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I'm writing a python program which has to compute a numerical coding of mutated residues and positions of a set of strings.These strings are protein sequences.These sequences are stored in fasta format file and each protein sequence is separated by comma.The sequence lengths may differ for different protein.In this I tried to find the position and sequence which are mutated.
I used following code for getting this.

a = 'AGFESPKLH'
b = 'KGFEHMKLH'
for i in range(len(a)):
  if a[i] != b[i]:
     print i, a[i], b[i]

But I want the sequence file as input file.The following figure will tell about my project.In this figure first box represents alignment of input file sequences.The last box represents the output file. How can I do this in Python? please help me. Thank you for everyone for your time.

example:

input file

MTAQDD,MTAQDD,MTSQED,MTAQDD,MKAQHD




        positions  1  2  3  4  5  6                         1  2  3  4  5  6

protein sequence1  M  T  A  Q  D  D                            T  A     D

protein sequence2  M  T  A  Q  D  D                            T  A     D

protein sequence3  M  T  S  Q  E  D                            T  S     E

protein sequence4  M  T  A  Q  D  D                            T  A     D

protein sequence5  M  K  A  Q  H  D                            K  A     H


     PROTEIN SEQUENCE ALIGNMENT                          DISCARD NON-VARIABLE REGION

        positions  2  2  3  3  5  5  5

protein sequence1  T     A     D   

protein sequence2  T     A     D   

protein sequence3  T        S     E

protein sequence4  T     A     D   

protein sequence5     K  A           H

   MUTATED RESIDUE IS SPLITED TO SEPARATE COLUMN

Output file should be like this:

position+residue   2T  2K  3A  3S  5D  5E  5H

       sequence1   1   0   1   0   1   0   0

       sequence2   1   0   1   0   1   0   0

       sequence3   1   0   0   1   0   1   0

       sequence4   1   0   1   0   1   0   0

       sequence5   0   1   1   0   0   0   1

    (RESIDUES ARE CODED 1 IF PRESENT, 0 IF ABSENT)
share|improve this question
    
I improved formatting -- however, I'm not sure about the hor. lines -- are they part of the formatting or do they belong to the input file ??? As of now, I made them part of the formatting –  Theodros Zelleke Jan 24 '13 at 10:19
    
sorry for the inconvenience. This is the first time I am using stackoverflow. Thank you @TheodrosZelleke –  naz Jan 24 '13 at 15:57

4 Answers 4

up vote 1 down vote accepted

If you are to work with tabular data, consider pandas:

from pandas import *

data = 'MTAQDD,MTAQDD,MTSQED,MTAQDD,MKAQHD'

df = DataFrame([list(row) for row in data.split(',')])

print DataFrame({str(col)+val:(df[col]==val).apply(int) 
        for col in df.columns for val in set(df[col])})

output:

  0M  1K  1T  2A  2S  3Q  4D  4E  4H  5D
0   1   0   1   1   0   1   1   0   0   1
1   1   0   1   1   0   1   1   0   0   1
2   1   0   1   0   1   1   0   1   0   1
3   1   0   1   1   0   1   1   0   0   1
4   1   1   0   1   0   1   0   0   1   1

If you want to drop the columns with all ones:

print df.select(lambda x: not df[x].all(), axis = 1)    

   1K  1T  2A  2S  4D  4E  4H
0   0   1   1   0   1   0   0
1   0   1   1   0   1   0   0
2   0   1   0   1   0   1   0
3   0   1   1   0   1   0   0
4   1   0   1   0   0   0   1
share|improve this answer
    
Thanks root, works nicely. But I didn't get "print df.select(lambda x: not df[x].all(), axis = 1)"that's for removing the columns with all one. –  naz Jan 24 '13 at 20:01
    
@user2005075 -- from your exmple, it seemed to me that you didn't want the cols where all the values were the same...like 0M,3Q,5D but I guess I was wrong. –  root Jan 24 '13 at 20:05
    
what you guessed is right, what I am saying is "print df.select(lambda x: not df[x].all(), axis = 1)" not working –  naz Jan 25 '13 at 16:24
    
