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  • Pull out unknown primers from fastq file?

    Hello,
    I have fastq files from 16S sequencing data. The reads in these files have 6 different primers in them and I am wondering if anyone knows of a method where I can pull out the beginning of the reads, maybe 20-30 bps and then look for consensus sequences within these? This will then give me the primer sequence information for the 6 primers which is proprietary information from the company where the kits are made.

    Can anyone think of a way to do this?
    Thanks!

  • #2
    Something like that should be pretty easy to do with any scripting language with fastq parsing libraries (or heck maybe manually inspecting the fastq since there's only 6 primers if you're not keen on programming).

    Example R psuedocode (only because that's what I'm comfortable with)
    library("ShortRead"); #load the library for fastq manipulation
    fq_data <- readFastq("reads.fastq.gz"); #read in fastq data
    base_info <- sread(fq_data); #get just the base calls
    first20 <- substring(base_info, 1, 20); #get the first 20bp of each read

    then you could do something like
    table(first20) to see the frequency of different 20bp sequences
    alphabetFrequency(first20) to get consensus sequences

    Comment


    • #3
      IIRC, some FASTQ quality control pipelines will spot and report possible primer sequences.

      Comment


      • #4
        maubp,
        I would love to find a tool that will spot and report possible primers. Can you be more specific?

        I tried to sort and tally up the sequences and i am not finding them this way. Which tool are you referring to?

        Thanks a bunch.
        Jen

        Comment


        • #5
          e.g. FASTQC reports overrepresented sequences which ought to spot your primers:

          Comment


          • #6
            If you have not solved this problem yet, there's another option, using BBTools:

            reformat.sh in=reads.fq out=trimmed.fq ftr=19

            This will trim all but the first 20 bases (all bases after position 19, zero-based).

            kmercountexact.sh in=trimmed.fq out=counts.txt fastadump=f mincount=10 k=20 rcomp=f
            This will generate a file containing the counts of all 20-mers that occurred at least 10 times, in a 2-column format that is easy to sort in Excel. For example:

            Code:
            ACCGTTACCGTTACCGTTAC	100
            AAATTTTTTTCCCCCCCCCC	85
            ...etc. If the primers are 20bp long, they should be pretty obvious.

            Comment


            • #7
              Hi Brian,
              How should I cite your tool in a manuscript in prep that I am doing? Do you have a reference or should I use your website?
              Thanks,
              Jen

              Comment


              • #8
                Hi Jen,

                My tools are all still unpublished, so please just cite my name and website. Thanks!

                -Brian

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