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HMMSplicer: A Tool for Efficient and Sensitive Discovery of Known and Novel Splice Junctions in RNA-Seq Data

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  • Michelle T Dimon
  • Katherine Sorber
  • Joseph L DeRisi

Abstract

Background: High-throughput sequencing of an organism's transcriptome, or RNA-Seq, is a valuable and versatile new strategy for capturing snapshots of gene expression. However, transcriptome sequencing creates a new class of alignment problem: mapping short reads that span exon-exon junctions back to the reference genome, especially in the case where a splice junction is previously unknown. Methodology/Principal Findings: Here we introduce HMMSplicer, an accurate and efficient algorithm for discovering canonical and non-canonical splice junctions in short read datasets. HMMSplicer identifies more splice junctions than currently available algorithms when tested on publicly available A. thaliana, P. falciparum, and H. sapiens datasets without a reduction in specificity. Conclusions/Significance: HMMSplicer was found to perform especially well in compact genomes and on genes with low expression levels, alternative splice isoforms, or non-canonical splice junctions. Because HHMSplicer does not rely on pre-built gene models, the products of inexact splicing are also detected. For H. sapiens, we find 3.6% of 3′ splice sites and 1.4% of 5′ splice sites are inexact, typically differing by 3 bases in either direction. In addition, HMMSplicer provides a score for every predicted junction allowing the user to set a threshold to tune false positive rates depending on the needs of the experiment. HMMSplicer is implemented in Python. Code and documentation are freely available at http://derisilab.ucsf.edu/software/hmmsplicer.

Suggested Citation

  • Michelle T Dimon & Katherine Sorber & Joseph L DeRisi, 2010. "HMMSplicer: A Tool for Efficient and Sensitive Discovery of Known and Novel Splice Junctions in RNA-Seq Data," PLOS ONE, Public Library of Science, vol. 5(11), pages 1-16, November.
  • Handle: RePEc:plo:pone00:0013875
    DOI: 10.1371/journal.pone.0013875
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    References listed on IDEAS

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    1. Brian T. Wilhelm & Samuel Marguerat & Stephen Watt & Falk Schubert & Valerie Wood & Ian Goodhead & Christopher J. Penkett & Jane Rogers & Jürg Bähler, 2008. "Dynamic repertoire of a eukaryotic transcriptome surveyed at single-nucleotide resolution," Nature, Nature, vol. 453(7199), pages 1239-1243, June.
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