example to do this, and perhaps plot the forward
matches in one color and the reverse matches in another.
  

13.3  Dealing with alignments
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  It is often very useful to be able to align particular sequences. I do
this quite often to get a quick and dirty idea of relationships between
sequences. Consequently, it is very nice to be able to quickly write up
a python script that does an alignment and gives you back objects that
are easy to work with. The alignment related code in Biopython is meant
to allow python-level access to alignment programs so that you can run
alignments quickly from within scripts.
  

13.3.1  Clustalw
================
   
  ClustalX (http://www-igbmc.u-strasbg.fr/BioInfo/ClustalX/Top.html) is
a very nice program for doing multiple alignments. Biopython offers
access to alignments in clustal format (these normally have a '*.aln'
extension) that are produced by ClustalX. It also offers access to
ClustalW, which the is command line version of ClustalX.
  We'll need some sequences to align, such as opuntia.fasta (7) (also
available online here (8)) which is a small FASTA file containing seven
prickly-pear DNA sequences (from the cactus family opuntia), which you
can also from 'Doc/examples/' in the Biopython source distribution.
  The first step in interacting with clustalw is to set up a command
line you want to pass to the program. ClustalW has a ton of command line
options, and if you set a lot of parameters, you can end up typing in a
huge ol' command line quite a bit. This command line class models the
command line by making all of the options be attributes of the class
that can be set. A few convenience functions also exist to set certain
parameters, so that some error checking on the parameters can be done.
  To create a command line object to do a clustalw multiple alignment we
do the following:
<<import os
  from Bio.Clustalw import MultipleAlignCL
  
  cline = MultipleAlignCL("opuntia.fasta")
  cline.set_output("test.aln")
>>
  
  First we import the 'MultipleAlignCL' object, which models running a
multiple alignment from clustalw. We then initialize the command line,
with a single argument of the fasta file that we are going to be using
for the alignment.
  The initialization function also takes an optional second argument
which specifies the location of the 'clustalw' executable. By default,
the commandline will just be invoked with 'clustalw', assuming that
you've got it somewhere on your 'PATH'. If you have installed ClustalW
2, you'd need to tell Biopython to look for 'clustalw2' instead. On
Windows, you'll probably need to give the full path - for example:
<<clustalw_exe = r"C:\Program Files\ClustalW2\clustalw2.exe"
  assert os.path.isfile(clustalw_exe), "Clustal W executable missing"
  cline = MultipleAlignCL("opuntia.fasta", clustalw_exe)
>>
  
  Secondly, we set the output to go to the file 'test.aln' (by default,
ClustalW would have used the file 'opuntia.aln'). The 'MultipleAlignCL'
object also has numerous other parameters to specify things like output
format, gap costs, etc.
  We can look at the command line we have generated by invoking the
'__str__' member attribute of the 'MultipleAlignCL' class. This is done
by calling 'str(cline)' or simple by printing out the command line with
'print cline'. In this case, doing this would give the following output:
<<clustalw opuntia.fasta -OUTFILE=test.aln
>>
  
  Now that we've set up a simple command line, we now want to run the
commandline and collect the results so we can deal with them. This can
be done using the 'do_alignment' function of 'Clustalw' as follows:
<<from Bio import Clustalw
  alignment = Clustalw.do_alignment(cline)
>>
  
  What happens when you run this if that Biopython executes your command
line and runs ClustalW with the given parameters. It then grabs the
output, and if it is in a format that Biopython can parse (currently
only clustal format), then it will parse the results and return them as
an alignment object of the appropriate type. So in this case since we
are getting results in the default clustal format, the returned
'alignment' object will be a 'ClustalAlignment' type.
  Once we've got this alignment, we can do some interesting things with
it such as get 'SeqRecord' objects for all of the sequences involved in
the alignment:
<<print "description:", alignment[0].description
  print "sequence:", alignment[0].seq
>>
  
  This prints out the description and sequence object for the first
sequence in the alignment:
<<description: gi|6273285|gb|AF191659.1|AF191
  sequence:
Seq('TATACATTAAAGAAGGGGGATGCGGATAAATGGAAAGGCGAAAGAAAGAAAAAAATGAAT
  ...', IUPACAmbiguousDNA())
>>
  
  You can also calculate the maximum length of the alignment with:
<<length = alignment.get_alignment_length()
>>
  
  Finally, to write out the alignment object in the original format, we
just need to access the '__str__' function. So doing a 'print alignment'
gives:
<<CLUSTAL X (1.81) multiple sequence alignment
  
  
  gi|6273285|gb|AF191659.1|AF191     
TATACATTAAAGAAGGGGGATGCGGATAAATGGAAAGGCGAAAGAAAGAA
  gi|6273284|gb|AF191658.1|AF191     
TATACATTAAAGAAGGGGGATGCGGATAAATGGAAAGGCGAAAGAAAGAA
  ...
>>
  
  This makes it easy to write your alignment back into a file with all
of the original info intact.
  If you want to do more interesting things with an alignment, the best
thing to do is to pass the alignment to an alignment information
generating object, such as the SummaryInfo object, described in
Section 13.3.2.
  

13.3.2  Calculating summary information
=======================================
   
  Once you have an alignment, you are very likely going to want to find
out information about it. Instead of trying to have all of the functions
that can generate information about an alignment in the alignment object
itself, we've tried to separate out the functionality into separate
classes, which act on the alignment.
  Getting ready to calculate summary information about an object is
quick to do. Let's say we've got an alignment object called 'alignment'.
All we need to do to get an object that will calculate summary
information is:
<<from Bio.Align import AlignInfo
  summary_align = AlignInfo.SummaryInfo(alignment)
>>
  
  The 'summary_align' object is very useful, and will do the following
neat things for you:
  
  
   1. Calculate a quick consensus sequence -- see section 13.3.3 
   2. Get a position specific score matrix for the alignment -- see
   section 13.3.4 
   3. Calculate the information content for the alignment -- see
   section 13.3.5 
   4. Generate information on substitutions in the alignment --
   section 13.4 details using this to generate a substitution matrix. 
  
  

13.3.3  Calculating a quick consensus sequence
==============================================
   
  The 'SummaryInfo' object, described in section 13.3.2, provides
functionality to calculate a quick consensus of an alignment. Assuming
we've got a 'SummaryInfo' object called 'summary_align' we can calculate
a consensus by doing:
<<consensus = summary_align.dumb_consensus()
>>
  
  As the name suggests, this is a really simple consensus calculator,
and will just add up all of the residues at each point in the consensus,
and if the most common value is higher than some threshold value will
add the common residue to the consensus. If it doesn't reach the
threshold, it adds an ambiguity character to the consensus. The returned
consensus object is Seq object whose alphabet is inferred from the
alphabets of the sequences making up the consensus. So doing a 'print
consensus' would give:
<<consensus
Seq('TATACATNAAAGNAGGGGGATGCGGATAAATGGAAAGGCGAAAGAAAGAAAAAAATGAAT
  ...', IUPACAmbiguousDNA())
>>
  
  You can adjust how 'dumb_consensus' works by passing optional
parameters:
  
  
 the threshold  This is the threshold specifying how common a particular
   residue has to be at a position before it is added. The default is
   0.7 (meaning 70%).
 
 the ambiguous character  This is the ambiguity character to use. The
   default is 'N'.
 
 the consensus alphabet  This is the alphabet to use for the consensus
   sequence. If an alphabet is not specified than we will try to guess
   the alphabet based on the alphabets of the sequences in the
   alignment. 
  
  

13.3.4  Position Specific Score Matrices
========================================
   
  Position specific score matrices (PSSMs) summarize the alignment
information in a different way than a consensus, and may be useful for
different tasks. Basically, a PSSM is a count matrix. For each column in
the alignment, the number of each alphabet letters is counted and
totaled. The totals are displayed relative to some representative
sequence along the left axis. This sequence may be the consesus
sequence, but can also be any sequence in the alignment. For instance
for the alignment,
<<GTATC
  AT--C
  CTGTC
>>
  
  the PSSM is:
<<      G A T C
      G 1 1 0 1
      T 0 0 3 0
      A 1 1 0 0
      T 0 0 2 0
      C 0 0 0 3
>>
  
  Let's assume we've got an alignment object called 'c_align'. To get a
PSSM with the consensus sequence along the side we first get a summary
object and calculate the consensus sequence:
<<summary_align = AlignInfo.SummaryInfo(c_align)
  consensus = summary_align.dumb_consensus()
>>
  
  Now, we want to make the PSSM, but ignore any 'N' ambiguity residues
when calculating this:
<<my_pssm = summary_align.pos_specific_score_matrix(consensus,
                                                    chars_to_ignore =
['N'])
>>
  
  Two notes should be made about this:
  
  
   1. To maintain strictness with the alphabets, you can only include
   characters along the top of the PSSM that are in the alphabet of the
   alignment object. Gaps are not included along the top axis of the
   PSSM.
 
