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I need to do RNA-Seq analysis with limma and I already have normalized count data for 61810 transcripts in two conditions (no replicates), i.e. a 61810*2 matrix. My "design" model matrix is :

(Intercept) sampletypestest
1           1               0
2           1               1


[1] 0 1



[1] "contr.treatment

when I use voom on the data: diff.exp <- voom(data,design), it gives the following error:

  Error in approxfun(l, rule = 2) : 
  need at least two non-NA values to interpolate

Can anyone tell me what's the issue here?

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Welcome to stackoverflow vivek, Now since you asked a question, Please make a reproducible example so that we can help you.also in R if you put data() on console you will get lot of dataset to work with , you can use one of them to reproduce the same problem. This can help you to get started. stackoverflow.com/help/mcve , please also visit the help stackoverflow.com/help –  Kabir Feb 14 at 7:37
How did you make your design matrix? In limma there is a function to do so. Did you follow the userguide? –  Llopis Feb 26 at 9:43
@Llopis yah I made it as per the mannual. Although the manual has examples with replicates (2 wild type vs 3 mutants) but here I don't have any.. –  Vivek Feb 27 at 10:14
Probably you will get more help in the bioconductor mailing list, but the section 16 there is an example where they use the voom function(16.1.6). –  Llopis Feb 27 at 14:12

1 Answer 1

voom (and limma more generally) require replicates. The whole purpose of voom is to estimate the mean-variance relationship. It would work if you had any replicates at all in any of groups. But you don't have any replicates, so you can't estimate any variances, so an error is inevitable.

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