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Detecting Expansions of Tandem Repeats in Cohorts Sequenced with Short-Read Sequencing Data

机译:用短读取测序数据测序群体中串联重复的扩展

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Repeat expansions cause more than 30 inherited disorders, predominantly neurogenetic. These can present with overlapping clinical phenotypes, making molecular diagnosis challenging. Single-gene or small-panel PCR-based methods can help to identify the precise genetic cause, but they can be slow and costly and often yield no result. Researchers are increasingly performing genomic analysis via whole-exome and whole-genome sequencing (WES and WGS) to diagnose genetic disorders. However, until recently, analysis protocols could not identify repeat expansions in these datasets. We developed exSTRa (expanded short tandem repeat algorithm), a method that uses either WES or WGS to identify repeat expansions. Performance of exSTRa was assessed in a simulation study. In addition, four retrospective cohorts of individuals with eleven different known repeat-expansion disorders were analyzed with exSTRa. We assessed results by comparing the findings to known disease status. Performance was also compared to three other analysis methods (ExpansionHunter, STRetch, and TREDPARSE), which were developed specifically for WGS data. Expansions in the assessed STR loci were successfully identified in WES and WGS datasets by all four methods with high specificity and sensitivity. Overall, exSTRa demonstrated more robust and superior performance for WES data than did the other three methods. We demonstrate that exSTRa can be effectively utilized as a screening tool for detecting repeat expansions in WES and WGS data, although the best performance would be produced by consensus calling, wherein at least two out of the four currently available screening methods call an expansion.
机译:重复扩展导致超过30个遗传性疾病,主要是神经源性。这些可以呈现重叠的临床表型,使分子诊断具有挑战性。单基因或基于小面板的PCR的方法可以有助于确定精确的遗传原因,但它们可以缓慢且昂贵,并且通常不会产生结果。研究人员越来越多地通过全面和全基因组测序(WES和WG)进行基因组分析,以诊断遗传疾病。但是,直到最近,分析协议无法识别这些数据集中的重复扩展。我们开发了exstra(扩展了短串联重复算法),这是一种使用WES或WG来识别重复扩展的方法。在模拟研究中评估了exstra的性能。此外,用exstra分析了四种不同已知的重复膨胀障碍的个体的四个次要队列。我们通过将结果与已知疾病状况进行比较来评估结果。性能也与其他三种分析方法(扩展服务,拉伸和特雷帕)相比,这是专门为WGS数据开发的。评估的STR基因座中的扩展通过所有四种方法在WES和WGS数据集中成功识别,具有高特异性和灵敏度。总体而言,exstra对WES数据展示了比其他三种方法更强大和卓越的性能。我们证明exstra可以有效地利用作为用于检测WES和WGS数据的重复扩展的筛选工具,尽管最佳性能是通过共识呼叫产生的,其中四个当前可用的筛选方法中的至少两个呼叫扩展。

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