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MOAT: efficient detection of highly mutated regions with the Mutations Overburdening Annotations Tool

机译:MOAT:使用突变超负荷注释工具高效检测高度突变的区域

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摘要

SummaryIdentifying genomic regions with higher than expected mutation count is useful for cancer driver detection. Previous parametric approaches require numerous cell-type-matched covariates for accurate background mutation rate (BMR) estimation, which is not practical for many situations. Non-parametric, permutation-based approaches avoid this issue but usually suffer from considerable compute-time cost. Hence, we introduce Mutations Overburdening Annotations Tool (MOAT), a non-parametric scheme that makes no assumptions about mutation process except requiring that the BMR changes smoothly with genomic features. MOAT randomly permutes single-nucleotide variants, or target regions, on a relatively large scale to provide robust burden analysis. Furthermore, we show how we can do permutations in an efficient manner using graphics processing unit acceleration, speeding up the calculation by a factor of ∼250.
机译:总结识别出突变计数高于预期的基因组区域可用于癌症驱动程序检测。先前的参数化方法需要大量与单元格类型匹配的协变量来进行准确的背景突变率(BMR)估算,这在许多情况下不切实际。基于置换的非参数方法可以避免此问题,但通常会耗费大量计算时间。因此,我们引入了突变超负荷注释工具(MOAT),这是一种非参数方案,除了要求BMR随基因组特征平稳变化外,它不对突变过程进行任何假设。 MOAT在相对较大的规模上随机排列单核苷酸变体或目标区域,以提供可靠的负担分析。此外,我们展示了如何使用图形处理单元加速以有效方式进行置换,从而将计算速度提高了约250倍。

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