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I have two files


X.pattern.name       chr       start    stop    strand  score   p.value q.value matched.sequence
1   V_CETS1P54_01   chr1    98769545    98769554    +   11.42280    8.89e-05    NA  TCAGGATGTA
2   V_CETS1P54_01   chr1    152013037   152013046   +   11.98020    4.74e-05    NA  ACAGGAAGTT
3   V_CETS1P54_01   chr1    168932563   168932572   +   11.60860    7.59e-05    NA  ACCGGATGCT


    chr     start           stop
1   chr1    58708485    58708713
2   chr1    58709084    58710538
3   chr1    98766295    98766639
4   chr1    98766902    98770338
5   chr1    107885506   107889414
6   chr1    138589531   138590856
7   chr1    138591180   138593378
8   chr1    152011746   152013185
9   chr1    152014263   152014695
10  chr1    168930561   168933076
11  chr1    181808064   181808906
12  chr1    184609002   184611519
13  chr1    193288453   193289567
14  chr1    193290105   193290490
15  chr1    193290744   193291092
16  chr1    196801920   196804954

I want to compare the two files, each entry by chr, start and stop. If the start and stop values in first file falls between the start and stop of the second file for the same chromosome, then that start & stop values in the first file should be replaced by the second file's start & stop values. I have written a for loop for that purpose but it is taking too long. What are the alternatives?


for(i in 1:nrow(encode))
     for(j in 1:nrow(encode.total))
               if((encode[i,3]>=encode.total[j,2]) & (encode[i,4]<=encode.total[j,3]))

For the same purpose I also tried the GenomicRanges package like below. The size of my dataframes is huge and the merge function on them creates a VERY LARGE dataframe (>2 billion rows which is not allowed), although I eventually subset the dataframe in a smaller one. But merge() is taking a LOT of memory and terminating R.

gr2<-GRanges(seqnames=encode.total$chr, IRanges(start=encode.total$start,end=encode.total$end))

ranges <- merge(as.data.frame(gr1),as.data.frame(gr2),by="seqnames",suffixes=c("A","B"))
ranges <- ranges[with(ranges, startB <= startA & endB >= endA),]
share|improve this question
In your example, the start and stop values in both files are identical, so nothing would be changed... –  juba Sep 30 '13 at 19:08
I have edited my files, please check now. –  Komal Rathi Sep 30 '13 at 19:20
Duplicate? stackoverflow.com/questions/3916195/… –  Henrik Sep 30 '13 at 19:35
@Henrik The question you are pointing to works with Ranges object & I have a dataframe object. I am not familiar with Ranges object in R. –  Komal Rathi Sep 30 '13 at 19:41
The OP in the question starts with "two data.frames each with three columns: chrom, start & stop". To me it seems quite similar to your data. –  Henrik Sep 30 '13 at 19:44

2 Answers 2

up vote 6 down vote accepted

Use the Bioconductor GenomicRanges package.


I did

gr0 = with(x0, GRanges(chr, IRanges(start=start, end=stop)))
gr1 = with(x1, GRanges(chr, IRanges(start=start, end=stop)))
hits = findOverlaps(gr0, gr1)

to find overlaps between query (gr0) and subject (gr1)

> hits
Hits of length 3
queryLength: 3
subjectLength: 16
  queryHits subjectHits 
   <integer>   <integer> 
 1         1           4 
 2         2           8 
 3         3          10 

and then updated the relevant start / end coordinates

ranges(gr0)[queryHits(hits)] = ranges(gr1)[subjectHits(hits)]


> gr0
GRanges with 3 ranges and 0 metadata columns:
      seqnames                 ranges strand
         <Rle>              <IRanges>  <Rle>
  [1]     chr1 [ 98766902,  98770338]      *
  [2]     chr1 [152011746, 152013185]      *
  [3]     chr1 [168930561, 168933076]      *

This will be fast up into the millions of ranges.

share|improve this answer
This worked like a charm! Very useful and extremely efficient –  Komal Rathi Oct 1 '13 at 1:54

This will take a long time with a for loop. Your best bet is to use the data.table package. For a comparison of approaches check out a question I asked a few weeks ago: Efficiently merging two data frames on a non-trivial criteria

The problem is slightly different (looking for SNPs which fall in a gene) but can be adapted to your problem:


encode <- as.data.table(encode)
setkey(encode, chr, start)
encode.total <- as.data.table(encode.total)
setkey(encode.total, chr, start)

results <- encode.total[
    ##join encode.total to encode
    ##rolling the last key column of encode.total (start) forward
    ##to match the last key column of encode (start)
    roll = Inf, 
    ##inner join
    nomatch = 0
##rolling join leaves positions column from encode
##with the column name from encode.total (start)

##now vector scan to fulfill the other criterion
results <- results[stop.encode <= stop.encode.total]

Give that a try, you will probably need to change the variable names in the last line, I don't know off the top of my head how data.table deals with duplicate column names on merge.

share|improve this answer
Thanks for the information. I just have not worked with data.table before so not clear what all this is doing. I can't even figure out what the values in results mean. Can you explain it more? –  Komal Rathi Sep 30 '13 at 22:54
Why is "stop" not being used in the setkey function? And I don't want to "match" the start & stop of both the data frames. I want to find whether the start & stop of encode falls within start & stop of encode.total. If yes, then it should replace the value of encode$start & encode$stop to encode.total$start & encode.total$stop, respectively. –  Komal Rathi Sep 30 '13 at 23:12
Honestly it's not clear to me either, I just modified code from the data.table answer in the question I linked so that it would work in your scenario! –  Scott Ritchie Oct 2 '13 at 0:24

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