基于CNV深度学习的识别方法

S. Jaiswal, Nitesh kumar Sharma, Uma ., M. Iquebal, A. Rai, D. Kumar
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引用次数: 0

摘要

背景:拷贝数变异(拷贝数变异)在遗传变异中占有重要地位。由于许多CNVs包括导致基因表达水平差异的基因,因此可以解释大量正常表型变异。目前的努力是针对CNVs的更全面的表征,这将为确定基因组多样性如何影响人类和植物的生物功能、进化和常见疾病提供基础。方法:下一代测序(NGS)的分析可变性和覆盖数据中的伪像,以及缺乏强大的CNV检测生物信息学工具,限制了目标NGS数据识别CNV的效用。文献中有基于深度学习的管道开发的证据,该管道包含机器学习组件,可以从目标NGS数据中识别CNVs。结果:认为将此与临床“金标准”(如FISH)信息相结合,可以更准确地检测CNV。这将带来一个新的研究方向,补充现有的NGS方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CNV Deep Learning based Methodology for Recognition
Background: Copy number variants (CNVs) account for a significant amount of genetic variation. Since many CNVs include genes that result in differential levels of gene expression, substantial normal phenotypic variation can be explained. Current efforts are directed toward a more comprehensive characterization of CNVs that will provide the basis for determining how genomic diversity impacts biological function, evolution and common diseases in human as well as plants. Methods: The analytical variability in next generation sequencing (NGS) and artifacts in coverage data along with lack of robust bioinformatics tools for CNV detection have limited the utility of targeted NGS data to identify CNVs. Literature has the evidence of development of deep learning-based pipeline that incorporates a machine learning component to identify CNVs from targeted NGS data. Result: It is believed that combining this with clinical “gold standard” (e.g. FISH) information, the CNV detection could be more accurate. This would lead to a new research direction, supplementing the existing NGS methods.
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