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  • Tagz
    Junior Member
    • Jul 2009
    • 4

    Tag-Seq Data Analysis

    Hello!

    Can anybody help me with informations concerning the analysis of Tag-Seq (Tag-Profiling/Illumina) data? I´m new to this topic and already posted a thread in the bioinformatic section - no reply so far.

    Are there already packages available and if this is the case which one is best to use? Or is it possible to use standard programs for RNA-Seq (like ERANGE)?
    What kind of steps need to be implied?
    I´ve read about an in-house perl script (Morrissy et al. 2009). Does anybody have an equivalent? Is it possible to test it?

    I would appreciate any advice.
    Thanks a lot.
  • ybz
    Junior Member
    • Aug 2009
    • 1

    #2
    Hi Tagz,

    It's possible to use the DiscoverySpace platform to analyze Tag-seq data (http://www.bcgsc.ca/platform/bioinfo/software/ds). It was originally developed for LongSAGE data, so there is one caveat when working with the much much larger Tag-seq libraries: you have to remove the low frequency tags (<5 counts) to make the libraries small enough to be manageable by the software. Statistically speaking, tags occurring at a frequency of <5 are not statistically very different than 0, so it is not a huge compromise, depending on what your analysis is. For instance, if you're looking for statistically significant changes in tag expression between two libraries, having a count of 200 in one library and either 5 or 0 in another library would give upi pretty much the same result.

    Alternatively, if you have time to wait, some of the in-house scripts mentioned in the paper will be made available as part of a second publication coming out in the next couple of months.

    There may be other tools out there for analyzing LongSAGE data that could be used for Tag-seq data, but I have not looked for them.

    best of luck

    Comment

    • kmcarr
      Senior Member
      • May 2008
      • 1181

      #3
      See this thread:

      Discussion of next-gen sequencing related bioinformatics: resources, algorithms, open source efforts, etc

      Comment

      • Davis McC
        Member
        • May 2010
        • 16

        #4
        DE analysis of Tag-seq using edgeR

        Hi Tagz

        The Bioconductor package 'edgeR' can be used to analyse Tag-seq data for differential expression (http://bioinformatics.oxfordjournals...hort/26/1/139; http://www.bioconductor.org/packages...tml/edgeR.html). Indeed, we have achieved good results when using the package to (re-)analyse publicly available Tag-seq data (e.g. from T Hoen et al 2008, doi:10.1093/nar/gkn705).

        Cheers
        Davis

        Comment

        • Simon Anders
          Senior Member
          • Feb 2010
          • 995

          #5
          Hi

          in my experience, the first step will be to visualize your alignment in a genome browser to see how many tags per transcript you get. (Don't count on there being only one.) Then, you can create a count table, e.g. with our htseq-count script, and analyse this count table with either edgeR (Davis et al.'s package, see post #4) or DESeq (our package).

          Simon

          Comment

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