   2. The sequence passed to be displayed along the left side of the
   axis does not need to be the consensus. For instance, if you wanted
   to display the second sequence in the alignment along this axis, you
   would need to do:
   <<second_seq = alignment.get_seq_by_num(1)
     my_pssm = summary_align.pos_specific_score_matrix(second_seq
                                                       chars_to_ignore =
   ['N'])
   >>
 
  
  The command above returns a 'PSSM' object. To print out the PSSM as we
showed above, we simply need to do a 'print my_pssm', which gives:
<<    A   C   G   T
  T  0.0 0.0 0.0 7.0
  A  7.0 0.0 0.0 0.0
  T  0.0 0.0 0.0 7.0
  A  7.0 0.0 0.0 0.0
  C  0.0 7.0 0.0 0.0
  A  7.0 0.0 0.0 0.0
  T  0.0 0.0 0.0 7.0
  T  1.0 0.0 0.0 6.0
  ...
>>
  
  You can access any element of the PSSM by subscripting like
'your_pssm[sequence_number][residue_count_name]'. For instance, to get
the counts for the 'A' residue in the second element of the above PSSM
you would do:
<<>>> print my_pssm[1]["A"]
  7.0
>>
  
  The structure of the PSSM class hopefully makes it easy both to access
elements and to pretty print the matrix.
  

13.3.5  Information Content
===========================
   
  A potentially useful measure of evolutionary conservation is the
information content of a sequence.
  A useful introduction to information theory targetted towards
molecular biologists can be found at
http://www.lecb.ncifcrf.gov/~toms/paper/primer/. For our purposes, we
will be looking at the information content of a consesus sequence, or a
portion of a consensus sequence. We calculate information content at a
particular column in a multiple sequence alignment using the following
formula:
                              N                
                                         (P  ) 
                               a         (   ) 
                        IC    --  P      ( ij) 
                            = \       log(---) 
                          j   /    ij    (Q  ) 
                              --         (   ) 
                              i=1        ( i ) 
  
  where:
  
  
   - IC_j -- The information content for the j-th column in an
   alignment. 
   - N_a -- The number of letters in the alphabet. 
   - P_ij -- The frequency of a particular letter i in the j-th column
   (i. e. if G occured 3 out of 6 times in an aligment column, this
   would be 0.5) 
   - Q_i -- The expected frequency of a letter i. This is an optional
   argument, usage of which is left at the user's discretion. By
   default, it is automatically assigned to 0.05 = 1/20 for a protein
   alphabet, and 0.25 = 1/4 for a nucleic acid alphabet. This is for
   geting the information content without any assumption of prior
   distribtions. When assuming priors, or when using a non-standard
   alphabet, you should supply the values for Q_i. 
  
  Well, now that we have an idea what information content is being
calculated in Biopython, let's look at how to get it for a particular
region of the alignment.
  First, we need to use our alignment to get a alignment summary object,
which we'll assume is called 'summary_align' (see section 13.3.2) for
instructions on how to get this. Once we've got this object, calculating
the information content for a region is as easy as:
<<info_content = summary_align.information_content(5, 30,
                                                   chars_to_ignore =
['N'])
>>
  
  Wow, that was much easier then the formula above made it look! The
variable 'info_content' now contains a float value specifying the
information content over the specified region (from 5 to 30 of the
alignment). We specifically ignore the ambiguity residue 'N' when
calculating the information content, since this value is not included in
our alphabet (so we shouldn't be interested in looking at it!).
  As mentioned above, we can also calculate relative information content
by supplying the expected frequencies:
<<expect_freq = {
      'A' : .3,
      'G' : .2,
      'T' : .3,
      'C' : .2}
>>
  
  The expected should not be passed as a raw dictionary, but instead by
passed as a 'SubsMat.FreqTable' object (see section 15.3.2 for more
information about FreqTables). The FreqTable object provides a standard
for associating the dictionary with an Alphabet, similar to how the
Biopython Seq class works.
  To create a FreqTable object, from the frequency dictionary you just
need to do:
<<from Bio.Alphabet import IUPAC
  from Bio.SubsMat import FreqTable
  
  e_freq_table = FreqTable.FreqTable(expect_freq, FreqTable.FREQ,
                                     IUPAC.unambiguous_dna)
>>
  
  Now that we've got that, calculating the relative information content
for our region of the alignment is as simple as:
<<info_content = summary_align.information_content(5, 30,
                                                   e_freq_table =
e_freq_table,
                                                   chars_to_ignore =
['N'])
>>
  
  Now, 'info_content' will contain the relative information content over
the region in relation to the expected frequencies.
  The value return is calculated using base 2 as the logarithm base in
the formula above. You can modify this by passing the parameter
'log_base' as the base you want:
<<info_content = summary_align.information_content(5, 30, log_base = 10,
                                                   chars_to_ignore =
['N'])
>>
  
  Well, now you are ready to calculate information content. If you want
to try applying this to some real life problems, it would probably be
best to dig into the literature on information content to get an idea of
how it is used. Hopefully your digging won't reveal any mistakes made in
coding this function!
  

13.3.6  Translating between Alignment formats
=============================================
  
  One thing that you always end up having to do is convert between
different formats. You can do this using the 'Bio.AlignIO' module, see
Section 5.2.1.
  

13.4  Substitution Matrices
*=*=*=*=*=*=*=*=*=*=*=*=*=*

   
  Substitution matrices are an extremely important part of everyday
bioinformatics work. They provide the scoring terms for classifying how
likely two different residues are to substitute for each other. This is
essential in doing sequence comparisons. The book "Biological Sequence
Analysis" by Durbin et al. provides a really nice introduction to
Substitution Matrices and their uses. Some famous substitution matrices
are the PAM and BLOSUM series of matrices.
  Biopython provides a ton of common substitution matrices, and also
provides functionality for creating your own substitution matrices.
  

13.4.1  Using common substitution matrices
==========================================
  
  

13.4.2  Creating your own substitution matrix from an alignment
===============================================================
   
  A very cool thing that you can do easily with the substitution matrix
classes is to create your own substitution matrix from an alignment. In
practice, this is normally done with protein alignments. In this
example, we'll first get a Biopython alignment object and then get a
summary object to calculate info about the alignment. The file
containing protein.aln (9) (also available online here (10)) contains
the Clustalw alignment output.
<<from Bio import Clustalw
  from Bio.Alphabet import IUPAC
  from Bio.Align import AlignInfo
  
  # get an alignment object from a Clustalw alignment output
  c_align = Clustalw.parse_file("protein.aln", IUPAC.protein)
  summary_align = AlignInfo.SummaryInfo(c_align)
>>
  
  Sections 13.3.1 and 13.3.2 contain more information on doing this.
  Now that we've got our 'summary_align' object, we want to use it to
find out the number of times different residues substitute for each
other. To make the example more readable, we'll focus on only amino
acids with polar charged side chains. Luckily, this can be done easily
when generating a replacement dictionary, by passing in all of the
characters that should be ignored. Thus we'll create a dictionary of
replacements for only charged polar amino acids using:
<<replace_info = summary_align.replacement_dictionary(["G", "A", "V",
"L", "I",
                                                       "M", "P", "F",
"W", "S",
                                                       "T", "N", "Q",
"Y", "C"])
>>
  
  This information about amino acid replacements is represented as a
python dictionary which will look something like:
<<{('R', 'R'): 2079.0, ('R', 'H'): 17.0, ('R', 'K'): 103.0, ('R', 'E'):
2.0,
  ('R', 'D'): 2.0, ('H', 'R'): 0, ('D', 'H'): 15.0, ('K', 'K'): 3218.0,
  ('K', 'H'): 24.0, ('H', 'K'): 8.0, ('E', 'H'): 15.0, ('H', 'H'):
1235.0,
  ('H', 'E'): 18.0, ('H', 'D'): 0, ('K', 'D'): 0, ('K', 'E'): 9.0,
  ('D', 'R'): 48.0, ('E', 'R'): 2.0, ('D', 'K'): 1.0, ('E', 'K'): 45.0,
  ('K', 'R'): 130.0, ('E', 'D'): 241.0, ('E', 'E'): 3305.0,
  ('D', 'E'): 270.0, ('D', 'D'): 2360.0}
>>
  
  This information gives us our accepted number of replacements, or how
often we expect different things to substitute for each other. It turns
out, amazingly enough, that this is all of the information we need to go
ahead and create a substitution matrix. First, we use the replacement
dictionary information to create an Accepted Replacement Matrix (ARM):
<<from Bio import SubsMat
  my_arm = SubsMat.SeqMat(replace_info)
>>
  
  With this accepted replacement matrix, we can go right ahead and
create our log odds matrix (i. e. a standard type Substitution Matrix):
<<my_lom = SubsMat.make_log_odds_matrix(my_arm)
>>
  
  The log odds matrix you create is customizable with the following
optional arguments:
  
  
   - 'exp_freq_table' -- You can pass a table of expected frequencies
   for each alphabet. If supplied, this will be used instead of the
   passed accepted replacement matrix when calculate expected
   replacments.
 
