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Improving the Assessment of the Outcome of Nonsynonymous SNVs with a Consensus Deleteriousness Score Condel

机译:通过共识有害分数康德尔改进对非同义SNV结果的评估

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摘要

Several large ongoing initiatives that profit from next-generation sequencing technologies have driven—and in coming years will continue to drive—the emergence of long catalogs of missense single-nucleotide variants (SNVs) in the human genome. As a consequence, researchers have developed various methods and their related computational tools to classify these missense SNVs as probably deleterious or probably neutral polymorphisms. The outputs produced by each of these computational tools are of different natures and thus difficult to compare and integrate. Taking advantage of the possible complementarity between different tools might allow more accurate classifications. Here we propose an effective approach to integrating the output of some of these tools into a unified classification; this approach is based on a weighted average of the normalized scores of the individual methods (WAS). (In this paper, the approach is illustrated for the integration of five tools.) We show that this WAS outperforms each individual method in the task of classifying missense SNVs as deleterious or neutral. Furthermore, we demonstrate that this WAS can be used not only for classification purposes (deleterious versus neutral mutation) but also as an indicator of the impact of the mutation on the functionality of the mutant protein. In other words, it may be used as a deleteriousness score of missense SNVs. Therefore, we recommend the use of this WAS as a consensus deleteriousness score of missense mutations (Condel).
机译:受益于下一代测序技术的数项正在进行的大型计划已经推动了,并且在未来几年中将继续推动人类基因组中长序列的错义单核苷酸变体(SNV)的出现。结果,研究人员开发了各种方法及其相关的计算工具,将这些错义SNV分类为可能有害的或可能是中性的多态性。这些计算工具各自产生的输出具有不同的性质,因此很难进行比较和整合。利用不同工具之间可能的互补性,可以进行更准确的分类。在这里,我们提出了一种有效的方法,将其中一些工具的输出集成到统一的分类中。此方法基于各个方法(WAS)的标准化分数的加权平均值。 (在本文中,说明了集成五个工具的方法。)在将错义SNV分类为有害或中性的任务中,我们证明了WAS优于每种方法。此外,我们证明了该WAS不仅可以用于分类目的(无害突变与中性突变),而且还可以用作突变对突变蛋白功能性影响的指标。换句话说,它可以用作错义SNV的有害分数。因此,我们建议将此WAS用作错义突变的一致有害分数(Condel)。

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