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I have my matrix designed in the following way which I name as mat1

             Probes  sample1  sample1 sample2 sample2 sample3 sample3 sample4 sample4  
                     rep1      rep2    rep1   rep2    rep1    rep2    rep1    rep2
             ------------------------------------------------------------------------
               gene1   5.098   5.076   5.072  4.677  7.450   7.456   8.564   8.555
               gene2   8.906   8.903   6.700  6.653  6.749   6.754   7.546   7.540
               gene3   7.409   7.398   5.392  5.432  6.715   6.724   5.345   5.330
               gene4   4.876   4.869   5.864  5.981  4.280   4.290   4.267   4.255
               gene4   3.567   3.560   3.554  3.425  8.500   8.564   6.345   6.330 
               gene5   2.569   2.560   8.600  8.645  5.225   5.234   7.345   7.333

I use the limma package to find the DEG's

  Group <- factor(c("p1", "p1", "p2", "p2","p3", "p4","p4")
  design <- model.matrix(~0 + Group)
  colnames(design) <- gsub("Group","", colnames(design))
  fit <- lmFit(mat1[,1:4],design)
  contrast.matrix<-makeContrasts(p1-p2,levels=design)
  fit2<-contrasts.fit(fit,contrast.matrix)
  fit2<-eBayes(fit2)
  sel.diif<-p.adjust(fit2$F.p.value,method="fdr")<0.05
  deg<-mat1[,1:4][sel.diif,]

So will "deg" just give me those genes which are significant in sample one versus two. I am interested in those genes which are differentially expressed only in first sample but not in the second sample and am not sure if this is the right approach.

or should I try something like this

contrast.matrix<-makeContrasts(contrasts="p1"-("p2"+"p3"+"p4")/3,levels=design)

Iam not sure how I should set the contrasts matrix to obtain the DEG's from sample 1 only but not in the other three.

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1 Answer 1

up vote 1 down vote accepted

Your example isn't reproducible, i.e. I can't reproduce the results. However, here are a few comments:

  1. You are correct regarding deg. It will look for genes that are different between the two samples.
  2. A contrast matrix of:

    makeContrasts(contrasts="p1-(p2+p3+p4)/3", levels=design)
    

    is how I would (probably) tackle this problem. However, this may cancel out effects. For example if p2 was high and p3 was low.

  3. Alternatively, you could have something like:

    makeContrasts(contrasts=c("p1-p2", "p1-p3", "p1-p4"), levels=design)
    

    and look at overlapping genes.

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What do you mean differentially expressed. For example, in sample 1 I have to 2 values for gene1: 5.098, 5.076. For them to be differentially expressed I need to compare them to something. What do I compare them to? –  csgillespie Apr 19 '13 at 13:10
    
Maybe Iam not clear then, yes those genes in sample 1 when compared to sample 2, 3 ,4. –  user2294316 Apr 19 '13 at 13:21
    
contrast.matrix<-makeContrasts(contrasts="p1"-("p2"+"p3"+"p4")/3,levels=design)S‌​o to obtain that do I set the contrast matrix like this? –  user2294316 Apr 19 '13 at 13:29
    
See my updated answer –  csgillespie Apr 19 '13 at 13:46
    
Thanks. I just wanted to check if I was correct doing it this way. –  user2294316 Apr 19 '13 at 13:58

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