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  • Antony03
    Member
    • Apr 2012
    • 53

    Software like REPuter

    Hi,

    Do you know a free software like REPuter for find and visualise repeat sequences?
    Thanks
  • SES
    Senior Member
    • Mar 2010
    • 275

    #2
    By repeat structures, I assume you mean transposable elements? If so, there are more sophisticated programs to predict both Class I and Class II TEs based on structure and domain architecture. Tell us what you want to find so that we can make suggestions. The general topic of repeat finding is so broad that it would be hard to start listing programs without a better idea of what you are trying to do. Also, the visualization offered by that program is pretty crude. What type of visualization did you have in mind?

    Comment

    • Antony03
      Member
      • Apr 2012
      • 53

      #3
      Hi!
      I'm working on de novo chloroplast genome, and there are a lot of little repeated sequences.
      For exemple, REPuter can find all little repeated sequences who have more than 30 nucleotid. This is an output example:
      Code:
      >Sequence1
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence2
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence3
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence4
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence5
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence6
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence7
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence8
      aggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagagga
      >Sequence9
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence10
      aggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagagga
      >Sequence11
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence12
      aggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagagga
      >Sequence13
      aggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagagga
      >Sequence14
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence15
      aggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagag
      >Sequence16
      aggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagaggatgagcatagcgaatactcgtcagagga
      >Sequence17
      aggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagaggaacttctcgaccgtatgggagag
      >Sequence18
      tcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtattacatgcgtagcatgtattcctctcattcttcgagtatt
      >Sequence19
      There are other kind of output file. After, I can use REPEATmasker for mask all repeated sequences in my genome and know what is pourcentage of it. What I mean by ''visualise'', it's the density of repeated sequences, for exemple:


      Thanks!

      Comment

      • SES
        Senior Member
        • Mar 2010
        • 275

        #4
        There are no transposable elements in the chloroplast genome, but there are large (and probably numerous small) tandem repeats. One idea would be to just calculate the density of repeats across the genome and plot that as a histogram. I have done this for looking at the tandem repeats in chloroplast genomes.

        Comment

        • Antony03
          Member
          • Apr 2012
          • 53

          #5
          Thanks for you answer! Do you know a software for do this?

          Comment

          • SES
            Senior Member
            • Mar 2010
            • 275

            #6
            Originally posted by Antony03 View Post
            Thanks for you answer! Do you know a software for do this?
            You could use TRF or Vmatch or any number of tools to find the repeats. From there it may take a little scripting so you can plot the repeat density in R (or any other plotting program).

            Comment

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