This page describes Bio.SeqIO, the standard Sequence Input/Output interface for BioPython 1.43 and later. For implementation details, see the SeqIO development page.
Python novices might find Peter's introductory Biopython Workshop useful which start with working with sequence files using SeqIO.
There is a whole chapter in the Tutorial (PDF) on Bio.SeqIO, and although there is some overlap it is well worth reading in addition to this WIKI page. There is also the API documentation (which you can read online, or from within Python with the help command).
Bio.SeqIO provides a simple uniform interface to input and output assorted sequence file formats (including multiple sequence alignments), but will only deal with sequences as SeqRecord objects. There is a sister interface Bio.AlignIO for working directly with sequence alignment files as Alignment objects.
Note that the inclusion of Bio.SeqIO (and Bio.AlignIO) in Biopython does lead to some duplication or choice in how to deal with some file formats. For example, Bio.Nexus will also read sequences from Nexus files - but Bio.Nexus can also do much more, for example reading any phylogenetic trees in a Nexus file.
My vision is that for manipulating sequence data you should try Bio.SeqIO as your first choice. Unless you have some very specific requirements, I hope this should suffice.
This table lists the file formats that Bio.SeqIO can read, write and index, with the Biopython version where this was first supported (or git to indicate this is supported in our latest in development code). The format name is a simple lowercase string. Where possible we use the same name as BioPerl's SeqIO and EMBOSS.
|abi||1.58||No||N/A||Reads the ABI "Sanger" capillary sequence traces files, including the PHRED quality scores for the base calls. This allows ABI to FASTQ conversion. Note each ABI file contains one and only one sequence (so there is no point in indexing the file).|
|ace||1.47||No||1.52||Reads the contig sequences from an ACE assembly file. Uses Bio.Sequencing.Ace internally|
|clustal||1.43||1.43||No||The alignment format of Clustal X and Clustal W.|
|embl||1.43||1.54||1.52||The EMBL flat file format. Uses Bio.GenBank internally.|
|fasta||1.43||1.43||1.52||This refers to the input FASTA file format introduced for Bill Pearson's FASTA tool, where each record starts with a ">" line. Resulting sequences have a generic alphabet by default.|
|fastq-sanger or fastq||1.50||1.50||1.52||FASTQ files are a bit like FASTA files but also include sequencing qualities. In Biopython, "fastq" (or the alias "fastq-sanger") refers to Sanger style FASTQ files which encode PHRED qualities using an ASCII offset of 33. See also the incompatible "fastq-solexa" and "fastq-illumina" variants used in early Solexa/Illumina pipelines, Illumina pipeline 1.8 produces Sanger FASTQ.|
|fastq-solexa||1.50||1.50||1.52||FASTQ files are a bit like FASTA files but also include sequencing qualities. In Biopython, "fastq-solexa" refers to the original Solexa/Illumina style FASTQ files which encode Solexa qualities using an ASCII offset of 64. See also what we call the "fastq-illumina" format.|
|fastq-illumina||1.51||1.51||1.52||FASTQ files are a bit like FASTA files but also include sequencing qualities. In Biopython, "fastq-illumina" refers to early Solexa/Illumina style FASTQ files (from pipeline version 1.3 to 1.7) which encode PHRED qualities using an ASCII offset of 64. For good quality reads, PHRED and Solexa scores are approximately equal, so the "fastq-solexa" and "fastq-illumina" variants are almost equivalent.|
|genbank or gb||1.43||1.48 / 1.51||1.52||The GenBank or GenPept flat file format. Uses Bio.GenBank internally for parsing. Biopython 1.48 to 1.50 wrote basic GenBank files with only minimal annotation, while 1.51 onwards will also write the features table (see Bug 2294).|
|ig||1.47||No||1.52||This refers to the IntelliGenetics file format, apparently the same as the MASE alignment format.|
|imgt||1.56||1.56||1.56||This refers to the IMGT variant of the EMBL plain text file format.|
|nexus||1.43||1.48||No||The NEXUS multiple alignment format, also known as PAUP format. Uses Bio.Nexus internally.|
|phd||1.46||1.52||1.52||PHD files are output from PHRED, used by PHRAP and CONSED for input. Uses Bio.Sequencing.Phd internally.|
|phylip||1.43||1.43||No||An alignment format. Truncates names at 10 characters.|
|pir||1.48||No||1.52||A "FASTA like" format introduced by the National Biomedical Research Foundation (NBRF) for the Protein Information Resource (PIR) database, now part of UniProt.|
|seqxml||1.58||1.58||No||Simple sequence XML file format.|
|sff||1.54||1.54||1.54||Standard Flowgram Format (SFF) files produced by 454 sequencing.|
