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An integrative probabilistic model for identification of structural variation in sequencing data

机译:用于识别测序数据中结构变异的集成概率模型

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Paired-end sequencing is a common approach for identifying structural variation (SV) in genomes. Discrepancies between the observed and expected alignments indicate potential SVs. Most SV detection algorithms use only one of the possible signals and ignore reads with multiple alignments. This results in reduced sensitivity to detect SVs, especially in repetitive regions. We introduce GASVPro, an algorithm combining both paired read and read depth signals into a probabilistic model that can analyze multiple alignments of reads. GASVPro outperforms existing methods with a 50 to 90% improvement in specificity on deletions and a 50% improvement on inversions. GASVPro is available at?http://compbio.cs.brown.edu/software.
机译:配对末端测序是鉴定基因组中结构变异(SV)的常用方法。观察到的和预期的比对之间的差异表明潜在的SV。大多数SV检测算法仅使用一种可能的信号,并忽略具有多个比对的读数。这导致检测SV的灵敏度降低,尤其是在重复区域。我们引入GASVPro,该算法将配对的读取深度信号和读取深度信号组合到一个概率模型中,该模型可以分析读取的多个比对。 GASVPro的表现优于现有方法,其缺失特异性提高了50%至90%,反演特异性提高了50%。可在http://compbio.cs.brown.edu/software上找到GASVPro。

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