Suppr超能文献

以外显子拷贝数变异估计工具为研究对象,以阵列比较基因组杂交为对照的比较研究。

Comparative study of exome copy number variation estimation tools using array comparative genomic hybridization as control.

作者信息

Guo Yan, Sheng Quanghu, Samuels David C, Lehmann Brian, Bauer Joshua A, Pietenpol Jennifer, Shyr Yu

机构信息

Center for Quantitative Sciences, Vanderbilt University, Nashville, TN 37027, USA.

出版信息

Biomed Res Int. 2013;2013:915636. doi: 10.1155/2013/915636. Epub 2013 Nov 4.

Abstract

Exome sequencing using next-generation sequencing technologies is a cost-efficient approach to selectively sequencing coding regions of the human genome for detection of disease variants. One of the lesser known yet important applications of exome sequencing data is to identify copy number variation (CNV). There have been many exome CNV tools developed over the last few years, but the performance and accuracy of these programs have not been thoroughly evaluated. In this study, we systematically compared four popular exome CNV tools (CoNIFER, cn.MOPS, exomeCopy, and ExomeDepth) and evaluated their effectiveness against array comparative genome hybridization (array CGH) platforms. We found that exome CNV tools are capable of identifying CNVs, but they can have problems such as high false positives, low sensitivity, and duplication bias when compared to array CGH platforms. While exome CNV tools do serve their purpose for data mining, careful evaluation and additional validation is highly recommended. Based on all these results, we recommend CoNIFER and cn.MOPs for nonpaired exome CNV detection over the other two tools due to a low false-positive rate, although none of the four exome CNV tools performed at an outstanding level when compared to array CGH.

摘要

使用下一代测序技术进行外显子组测序是一种经济高效的方法,可选择性地对人类基因组的编码区域进行测序,以检测疾病变异。外显子组测序数据鲜为人知但很重要的应用之一是识别拷贝数变异(CNV)。在过去几年中已经开发了许多外显子组CNV工具,但这些程序的性能和准确性尚未得到全面评估。在本研究中,我们系统地比较了四种常用的外显子组CNV工具(CoNIFER、cn.MOPS、exomeCopy和ExomeDepth),并评估了它们相对于阵列比较基因组杂交(阵列CGH)平台的有效性。我们发现外显子组CNV工具能够识别CNV,但与阵列CGH平台相比,它们可能存在假阳性率高、灵敏度低和重复偏倚等问题。虽然外显子组CNV工具确实适用于数据挖掘,但强烈建议进行仔细评估和额外验证。基于所有这些结果,我们推荐CoNIFER和cn.MOPs用于非配对外显子组CNV检测,因为它们的假阳性率较低,优于其他两种工具,尽管与阵列CGH相比,这四种外显子组CNV工具都没有表现出卓越的水平。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/266a/3835197/4f220b8bdd7d/BMRI2013-915636.001.jpg

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验