   - 'logbase' - The base of the logarithm taken to create the log odd
   matrix. Defaults to base 10.
 
   - 'factor' - The factor to multiply each matrix entry by. This
   defaults to 10, which normally makes the matrix numbers easy to work
   with.
 
   - 'round_digit' - The digit to round to in the matrix. This defaults
   to 0 (i. e. no digits).
  
  Once you've got your log odds matrix, you can display it prettily
using the function 'print_mat'. Doing this on our created matrix gives:
<<>>> my_lom.print_mat()
  D   6
  E  -5   5
  H -15 -13  10
  K -31 -15 -13   6
  R -13 -25 -14  -7   7
     D   E   H   K   R
>>
  
  Very nice. Now we've got our very own substitution matrix to play
with!
  

13.5  BioSQL -- storing sequences in a relational database
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

    BioSQL (11) is a joint effort between the OBF (12) projects
(BioPerl, BioJava etc) to support a shared database schema for storing
sequence data. In theory, you could load a GenBank file into the
database with BioPerl, then using Biopython extract this from the
database as a record object with featues - and get more or less the same
thing as if you had loaded the GenBank file directly as a SeqRecord
using 'Bio.SeqIO' (Chapter 4).
  Biopython's BioSQL module is currently documented at
http://biopython.org/wiki/BioSQL which is part of our wiki pages.
  

13.6  InterPro
*=*=*=*=*=*=*=

  
  The 'Bio.InterPro' module works with files from the InterPro database,
which can be obtained from the InterPro project:
http://www.ebi.ac.uk/interpro/.
  The 'Bio.InterPro.Record' contains all the information stored in an
InterPro record. Its string representation also is a valid InterPro
record, but it is NOT guaranteed to be equivalent to the record from
which it was produced.
  The 'Bio.InterPro.Record' contains:
  
  
   - 'Database' 
   - 'Accession' 
   - 'Name' 
   - 'Dates' 
   - 'Type' 
   - 'Parent' 
   - 'Process' 
   - 'Function' 
   - 'Component' 
   - 'Signatures' 
   - 'Abstract' 
   - 'Examples' 
   - 'References' 
   - 'Database links' 
  
-----------------------------------
  
  
 (1) http://biopython.org/SRC/biopython/Tests/GenBank/NC_005816.gb
 
 (2) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.fasta
 
 (3) http://matplotlib.sourceforge.net/
 
 (4) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.fasta
 
 (5) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.fasta
 
 (6) http://biopython.org/DIST/docs/tutorial/examples/ls_orchid.fasta
 
 (7) examples/opuntia.fasta
 
 (8) http://biopython.org/DIST/docs/tutorial/examples/opuntia.fasta
 
 (9) examples/protein.aln
 
 (10) http://biopython.org/DIST/docs/tutorial/examples/protein.aln
 
 (11) http://www.biosql.org/
 
 (12) http://open-bio.org/
  

Chapter 14    The Biopython testing framework
*********************************************
   
  Biopython has a regression testing framework (the file 'run_tests.py')
based on unittest (1), the standard unit testing framework for python.
Providing comprehensive tests for modules is one of the most important
aspects of making sure that the Biopython code is as bug-free as
possible before going out. It also tends to be one of the most
undervalued aspects of contributing. This chapter is designed to make
running the Biopython tests and writing good test code as easy as
possible. Ideally, every module that goes into Biopython should have a
test (and should also have documentation!). All our developers, and
anyone installing Biopython from source, are strongly encouraged to run
the unit tests.
  

14.1  Running the tests
*=*=*=*=*=*=*=*=*=*=*=*

  
  When you download the Biopython source code, or check it out from our
source code repository, you should find a subdirectory call 'Tests'.
This contains the key script 'run_tests.py', lots of individual scripts
named 'test_XXX.py', a subdirectory called 'output' and lots of other
subdirectories which contain input files for the test suite.
  As part of building and installing Biopython you will typically run
the full test suite at the command line from the Biopython source top
level directory using the following: 
<<python setup.py test
>>
  This is actually equivalent to going to the 'Tests' subdirectory and
running: 
<<python run_tests.py
>>
  
  You'll often want to run just some of the tests, and this is done like
this: 
<<python run_tests.py test_SeqIO.py test_AlignIO.py
>>
  When giving the list of tests, the '.py' extension is optional, so you
can also just type: 
<<python run_tests.py test_SeqIO test_AlignIO
>>
  To run the docstring tests (see section 14.3), you can use 
<<python run_tests.py doctest
>>
  By default, 'run_tests.py' runs all tests, including the docstring
tests.
  If an individual test is failing, you can also try running it
directly, which may give you more information.
  Importantly, note that the individual unit tests come in two types: 
  
   - Simple print-and-compare scripts. These unit tests are essentially
   short example python programs, which print out various output text.
   For a test file named 'test_XXX.py' there will be a matching text
   file called 'test_XXX' under the 'output' subdirectory which contains
   the expected output. All that the test framework does to is run the
   script, and check the output agrees. 
   - Standard 'unittest'- based tests. These will 'import unittest' and
   then define 'unittest.TestCase' classes, each with one or more
   sub-tests as methods starting with 'test_' which check some specific
   aspect of the code. These tests should not print any output directly.
   
   Currently, about half of the Biopython tests are 'unittest'-style
tests, and half are print-and-compare tests.
  Running a simple print-and-compare test directly will usually give
lots of output on screen, but does not check the output matches the
expected output. If the test is failing with an exception error, it
should be very easy to locate where exactly the script is failing. For
an example of a print-and-compare test, try: 
<<python test_SeqIO.py
>>
  
  The 'unittest'-based tests instead show you exactly which
sub-section(s) of the test are failing. For example, 
<<python test_Cluster.py
>>
  
  

14.2  Writing tests
*=*=*=*=*=*=*=*=*=*

  
  Let's say you want to write some tests for a module called 'Biospam'.
This can be a module you wrote, or an existing module that doesn't have
any tests yet. In the examples below, we assume that 'Biospam' is a
module that does simple math.
  Each Biopython test can have three important files and directories
involved with it:
  
  
   1. 'test_Biospam.py' -- The actual test code for your module. 
   2. 'Biospam' [optional]-- A directory where any necessary input files
   will be located. Any output files that will be generated should also
   be written here (and preferrably cleaned up after the tests are done)
   to prevent clogging up the main Tests directory. 
   3. 'output/Biospam' -- [for print-and-compare tests only] This file
   contains the expected output from running 'test_Biospam.py'. This
   file is not needed for 'unittest'-style tests, since there the
   validation is done in the test script 'test_Biospam.py' itself. 
  
  It's up to you to decide whether you want to write a print-and-compare
test script or a 'unittest'-style test script. The important thing is
that you cannot mix these two styles in a single test script.
Particularly, don't use 'unittest' features in a print-and-compare test.
  Any script with a 'test_' prefix in the 'Tests' directory will be
found and run by 'run_tests.py'. Below, we show an example test script
'test_Biospam.py' both for a print-and-compare test and for a
'unittest'-based test. If you put this script in the Biopython 'Tests'
directory, then 'run_tests.py' will find it and execute the tests
contained in it: 
<<$ python run_tests.py     
  test_Ace ... ok
  test_AlignIO ... ok
  test_BioSQL ... ok
  test_BioSQL_SeqIO ... ok
  test_Biospam ... ok
  test_CAPS ... ok
  test_Clustalw ... ok
>>
  ...
<<----------------------------------------------------------------------
  Ran 107 tests in 86.127 seconds
>>
  
  

14.2.1  Writing a print-and-compare test
========================================
  
  A print-and-compare style test should be much simpler for beginners or
novices to write - essentially it is just an example script using your
new module.
  Here is what you should do to make a print-and-compare test for the
'Biospam' module.
  
