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  • gen2prot
    Member
    • Apr 2010
    • 68

    How can one get raw read counts from RPKM values

    Hi All,

    I am new to the transcriptome sequencing field and I am learning to use Bowtie, Tophat and Cufflinks. I find that Cufflinks spits out RPKM and FPKM values which though very informative does not help my purpose since I am interested in the number of raw reads per gene. That is to say without normalization. Is there a way of figuring this out?

    Thanks
    Abhijit
  • mgogol
    Senior Member
    • Mar 2008
    • 197

    #2
    One way I've done it is using bedtools coverageBed with the bam file generated from the sam file from the tophat alignment and a bed file describing the genes.

    I am curious to hear other people's techniques, because I'm sure there are more efficient ways to go about this.

    Comment

    • lexa
      Member
      • Jun 2010
      • 17

      #3
      hi,

      I`m also using bedtools but does anybody has a better solution?

      Comment

      • edge
        Senior Member
        • Sep 2009
        • 199

        #4
        Hi,

        Do you mind to share the command that you type in bedtools in order to extract the read count per transcripts?
        I'm facing the same problem as well.
        Thanks.

        Comment

        • edge
          Senior Member
          • Sep 2009
          • 199

          #5
          Hi,

          Do you mind to share the command that you type in bedtools in order to extract the read count per transcripts?
          I'm facing the same problem as well.
          Thanks.

          Comment

          • gen2prot
            Member
            • Apr 2010
            • 68

            #6
            Getting raw read counts

            I ended up using Simon Ander's program for computing read counts per gene. However you will have to provide the annotation of the genome in GTF format in order to view that. I find that this is quite accurate. Cheers...

            Comment

            • biofreak
              Member
              • Jun 2011
              • 44

              #7
              I tried Htseq-count software.
              python -m HTSeq.scripts.count accepted_hits.sam hg19RefGene.gtf

              it works. But I want to do this in R. Maybe functions in the GenomicRanges packages can help? e.g. countOverlaps function?

              Comment

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