3

I have a data.frame with 50,000 rows, with some duplicates, which I would like to remove.

    SYMBOL          INTENSITY CALL          VALUE
1     DDR1          2464.3023    P  0.00016023613
2     RFC2           496.5190    P   0.0193034606
3    HSPA6           733.4763    P   0.0008046637
4     PAX8          2138.2882    P   0.0005617505
5   GUCA1A           176.3272    A   0.1896873022
6     UBA7           729.6157    P   0.0170004527
7     DDR1          2464.3023    P   0.0016023613
8     RFC2           496.5190    P   0.0593034606
9    HSPA9           733.4763    P   0.0008046637
10    PAX8          2138.2882    P     0.15617505
11 GUCA1A2           176.3272    A  0.01896873022
12    UBA8           729.6157    P   0.0170004527

I used following to remove the duplicates. I kept the one with minimum "VALUE" in the fourth column.

dt <- data.table(df)   
WoDuplic <- dt[,.SD[which.min(VALUE)],by=list(SYMBOL)]

It serves the purpose, but is very slow, it takes approximatively 10 seconds to remove the duplicates from a data.frame of above dimension. Is there any way to make the process faster?

Edited: Output looks like

SYMBOL          INTENSITY CALL          VALUE
1     DDR1          2464.3023    P  0.00016023613
2     RFC2           496.5190    P   0.0193034606
3    HSPA6           733.4763    P   0.0008046637
4     PAX8          2138.2882    P   0.0005617505
5   GUCA1A           176.3272    A   0.1896873022
6     UBA7           729.6157    P   0.0170004527


9    HSPA9           733.4763    P   0.0008046637

11 GUCA1A2           176.3272    A  0.01896873022
12    UBA8           729.6157    P   0.0170004527
20
  • 1
    So they are only duplicates wrt the first 3 columns, is that right?
    – jbaums
    May 7, 2015 at 6:50
  • 1
    @jbaums Not necessary with all, but always wrt first column
    – Agaz Wani
    May 7, 2015 at 6:55
  • 1
    How about setorder(dt, VALUE); dt[!duplicated(SYMBOL)]?
    – talat
    May 7, 2015 at 7:08
  • 1
    Try .I which would be faster. dt[dt[,.I[which.min(VALUE)],by=list(SYMBOL)]$V1]
    – akrun
    May 7, 2015 at 7:50
  • 1
    Or maybe setkey(dt, VALUE); dt[, .SD[1L], by = SYMBOL] May 7, 2015 at 7:56

2 Answers 2

6

We could get the index of rows (.I[which.min(..)) that have minimum 'VALUE' for each 'SYMBOL' and use that column ('V1') to subset the dataset.

library(data.table)
dt[dt[,.I[which.min(VALUE)],by=list(SYMBOL)]$V1]

Or as @DavidArenburg mentioned, using setkey would be more efficient (although I am not sure why you get error with the original data)

 setkey(dt, VALUE) 
 indx <- dt[,.I[1L], by = SYMBOL]$V1 
 dt[indx]
15
  • 1
    I think worth including unique and duplicated as these both would be the fastest for sure. I think that setkey(dt, VALUE) ; indx <- dt[,.I[1L], by = SYMBOL]$V1 ; dt[indx] would be also faster. May 7, 2015 at 8:20
  • system.time({WoDuplic <- dt[dt[,.I[which.min(VALUE)],by=list(SYMBOL)]$V1]}) user system elapsed 0.124 0.000 0.123 system.time({WoDuplic <- setkey(dt, VALUE); dt[, .SD[1L], by = SYMBOL]}) user system elapsed 0.312 0.004 0.314
    – Agaz Wani
    May 7, 2015 at 8:26
  • @AaghazHussain I guess the setkey will be faster if you execute it the 2nd time
    – akrun
    May 7, 2015 at 8:29
  • @akrun it doesn't matter really I guess, as both of these runs less than a second. Either Way, the really fast solutions don't work for him for some awkward reason. My guess OP has some very old data.table version. May 7, 2015 at 8:33
  • @akrun for second time your's user system elapsed 0.124 0.000 0.124 and David's user system elapsed 0.308 0.000 0.308
    – Agaz Wani
    May 7, 2015 at 8:33
0

You can use aggregate and merge to solve the problem. It should be very fast.

create an example data.frame

set.seed(123)
df <- data.frame(gene=rep(letters[1:20],2500),INTENSITY=1:50000,value=runif(50000))

get the min value for each gene

mins <- aggregate(value ~ gene, data = df, FUN = min)

and merge the additional columns

df.min <- merge(mins, df)
1
  • 2
    I guess this should be very slow compared to the OP's method
    – akrun
    May 7, 2015 at 7:49

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