  
   1. Write a script called 'test_Biospam.py'
 
    
    
      - This script should live in the Tests directory
    
      - The script should test all of the important functionality of the
      module (the more you test the better your test is, of course!).
    
      - Try to avoid anything which might be platform specific, such as
      printing floating point numbers without using an explicit
      formatting string to avoid having too many decimal places
      (different platforms can give very slightly different values).
 
 
   2. If the script requires files to do the testing, these should go in
   the directory Tests/Biospam (if you just need something generic, like
   a FASTA sequence file, or a GenBank record, try and use an existing
   sample input file instead).
 
   3. Write out the test output and verify the output to be correct.
 There are two ways to do this:
 
     
      1. The long way:
    
       
       
         - Run the script and write its output to a file. On UNIX
         (including Linux and Mac OS X) machines, you would do something
         like: 'python test_Biospam.py > test_Biospam' which would write
         the output to the file 'test_Biospam'.
       
         - Manually look at the file 'test_Biospam' to make sure the
         output is correct. When you are sure it is all right and there
         are no bugs, you need to quickly edit the 'test_Biospam' file
         so that the first line is: `'test_Biospam'' (no quotes).
       
         - copy the 'test_Biospam' file to the directory Tests/output
    
    
      2. The quick way:
    
        
         - Run 'python run_tests.py -g test_Biospam.py'. The regression
         testing framework is nifty enough that it'll put the output in
         the right place in just the way it likes it. 
       
         - Go to the output (which should be in
         'Tests/output/test_Biospam') and double check the output to
         make sure it is all correct.
    
 
 
   4. Now change to the Tests directory and run the regression tests
   with 'python run_tests.py'. This will run all of the tests, and you
   should see your test run (and pass!).
 
   5. That's it! Now you've got a nice test for your module ready to
   check in, or submit to Biopython. Congratulations! 
  
  As an example, the 'test_Biospam.py' test script to test the
'addition' and 'multiplication' functions in the 'Biospam' module could
look as follows:
<<from Bio import Biospam
  
  print "2 + 3 =", Biospam.addition(2, 3)
  print "9 - 1 =", Biospam.addition(9, -1)
  print "2 * 3 =", Biospam.multiplication(2, 3)
  print "9 * (- 1) =", Biospam.multiplication(9, -1)
>>
  
  We generate the corresponding output with 'python run_tests.py -g
test_Biospam.py', and check the output file 'output/test_Biospam':
<<test_Biospam
  2 + 3 = 5
  9 - 1 = 8
  2 * 3 = 6
  9 * (- 1) = -9
>>
  
  Often, the difficulty with larger print-and-compare tests is to keep
track which line in the output corresponds to which command in the test
script. For this purpose, it is important to print out some markers to
help you match lines in the input script with the generated output.
  

14.2.2  Writing a unittest-based test
=====================================
  
  We want all the modules in Biopython to have unit tests, and a simple
print-and-compare test is better than no test at all. However, although
there is a steeper learning curve, using the 'unittest' framework gives
a more structured result, and if there is a test failure this can
clearly pinpoint which part of the test is going wrong. The sub-tests
can also be run individually which is helpful for testing or debugging.
  The 'unittest'-framework has been included with python since version
2.1, and is documented in the python Library Reference (which I know you
are keeping under your pillow, as recommended). There is also online
documentaion for unittest (2). If you are familiar with the 'unittest'
system (or something similar like the nose test framework), you
shouldn't have any trouble. You may find looking at the existing example
within Biopython helpful too.
  Here's a minimal 'unittest'-style test script for 'Biospam', which you
can copy and paste to get started:
<<import unittest
  from Bio import Biospam
  
  class BiospamTestAddition(unittest.TestCase):
  
      def test_addition1(self):
          result = Biospam.addition(2, 3)
          self.assertEqual(result, 5)
  
      def test_addition2(self):
          result = Biospam.addition(9, -1)
          self.assertEqual(result, 8)
  
  class BiospamTestDivision(unittest.TestCase):
  
      def test_division1(self):
          result = Biospam.division(3.0, 2.0)
          self.assertAlmostEqual(result, 1.5)
  
      def test_division2(self):
          result = Biospam.division(10.0, -2.0)
          self.assertAlmostEqual(result, -5.0)
  
  
  if __name__ == "__main__" :
      runner = unittest.TextTestRunner(verbosity = 2)
      unittest.main(testRunner=runner)
>>
  
  In the division tests, we use 'assertAlmostEqual' instead of
'assertEqual' to avoid tests failing due to roundoff errors; see the
'unittest' chapter in the python documentation for details and for other
functionality available in 'unittest' (online reference (3)).
  These are the key points of 'unittest'-based tests:
  
  
   - Test cases are stored in classes that derive from
   'unittest.TestCase' and cover one basic aspect of your code
 
   - You can use methods 'setUp' and 'tearDown' for any repeated code
   which should be run before and after each test method. For example,
   the 'setUp' method might be used to create an instance of the object
   you are testing, or open a file handle. The 'tearDown' should do any
   "tidying up", for example closing the file handle.
 
   - The tests are prefixed with 'test_' and each test should cover one
   specific part of what you are trying to test. You can have as many
   tests as you want in a class.
 
   - At the end of the test script, you can use 
   <<if __name__ == "__main__" :
         runner = unittest.TextTestRunner(verbosity = 2)
         unittest.main(testRunner=runner)
   >>
 to execute the tests when the script is run by itself (rather than
   imported from 'run_tests.py'). If you run this script, then you'll
   see something like the following:
   <<$ python test_BiospamMyModule.py
     test_addition1 (__main__.TestAddition) ... ok
     test_addition2 (__main__.TestAddition) ... ok
     test_division1 (__main__.TestDivision) ... ok
     test_division2 (__main__.TestDivision) ... ok
     
     -------------------------------------------------------------------
   ---
     Ran 4 tests in 0.059s
     
     OK
   >>
 
 
   - To indicate more clearly what each test is doing, you can add
   docstrings to each test. These are shown when running the tests,
   which can be useful information if a test is failing.
   <<import unittest
     from Bio import Biospam
     
     class BiospamTestAddition(unittest.TestCase):
     
         def test_addition1(self):
             """An addition test"""
             result = Biospam.addition(2, 3)
             self.assertEqual(result, 5)
     
         def test_addition2(self):
             """A second addition test"""
             result = Biospam.addition(9, -1)
             self.assertEqual(result, 8)
     
     class BiospamTestDivision(unittest.TestCase):
     
         def test_division1(self):
             """Now let's check division"""
             result = Biospam.division(3.0, 2.0)
             self.assertAlmostEqual(result, 1.5)
     
         def test_division2(self):
             """A second division test"""
             result = Biospam.division(10.0, -2.0)
             self.assertAlmostEqual(result, -5.0)
     
     
     if __name__ == "__main__" :
         runner = unittest.TextTestRunner(verbosity = 2)
         unittest.main(testRunner=runner)
   >>
 
 Running the script will now show you:
   <<$ python test_BiospamMyModule.py
     An addition test ... ok
     A second addition test ... ok
     Now let's check division ... ok
     A second division test ... ok
     
     -------------------------------------------------------------------
   ---
     Ran 4 tests in 0.001s
     
     OK
   >>
  
  If your module contains docstring tests (see section 14.3), you may
want to include those in the tests to be run. You can do so as follows
by modifying the code under 'if __name__ == "__main__":' to look like
this:
<<if __name__ == "__main__":
      unittest_suite =
unittest.TestLoader().loadTestsFromName("test_Biospam")
      doctest_suite = doctest.DocTestSuite(Biospam)
      suite = unittest.TestSuite((unittest_suite, doctest_suite))
      runner = unittest.TextTestRunner(sys.stdout, verbosity = 2)
      runner.run(suite)
>>
  
  This is only relevant if you want to run the docstring tests when you
exectute 'python test_Biospam.py'; with 'python run_tests.py', the
docstring tests are run automatically (assuming they are included in the
list of docstring tests in 'run_tests.py', see the section below).
  

