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I have a text file that looks like this:

gene1   gene2   gene3
a       d       c
b       e       d
c       f       g
d       g       

(Each column is a human gene, and each contains a variable number of proteins (strings, shown as letters here) that can bind to those genes).

What I want to do is count how many columns each string is represented in, output that number and all the column headers, like this:

a   1   gene1
b   1   gene1
c   2   gene1 gene3
d   3   gene1 gene2 gene3
e   1   gene2
f   1   gene2
g   2   gene2 gene3
h   1   gene2
i   1   gene2

I have been trying to figure out how to do this in Perl and R, but without success so far. Thanks for any help.

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Are the columns tab-delimited, or are they space-formatted? That will dictate how to treat them. – Ken Williams Aug 4 '11 at 15:27
up vote 8 down vote accepted

This solution seems like a bit of a hack, but it gives the desired output. It relies on using both plyr and reshape packages, though I'm sure you could find base R alternatives. The trick is that function melt lets us flatten the data out into a long format, which allows for easy(ish) manipulation from that point forward.


#Recreate your data
dat <- data.frame(gene1 = c(letters[1:4], NA, NA),
                  gene2 = letters[4:9],
                  gene3 = c("c", "d", "g", NA, NA, NA)

#Melt the data. You'll need to update this if you have more columns
dat.m <- melt(dat, measure.vars = 1:3)

#Tabulate counts
counts <-$value))

#I'm not sure what to call this column since it's a smooshing of column names
otherColumn <- ddply(dat.m, "value", function(x) paste(x$variable, collapse = " "))

#Merge the two together. You could fix the column names above, or just deal with it here
merge(counts, otherColumn, by.x = "Var1", by.y = "value")


> merge(counts, otherColumn, by.x = "Var1", by.y = "value")
  Var1 Freq                V1
1    a    1             gene1
2    b    1             gene1
3    c    2       gene1 gene3
4    d    3 gene1 gene2 gene3
share|improve this answer
Thanks, always love an R solution, especially using the **ply functions. – Stephen Turner Aug 4 '11 at 3:06
you can simplify into a single ddply call by using ddply(dat.m, .(value), summarize, Freq = length(variable), V1 = paste(variable, collapse = " ")) – Ramnath Aug 4 '11 at 3:43

In perl, assuming the proteins in each column don't have duplicates that need to be removed. (If they do, a hash of hashes should be used instead.)

use strict;
use warnings;

my $header = <>;
my %column_genes;
while ($header =~ /(\S+)/g) {
    $column_genes{$-[1]} = "$1";

my %proteins;
while (my $line = <>) {
    while ($line =~ /(\S+)/g) {
        if (exists $column_genes{$-[1]}) {
            push @{ $proteins{$1} }, $column_genes{$-[1]};
        else {
            warn "line $. column $-[1] unexpected protein $1 ignored\n";

for my $protein (sort keys %proteins) {
    print join("\t",
        scalar @{ $proteins{$protein} },
        join(' ', sort @{ $proteins{$protein} } )
    ), "\n";

Reads from stdin, writes to stdout.

share|improve this answer
Perfect. Thanks. – Stephen Turner Aug 4 '11 at 2:46
I'm unfamiliar with the $hash{$-[1]} syntax. What's this doing? – Stephen Turner Aug 4 '11 at 2:47
@- is a special array that reports the position at which a regex capture started ($-[1] for where $1 started, $_[2] for $2, etc.) – ysth Aug 4 '11 at 3:00
Special variable @- contains "offsets of starts of successful submatches in scope." See – neilfws Aug 4 '11 at 3:03
oops, wrote %- where I meant @-; commment amended (and _ in place of one - and too late to edit it :( ) – ysth Aug 4 '11 at 3:04

A one liner (or rather 3 liner)

ddply(na.omit(melt(dat, m = 1:3)), .(value), summarize, 
     len = length(variable), 
     var = paste(variable, collapse = " "))
share|improve this answer

If it's not a lot of columns, you can do something like this in sql. You basically flatten out the data into a 2 column derived table of protein/gene and then summarize it as needed.

;with cte as (
  select gene1 as protein, 'gene1' as gene
  union select gene2 as protein, 'gene2' as gene
  union select gene3 as protein, 'gene3' as gene

select protein, count(*) as cnt, group_concat(gene) as gene
from cte
group by protein
share|improve this answer
err, but the hard part is flattinging out the data – ysth Aug 4 '11 at 2:41
Thanks. I've thought of doing it this way in MySQL but I have quite a few columns. I'll try this if I need to, maybe write some perl code to write my query, ugh. – Stephen Turner Aug 4 '11 at 2:41

In mysql, like so:

select protein, count(*), group_concat(gene order by gene separator ' ') from gene_protein group by protein;

assuming data like:

create table gene_protein (gene varchar(255) not null, protein varchar(255) not null);
insert into gene_protein values ('gene1','a'),('gene1','b'),('gene1','c'),('gene1','d');
insert into gene_protein values ('gene2','d'),('gene2','e'),('gene2','f'),('gene2','g'),('gene2','h'),('gene2','i');
insert into gene_protein values ('gene3','c'),('gene3','d'),('gene3','g');
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