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Detecting Large Indels Using Optical Map Data

机译:使用光学图数据检测大型indel

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Optical Maps (OM) provide reads that are very long, and thus can be used to detect large indels not detectable by the shorter reads provided by sequence-based technologies such as Illumina and PacBio. Two existing tools for detecting large indels from OM data are Bio-Nano Solve and OMSV. However, these two tools may miss indels with weak signals. We propose a local-assembly based approach, OMIndel, to detect large indels with OM data. The results of applying OMIndel to empirical data demonstrate that it is able to detect indels with weak signal. Furthermore, compared with the other two OM-based methods, OMIndel has a lower false discovery rate. We also investigated the indels that can only be detected by OM but not Illumina, PacBio or 10X, and we found that they mostly fall into two categories: complex events or indels on repetitive regions. This implies that adding the OM data to sequence-based technologies can provide significant progress towards a more complete characterization of structural variants (SVs). The algorithm has been implemented in Perl and is publicly available on https:// bitbucket.org/xianfan/optmethod.
机译:光学图(OM)提供了很长的读数,因此可用于检测由基于序列和PACBIO等序列技术提供的较短读取无法检测到的大型凹凸。用于检测来自OM数据的大型Indel的两个现有工具是Bio-Nano求解和OMSV。但是,这两种工具可能会错过具有弱信号的凹凸。我们提出了一种基于本地组装的方法,omindel,用OM数据检测大型凹凸。将Omindel应用于经验数据的结果表明它能够以弱信号检测凹凸。此外,与其他两个基于OM的方法相比,Omindel具有较低的错误发现率。我们还调查了只能由OM但不是Illumina,PacBio或10x来检测的诱惑,我们发现它们主要分为两类:复杂的事件或重复地区的诱惑。这意味着将OM数据添加到基于序列的技术可以为更完整的结构变体表征(SV)提供重大进展。该算法已在Perl中实现,并在https:// bitbucket.org/xianfan/optmethod上公开可用。

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