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ERDS-Exome: A Hybrid Approach for Copy Number Variant Detection from Whole-Exome Sequencing Data

机译:Erds-Exome:一种用于从全外exome测序数据复制数变体检测的混合方法

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摘要

Copy number variants (CNVs) play important roles in human disease and evolution. With the rapid development of next-generation sequencing technologies, many tools have been developed for inferring CNVs based on whole-exome sequencing (WES) data. However, as a result of the sparse distribution of exons in the genome, the limitations of the WES technique, and the nature of high-level signal noises in WES data, the efficacy of these variants remains less than desirable. Thus, there is need for the development of an effective tool to achieve a considerable power in WES CNVs discovery. In the present study, we describe a novel method, Estimation by Read Depth (RD) with Single-nucleotide variants from exome sequencing data (ERDS-exome). ERDS-exome employs a hybrid normalization approach to normalize WES data and to incorporate RD and single-nucleotide variation information together as a hybrid signal into a paired hidden Markov model to infer CNVs from WES data. Based on systematic evaluations of real data from the 1000 Genomes Project using other state-of-the-art tools, we observed that ERDS-exome demonstrates higher sensitivity and provides comparable or even better specificity than other tools. ERDS-exome is publicly available at: https://erds-exome.github.io.
机译:复制数变体(CNV)在人类疾病和演变中起重要作用。随着下一代测序技术的快速发展,已经开发了许多工具,用于基于全外序列测序(WES)数据推断CNV。然而,由于基因组中外显子的稀疏分布,WES技术的局限性以及WES数据中的高级信号噪声的性质,这些变体的功效仍然小于所需的效果。因此,需要开发有效工具,以在WES CNVS发现中实现相当大的功率。在本研究中,我们描述了一种新的方法,通过读取深度(Rd)估计来自外壳测序数据的单核苷酸变体(ERDS-Exome)。 ERDS-Exome采用混合归一化方法来归一化WES数据,并将RD和单核苷酸变化信息作为混合信号作为混合信号掺杂成配对的隐马尔可夫模型,以从WES数据推断CNV。基于使用其他最先进的工具的1000个基因组项目的实际数据的系统评估,我们观察到ERDS-Exome展示了更高的灵敏度,并提供比其他工具更好或更好的特异性。 Erds-Exome是公开的:https://erds-exome.github.io。

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