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REVEL: An Ensemble Method for Predicting the Pathogenicity of Rare Missense Variants

机译:启示:一种集成方法,用于预测罕见的错义变体的致病性

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The vast majority of coding variants are rare, and assessment of the contribution of rare variants to complex traits is hampered by low statistical power and limited functional data. Improved methods for predicting the pathogenicity of rare coding variants are needed to facilitate the discovery of disease variants from exome sequencing studies. We developed REVEL (rare exome variant ensemble learner), an ensemble method for predicting the pathogenicity of missense variants on the basis of individual tools: MutPred, FATHMM, VEST, PolyPhen, SIFT, PROVEAN, MutationAssessor, MutationTaster, LRT, GERP, SiPhy, phyloP, and phastCons. REVEL was trained with recently discovered pathogenic and rare neutral missense variants, excluding those previously used to train its constituent tools. When applied to two independent test sets, REVEL had the best overall performance (p < 10(-12)) as compared to any individual tool and seven ensemble methods: MetaSVM, MetaLR, KGGSeq, Condel, CADD, DANN, and Eigen. Importantly, REVEL also had the best performance for distinguishing pathogenic from rare neutral variants with allele frequencies <0.5%. The area under the receiver operating characteristic curve (AUC) for REVEL was 0.046-0.182 higher in an independent test set of 935 recent SwissVar disease variants and 123,935 putatively neutral exome sequencing variants and 0.027-0.143 higher in an independent test set of 1,953 pathogenic and 2,406 benign variants recently reported in ClinVar than the AUCs for other ensemble methods. We provide pre-computed REVEL scores for all possible human missense variants to facilitate the identification of pathogenic variants in the sea of rare variants discovered as sequencing studies expand in scale.
机译:绝大多数编码变体是稀有的,并且由于统计能力低和功能数据有限,难以评估稀有变体对复杂性状的贡献。需要用于预测稀有编码变体的致病性的改进方法,以促进从外显子组测序研究中发现疾病变体。我们开发了REVEL(稀有外显子组变异整体学习器),这是一种基于单个工具预测错义变异的致病性的整体方法:MutPred,FATHMM,VEST,PolyPhen,SIFT,PROVEAN,MutationAssessor,MutationTaster,LRT,GER,SiPhy, phyloP和phastCons。 REVEL接受了最近发现的致病性和罕见的中性错义变种的培训,但先前用于培训其构成工具的除外。与两个单独的工具和七个集成方法相比,将REVEL应用于两个独立的测试集时,具有最佳的总体性能(p <10(-12)):MetaSVM,MetaLR,KGGSeq,Condel,CADD,DANN和Eigen。重要的是,REVEL在区分等位基因频率<0.5%的罕见中性变体方面也具有最佳的性能。在935个最近的SwissVar疾病变异和123,935个中性外显子组测序变异的独立测试集中,REVEL的接收器工作特征曲线(AUC)下的面积高0.046-0.182,而在1,953个病原体和病毒的独立测试集中,REVEL的接收者工作特征曲线(AUC)高0.027-0.143在ClinVar中,最近报道了2406个良性变异,而不是其他集合方法的AUC。我们提供所有可能的人类错义变体的预先计算的REVEL分数,以方便鉴定随着测序研究规模的扩大而发现的稀有变体海中的致病变体。

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