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I have a data.table in R of the following format:

     COHORT      VARTYPE  SUM
  1:     RA          CDS   25
  2:     RA       INTRON 1152
  3:     RA        DONOR    0
  4:     RA     ACCEPTOR    1
  5:     RA TSS-UPSTREAM   98
 ---                         
101:    YRI      DISRUPT    0
102:    YRI  UNKNOWN-INC  979
103:    YRI         MIRB    0
104:    YRI         PFAM    8
105:    YRI     CGA_MIRB    0

In the COHORT column, there are 5 values. They are RA, Lupus, CEU, YRI and ASW.

I wish to divide the DT$SUM column by a different integer depending on the value of DT$COHORT.

Specifically,

If DT[COHORT=="RA"]   then  DT$SUM<-(DT$SUM/62)
If DT[COHORT=="Lupus"]   then  DT$SUM<-(DT$SUM/62)
If DT[COHORT=="YRI"]   then  DT$SUM<-(DT$SUM/80)
If DT[COHORT=="CEU"]   then  DT$SUM<-(DT$SUM/96)
If DT[COHORT=="ASW"]   then  DT$SUM<-(DT$SUM/5)

However so far the syntax I have has only succeeded in dividing the entire column by a given integer, but only the portion of DT$SUM having the desired value of DT$COHORT should be divided...

Thank you

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See ifelse ... –  agstudy Jun 4 '14 at 8:12

3 Answers 3

up vote 5 down vote accepted

In data.table, you can, similar to @alexis_laz's answer (+1), create another (lookup) table and just perform a join and recalculate SUM as follows:

First we'll generate some data (borrowed and modified a bit from @alexis_laz):

require(data.table)
set.seed(101)
dat = data.table(COHORT = sample(c("RA", "Lupus", "YRI", "CEU", "ASW"), 1e5, TRUE), 
                 SUM = sample(100, 1e5, TRUE))

Since division will result in SUM becoming numeric (and is integer at the moment), we'll explicitly convert it here, so as to avoid the warning from data.table). And then we'll set the key for join.

dat[, SUM := as.numeric(SUM)]
setkey(dat, COHORT)

We then create the data.table (a lookup) which has the values to divide by:

ii = data.table(COHORT=c("RA", "Lupus", "YRI", "CEU", "ASW"), 
                val = as.integer(c(62, 62, 80, 96, 5)))

And now, we perform the join as follows (Shown here for both current CRAN version and future data.table versions):

dat[ii, SUM := SUM/val]            ## v <= 1.9.2 - implicit by or by-without-by

dat[ii, SUM := SUM/val, by=.EACHI] ## v >= 1.9.3 - explicit by
share|improve this answer
    
+1. Very useful!! –  Shambho Jun 4 '14 at 16:42

Another approach would be to use a lookup vector:

#some sample data
set.seed(101)
DF = data.frame(COHORT = sample(c("RA", "Lupus", "YRI", "CEU", "ASW"), 1e5, T), 
                SUM = 1)
#> head(DF)
#COHORT SUM
#1  Lupus   1
#2     RA   1
#3    CEU   1
#4    CEU   1
#5  Lupus   1
#6  Lupus   1

lookup = c(62, 62, 80, 96, 5)
names(lookup) = c("RA", "Lupus", "YRI", "CEU", "ASW")
lookup
# RA Lupus   YRI   CEU   ASW 
# 62    62    80    96     5

and then match your "COHORT" to it:

ans1 = DF$SUM / unname(lookup[match(DF$COHORT, names(lookup))])

Compare it to yours:

ans2 = with(DF, 
     ifelse(COHORT == "RA", SUM / 62,
            ifelse(COHORT == "Lupus", SUM / 62,
                   ifelse(COHORT == "CEU", SUM / 96,
                          ifelse(COHORT == "YRI", SUM / 80,
                                 ifelse(COHORT == "ASW", SUM / 5, NA))))))
identical(ans1, ans2)
#[1] TRUE

And some benchmarkings:

library(microbenchmark)
microbenchmark(ans1 = {lookup = c(62, 62, 80, 96, 5);
                       names(lookup) = c("RA", "Lupus", "YRI", "CEU", "ASW");
                       DF$SUM / unname(lookup[match(DF$COHORT, names(lookup))])},
               ans2 = with(DF, 
                           ifelse(COHORT == "RA", SUM / 62,
                           ifelse(COHORT == "Lupus", SUM / 62,
                           ifelse(COHORT == "CEU", SUM / 96,
                           ifelse(COHORT == "YRI", SUM / 80,
                           ifelse(COHORT == "ASW", SUM / 5, NA)))))),
               times = 10)
#Unit: milliseconds
# expr        min         lq     median         uq        max neval
# ans1   6.398761   6.604084   6.646192   6.984801   8.790249    10
# ans2 126.283224 129.819299 164.598707 167.435119 167.830104    10
share|improve this answer

Based on Agstudy's comment and more searching:

with(ITGAMnovelvarsDTSUM, ifelse(COHORT=="RA", SUM/62,ifelse(COHORT=="Lupus",SUM/62,ifelse(COHORT=="CEU",SUM/96,ifelse(COHORT=="YRI",SUM/5,ifelse(COHORT=="ASW",SUM/5,NA))))))
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