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Evaluation of three read-depth based CNV detection tools using whole-exome sequencing data

机译:使用全外显子组测序数据评估三种基于读取深度的CNV检测工具

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BackgroundWhole exome sequencing (WES) has been widely accepted as a robust and cost-effective approach for clinical genetic testing of small sequence variants. Detection of copy number variants (CNV) within WES data have become possible through the development of various algorithms and software programs that utilize read-depth as the main information. The aim of this study was to evaluate three commonly used, WES read-depth based CNV detection programs using high-resolution chromosomal microarray analysis (CMA) as a standard. MethodsPaired CMA and WES data were acquired for 45 samples. A total of 219 CNVs (size ranged from 2.3?kb – 35 mb) identified on three CMA platforms (Affymetrix, Agilent and Illumina) were used as standards. CNVs were called from WES data using XHMM, CoNIFER, and CNVnator with modified settings. ResultsAll three software packages detected an elevated proportion of small variants ( ConclusionLow concordances of CNV, detected by three different read-depth based programs, indicate the immature status of WES-based CNV detection. Low sensitivity and uncertain specificity of WES-based CNV detection in comparison with CMA based CNV detection suggests that CMA will continue to play an important role in detecting clinical grade CNV in the NGS era, which is largely based on WES.
机译:背景全外显子组测序(WES)已被广泛接受为对小序列变体进行临床遗传测试的可靠且经济高效的方法。通过开发各种利用读取深度作为主要信息的算法和软件程序,在WES数据中检测拷贝数变异(CNV)成为可能。这项研究的目的是使用高分辨率染色体微阵列分析(CMA)作为标准,评估三种基于WES读取深度的CNV检测程序。方法对45个样本进行配对的CMA和WES数据采集。在三个CMA平台(Affymetrix,Agilent和Illumina)上确定的219台CNV(大小在2.3?kb – 35 mb之间)被用作标准。使用XHMM,CoNIFER和CNVnator从WES数据中调用CNV,并修改设置。结果所有三个软件包检测到的小变异比例均较高(结论通过三个不同的基于读取深度的程序检测到的CNV一致性低,表明基于WES的CNV检测的不成熟状态。基于WES的CNV检测的低灵敏度和不确定性与基于CMA的CNV检测的比较表明,在主要基于WES的NGS时代,CMA在检测临床级CNV中将继续发挥重要作用。

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