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评估基于扩增子的靶向新一代测序数据中的拷贝数改变。

Assessing copy number alterations in targeted, amplicon-based next-generation sequencing data.

作者信息

Grasso Catherine, Butler Timothy, Rhodes Katherine, Quist Michael, Neff Tanaya L, Moore Stephen, Tomlins Scott A, Reinig Erica, Beadling Carol, Andersen Mark, Corless Christopher L

机构信息

Knight Cancer Institute, Oregon Health and Science University, Portland, Oregon.

Ion Torrent by Thermo Fischer, Carlsbad, California.

出版信息

J Mol Diagn. 2015 Jan;17(1):53-63. doi: 10.1016/j.jmoldx.2014.09.008. Epub 2014 Nov 7.

Abstract

Changes in gene copy number are important in the setting of precision medicine. Recent studies have established that copy number alterations (CNAs) can be detected in sequencing libraries prepared by hybridization-capture, but there has been comparatively little attention given to CNA assessment in amplicon-based libraries prepared by PCR. In this study, we developed an algorithm for detecting CNAs in amplicon-based sequencing data. CNAs determined from the algorithm mirrored those from a hybridization-capture library. In addition, analysis of 14 pairs of matched normal and breast carcinoma tissues revealed that sequence data pooled from normal samples could be substituted for a matched normal tissue without affecting the detection of clinically relevant CNAs (>|2| copies). Comparison of CNAs identified by array comparative genomic hybridization and amplicon-based libraries across 10 breast carcinoma samples showed an excellent correlation. The CNA algorithm also compared favorably with fluorescence in situ hybridization, with agreement in 33 of 38 assessments across four different genes. Factors that influenced the detection of CNAs included the number of amplicons per gene, the average read depth, and, most important, the proportion of tumor within the sample. Our results show that CNAs can be identified in amplicon-based targeted sequencing data, and that their detection can be optimized by ensuring adequate tumor content and read coverage.

摘要

基因拷贝数的变化在精准医学背景下至关重要。最近的研究表明,在通过杂交捕获制备的测序文库中可以检测到拷贝数改变(CNA),但对于通过PCR制备的基于扩增子的文库中的CNA评估相对关注较少。在本研究中,我们开发了一种用于检测基于扩增子的测序数据中CNA的算法。通过该算法确定的CNA与来自杂交捕获文库的CNA一致。此外,对14对匹配的正常和乳腺癌组织的分析表明,从正常样本汇总的序列数据可以替代匹配的正常组织,而不会影响临床相关CNA(>|2|拷贝)的检测。对10个乳腺癌样本中通过阵列比较基因组杂交和基于扩增子的文库鉴定的CNA进行比较,显示出极好的相关性。CNA算法与荧光原位杂交相比也表现良好,在四个不同基因的38次评估中有33次一致。影响CNA检测的因素包括每个基因的扩增子数量、平均读取深度,以及最重要的样本中肿瘤的比例。我们的结果表明,可以在基于扩增子的靶向测序数据中鉴定CNA,并且通过确保足够的肿瘤含量和读取覆盖度可以优化其检测。

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