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A Deep Learning Approach for Detecting Copy Number Variation in Next-Generation Sequencing Data

机译:一种用于检测下一代测序数据中拷贝数变异的深度学习方法

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摘要

Copy number variants (CNV) are associated with phenotypic variation in several species. However, properly detecting changes in copy numbers of sequences remains a difficult problem, especially in lower quality or lower coverage next-generation sequencing data. Here, inspired by recent applications of machine learning in genomics, we describe a method to detect duplications and deletions in short-read sequencing data. In low coverage data, machine learning appears to be more powerful in the detection of CNVs than the gold-standard methods of coverage estimation alone, and of equal power in high coverage data. We also demonstrate how replicating training sets allows a more precise detection of CNVs, even identifying novel CNVs in two genomes previously surveyed thoroughly for CNVs using long read data.
机译:拷贝数变异(CNV)与几种物种的表型变异有关。但是,正确检测序列的拷贝数变化仍然是一个难题,特别是在质量较低或覆盖率较低的下一代测序数据中。在这里,受机器学习在基因组学领域的最新应用的启发,我们描述了一种检测短读测序数据中重复和缺失的方法。在低覆盖率数据中,机器学习在检测CNV方面似乎比单独的覆盖率估计的金标准方法和在高覆盖率数据中具有同等功效的金标准方法更强大。我们还演示了如何通过复制训练集来更精确地检测CNV,甚至可以在使用长读取数据对CNV进行彻底调查的两个基因组中鉴定出新颖的CNV。

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