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A simulation test of the effectiveness of several methods for error-checking non-invasive genetic data

机译:几种错误检查非侵入式遗传数据方法有效性的模拟测试

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Non-invasive genetic sampling (NGS) is becoming a popular tool for population estimation. However, multiple NGS studies have demonstrated that polymerase chain reaction (PCR) genotyping errors can bias demographic estimates. These errors can be detected by comprehensive data filters such as the multiple-tubes approach, but this approach is expensive and time consuming as it requires three to eight PCR replicates per locus. Thus, researchers have attempted to correct PCR errors in NGS datasets using non-comprehensive error checking methods, but these approaches have not been evaluated for reliability. We simulated NGS studies with and without PCR error and 'filtered' datasets using non-comprehensive approaches derived from published studies and calculated mark-recapture estimates using CAPTURE. In the absence of data-filtering, simulated error resulted in serious inflations in CAPTURE estimates; some estimates exceeded N by > 200%. When data filters were used, CAPTURE estimate reliability varied with per-locus error (E mu). At E mu = 0.01, CAPTURE estimates from filtered data displayed < 5% deviance from error-free estimates. When E mu was 0.05 or 0.09, some CAPTURE estimates from filtered data displayed biases in excess of 10%. Biases were positive at high sampling intensities; negative biases were observed at low sampling intensities. We caution researchers against using non-comprehensive data filters in NGS studies, unless they can achieve baseline per-locus error rates below 0.05 and, ideally, near 0.01. However, we suggest that data filters can be combined with careful technique and thoughtful NGS study design to yield accurate demographic information.
机译:非侵入式基因采样(NGS)成为人口估计的流行工具。但是,多项NGS研究表明,聚合酶链反应(PCR)基因分型错误可能会影响人口统计估计。这些错误可以通过全面的数据过滤器(例如多管方法)来检测,但是这种方法既昂贵又耗时,因为每个基因座需要进行三到八次PCR复制。因此,研究人员已尝试使用非综合性错误检查方法来纠正NGS数据集中的PCR错误,但尚未对这些方法的可靠性进行评估。我们使用源自出版的研究的非综合性方法模拟了有无PCR错误和“过滤”数据集的NGS研究,并使用CAPTURE计算了标记夺回的估计值。在没有数据过滤的情况下,模拟错误导致CAPTURE估计值严重膨胀;一些估计超出了N> 200%。使用数据过滤器时,CAPTURE估计的可靠性随每个位置的误差(Eμ)而变化。在E mu = 0.01时,从过滤后的数据获得的CAPTURE估计值与无错误估计值的偏差小于5%。当E mu为0.05或0.09时,一些来自过滤数据的CAPTURE估计显示偏差超过10%。在高采样强度下,偏差为正;在低采样强度下观察到负偏差。我们提醒研究人员不要在NGS研究中使用非综合性数据过滤器,除非它们可以使基线的每位基因座错误率低于0.05,理想情况下接近0.01。但是,我们建议将数据过滤器与谨慎的技术和周到的NGS研究设计结合使用,以产生准确的人口统计信息。

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