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TATES: Efficient Multivariate Genotype-Phenotype Analysis for Genome-Wide Association Studies

机译:TATES:全基因组关联研究的高效多元基因型-表型分析

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摘要

textabstractTo date, the genome-wide association study (GWAS) is the primary tool to identify genetic variants that cause phenotypic variation. As GWAS analyses are generally univariate in nature, multivariate phenotypic information is usually reduced to a single composite score. This practice often results in loss of statistical power to detect causal variants. Multivariate genotype-phenotype methods do exist but attain maximal power only in special circumstances. Here, we present a new multivariate method that we refer to as TATES (Trait-based Association Test that uses Extended Simes procedure), inspired by the GATES procedure proposed by Li et al (2011). For each component of a multivariate trait, TATES combines p-values obtained in standard univariate GWAS to acquire one trait-based p-value, while correcting for correlations between components. Extensive simulations, probing a wide variety of genotype-phenotype models, show that TATES's false positive rate is correct, and that TATES's statistical power to detect causal variants explaining 0.5% of the variance can be 2.5-9 times higher than the power of univariate tests based on composite scores and 1.5-2 times higher than the power of the standard MANOVA. Unlike other multivariate methods, TATES detects both genetic variants that are common to multiple phenotypes and genetic variants that are specific to a single phenotype, i.e. TATES provides a more complete view of the genetic architecture of complex traits. As the actual causal genotype-phenotype model is usually unknown and probably phenotypically and genetically complex, TATES, available as an open source program, constitutes a powerful new multivariate strategy that allows researchers to identify novel causal variants, while the complexity of traits is no longer a limiting factor.
机译:迄今为止,全基因组关联研究(GWAS)是鉴定引起表型变异的遗传变异的主要工具。由于GWAS分析通常本质上是单变量的,因此多态表型信息通常被简化为单个综合评分。这种做法通常会导致检测因果变异的统计能力丧失。确实存在多元基因型-表型方法,但仅在特殊情况下才能获得最大功效。在这里,我们提出了一种新的多元方法,我们将其称为TATES(使用扩展Simes程序的基于特质的关联测试),该方法受Li等人(2011年)提出的GATES程序的启发。对于多元性状的每个组成部分,TATES结合在标准单变量GWAS中获得的p值来获取一个基于特征的p值,同时校正各个组成部分之间的相关性。广泛的模拟研究了广泛的基因型-表型模型,表明TATES的假阳性率是正确的,并且TATES检测因果变异的统计能力解释了0.5%的方差可以比单变量检验的能力高2.5-9倍基于综合得分,比标准MANOVA的功效高1.5-2倍。与其他多变量方法不同,TATES既可以检测出多种表型共有的遗传变异,也可以检测到单个表型特异的遗传变异,即TATES可以更全面地了解复杂性状的遗传结构。由于实际的因果基因型-表型模型通常是未知的,并且可能在表型和遗传上复杂,因此,作为开放源代码程序可用的TATES构成了一种强大的新多元策略,使研究人员能够识别新的因果变体,而特征的复杂性不再一个限制因素。

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