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I have two strings in a file like this:

>1
atggca---------gtgtggcaatcggcacat
>2
atggca---------gtgtggcaatcggcacat

Using the alignIO function in biopython:

from Bio import AlignIO
print AlignIO.read("neighbor.fas", "fasta")

returns this:

SingleLetterAlphabet() alignment with 2 rows and 33 columns
atggca---------gtgtggcaatcggcacat 1
atggca---------gtgtggcaatcggcacat 2

I want to calculate the percentage identity between both columns in this alignment.

row = align[:,n]

allows for the extraction of individual columns that can be compared.
Columns that contain only "-" will not be counted.

The following lines of code work, but are very slow

from Bio import AlignIO

align = AlignIO.read("neighbor.fas", "fasta")
for n in range(0,len(align[0])):
    n=0
    i=0
    y=0
    while n<len(align[0]):
        column = align[:,n]
        for c in column:
            if c[0]==c[1]:
                if c[0]!="-":
                    i=i+1
                else:
                    y=y+1 # this counts gap only columns, remove them later

        n=n+1
match= float(i/2)
length= float(len(align[0])-y/2)
identity =  100*(float(match/length))

print identity

I would appreciate any help in optimizing this

thanks!

EDIT: Possible answer:

While a different approach, this is significantly faster!

from Bio import AlignIO


align = AlignIO.read("neighbor.fas", "fasta")
A=list(align[0])
B=list(align[1])
count=0
gaps=0
for n in range(0, len(A)):
    if A[n]==B[n]:
        if A[n]!="-":
            count=count+1
        else:
            gaps=gaps+1
print 100*(count/float((len(A)-gaps)))
share|improve this question
1  
Have you profiled the code yet? – Daenyth Apr 28 '13 at 19:09
    
You are using non existing line variable. – Christopher Medrela Apr 28 '13 at 19:11
    
@ChristopherMedrela sorry, I fixed that! – Stylize Apr 28 '13 at 19:14
    
@Daenyth: I have not (do not know what that means) – Stylize Apr 28 '13 at 19:14
    

This is a fast but not biologically accurate answer.

use Levenshtein Python extension and C library.

http://code.google.com/p/pylevenshtein/

The Levenshtein Python C extension module contains functions for fast computation of - Levenshtein (edit) distance, and edit operations - string similarity - approximate median strings, and generally string averaging - string sequence and set similarity It supports both normal and Unicode strings.

Since these sequences are strings, why not!

sudo pip install python-Levenshtein

then fire up ipython:

In [1]: import Levenshtein

In [3]: Levenshtein.ratio('atggca---------gtgtggcaatcggcacat'.replace('-',''),
                          'atggca---------gtgtggcaatcggcacat'.replace('-','')) * 100
Out[3]: 100.0

In [4]: Levenshtein.ratio('atggca---------gtgtggcaatcggcacat'.replace('-',''),
                          'atggca---------gtgtggcaatcggcacaa'.replace('-','')) * 100
Out[4]: 95.83333333333334
share|improve this answer

I know this question is old but, since you are already in biopython, couldn't you just move along with the BLAST record class (chapter 7 of the tutorial http://biopython.org/DIST/docs/tutorial/Tutorial.html)?

I believe the option you need (under "7.4 The BLAST record class") is "hsp.identities".

share|improve this answer
    
please provide some explanation with your answer. – Milad Feb 2 at 13:33

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