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      Stampy: a statistical algorithm for sensitive and fast mapping of Illumina sequence reads.

      1 ,
      Genome research
      Cold Spring Harbor Laboratory

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          Abstract

          High-volume sequencing of DNA and RNA is now within reach of any research laboratory and is quickly becoming established as a key research tool. In many workflows, each of the short sequences ("reads") resulting from a sequencing run are first "mapped" (aligned) to a reference sequence to infer the read from which the genomic location derived, a challenging task because of the high data volumes and often large genomes. Existing read mapping software excel in either speed (e.g., BWA, Bowtie, ELAND) or sensitivity (e.g., Novoalign), but not in both. In addition, performance often deteriorates in the presence of sequence variation, particularly so for short insertions and deletions (indels). Here, we present a read mapper, Stampy, which uses a hybrid mapping algorithm and a detailed statistical model to achieve both speed and sensitivity, particularly when reads include sequence variation. This results in a higher useable sequence yield and improved accuracy compared to that of existing software.

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          Author and article information

          Journal
          Genome Res
          Genome research
          Cold Spring Harbor Laboratory
          1549-5469
          1088-9051
          Jun 2011
          : 21
          : 6
          Affiliations
          [1 ] Wellcome Trust Centre for Human Genetics, Oxford OX3 7BN, United Kingdom. gerton.lunter@well.ox.ac.uk
          Article
          gr.111120.110
          10.1101/gr.111120.110
          3106326
          20980556
          aeea1060-7d31-4f31-9fca-8a7b95c7b537
          History

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