|stockholm||1.43||1.43||No||The Stockholm alignment format is also known as PFAM format.|
|swiss||1.43||No||1.52||Swiss-Prot aka UniProt format. Uses Bio.SwissProt internally. See also the UniProt XML format.|
|tab||1.48||1.48||1.52||Simple two column tab separated sequence files, where each line holds a record's identifier and sequence. For example, this is used by Aligent's eArray software when saving microarray probes in a minimal tab delimited text file.|
|qual||1.50||1.50||1.52||Qual files are a bit like FASTA files but instead of the sequence, record space separated integer sequencing values as PHRED quality scores. A matched pair of FASTA and QUAL files are often used as an alternative to a single FASTQ file.|
|uniprot-xml||1.56||No||1.56||UniProt XML format, successor to the plain text Swiss-Prot format.|
With Bio.SeqIO you can treat sequence alignment file formats just like any other sequence file, but the new Bio.AlignIO module is designed to work with such alignment files directly. You can also convert a set of SeqRecord objects from any file format into an alignment - provided they are all the same length. Note that when using Bio.SeqIO to write sequences to an alignment file format, all the (gapped) sequences should be the same length.
The main function is Bio.SeqIO.parse() which takes a file handle and format name, and returns a SeqRecord iterator. This lets you do things like:
from Bio import SeqIO handle = open("example.fasta", "rU") for record in SeqIO.parse(handle, "fasta") : print record.id handle.close()
In the above example, we opened the file using the built-in python function open. The argument 'rU' means open for reading using universal readline mode - this means you don't have to worry if the file uses Unix, Mac or DOS/Windows style newline characters.
Note that you must specify the file format explicitly, unlike BioPerl's SeqIO which can try to guess using the file name extension and/or the file contents. See Explicit is better than implicit (The Zen of Python).
If you had a different type of file, for example a Clustalw alignment file such as 'opuntia.aln' which contains seven sequences, the only difference is you specify "clustal" instead of "fasta":
from Bio import SeqIO handle = open("opuntia.aln", "rU") for record in SeqIO.parse(handle, "clustal") : print record.id handle.close()
Iterators are great for when you only need the records one by one, in the order found in the file. For some tasks you may need to have random access to the records in any order. In this situation, use the built in python list function to turn the iterator into a list:
from Bio import SeqIO handle = open("example.fasta", "rU") records = list(SeqIO.parse(handle, "fasta")) handle.close() print records.id #first record print records[-1].id #last record
Another common task is to index your records by some identifier. For small files we have a function Bio.SeqIO.to_dict() to turn a SeqRecord iterator (or list) into a dictionary (in memory):
from Bio import SeqIO handle = open("example.fasta", "rU") record_dict = SeqIO.to_dict(SeqIO.parse(handle, "fasta")) handle.close() print record_dict["gi:12345678"] #use any record ID
The function Bio.SeqIO.to_dict() will use the record ID as the dictionary key by default, but you can specify any mapping you like with its optional argument, key_function.
For larger files, it isn't possible to hold everything in memory, so Bio.SeqIO.to_dict() is not suitable. Biopython 1.52 inwards includes the Bio.SeqIO.index() function for this situation, but you might also consider BioSQL.
from Bio import SeqIO record_dict = SeqIO.index("example.fasta", "fasta") print record_dict["gi:12345678"] #use any record ID
Biopython 1.45 introduced another function, Bio.SeqIO.read(), which like Bio.SeqIO.parse() will expect a handle and format. It is for use when the handle contains one and only one record, which is returned as a single SeqRecord object. If there are no records, or more than one, then an exception is raised:
from Bio import SeqIO record = SeqIO.read(open("single.fasta"), "fasta")
For the related situation where you just want the first record (and are happy to ignore any subsequent records), you can use the iterator's .next() method:
from Bio import SeqIO first_record = SeqIO.parse(open("example.fasta", "rU"), "fasta").next()
For writing records to a file use the function Bio.SeqIO.write(), which takes a SeqRecord iterator (or list), output handle and format string:
from Bio import SeqIO sequences = ... # add code here output_handle = open("example.fasta", "w") SeqIO.write(sequences, output_handle, "fasta") output_handle.close()
There are more examples in the following section on converting between file formats.