@user2005075 -- It should, as I tested it, but you have to do first transformation first and assign it to a var like: df = DataFrame({str(col)+val:(df[col]==val).apply(int) for col in df.columns for val in set(df[col])}) and then apply the second, –  root Jan 25 '13 at 16:47
    
I got it. Thanks a lot @root –  naz Jan 25 '13 at 18:26

Something like this?

ls = 'MTAQDD,MTAQDD,MTSQED,MTAQDD,MKAQHD'.split(',')

pos = [set(enumerate(x, 1)) for x in ls]
alle = sorted(set().union(*pos))

print '\t'.join(str(x) + y for x, y in alle)
for p in pos:
    print '\t'.join('1' if key in p else '0' for key in alle)
share|improve this answer
    
Thank you @thg435 ,great work –  naz Jan 24 '13 at 16:06
protein_sequence = "MTAQDDSYSDGKGDYNTIYLGAVFQLN,MTAQDDSYSDGRGDYNTIYLGAVFQLN,MTSQEDSYSDGKGNYNTIMPGAVFQLN,MTAQDDSYSDGRGDYNTIMPGAVFQLN,MKAQDDSYSDGRGNYNTIYLGAVFQLQ,MKSQEDSYSDGRGDYNTIYLGAVFQLN,MTAQDDSYSDGRGDYNTIYPGAVFQLN,MTAQEDSYSDGRGEYNTIYLGAVFQLQ,MTAQDDSYSDGKGDYNTIMLGAVFQLN,MTAQDDSYSDGRGEYNTIYLGAVFQLN"

#Parse the file
proteins = protein_sequence.split(",")
#For each protein sequence remove the duplicates
proteins = map(lambda x:"".join(set(list(x))), proteins)

#Create result
result = []
key_set = ['T', 'K', 'A', 'S', 'D', 'E', 'K', 'R', 'D', 'N', 'E', 'Y', 'M', 'L', 'P', 'N', 'Q']
for protein in proteins:
    local_dict = dict(zip(key_set, [0] * len(key_set)))
    #Split the protein in amino acid
    components = list(protein)
    for amino_acid in components:
        local_dict[amino_acid] = 1
    result.append((protein, local_dict))
share|improve this answer

You can use the pandas function get_dummies to do most of the hard work:

In [11]: s # a pandas Series (DataFrame's column)
Out[11]: 
0    T
1    T
2    T
3    T
4    K
Name: 1

In [12]: pd.get_dummies(s, prefix=s.name, prefix_sep='')
Out[12]: 
   1K  1T
0   0   1
1   0   1
2   0   1
3   0   1
4   1   0

To put your data into a DataFrame you could use:

df = pd.DataFrame(map(list, 'MTAQDD,MTAQDD,MTSQED,MTAQDD,MKAQHD'.split(',')))

In [20]: df
Out[20]: 
   0  1  2  3  4  5
0  M  T  A  Q  D  D
1  M  T  A  Q  D  D
2  M  T  S  Q  E  D
3  M  T  A  Q  D  D
4  M  K  A  Q  H  D

And to find those columns which have differing values:

In [21]: (df.ix[0] != df).any()
Out[21]: 
0    False
1     True
2     True
3    False
4     True
5    False

Putting this all together:

In [31]: I = df.columns[(df.ix[0] != df).any()]

In [32]: J = (pd.get_dummies(df[i], prefix=df[i].name, prefix_sep='') for i in I)

In [33]: df[[]].join(J)
Out[33]: 
   1K  1T  2A  2S  4D  4E  4H
0   0   1   1   0   1   0   0
1   0   1   1   0   1   0   0
2   0   1   0   1   0   1   0
3   0   1   1   0   1   0   0
4   1   0   1   0   0   0   1
share|improve this answer

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