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  • themysticgeek
    Junior Member
    • Dec 2013
    • 4

    How to handle Ns in the middle of reads

    For my illumina data fastqc shows presence of N's at positions 13,14,15 in 101 bp longs reads. If i go for cropping first 15 bases by using trimmomatic, it solves the problem but i lose a lot of data. I wanted to know that if i retain the N's what sort of problems would they cause during alignment(bwa+stampy)/variant calling(unified genotyper) and how can i handle these problems?

    If any body faced a similar problem how did you handle it? Similar questions asked on different forums but none answered. Could not find a resourse on how variant calling programs handle N's. Do they ignore them? Or consider them as a variation with low confidence scores?
    Last edited by themysticgeek; 01-08-2014, 02:55 AM.
  • GenoMax
    Senior Member
    • Feb 2008
    • 7142

    #2
    Are there N's at those positions in *all* reads? That would almost certainly indicate a technical problem of some kind with this run. In general your sequence provider should not have released this data if that is the case.

    Comment

    • themysticgeek
      Junior Member
      • Dec 2013
      • 4

      #3
      The N's are in ~50% of the reads. I have attached the Fasqc image for per base n content. This is particular to this sequening run. Did not observe this problem in the other runs
      Last edited by themysticgeek; 01-08-2014, 05:45 AM.

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      • benjaminsb
        Junior Member
        • Aug 2013
        • 2

        #4
        Similar problem

        I've just run FastQC on a published RNAseq dataset (SRX294957) and I see a very similar pattern:



        where on position 21-23, 80% of reads are N's. As I'm only interested in expression, I could accept the low read quality as long as the aligner accepts it. I'm using RSEM+bowtie for the purpose, so I'm wondering if bowtie will match NNN against anything in the reference?

        Comment

        • dpryan
          Devon Ryan
          • Jul 2011
          • 3478

          #5
          It will. You can alter the mismatch score due to an N and the maximum number of allowed Ns if you need to (you'll likely need to tweak the minimum allowable score if you do so).

          Comment

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