Note that if you are writing to an alignment file format, all your sequences must be the same length.
If you supply the sequences as a SeqRecord iterator, then for sequential file formats like Fasta or GenBank, the records can be written one by one. Because only one record is created at a time, very little memory is required. See the example below filtering a set of records.
On the other hand, for interlaced or non-sequential file formats like Clustal, the Bio.SeqIO.write() function will be forced to automatically convert an iterator into a list. This will destroy any potential memory saving from using an generator/iterator approach.
File Format Conversion
Suppose you have a GenBank file which you want to turn into a Fasta file. For example, lets consider the file 'cor6_6.gb' which is included in the Biopython unit tests under the GenBank directory.
You could read the file like this, using the Bio.SeqIO.parse() function:
from Bio import SeqIO input_handle = open("cor6_6.gb", "rU") for record in SeqIO.parse(input_handle, "genbank") : print record input_handle.close()
Notice that this file contains six records. Now instead of printing the records, let's pass the SeqRecord iterator to the Bio.SeqIO.write() function, to turn this GenBank file into a Fasta file:
from Bio import SeqIO input_handle = open("cor6_6.gb", "rU") output_handle = open("cor6_6.fasta", "w") sequences = SeqIO.parse(input_handle, "genbank") count = SeqIO.write(sequences, output_handle, "fasta") output_handle.close() input_handle.close() print "Converted %i records" % count
Or more concisely using the Bio.SeqIO.convert() function (in Biopython 1.52 or later), just:
from Bio import SeqIO count = SeqIO.convert("cor6_6.gb", "genbank", "cor6_6.fasta", "fasta") print "Converted %i records" % count
In this example the GenBank file started like this:
LOCUS ATCOR66M 513 bp mRNA PLN 02-MAR-1992 DEFINITION A.thaliana cor6.6 mRNA. ACCESSION X55053 VERSION X55053.1 GI:16229 ...
The resulting Fasta file looks like this:
>X55053.1 A.thaliana cor6.6 mRNA. AACAAAACACACATCAAAAACGATTTTACAAGAAAAAAATA... ...
Note that all the Fasta file can store is the identifier, description and sequence.
By changing the format strings, that code could be used to convert between any supported file formats.
Input/Output Example - Filtering by sequence length
While you may simply want to convert a file (as shown above), a more realistic example is to manipulate or filter the data in some way.
For example, let's save all the "short" sequences of less than 300 nucleotides to a Fasta file:
from Bio import SeqIO short_sequences =  # Setup an empty list for record in SeqIO.parse(open("cor6_6.gb", "rU"), "genbank") : if len(record.seq) < 300 : # Add this record to our list short_sequences.append(record) print "Found %i short sequences" % len(short_sequences) output_handle = open("short_seqs.fasta", "w") SeqIO.write(short_sequences, output_handle, "fasta") output_handle.close()
If you know about list comprehensions then you could have written the above example like this instead:
from Bio import SeqIO input_seq_iterator = SeqIO.parse(open("cor6_6.gb", "rU"), "genbank") #Build a list of short sequences: short_sequences = [record for record in input_seq_iterator \ if len(record.seq) < 300] print "Found %i short sequences" % len(short_sequences) output_handle = open("short_seqs.fasta", "w") SeqIO.write(short_sequences, output_handle, "fasta") output_handle.close()
I'm not convinced this is actually any easier to understand, but it is shorter.
However, if you are using Python 2.4 or later, and you are dealing with very large files with thousands of records, you could benefit from using a generator expression instead. This avoids creating the entire list of desired records in memory:
from Bio import SeqIO input_seq_iterator = SeqIO.parse(open("cor6_6.gb", "rU"), "genbank") short_seq_iterator = (record for record in input_seq_iterator \ if len(record.seq) < 300) output_handle = open("short_seqs.fasta", "w") SeqIO.write(short_seq_iterator, output_handle, "fasta") output_handle.close()
Remember that for sequential file formats like Fasta or GenBank, Bio.SeqIO.write() will accept a SeqRecord iterator. The advantage of the code above is that only one record will be in memory at any one time.