14.3  Writing doctests
*=*=*=*=*=*=*=*=*=*=*=

   
  Python modules, classes and functions support built in documentation
using docstrings. The doctest framework (4) (included with python)
allows the developer to embed working examples in the docstrings, and
have these examples automatically tested.
  Currently only a small part of Biopython includes doctests. The
'run_tests.py' script takes care of running the doctests. For this
purpose, at the top of the 'run_tests.py' script is a manually compiled
list of modules to test, which allows us to skip modules with optional
external dependencies which may not be installed (e.g. the Reportlab and
NumPy libraries). So, if you've added some doctests to the docstrings in
a Biopython module, in order to have them included in the Biopython test
suite, you must update 'run_tests.py' to include your module. Currently,
the relevant part of 'run_tests.py' looks as follows:
<<# This is the list of modules containing docstring tests.
  # If you develop docstring tests for other modules, please add
  # those modules here.
  DOCTEST_MODULES = ["Bio.Seq",
                     "Bio.SeqRecord",
                     "Bio.SeqIO",
                     "Bio.Align.Generic",
                     "Bio.AlignIO",
                     "Bio.KEGG.Compound",
                     "Bio.KEGG.Enzyme",
                     "Bio.Wise",
                     "Bio.Wise.psw",
                    ]
  #Silently ignore any doctests for modules requiring numpy!
  try:
      import numpy
      DOCTEST_MODULES.extend(["Bio.Statistics.lowess"])
  except ImportError:
      pass
>>
  
  Note that we regard doctests primarily as documentation, so you should
stick to typical usage. Generally complicated examples dealing with
error conditions and the like would be best left to a dedicated unit
test.
  Note that if you want to write doctests involving file parsing,
defining the file location complicates matters. Ideally use relative
paths assuming the code will be run from the 'Tests' directory, see the
'Bio.SeqIO' doctests for an example of this.
  To run the docstring tests only, use 
<<$ python run_tests.py doctest
>>
  
-----------------------------------
  
  
 (1) http://docs.python.org/library/unittest.html
 
 (2) http://docs.python.org/library/unittest.html
 
 (3) http://docs.python.org/library/unittest.html
 
 (4) http://docs.python.org/library/doctest.html
  

Chapter 15    Advanced
**********************
   
  

15.1  The SeqRecord and SeqFeature classes
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

   
  You read all about the basic Biopython sequence class in Chapter 3,
which described how to do many useful things with just the sequence.
However, many times sequences have important additional properties
associated with them -- as you will have seen with the 'SeqRecord'
object in Chapter 4. This section describes how Biopython handles these
higher level descriptions of a sequence.
  

15.1.1  Sequence IDs and Descriptions -- dealing with SeqRecords
================================================================
  
  Immediately above the Sequence class is the Sequence Record class,
defined in the 'Bio.SeqRecord' module. This class allows higher level
features such as ids and features to be associated with the sequence,
and is used thoughout the sequence input/output interface 'Bio.SeqIO',
described in Chapter 4. The 'SeqRecord'class itself is very simple, and
offers the following information as attributes:
  
  
 seq  -- The sequence itself -- A 'Seq' object
 
 id  -- The primary ID used to identify the sequence -- a string. In
   most cases this is something like an accession number.
 
 name  -- A "common" name/id for the sequence -- a string. In some cases
   this will be the same as the accession number, but it could also be a
   clone name. I think of this as being analagous to the LOCUS id in a
   GenBank record.
 
 description  -- A human readible description or expressive name for the
   sequence -- as string. This is similar to what follows the id
   information in a FASTA formatted entry.
 
 annotations  -- A dictionary of additional information about the
   sequence. The keys are the name of the information, and the
   information is contained in the value. This allows the addition of
   more "unstructed" information to the sequence.
 
 features  -- A list of 'SeqFeature' objects with more structured
   information about the features on a sequence. The structure of
   sequence features is described below in Section 15.1.2.
 
 dbxrefs  - A list of database cross-references as strings. 
  
  Using a 'SeqRecord' class is not very complicated, since all of the
information is stored as attributes of the class. Initializing the class
just involves passing a 'Seq' object to the 'SeqRecord':
<<>>> from Bio.Seq import Seq
  >>> simple_seq = Seq("GATC")
  >>> from Bio.SeqRecord import SeqRecord
  >>> simple_seq_r = SeqRecord(simple_seq)
>>
  
  Additionally, you can also pass the id, name and description to the
initialization function, but if not they will be set as strings
indicating they are unknown, and can be modified subsequently:
<<>>> simple_seq_r.id
  '<unknown id>'
  >>> simple_seq_r.id = 'AC12345'
  >>> simple_seq_r.description = 'My little made up sequence I wish I
could
  write a paper about and submit to GenBank'
  >>> print simple_seq_r.description
  My little made up sequence I wish I could write a paper about and
submit
  to GenBank
  >>> simple_seq_r.seq
  Seq('GATC', Alphabet())
>>
  
  Adding annotations is almost as easy, and just involves dealing
directly with the annotation dictionary:
<<>>> simple_seq_r.annotations['evidence'] = 'None. I just made it up.'
  >>> print simple_seq_r.annotations
  {'evidence': 'None. I just made it up.'}
>>
  
  That's just about all there is to it! Next, you may want to learn
about SeqFeatures, which offer an additional structured way to represent
information about a sequence.
  

15.1.2  Features and Annotations -- SeqFeatures
===============================================
   
  Sequence features are an essential part of describing a sequence. Once
you get beyond the sequence itself, you need some way to organize and
easily get at the more "abstract" information that is known about the
sequence. While it is probably impossible to develop a general sequence
feature class that will cover everything, the Biopython 'SeqFeature'
class attempts to encapsulate as much of the information about the
sequence as possible. The design is heavily based on the GenBank/EMBL
feature tables, so if you understand how they look, you'll probably have
an easier time grasping the structure of the Biopython classes.
  

15.1.2.1  SeqFeatures themselves
--------------------------------
  
  The first level of dealing with sequence features is the 'SeqFeature'
class itself. This class has a number of attributes, so first we'll list
them and there general features, and then work through an example to
show how this applies to a real life example, a GenBank feature table.
The attributes of a SeqFeature are:
  
  
 location  -- The location of the 'SeqFeature' on the sequence that you
   are dealing with. The locations end-points may be fuzzy --
   section 15.1.2.2 has a lot more description on how to deal with
   descriptions.
 
 type  -- This is a textual description of the type of feature (for
   instance, this will be something like 'CDS' or 'gene').
 
 ref  -- A reference to a different sequence. Some times features may be
   "on" a particular sequence, but may need to refer to a different
   sequence, and this provides the reference (normally an accession
   number). A good example of this is a genomic sequence that has most
   of a coding sequence, but one of the exons is on a different
   accession. In this case, the feature would need to refer to this
   different accession for this missing exon.
 
 ref_db  -- This works along with 'ref' to provide a cross sequence
   reference. If there is a reference, 'ref_db' will be set as None if
   the reference is in the same database, and will be set to the name of
   the database otherwise.
 
 strand  -- The strand on the sequence that the feature is located on.
   This may either be '1' for the top strand, '-1' for the bottom
   strand, or '0' for both strands (or if it doesn't matter). Keep in
   mind that this only really makes sense for double stranded DNA, and
   not for proteins or RNA.
 
 qualifiers  -- This is a python dictionary of additional information
   about the feature. The key is some kind of terse one-word description
   of what the information contained in the value is about, and the
   value is the actual information. For example, a common key for a
   qualifier might be "evidence" and the value might be "computational
   (non-experimental)." This is just a way to let the person who is
   looking at the feature know that it has not be experimentally
   (i. e. in a wet lab) confirmed.
 
 sub_features  -- A very important feature of a feature is that it can
   have additional 'sub_features' underneath it. This allows nesting of
   features, and helps us to deal with things such as the GenBank/EMBL
   feature lines in a (we hope) intuitive way. 
  
  To show an example of SeqFeatures in action, let's take a look at the
following feature from a GenBank feature table:
<<     mRNA            complement(join(<49223..49300,49780..>50208))
                       /gene="F28B23.12"
>>
  
  To look at the easiest attributes of the SeqFeature first, if you got
a SeqFeature object for this it would have it 'type' of 'mRNA', a
'strand' of -1 (due to the 'complement'), and would have None for the
'ref' and 'ref_db' since there are no references to external databases.
The 'qualifiers' for this SeqFeature would be a python dictionarary that
looked like '{'gene' : 'F28B23.12'}'.
  Now let's look at the more tricky part, how the 'join' in the location
line is handled. First, the location for the top level SeqFeature (the
one we are dealing with right now) is set as going from ''<49223' to
'>50208'' (see section 15.1.2.2 for the nitty gritty on how fuzzy
locations like this are handled). So the location of the top level
object is the entire span of the feature. So, how do you get at the
information in the 'join?' Well, that's where the 'sub_features' go in.
  The 'sub_features' attribute will have a list with two SeqFeature
objects in it, and these contain the information in the join. Let's look
at 'top_level_feature.sub_features[0]'; the first 'sub_feature'). This
object is a SeqFeature object with a 'type' of ''mRNA_join',' a 'strand'
of -1 (inherited from the parent SeqFeature) and a location going from
''<49223' to '49300''.
  So, the 'sub_features' allow you to get at the internal information if
you want it (i. e. if you were trying to get only the exons out of a
genomic sequence), or just to deal with the broad picture (i. e. you
just want to know that the coding sequence for a gene lies in a region).
Hopefully this structuring makes it easy and intuitive to get at the
sometimes complex information that can be contained in a SeqFeature.
  

