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Detecting common copy number variants in high-throughput sequencing data by using JointSLM algorithm

机译:使用JointSLM算法检测高通量测序数据中的常见拷贝数变异

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The discovery of genomic structural variants (SVs), such as copy number variants (CNVs), is essential to understand genetic variation of human populations and complex diseases. Over recent years, the advent of new high-throughput sequencing (HTS) platforms has opened many opportunities for SVs discovery, and a very promising approach consists in measuring the depth of coverage (DOC) of reads aligned to the human reference genome. At present, few computational methods have been developed for the analysis of DOC data and all of these methods allow to analyse only one sample at time. For these reasons, we developed a novel algorithm (JointSLM) that allows to detect common CNVs among individuals by analysing DOC data from multiple samples simultaneously. We test JointSLM performance on synthetic and real data and we show its unprecedented resolution that enables the detection of recurrent CNV regions as small as 500?bp in size. When we apply JointSLM to analyse chromosome one of eight genomes with different ancestry, we identify 3000 regions with recurrent CNVs of different frequency and size: hierarchical clustering on these regions segregates the eight individuals in two groups that reflect their ancestry, demonstrating the potential utility of JointSLM for population genetics studies.
机译:发现基因组结构变异体(SVs),例如拷贝数变异体(CNV),对于理解人群和复杂疾病的遗传变异至关重要。近年来,新的高通量测序(HTS)平台的出现为SV的发现打开了许多机会,一种非常有前途的方法包括测量与人类参考基因组对齐的读数的覆盖深度(DOC)。目前,很少开发用于分析DOC数据的计算方法,并且所有这些方法仅允许一次仅分析一个样本。由于这些原因,我们开发了一种新颖的算法(JointSLM),该算法可通过同时分析多个样本中的DOC数据来检测个体之间的常见CNV。我们在合成数据和真实数据上测试了JointSLM性能,并展示了其前所未有的分辨率,可检测到大小仅为500bp的循环CNV区域。当我们使用JointSLM分析具有不同血统的八个基因组之一的染色体时,我们发现了3000个频率和大小不同的复发CNV区域:这些区域上的层次聚类将八个个体分开,反映了它们的血统,证明了它们的潜在效用。用于人口遗传学研究的JointSLM。

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