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    BMC Bioinformatics. 2011;12 Suppl 6:S4. Epub 2011 Jul 28.

    A hidden Markov model for copy number variant prediction from whole genome resequencing data.

    Source

    Department of Computer Science, Columbia University, New York, NY 10027, USA. yshen@c2b2.columbia.edu

    Abstract

    MOTIVATION:

    Copy Number Variants (CNVs) are important genetic factors for studying human diseases. While high-throughput whole genome re-sequencing provides multiple lines of evidence for detecting CNVs, computational algorithms need to be tailored for different type or size of CNVs under different experimental designs.

    RESULTS:

    To achieve optimal power and resolution of detecting CNVs at low depth of coverage, we implemented a Hidden Markov Model that integrates both depth of coverage and mate-pair relationship. The novelty of our algorithm is that we infer the likelihood of carrying a deletion jointly from multiple mate pairs in a region without the requirement of a single mate pairs being obvious outliers. By integrating all useful information in a comprehensive model, our method is able to detect medium-size deletions (200-2000bp) at low depth (<10× per sample). We applied the method to simulated data and demonstrate the power of detecting medium-size deletions is close to theoretical values.

    AVAILABILITY:

    A program implemented in Java, Zinfandel, is available at http://www.cs.columbia.edu/~itsik/zinfandel/

    PMID:
    21989326
    [PubMed - indexed for MEDLINE]
    PMCID:
    PMC3194192
    Free PMC Article

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