15.1.2.2  Locations
-------------------
   
  In the section on SeqFeatures above, we skipped over one of the more
difficult parts of Features, dealing with the locations. The reason this
can be difficult is because of fuzziness of the positions in locations.
Before we get into all of this, let's just define the vocabulary we'll
use to talk about this. Basically there are two terms we'll use:
  
  
 position  -- This refers to a single position on a sequence, which may
   be fuzzy or not. For instance, 5, 20, '<100' and '3^5' are all
   positions.
 
 location  -- A location is two positions that defines a region of a
   sequence. For instance 5..20 (i. e. 5 to 20) is a location. 
  
  I just mention this because sometimes I get confused between the two.
  The complication in dealing with locations comes in the positions
themselves. In biology many times things aren't entirely certain (as
much as us wet lab biologists try to make them certain!). For instance,
you might do a dinucleotide priming experiment and discover that the
start of mRNA transcript starts at one of two sites. This is very useful
information, but the complication comes in how to represent this as a
position. To help us deal with this, we have the concept of fuzzy
positions. Basically there are five types of fuzzy positions, so we have
five classes do deal with them:
  
  
 ExactPosition  -- As its name suggests, this class represents a
   position which is specified as exact along the sequence. This is
   represented as just a a number, and you can get the position by
   looking at the 'position' attribute of the object.
 
 BeforePosition  -- This class represents a fuzzy position that occurs
   prior to some specified site. In GenBank/EMBL notation, this is
   represented as something like ''<13'', signifying that the real
   position is located somewhere less then 13. To get the specified
   upper boundary, look at the 'position' attribute of the object.
 
 AfterPosition  -- Contrary to 'BeforePosition', this class represents a
   position that occurs after some specified site. This is represented
   in GenBank as ''>13'', and like 'BeforePosition', you get the
   boundary number by looking at the 'position' attribute of the object.
 
 WithinPosition  -- This class models a position which occurs somewhere
   between two specified nucleotides. In GenBank/EMBL notation, this
   would be represented as '(1.5)', to represent that the position is
   somewhere within the range 1 to 5. To get the information in this
   class you have to look at two attributes. The 'position' attribute
   specifies the lower boundary of the range we are looking at, so in
   our example case this would be one. The 'extension' attribute
   specifies the range to the higher boundary, so in this case it would
   be 4. So 'object.position' is the lower boundary and 'object.position
   + object.extension' is the upper boundary.
 
 BetweenPosition  -- This class deals with a position that occurs
   between two coordinates. For instance, you might have a protein
   binding site that occurs between two nucleotides on a sequence. This
   is represented as ''2^3'', which indicates that the real position
   happens between position 2 and 3. Getting this information from the
   object is very similar to 'WithinPosition', the 'position' attribute
   specifies the lower boundary (2, in this case) and the 'extension'
   indicates the range to the higher boundary (1 in this case). 
  
  Now that we've got all of the types of fuzzy positions we can have
taken care of, we are ready to actually specify a location on a
sequence. This is handled by the 'FeatureLocation' class. An object of
this type basically just holds the potentially fuzzy start and end
positions of a feature. You can create a 'FeatureLocation' object by
creating the positions and passing them in:
<<>>> from Bio import SeqFeature
  >>> start_pos = SeqFeature.AfterPosition(5)
  >>> end_pos = SeqFeature.BetweenPosition(8, 1)
  >>> my_location = SeqFeature.FeatureLocation(start_pos, end_pos)
>>
  
  If you print out a 'FeatureLocation' object, you can get a nice
representation of the information:
<<>>> print my_location
  [>5:(8^9)]
>>
  
  We can access the fuzzy start and end positions using the start and
end attributes of the location:
<<>>> my_location.start
  <Bio.SeqFeature.AfterPosition instance at 0x101d7164>
  >>> print my_location.start
  >5
  >>> print my_location.end
  (8^9)
>>
  
  If you don't want to deal with fuzzy positions and just want numbers,
you just need to ask for the 'nofuzzy_start' and 'nofuzzy_end'
attributes of the location:
<<>>> my_location.nofuzzy_start
  5
  >>> my_location.nofuzzy_end
  8
>>
  
  Notice that this just gives you back the position attributes of the
fuzzy locations.
  Similary, to make it easy to create a position without worrying about
fuzzy positions, you can just pass in numbers to the 'FeaturePosition'
constructors, and you'll get back out 'ExactPosition' objects:
<<>>> exact_location = SeqFeature.FeatureLocation(5, 8)
  >>> print exact_location
  [5:8]
  >>> exact_location.start
  <Bio.SeqFeature.ExactPosition instance at 0x101dcab4>
>>
  
  That is all of the nitty gritty about dealing with fuzzy positions in
Biopython. It has been designed so that dealing with fuzziness is not
that much more complicated than dealing with exact positions, and
hopefully you find that true!
  

15.1.2.3  References
--------------------
  
  Another common annotation related to a sequence is a reference to a
journal or other published work dealing with the sequence. We have a
fairly simple way of representing a Reference in Biopython -- we have a
'Bio.SeqFeature.Reference' class that stores the relevant information
about a reference as attributes of an object.
  The attributes include things that you would expect to see in a
reference like 'journal', 'title' and 'authors'. Additionally, it also
can hold the 'medline_id' and 'pubmed_id' and a 'comment' about the
reference. These are all accessed simply as attributes of the object.
  A reference also has a 'location' object so that it can specify a
particular location on the sequence that the reference refers to. For
instance, you might have a journal that is dealing with a particular
gene located on a BAC, and want to specify that it only refers to this
position exactly. The 'location' is a potentially fuzzy location, as
described in section 15.1.2.2.
  That's all there is too it. References are meant to be easy to deal
with, and hopefully general enough to cover lots of usage cases.
  

15.2  Parser Design
*=*=*=*=*=*=*=*=*=*

  
  Many of the older Biopython parsers were built around an
event-oriented design that includes Scanner and Consumer objects.
  Scanners take input from a data source and analyze it line by line,
sending off an event whenever it recognizes some information in the
data. For example, if the data includes information about an organism
name, the scanner may generate an 'organism_name' event whenever it
encounters a line containing the name.
  Consumers are objects that receive the events generated by Scanners.
Following the previous example, the consumer receives the
'organism_name' event, and the processes it in whatever manner necessary
in the current application.
  This is a very flexible framework, which is advantageous if you want
to be able to parse a file format into more than one representation. For
example, both the 'Bio.GenBank' and 'Bio.SwissProt' modules use this to
read their file formats as both generic 'SeqRecord' objects and
file-format-specific record objects.
  More recently, many of the parsers added for 'Bio.SeqIO' and
'Bio.AlignIO' take a much simpler approach, but only generate a single
object representation ('SeqRecord' and 'Alignment' objects
respectively).
  

15.3  Substitution Matrices
*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  

15.3.1  SubsMat
===============
  
  This module provides a class and a few routines for generating
substitution matrices, similar to BLOSUM or PAM matrices, but based on
user-provided data.
  Additionally, you may select a matrix from MatrixInfo.py, a collection
of established substitution matrices.
<<class SeqMat(UserDict.UserDict)
>>
  
  
  
   1. Attributes
 
     
      1. 'self.data': a dictionary in the form of '{(i1,j1):n1,
      (i1,j2):n2,...,(ik,jk):nk}' where i, j are alphabet letters, and n
      is a value.
    
      2. 'self.alphabet': a class as defined in Bio.Alphabet
    
      3. 'self.ab_list': a list of the alphabet's letters, sorted.
      Needed mainly for internal purposes
    
      4. 'self.sum_letters': a dictionary. '{i1: s1, i2: s2,...,in:sn}'
      where: 
        
         1. i: an alphabet letter; 
         2. s: sum of all values in a half-matrix for that letter; 
         3. n: number of letters in alphabet. 
     
 
 
   2. Methods
 
    
    
      1. 
      <<__init__(self,data=None,alphabet=None,
                 mat_type=NOTYPE,mat_name='',build_later=0):
      >>
    
    
       
       
         1. 'data': can be either a dictionary, or another SeqMat
         instance. 
         2. 'alphabet': a Bio.Alphabet instance. If not provided,
         construct an alphabet from data.
       
