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  • Getting differentially expressed genes based on RPKM values

    Hello,
    I have essentially 2 datasets, each showing the RPKM values for each gene. I want to compare the gene expressions from one set to another, and see which ones are up-regulated or down-regulated significantly comparing to the other.
    I have tried some primitive ways, such as dividing the two by each other and see if that ratio is greater than a fold change threshold..but this yields to me like 10000 genes, which is unlikely.

    Are there any suggestions on how to find differentially expressed genes based on RPKM values?

    btw I don't have access to the mapped reads data, so programs like DEGseq won't work for me. I only have access to the RPKM values

    Thanks!

    *sorry in advance, but I've also double-posted this in the bioinformatics section, because I wasn't sure how this forum was organized (sry i'm new).

  • #2
    Use Z-test

    I think you can you Z-test to find the different expressed genes(DEG). you can also control the P value.

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    • #3
      Originally posted by casshyr View Post
      Hello,

      Are there any suggestions on how to find differentially expressed genes based on RPKM values?

      btw I don't have access to the mapped reads data, so programs like DEGseq won't work for me. I only have access to the RPKM values
      Your best bet would be to reverse calculate. If you have the transcript lengths, then you could factor that out and assume a standard read depth for all libraries, thus giving you an estimated raw tag count that you could then use as input for DEGSeq or DESeq.

      Just a thought

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      • #4
        If the fpkm values are a result of cuffdiff then you can use the cummeRbund package in R to do your differential expression analysis

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