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I have several hundred tsv files with two fields, a common key and a unique sample id:

==> test1.vmat <==
CHROM:POS:REF:ALT  144-93-02
1:14653:C:T  1
1:14677:G:A  1
1:14907:A:G  1

==> test2.vmat <==
CHROM:POS:REF:ALT  144-93-01
1:14653:C:T  1
1:14522:G:A  1
1:14907:A:G  1

I would like to perform an outer join on all of the files using the field "CHR:POS:REF:ALT" to form one giant matrix. Example for two files:

CHROM:POS:REF:ALT  144-93-02    144-93-01
1:14653:C:T  1.0 1.0
1:14522:G:A  NA 1.0
1:14677:G:A  1.0 NA
1:14907:A:G  1.0 1.0

I got the output above using the following code, but I am having trouble looping over the hundreds of *tsv files in the directory (path/to/testN.vmat). how can I modify this into something that will merge all the individual *tsv files from a directory into a single tsv file?

variant_field = "CHROM:POS:REF:ALT"
outfile = "everyone.vmat"

df1 = pandas.read_csv("path/to/test1.vmat", sep='\t', parse_dates=False)
df2 = pandas.read_csv("path/to/test2.vmat", sep='\t', parse_dates=False)

df3 = pandas.merge(df1,df2,on=variant_field, how='outer')
df3.to_csv(str(outfile), sep="\t", header=True, index=False, na_rep="NA", engine='python')
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1 Answer 1

up vote 1 down vote accepted

If you make the 'CHROM:POS:REF:ALT' the index you join multiple frames:

df1 = pandas.read_csv("path/to/test1.vmat", sep='\t', parse_dates=False,
                                            index_col='CHROM:POS:REF:ALT')


In [11]: df1.join([df2], how='outer')
Out[11]: 
             144-93-02  144-93-01
1:14522:G:A        NaN          1
1:14653:C:T          1          1
1:14677:G:A          1        NaN
1:14907:A:G          1          1

In someways it's more honest to think of this as a concat rather than a join:

In [12]: pd.concat([df1, df2], axis=1)
Out[12]: 
             144-93-02  144-93-01
1:14522:G:A        NaN          1
1:14653:C:T          1          1
1:14677:G:A          1        NaN
1:14907:A:G          1          1

You can iterate through all the files using glob:

from glob import iglob
pd.concat((pd.read_csv(f, ...) for f in glob.iglob(*.vmat)), axis=1)
share|improve this answer
    
interesting, what do you mean by "more honest to think of this as a concat"? I always thought of concatenating as just stacking the two matrices on top of each other –  alexhli Mar 25 at 3:04
    
@alexhli good question, I say because each "frame" is really just a column in the final result, rather than a more complex merge (where several columns are coming from each frame)... subjective thing to say though! –  Andy Hayden Mar 25 at 3:22

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