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I have a fasta file as follows:


Where what follows the ">" is the gene ID and the letters following the ">" line are the corresponding sequences. I want to parse through the file and count how many "C"'s there are in the sequence for each gene ID. I would like my output file to be a tab delimited file like this:

SO_0001    Number of C's
SO_0002    Number of C's
SO_0003    Number of C's

and so on...

I am using python and thought this would be straight forward by making the gene IDs keys to a dictionary, but I have only done that with tab-delimited files and I am having trouble since each sequence is a different length and beneath the gene IDs. Any suggestions would be great!

share|improve this question
up vote 0 down vote accepted

If you already had data in the format you posted and don't want to delve into the specialized libraries you can try something like this.

with open('datafile.txt') as file:
  datalist = []
  for line in file:
    if line.startswith('>'):
      datalist.append([line.strip()[1:], ''])
      datalist[-1][1] += line.strip()
  for data in datalist:
    print(data[0], '   ', data[1].count('C'))
share|improve this answer
Thanks this worked really well. Can I ask why do you add '' in datalist.append([line.strip()[1:], '']) What is its purpose? Thanks again! – C9r1y Feb 22 '13 at 0:35
I wasn't sure how many lines the sequence would be spread over. It is used as a placeholder for the following lines that have sequence information. – Octipi Feb 22 '13 at 0:40

Searching for biopython fasta brings up this page, and modifying the example:

>>> from Bio import SeqIO
>>> with open("bio.fasta") as fp:
...         record_dict = SeqIO.to_dict(SeqIO.parse(fp, "fasta"))

produces a dictionary of data looking like

>>> import pprint
>>> pprint.pprint(record_dict)
{'SO_0001': SeqRecord(seq=Seq('MTKIAILVGTTLGSSEYIADEMQAQLTPLGHEVHTFLHPTLDELKPYPLWILVS...DQI', SingleLetterAlphabet()), id='SO_0001', name='SO_0001', description='SO_0001', dbxrefs=[]),
 'SO_0002': SeqRecord(seq=Seq('MTTPVDAPKWPRQIPYIIASEACERFSFYGMRNILTPFLMTALLLSIPEELRGA...FDQ', SingleLetterAlphabet()), id='SO_0002', name='SO_0002', description='SO_0002', dbxrefs=[]),
 'SO_0003': SeqRecord(seq=Seq('MTTDTIVAQATAPGRGGVGIIRISGDKATNVAMAVLGHLPKPRYADYCYFKSAS...EVD', SingleLetterAlphabet()), id='SO_0003', name='SO_0003', description='SO_0003', dbxrefs=[])}

where we can access the records and count characters:

>>> record_dict["SO_0002"]
SeqRecord(seq=Seq('MTTPVDAPKWPRQIPYIIASEACERFSFYGMRNILTPFLMTALLLSIPEELRGA...FDQ', SingleLetterAlphabet()), id='SO_0002', name='SO_0002', description='SO_0002', dbxrefs=[])
>>> record_dict["SO_0002"].seq
>>> record_dict["SO_0002"].seq.count("C")

and so:

>>> count = {name: record.seq.count("C") for name, record in record_dict.items()}
>>> count
{'SO_0002': 2, 'SO_0003': 1, 'SO_0001': 3}

after which

>>> import csv
>>> with open("c_count.csv", "wb") as fp:
...     writer = csv.writer(fp, delimiter="\t")
...     for k in sorted(count):
...         writer.writerow([k, count[k]])

produces a file like

localhost-2:coding $ cat c_count.csv 
SO_0001 3
SO_0002 2
SO_0003 1

Advice: don't rewrite a FASTA parser, use an existing one; and don't reimplement the csv module.

share|improve this answer
+1 for the advice at the end :) – askewchan Feb 22 '13 at 0:20
Thanks for the step by step! Definitely will give this a try too. – C9r1y Feb 22 '13 at 0:37

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