# Melt a table (data.frame) based on values of comma-separated character vector column

I'm doing an experiment where I have "regions" with some associated statistic (actually many other statistics and descriptive columns), and a comma-separated list of genes that lie in those regions. This list will be variable in number, and may not contain anything ("NA").

How can I "melt" table a:

``````  region_id  statistic      genelist
1        2.5       A, B, C
2        0.5    B, C, D, E
3        3.2          <NA>
4        0.1          E, F
``````

To create another table with a separate entry for each gene in the list of genes? I.e.

``````   region_id statistic gene
1       2.5    A
1       2.5    B
1       2.5    C
2       0.5    B
2       0.5    C
2       0.5    D
2       0.5    E
3       3.2 <NA>
4       0.1    E
4       0.1    F
``````

I'm guessing there's a way to do this with R/plyr, but I'm not sure how. Thanks in advance.

Edit:

Using R you can recreate these toy vectors with this code:

``````a <- structure(list(region_id = 1:4, statistic = c(2.5, 0.5, 3.2,
0.1), genelist = structure(c(1L, 2L, NA, 3L), .Label = c("A, B, C",
"B, C, D, E", "E, F"), class = "factor")), .Names = c("region_id",
"statistic", "genelist"), class = "data.frame", row.names = c(NA,
-4L))

b <- structure(list(region_id = c(1L, 1L, 1L, 2L, 2L, 2L, 2L, 3L,
4L, 4L), statistic = c(2.5, 2.5, 2.5, 0.5, 0.5, 0.5, 0.5, 3.2,
0.1, 0.1), gene = structure(c(1L, 2L, 3L, 2L, 3L, 4L, 5L, NA,
5L, 6L), .Label = c("A", "B", "C", "D", "E", "F"), class = "factor")), .Names = c("region_id",
"statistic", "gene"), class = "data.frame", row.names = c(NA,
-10L))
``````
-
Is that table tab-separated or fixed width? – TLP Sep 27 '12 at 20:19
Tab separated. . – Stephen Turner Sep 27 '12 at 20:23
TLP - apologies. The page title begins with "perl - Melt..." because perl was the most used tag. I didn't know how this worked, so I removed the Perl tag to see if it would then change to "R", so I then put it back. Your answer was appreciated when I saw it. – Stephen Turner Sep 27 '12 at 20:34
I see. Well, in that case, I'll undelete my answer. – TLP Sep 27 '12 at 20:39

There are a few ways to do it. This way works, although there may be better ways...

``````library(stringr) # for str_split
join(subset(a, select=c("region_id", "statistic")),
ddply(a, .(region_id), summarise, gene=str_split(genelist, ",\\S*")[[1]]))
``````

Oh, here's a better way:

``````ddply(a, .(region_id),
function(x) data.frame(gene=str_split(x\$genelist, ",\\S*")[[1]],
statistic=x\$statistic))
``````
-
Thanks. My table actually has LOTS of statistics and other descriptive columns. Is there a way to do this based on a specified column ("genelist"), without having to explicitly state which other columns I want? – Stephen Turner Sep 27 '12 at 20:36
It looks like your first answer will work by replacing the `subset()` piece with `a[ ,-which(names(a)=="genelist")]` – Stephen Turner Sep 27 '12 at 20:43
yes, although I'd prefer the syntax `a[,names(a)!='genelist']`. – Harlan Sep 28 '12 at 13:40

A `data.table` solution for time, memory and coding efficiency

``````library(data.table)
DT <- data.table(a)
DT[, list(statistic,
gene = unlist(strsplit(as.character(genelist), ', ' ))),
by = list(region_id)]
``````

Or you could use the nice formatting of of list from data.table version >= 1.8.2

``````DTL <- DT[, list(statistic,
gene = strsplit(as.character(genelist), ', ' )),
by = list(region_id)]

DTL
##    region_id statistic    gene
## 1:         1       2.5   A,B,C
## 2:         2       0.5 B,C,D,E
## 3:         3       3.2      NA
## 4:         4       0.1     E,F
``````

In which case `gene` is a list of lists

``````DTL[region_id == 1,unlist(gene)]
## [1] "A" "B" "C"
DTL[region_id == 2,unlist(gene)]
## [1] "B" "C" "D" "E"
# or if the following is of interest
DTL[statistic < 2,unlist(gene)]
## [1] "B" "C" "D" "E" "E" "F"
``````

etc

-

Simply split the fields, then split the genes and print one line per gene. You can try this out in a script by replacing `<DATA>` with `<>` and using the input file as argument to the perl script, e.g. `perl script.pl input.txt`.

``````use strict;
use warnings;

while (<DATA>) {
chomp;                                   # remove newline
my (\$reg, \$stat, \$gene) = split /\t/;    # split fields
my @genes = split /,\s*/, \$gene;         # split genes
for (@genes) {
local \$\ = "\n";                 # adds newline to print
print join "\t", \$reg, \$stat, \$_;
}
}

__DATA__
region_id   statistic   genelist
1   2.5 A, B, C
2   0.5 B, C, D, E
3   3.2 <NA>
4   0.1 E, F
``````

Output:

``````region_id       statistic       genelist
1       2.5     A
1       2.5     B
1       2.5     C
2       0.5     B
2       0.5     C
2       0.5     D
2       0.5     E
3       3.2     <NA>
4       0.1     E
4       0.1     F
``````
-

Here is a way to do it without any libraries:

``````data<-cbind(region_id=1:4, statistic=c(2.5, 0.5, 3.2, 0.1), genelist=c("A, B, C", "B, C, D, E", NA, "E, F"))

do.call(rbind,
apply(data, 1,
function(r) do.call(expand.grid,
c(unlist(r[-3]),
strsplit(r[3], ", ")))))
``````

Output:

``````      region_id statistic genelist
1          1       2.5        A
2          1       2.5        B
3          1       2.5        C
4          2       0.5        B
5          2       0.5        C
6          2       0.5        D
7          2       0.5        E
8          3       3.2     <NA>
9          4       0.1        E
10         4       0.1        F
``````
-

Here is another one-liner using `plyr`

``````ddply(a, .(region_id), transform, gene = str_split(genelist, ',')[[1]])
``````
-

A Perl solution:

``````#!/usr/bin/perl
<>;
print "region_id\tstatistic\tgene\n";
while(<>) {
chomp;
my (\$reg, \$stat, \$genes) = split /\s+/, \$_, 3;
foreach my \$gene (split /,\s*/, \$genes) {
print "\$reg\t\$stat\t\$gene\n";
}
}
``````

Just pipe the original file through this script into the output file.

Currently the output values are tab-seperated and not right-flushed, but you can fix that if it is really needed.

-
No sense in splitting on `/\s+/`. If you're going to generalize, just use `' '`, but in this case I would think `/\t/` is much preferred. – TLP Sep 27 '12 at 20:41