         3. 'mat_type': type of matrix generated. One of the following:
       
           
          NOTYPE  No type defined 
          ACCREP  Accepted Replacements Matrix 
          OBSFREQ  Observed Frequency Matrix 
          EXPFREQ  Expsected Frequency Matrix 
          SUBS  Substitution Matrix  
          LO  Log Odds Matrix 
       
       'mat_type' is provided automatically by some of SubsMat's
         functions.
       
         4. 'mat_name': matrix name, such as "BLOSUM62" or "PAM250"
       
         5. 'build_later': default false. If true, user may supply only
         alphabet and empty dictionary, if intending to build the matrix
         later. this skips the sanity check of alphabet size vs. matrix
         size.
    
    
      2. 
      <<entropy(self,obs_freq_mat)
      >>
    
    
        
         1. 'obs_freq_mat': an observed frequency matrix. Returns the
         matrix's entropy, based on the frequency in 'obs_freq_mat'. The
         matrix instance should be LO or SUBS. 
    
    
      3. 
      <<letter_sum(self,letter)
      >>
    
    Returns the sum of all values in the matrix, for the provided
      'letter'
    
      4. 
      <<all_letters_sum(self)
      >>
    
    Fills the dictionary attribute 'self.sum_letters' with the sum of
      values for each letter in the matrix's alphabet.
    
      5. 
      <<print_mat(self,f,format="%4d",bottomformat="%4s",alphabet=None)
      >>
    
    prints the matrix to file handle f. 'format' is the format field for
      the matrix values; 'bottomformat' is the format field for the
      bottom row, containing matrix letters. Example output for a
      3-letter alphabet matrix:
      <<A 23
        B 12 34
        C 7  22  27
          A   B   C
      >>
    
    The 'alphabet' optional argument is a string of all characters in
      the alphabet. If supplied, the order of letters along the axes is
      taken from the string, rather than by alphabetical order.
 
 
   3. Usage
 The following section is layed out in the order by which most people
   wish to generate a log-odds matrix. Of course, interim matrices can
   be generated and investigated. Most people just want a log-odds
   matrix, that's all.
 
    
    
      1. Generating an Accepted Replacement Matrix
    Initially, you should generate an accepted replacement matrix (ARM)
      from your data. The values in ARM are the counted number of
      replacements according to your data. The data could be a set of
      pairs or multiple alignments. So for instance if Alanine was
      replaced by Cysteine 10 times, and Cysteine by Alanine 12 times,
      the corresponding ARM entries would be:
      <<('A','C'): 10, ('C','A'): 12
      >>
    
    as order doesn't matter, user can already provide only one entry:
      <<('A','C'): 22
      >>
    
    A SeqMat instance may be initialized with either a full (first
      method of counting: 10, 12) or half (the latter method, 22)
      matrices. A full protein alphabet matrix would be of the size
      20x20 = 400. A half matrix of that alphabet would be 20x20/2 +
      20/2 = 210. That is because same-letter entries don't change. (The
      matrix diagonal). Given an alphabet size of N:
    
        
         1. Full matrix size:N*N
       
         2. Half matrix size: N(N+1)/2 
    
    The SeqMat constructor automatically generates a half-matrix, if a
      full matrix is passed. If a half matrix is passed, letters in the
      key should be provided in alphabetical order: ('A','C') and not
      ('C',A').
    At this point, if all you wish to do is generate a log-odds matrix,
      please go to the section titled Example of Use. The following text
      describes the nitty-gritty of internal functions, to be used by
      people who wish to investigate their nucleotide/amino-acid
      frequency data more thoroughly.
    
      2. Generating the observed frequency matrix (OFM)
    Use: 
      <<OFM = SubsMat._build_obs_freq_mat(ARM)
      >>
    
    The OFM is generated from the ARM, only instead of replacement
      counts, it contains replacement frequencies.
    
      3. Generating an expected frequency matrix (EFM)
    Use:
      <<EFM = SubsMat._build_exp_freq_mat(OFM,exp_freq_table)
      >>
    
    
        
         1. 'exp_freq_table': should be a FreqTable instance. See
         section 15.3.2 for detailed information on FreqTable. Briefly,
         the expected frequency table has the frequencies of appearance
         for each member of the alphabet. It is implemented as a
         dictionary with the alphabet letters as keys, and each letter's
         frequency as a value. Values sum to 1. 
    
    The expected frequency table can (and generally should) be generated
      from the observed frequency matrix. So in most cases you will
      generate 'exp_freq_table' using:
      <<>>> exp_freq_table = SubsMat._exp_freq_table_from_obs_freq(OFM)
        >>> EFM = SubsMat._build_exp_freq_mat(OFM,exp_freq_table)
      >>
    
    But you can supply your own 'exp_freq_table', if you wish
    
      4. Generating a substitution frequency matrix (SFM)
    Use:
      <<SFM = SubsMat._build_subs_mat(OFM,EFM)
      >>
    
    Accepts an OFM, EFM. Provides the division product of the
      corresponding values.
    
      5. Generating a log-odds matrix (LOM)
    Use: 
      <<LOM=SubsMat._build_log_odds_mat(SFM[,logbase=10,factor=10.0,roun
      d_digit=1])
      >>
    
    
        
         1. Accepts an SFM.
       
         2. 'logbase': base of the logarithm used to generate the
         log-odds values.
       
         3. 'factor': factor used to multiply the log-odds values. Each
         entry is generated by log(LOM[key])*factor And rounded to the
         'round_digit' place after the decimal point, if required.
    
 
 
   4. Example of use
 As most people would want to generate a log-odds matrix, with minimum
   hassle, SubsMat provides one function which does it all:
   <<make_log_odds_matrix(acc_rep_mat,exp_freq_table=None,logbase=10,
                           factor=10.0,round_digit=0):
   >>
 
 
     
      1. 'acc_rep_mat': user provided accepted replacements matrix 
      2. 'exp_freq_table': expected frequencies table. Used if provided,
      if not, generated from the 'acc_rep_mat'. 
      3. 'logbase': base of logarithm for the log-odds matrix. Default
      base 10. 
      4. 'round_digit': number after decimal digit to which result
      should be rounded. Default zero. 
 
  
  

15.3.2  FreqTable
=================
   
<<FreqTable.FreqTable(UserDict.UserDict)
>>
  
  
 
 
   1. Attributes:
 
     
      1. 'alphabet': A Bio.Alphabet instance. 
      2. 'data': frequency dictionary 
      3. 'count': count dictionary (in case counts are provided). 
 
 
   2. Functions: 
     
      1. 'read_count(f)': read a count file from stream f. Then convert
      to frequencies 
      2. 'read_freq(f)': read a frequency data file from stream f. Of
      course, we then don't have the counts, but it is usually the
      letter frquencies which are interesting. 
 
 
   3. Example of use: The expected count of the residues in the database
   is sitting in a file, whitespace delimited, in the following format
   (example given for a 3-letter alphabet):
   <<A   35
     B   65
     C   100
   >>
 
 And will be read using the 'FreqTable.read_count(file_handle)'
   function.
 An equivalent frequency file:
   <<A  0.175
     B  0.325
     C  0.5
   >>
 
 Conversely, the residue frequencies or counts can be passed as a
   dictionary. Example of a count dictionary (3-letter alphabet):
   <<{'A': 35, 'B': 65, 'C': 100}
   >>
 
 Which means that an expected data count would give a 0.5 frequency for
   'C', a 0.325 probability of 'B' and a 0.175 probability of 'A' out of
   200 total, sum of A, B and C)
 A frequency dictionary for the same data would be:
   <<{'A': 0.175, 'B': 0.325, 'C': 0.5}
   >>
 
 Summing up to 1.
 When passing a dictionary as an argument, you should indicate whether
   it is a count or a frequency dictionary. Therefore the FreqTable
   class constructor requires two arguments: the dictionary itself, and
   FreqTable.COUNT or FreqTable.FREQ indicating counts or frequencies,
   respectively.
 Read expected counts. readCount will already generate the frequencies
   Any one of the following may be done to geerate the frequency table
   (ftab):
   <<>>> from SubsMat import *
     >>> ftab =
   FreqTable.FreqTable(my_frequency_dictionary,FreqTable.FREQ)
     >>> ftab = FreqTable.FreqTable(my_count_dictionary,FreqTable.COUNT)
     >>> ftab = FreqTable.read_count(open('myCountFile'))
     >>> ftab = FreqTable.read_frequency(open('myFrequencyFile'))
   >>
 
  
  

Chapter 16    Where to go from here -- contributing to Biopython
****************************************************************
  
  

16.1  Bug Reports + Feature Requests
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  Getting feedback on the Biopython modules is very important to us.
Open-source projects like this benefit greatly from feedback,
bug-reports (and patches!) from a wide variety of contributors.
  The main forums for discussing feature requests and potential bugs are
the Biopython mailing lists (1):
  
  
   - biopython@biopython.org -- An unmoderated list for discussion of
   anything to do with Biopython.
 
