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COPS: A Sensitive and Accurate Tool for Detecting Somatic Copy Number Alterations Using Short-Read Sequence Data from Paired Samples

机译:COps:一个敏感和准确工具从配对样本使用短读序列数据检测体细胞拷贝数变化

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摘要

Copy Number Alterations (CNAs) such as deletions and duplications; compose a larger percentage of genetic variations than single nucleotide polymorphisms or other structural variations in cancer genomes that undergo major chromosomal re-arrangements. It is, therefore, imperative to identify cancer-specific somatic copy number alterations (SCNAs), with respect to matched normal tissue, in order to understand their association with the disease. We have devised an accurate, sensitive, and easy-to-use tool, COPS, COpy number using Paired Samples, for detecting SCNAs. We rigorously tested the performance of COPS using short sequence simulated reads at various sizes and coverage of SCNAs, read depths, read lengths and also with real tumor:normal paired samples. We found COPS to perform better in comparison to other known SCNA detection tools for all evaluated parameters, namely, sensitivity (detection of true positives), specificity (detection of false positives) and size accuracy. COPS performed well for sequencing reads of all lengths when used with most upstream read alignment tools. Additionally, by incorporating a downstream boundary segmentation detection tool, the accuracy of SCNA boundaries was further improved. Here, we report an accurate, sensitive and easy to use tool in detecting cancer-specific SCNAs using short-read sequence data. In addition to cancer, COPS can be used for any disease as long as sequence reads from both disease and normal samples from the same individual are available. An added boundary segmentation detection module makes COPS detected SCNA boundaries more specific for the samples studied. COPS is available at with username “cops” and password “cops”.
机译:副本编号变更(CNA),例如删除和重复;与单核苷酸多态性或经历重大染色体重排的癌症基因组中的其他结构变异相比,遗传变异构成更大百分比的遗传变异。因此,有必要针对匹配的正常组织识别癌症特异性的体细胞拷贝数改变(SCNA),以了解其与疾病的关系。我们设计了一种准确,敏感且易于使用的工具,即使用配对样本的COPS,COPy编号来检测SCNA。我们使用短序列模拟读取在各种大小和SCNA覆盖范围,读取深度,读取长度以及真实的肿瘤:正常配对样本中严格测试了COPS的性能。我们发现,相比所有其他已知的SCNA检测工具,COPS在所有评估参数(即灵敏度(检测出真阳性),特异性(检测出假阳性)和尺寸准确性)方面均表现更好。当与大多数上游读码比对工具一起使用时,COPS可以很好地用于所有长度的测序读码。另外,通过合并下游边界分割检测工具,SCNA边界的准确性进一步提高。在这里,我们报告了一种使用短读序列数据检测癌症特异性SCNA的准确,灵敏且易于使用的工具。除癌症外,COPS还可用于任何疾病,只要可以从同一人的疾病和正常样本中读取序列即可。增加的边界分割检测模块使COPS检测到的SCNA边界对所研究的样本更具特异性。可通过用户名“ cops”和密码“ cops”获得COPS。

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