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首页> 外文期刊>PLoS Computational Biology >The Statistics of Bulk Segregant Analysis Using Next Generation Sequencing
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The Statistics of Bulk Segregant Analysis Using Next Generation Sequencing

机译:使用下一代测序的批量分离分析的统计量

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摘要

We describe a statistical framework for QTL mapping using bulk segregant analysis (BSA) based on high throughput, short-read sequencing. Our proposed approach is based on a smoothed version of the standard statistic, and takes into account variation in allele frequency estimates due to sampling of segregants to form bulks as well as variation introduced during the sequencing of bulks. Using simulation, we explore the impact of key experimental variables such as bulk size and sequencing coverage on the ability to detect QTLs. Counterintuitively, we find that relatively large bulks maximize the power to detect QTLs even though this implies weaker selection and less extreme allele frequency differences. Our simulation studies suggest that with large bulks and sufficient sequencing depth, the methods we propose can be used to detect even weak effect QTLs and we demonstrate the utility of this framework by application to a BSA experiment in the budding yeast Saccharomyces cerevisiae.
机译:我们描述了基于高通量,短读测序的批量分离器分析(BSA)用于QTL映射的统计框架。我们提出的方法基于标准统计的平滑版本,并考虑了由于分离剂采样形成大块而导致的等位基因频率估计的变化,以及在大块排序过程中引入的变化。通过仿真,我们探索了关键实验变量(如体积大小和测序覆盖率)对检测QTL的能力的影响。违反直觉,我们发现相对较大的体积使检测QTL的能力最大化,即使这意味着选择较弱且极端等位基因频率差异较小。我们的模拟研究表明,具有大体积和足够的测序深度,我们提出的方法甚至可以用于检测效果较弱的QTL,并且通过将其应用于啤酒酵母中的BSA实验,证明了该框架的实用性。

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