   - biopython-dev@biopython.org -- A more development oriented list
   that is mainly used by developers (but anyone is free to
   contribute!). 
  
  Additionally, if you think you've found a bug, you can submit it to
our bug-tracking page at http://bugzilla.open-bio.org/. This way, it
won't get buried in anyone's Inbox and forgotten about.
  

16.2  Mailing lists and helping newcomers
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  We encourage all our uses to sign up to the main Biopython mailing
list. Once you've got the hang of an area of Biopython, we'd encourage
you to help answer questions from beginners. After all, you were a
beginner once.
  

16.3  Contributing Documentation
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

  
  We're happy to take feedback or contributions - either via a
bug-report or on the Mailing List. While reading this tutorial, perhaps
you noticed some topics you were interested in which were missing, or
not clearly explained. There is also Biopython's built in documentation
(the docstrings, these are also  online (2)), where again, you may be
able to help fill in any blanks.
  

16.4  Maintaining a distribution for a platform
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

   
  We currently provide source code archives (suitable for any OS, if you
have the right build tools installed), and Windows Installers which are
just click and run. This covers all the major operating systems.
  Most major Linux distributions have volunteers who take these source
code releases, and compile them into packages for Linux users to easily
install (taking care of dependencies etc). This is really great and we
are of course very grateful. If you would like to contribute to this
work, please find out more about how your Linux distribution handles
this.
  Below are some tips for certain platforms to maybe get people started
with helping out:
  
 
 
 Windows  -- Windows products typically have a nice graphical installer
   that installs all of the essential components in the right place. We
   use Distutils to create a installer of this type fairly easily.
 You must first make sure you have a C compiler on your Windows
   computer, and that you can compile and install things (this is the
   hard bit - see the Biopython installation instructions for info on
   how to do this).
 Once you are setup with a C compiler, making the installer just
   requires doing:
   <<python setup.py bdist_wininst
   >>
 
 Now you've got a Windows installer. Congrats! At the moment we have no
   trouble shipping installers built on 32 bit windows. If anyone would
   like to look into supporting 64 bit Windows that would be great.
 
 RPMs  -- RPMs are pretty popular package systems on some Linux
   platforms. There is lots of documentation on RPMs available at
   http://www.rpm.org to help you get started with them. To create an
   RPM for your platform is really easy. You just need to be able to
   build the package from source (having a C compiler that works is thus
   essential) -- see the Biopython installation instructions for more
   info on this.
 To make the RPM, you just need to do:
   <<python setup.py bdist_rpm
   >>
 
 This will create an RPM for your specific platform and a source RPM in
   the directory 'dist'. This RPM should be good and ready to go, so
   this is all you need to do! Nice and easy.
 
 Macintosh  -- Since Apple moved to Mac OS X, things have become much
   easier on the Mac. We generally treat it as just another Unix
   variant, and installing Biopython from source is just as easy as on
   Linux. The easiest way to get all the GCC compilers etc installed is
   to install Apple's X-Code. We might be able to provide click and run
   installers for Mac OS X, but to date there hasn't been any demand.
  
  Once you've got a package, please test it on your system to make sure
it installs everything in a good way and seems to work properly. Once
you feel good about it, send it off to one of the Biopython developers
(write to our main mailing list at biopython@biopython.org if you're not
sure who to send it to) and you've done it. Thanks!
  

16.5  Contributing Unit Tests
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*

  
  Even if you don't have any new functionality to add to Biopython, but
you want to write some code, please consider extending our unit test
coverage. We've devoted all of Chapter 14 to this topic.
  

16.6  Contributing Code
*=*=*=*=*=*=*=*=*=*=*=*

  
  There are no barriers to joining Biopython code development other than
an interest in creating biology-related code in python. The best place
to express an interest is on the Biopython mailing lists -- just let us
know you are interested in coding and what kind of stuff you want to
work on. Normally, we try to have some discussion on modules before
coding them, since that helps generate good ideas -- then just feel free
to jump right in and start coding!
  The main Biopython release tries to be fairly uniform and
interworkable, to make it easier for users. You can read about some of
(fairly informal) coding style guidelines we try to use in Biopython in
the contributing documentation at
http://biopython.org/wiki/Contributing. We also try to add code to the
distribution along with tests (see Chapter 14 for more info on the
regression testing framework) and documentation, so that everything can
stay as workable and well documented as possible (including docstrings).
This is, of course, the most ideal situation, under many situations
you'll be able to find other people on the list who will be willing to
help add documentation or more tests for your code once you make it
available. So, to end this paragraph like the last, feel free to start
working!
  Please note that to make a code contribution you must have the legal
right to contribute it and license it under the Biopython license. If
you wrote it all yourself, and it is not based on any other code, this
shouldn't be a problem. However, there are issues if you want to
contribute a derivative work - for example something based on GPL or
LPGL licenced code would not be compatible with our license. If you have
any queries on this, please discuss the issue on the biopython-dev
mailing list.
  Another point of concern for any additions to Biopython regards any
build time or run time dependencies. Generally speak, writing code to
interact with a standalone tool (like BLAST, EMBOSS or ClustalW) doesn't
present a big problem. However, any dependency on another library - even
a python library (especially one needed in order to compile and install
Biopython like NumPy) would need further discussion.
  Additionally, if you have code that you don't think fits in the
distribution, but that you want to make available, we maintain Script
Central (http://biopython.org/wiki/Scriptcentral) which has pointers to
freely available code in python for bioinformatics.
  Hopefully this documentation has got you excited enough about
Biopython to try it out (and most importantly, contribute!). Thanks for
reading all the way through!
-----------------------------------
  
  
 (1) http://biopython.org/wiki/Mailing_lists
 
 (2) http://biopython.org/DIST/docs/api
  

Chapter 17    Appendix: Useful stuff about python
*************************************************
   
  If you haven't spent a lot of time programming in python, many
questions and problems that come up in using Biopython are often related
to python itself. This section tries to present some ideas and code that
come up often (at least for us!) while using the Biopython libraries. If
you have any suggestions for useful pointers that could go here, please
contribute!
  

17.1  What the heck is a handle?
*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=*=

   
  Handles are mentioned quite frequently throughout this documentation,
and are also fairly confusing (at least to me!). Basically, you can
think of a handle as being a "wrapper" around text information.
  Handles provide (at least) two benefits over plain text information:
  
  
   1. They provide a standard way to deal with information stored in
   different ways. The text information can be in a file, or in a string
   stored in memory, or the output from a command line program, or at
   some remote website, but the handle provides a common way of dealing
   with information in all of these formats.
 
   2. They allow text information to be read incrementally, instead of
   all at once. This is really important when you are dealing with huge
   text files which would use up all of your memory if you had to load
   them all. 
  
  Handles can deal with text information that is being read
(e. g. reading from a file) or written (e. g. writing information to a
file). In the case of a "read" handle, commonly used functions are
'read()', which reads the entire text information from the handle, and
'readline()', which reads information one line at a time. For "write"
handles, the function 'write()' is regularly used.
  The most common usage for handles is reading information from a file,
which is done using the built-in python function 'open'. Here, we open a
handle to the file m_cold.fasta (1) (also available online here (2)):
<<>>> handle = open("m_cold.fasta", "r")
  >>> handle.readline()
  ">gi|8332116|gb|BE037100.1|BE037100 MP14H09 MP Mesembryanthemum ...\n"
>>
  
  Handles are regularly used in Biopython for passing information to
parsers.
  

17.1.1  Creating a handle from a string
=======================================
  
  One useful thing is to be able to turn information contained in a
string into a handle. The following example shows how to do this using
'cStringIO' from the python standard library:
<<>>> my_info = 'A string\n with multiple lines.'
  >>> print my_info
  A string
   with multiple lines.
  >>> import cStringIO
  >>> my_info_handle = cStringIO.StringIO(my_info)
  >>> first_line = my_info_handle.readline()
  >>> print first_line
  A string
  
  >>> second_line = my_info_handle.readline()
  >>> print second_line
   with multiple lines.
>>
  
-----------------------------------------------------------------------
  
   This document was translated from LaTeX by HeVeA (3).
-----------------------------------
  
  
 (1) examples/m_cold.fasta
 
 (2) http://biopython.org/DIST/docs/tutorial/examples/m_cold.fasta
 
 (3) http://hevea.inria.fr/index.html
