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SVM2: an improved paired-end-based tool for the detection of small genomic structural variations using high-throughput single-genome resequencing data

机译:SVM2:一种改进的基于配对末端的工具可使用高通量单基因组重测序数据检测小的基因组结构变异

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摘要

Several bioinformatics methods have been proposed for the detection and characterization of genomic structural variation (SV) from ultra high-throughput genome resequencing data. Recent surveys show that comprehensive detection of SV events of different types between an individual resequenced genome and a reference sequence is best achieved through the combination of methods based on different principles (split mapping, reassembly, read depth, insert size, etc.). The improvement of individual predictors is thus an important objective. In this study, we propose a new method that combines deviations from expected library insert sizes and additional information from local patterns of read mapping and uses supervised learning to predict the position and nature of structural variants. We show that our approach provides greatly increased sensitivity with respect to other tools based on paired end read mapping at no cost in specificity, and it makes reliable predictions of very short insertions and deletions in repetitive and low-complexity genomic contexts that can confound tools based on split mapping of reads.
机译:已经提出了几种生物信息学方法,用于从超高通量基因组重测序数据中检测和表征基因组结构变异(SV)。最近的调查表明,通过基于不同原理(分割作图,重组,读取深度,插入大小等)的方法的组合,可以最好地全面检测单个重测序基因组和参考序列之间不同类型的SV事件。因此,改善各个预测指标是一个重要的目标。在这项研究中,我们提出了一种新方法,该方法结合了预期的文库插入物大小的偏差和阅读映射的局部模式的其他信息,并使用监督学习来预测结构变异的位置和性质。我们证明了我们的方法相对于其他基于配对末端读取映射的工具,极大地提高了敏感性,而没有任何特异性,并且它对重复和低复杂度基因组环境中非常短的插入和缺失做出了可靠的预测,这可能会使基于关于读取的拆分映射。

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