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  • Rao
    Member
    • Oct 2008
    • 36

    #16

    SHORTY
    What is the status this tool...?

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    • SoftGenetics
      Registered Vendor
      • Apr 2009
      • 36

      #17
      short read assembler

      Hi you might wish to try the new assemblers in nextGENe which in addition to de novo assembly has a condensation tool which removes chemistry and instrument errors...it is faster and more accurate than the ones mentioned.

      Comment

      • nilshomer
        Nils Homer
        • Nov 2008
        • 1283

        #18
        Originally posted by doxologist View Post
        oops... found another useful thread with these suggestions:

        * MIRA2 - MIRA (Mimicking Intelligent Read Assembly) is able to perform true hybrid de-novo assemblies using reads gathered through 454 sequencing technology (GS20 or GS FLX). Compatible with 454, Solexa and Sanger data. Linux OS required.
        * SHARCGS - De novo assembly of short reads. Authors are Dohm JC, Lottaz C, Borodina T and Himmelbauer H. from the Max-Planck-Institute for Molecular Genetics.
        * SSAKE - Version 2.0 of SSAKE (23 Oct 2007) can now handle error-rich sequences. Authors are René Warren, Granger Sutton, Steven Jones and Robert Holt from the Canada's Michael Smith Genome Sciences Centre. Perl/Linux.
        * VCAKE - De novo assembly of short reads with robust error correction. An improvement on early versions of SSAKE.
        * Velvet - Velvet is a de novo genomic assembler specially designed for short read sequencing technologies, such as Solexa or 454. Need about 20-25X coverage and paired reads. Developed by Daniel Zerbino and Ewan Birney at the European Bioinformatics Institute (EMBL-EBI).

        Anyone use more than one of these assemblers? I have low coverage with short solexa tags --> really just want to combine reads into longer reads.
        Don't forgett ABySS out of BCGSC. ABySS: A parallel assembler for short read sequence data. Simpson JT, Wong K, Jackman SD, Schein JE, Jones SJ, Birol I. Genome Research, 2009-June.
        Last edited by nilshomer; 09-26-2009, 12:19 AM. Reason: wrong author of ABySS

        Comment

        • michael_0214
          Junior Member
          • Feb 2010
          • 5

          #19
          A Question for Shorty

          Hi! A question for Shorty: When installing the Shorty, a mistake took place- configuration file needed, in this step:/build conf/conf-file bin/shorty-assembler. Can anyone give me a hand ? Thank you!

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