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  • TheSeqGeek
    Member
    • Feb 2014
    • 40

    Normalizing by Library Amount

    I got my Seq data back and processed with bow tie and htseq and I have my mapped gene counts... in my library I see that this is how much DNA was used for sequencing by the staff

    615 ng ---- Sample 1
    423 ng ---- Sample 2
    426 ng ----- Sample 3


    Can I divide the total mapped reads by these numbers to get a kind of weighted normalization?

    What would be the danger of doing that?
  • crazyhottommy
    Senior Member
    • Apr 2012
    • 187

    #2
    Normalized to the total mapped reads would be more reasonable.

    Comment

    • NicoBxl
      not just another member
      • Aug 2010
      • 264

      #3
      use DESeq or edgeR ( in R ) to normalize and check for DE genes

      Comment

      • TheSeqGeek
        Member
        • Feb 2014
        • 40

        #4
        Originally posted by NicoBxl View Post
        use DESeq or edgeR ( in R ) to normalize and check for DE genes
        I use DESeq2 and I print out the normalized values then do a ttest of my own but my pvalues are nothing like in DESeq2.

        I use this code to print out normalized values.

        normalizedCounts <- t( t(counts(dds)) / sizeFactors(dds) )

        Comment

        • NicoBxl
          not just another member
          • Aug 2010
          • 264

          #5
          why do you use a ttest and not DESeq test (based on negative binomial) ? RNA-Seq data do not follow a normal distribution.

          for normalized count, you can use also : normalizedCounts <- counts(dds,normalized=TRUE)

          Comment

          • TheSeqGeek
            Member
            • Feb 2014
            • 40

            #6
            Originally posted by NicoBxl View Post
            why do you use a ttest and not DESeq test (based on negative binomial) ? RNA-Seq data do not follow a normal distribution.
            Well there we go... I guess DESeq2 doesn't perform ttest...

            Can you reference some quality sources to get familiar with negative binomial theory

            Comment

            • NicoBxl
              not just another member
              • Aug 2010
              • 264

              #7
              read DESeq paper : http://genomebiology.com/2010/11/10/R106 and also DESeq vignette that is pretty well done.
              or maybe edgeR paper also

              Comment

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