However, as explained in the output section, for non-sequential file formats like Clustal write is forced to automatically turn the iterator into a list, so this advantage is lost.
If this is all confusing, don't panic and just ignore the fancy stuff. For moderately sized datasets having too many records in memory at once (e.g. in lists) is probably not going to be a problem.
Using the SEGUID checksum
In this example, we'll use Bio.SeqIO with the Bio.SeqUtils.CheckSum module (in Biopython 1.44 or later). First of all, we'll just print out the checksum for each sequence in the GenBank file ls_orchid.gbk:
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)
You should get this output:
Z78533.1 JUEoWn6DPhgZ9nAyowsgtoD9TTo Z78532.1 MN/s0q9zDoCVEEc+k/IFwCNF2pY ... Z78439.1 H+JfaShya/4yyAj7IbMqgNkxdxQ
Now lets use the checksum function and Bio.SeqIO.to_dict() to build a SeqRecord dictionary using the SEGUID as the keys. The trick here is to use the python lambda syntax to create a temporary function to get the SEGUID for each SeqRecord - we can't use the seguid function directly as it only works on Seq objects or strings.
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
Giving this output:
Z78439.1 P.barbatum 5.8S rRNA gene and ITS1 and ITS2 DNA.
This script will read a Genbank file with a whole mitochondrial genome (e.g. the tobacco mitochondrion, Nicotiana tabacum mitochondrion NC_006581), create 500 records containing random fragments of this genome, and save them as a fasta file. These subsequences are created using a random starting points and a fixed length of 200.
from Bio import SeqIO from Bio.SeqRecord import SeqRecord from random import randint #There should be one and only one record, the entire genome: mito_record = SeqIO.read(open("NC_006581.gbk"), "genbank") mito_frags= limit=len(mito_record.seq) for i in range(0, 500) : start=randint(0,limit-200) end=start+200 mito_frag=mito_record.seq[start:end] record=SeqRecord(mito_frag,'fragment_%i' % (i+1),'','') mito_frags.append(record) output_handle = open("mitofrags.fasta", "w") SeqIO.write(mito_frags, output_handle, "fasta") output_handle.close()
That should give something like this as the output file,
>fragment_1 TGGGCCTCATATTTATCCTATATACCATGTTCGTATGGTGGCGCGATGTTCTACGTGAAT CCACGTTCGAAGGACATCATACCAAAGTCGTACAATTAGGACCTCGATATGGTTTTATTC TGTTTATCGTATCGGAGGTTATGTTCTTTTTTGCTCTTTTTCGGGCTTCTTCTCATTCTT CTTTGGCACCTACGGTAGAG ... >fragment_500 ACCCAGTGCCGCTACCCACTTCTACTAAGGCTGAGCTTAATAGGAGCAAGAGACTTGGAG GCAACAACCAGAATGAAATATTATTTAATCGTGGAAATGCCATGTCAGGCGCACCTATCA GAATCGGAACAGACCAATTACCAGATCCACCTATCATCGCCGGCATAACCATAAAAAAGA TCATTAAAAAAGCGTGAGCC
Writing to a string
Sometimes you won't want to write your SeqRecord object(s) to a file, but to a string. For example, you might be preparing output for display as part of a webpage. If you want to write multiple records to a single string, use StringIO to create a string-based handle. The Tutorial (PDF) has an example of this in the SeqIO chapter.
For the special case where you want a single record as a string in a given file format, Biopython 1.48 added a new format method:
from Bio import SeqIO mito_record = SeqIO.read(open("NC_006581.gbk"), "genbank") print mito_record.format("fasta")
The format method will take any output format supported by Bio.SeqIO where the file format can be used for a single record (e.g. "fasta", "tab" or "genbank"). Note that we don't recommend you use this for file output - using Bio.SeqIO.write() is faster and more general.
If you are having problems with Bio.SeqIO, please join the discussion mailing list (see mailing lists).
If you think you've found a bug, please report it on our bug tracker.