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I have a dataset, abbreviated here:

SNP chr       BP log10   PPA
rs10068  17 56555 1.16303 0.030
rs10032  17 56561 26.364 0.975
rs10354  17 34951 4.3212 0.626
rs10043  17 20491 0.00097 0.006
rs10457  17 69572 -0.38403 0.014
rs10465  17 69872 8.19547 0.927

where PPA is the posterior probability of association. As I have some high log10 values (>6), I would like to determine credible intervals around these regions, to determine exactly how large or small they are with confidence.

To do this, I would first like to identify SNPs with a log10 > 6, which is simple enough using subset.

newdata <- subset(data, log10 > 6)

However, I would also like to include in this subset, SNPs that are physically near these lead SNPs, using BP 500 +/- the BP of the lead SNPs (with log10>6). It is here where I am unsure the best way to proceed. Is this something I can work into subset or should I first identify these lead SNPs in my original data, and then subset from there?

Once I isolate these regions, I can move forward.

Any suggestions are appreciated!

share|improve this question
    
How many SNPs do you have (or how many rows?) –  Arun Feb 17 '13 at 23:56
    
many thousands! –  mfk534 Feb 18 '13 at 0:17
    
@Arun, tags are for questions, not answers. This question ultimately has nothing to do with any of the tags you are adding. –  Charles Mar 6 '13 at 17:19

2 Answers 2

up vote 6 down vote accepted
s <- read.table(header=T, text="SNP chr       BP log10   PPA
rs10068  17 56555 1.16303 0.030
rs10032  17 56561 26.364 0.975
rs10354  17 34951 4.3212 0.626
rs10043  17 20491 0.00097 0.006
rs10457  17 69572 -0.38403 0.014
rs10465  17 69872 8.19547 0.927")

Distance to any row where s$log10 > 6:

outer(s$BP[s$log10 > 6], s$BP, '-')
##       [,1]  [,2]  [,3]  [,4]   [,5]   [,6]
## [1,]     6     0 21610 36070 -13011 -13311
## [2,] 13317 13311 34921 49381    300      0

Any column above with an absolute value < 500 is one that you want to keep:

s[apply(outer(s$BP[s$log10 > 6], s$BP, '-'), 2, function(x) any(abs(x) < 500)),]
##       SNP chr    BP    log10   PPA
## 1 rs10068  17 56555  1.16303 0.030
## 2 rs10032  17 56561 26.36400 0.975
## 5 rs10457  17 69572 -0.38403 0.014
## 6 rs10465  17 69872  8.19547 0.927
share|improve this answer
1  
(+1) very nice use of outer! I suspect there might be a follow-up question on doing this by splitting by chr column. –  Arun Feb 18 '13 at 0:06
    
Awesome, this is perfect. Thank you! –  mfk534 Feb 18 '13 at 0:16
    
+ 1 very nice!! –  Ricardo Saporta Feb 18 '13 at 0:22

For what it's worth, here's a solution using GenomicRanges package. This package builds on IRanges and handles interval data very efficiently using interval trees. And this should be able to handle all different chromosomes as well.

  • First load data:

    # load data
    df <- read.table(header=T, text="SNP chr       BP log10   PPA
    rs10068  17 56555 1.16303 0.030
    rs10032  17 56561 26.364 0.975
    rs10354  17 34951 4.3212 0.626
    rs10043  17 20491 0.00097 0.006
    rs10457  17 69572 -0.38403 0.014
    rs10465  17 69872 8.19547 0.927")
    
  • Get subset where log10 > 6

    df.f <- df[df$log10 > 6, ]
    
  • Load and create Ranges on the initial data and the subset

    require(GenomicRanges)
    df.gr <- GRanges(Rle(df$chr), IRanges(df$BP, df$BP))
    df.f.gr <- GRanges(Rle(df.f$chr), IRanges(df.f$BP, df.f$BP))
    
  • Find all overlaps of data with log10 > 6 with all other SNPs with gap = +/- 500

    olaps <- findOverlaps(df.f.gr, df.gr, maxgap=500)
    
  • Get output

    # if you just want a whole data.frame with ALL SNPs that have 
    # log > 6 or within 500 bases of one with log > 6, then,        
    out <- df[subjectHits(olaps), ] 
    
    #       SNP chr    BP    log10   PPA
    # 1 rs10068  17 56555  1.16303 0.030
    # 2 rs10032  17 56561 26.36400 0.975
    # 5 rs10457  17 69572 -0.38403 0.014
    # 6 rs10465  17 69872  8.19547 0.927
    
    # In case you want for each SNP that has log > 6, all of the 
    # snps that are within 500 bases (either side) apart for 
    # this SNP, separately, then,
    out.list <- split(out, df$BP[queryHits(olaps)])
    # $`56555`
    #       SNP chr    BP    log10   PPA
    # 1 rs10068  17 56555  1.16303 0.030
    # 2 rs10032  17 56561 26.36400 0.975
    #     
    # $`56561`
    #       SNP chr    BP    log10   PPA
    # 5 rs10457  17 69572 -0.38403 0.014
    # 6 rs10465  17 69872  8.19547 0.927
    
share|improve this answer
    
This is great, too! The split in ranges is very useful. One question, I'm having an issue writing the output (out.list) to a file. I've tried write, cat, & sink, but my syntax must be off. R keeps giving me variations of the error: argument 1 (type 'list') cannot be handled by 'cat'. How do I fix this? Or, is it possible to remove the rows containing $ so I can use write.table? –  mfk534 Feb 18 '13 at 16:11
    
I guess you are using the second solution, which is a list? If so, you must convert it to a data.frame first. The easiest way is require(plyr) followed by ldply(out.list). Now, you'll have an extra column that was the list element's name. And its a data.frame. you should be able to write to file. –  Arun Feb 18 '13 at 16:15
    
Thanks, that's exactly what I needed! It's also useful to have the .id column specific to the isolated regions. I appreciate your help! –  mfk534 Feb 18 '13 at 17:47

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