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A Statistical Approach for Testing Cross-Phenotype Effects of Rare Variants

机译:一种检验稀有变体的交叉表型效应的统计方法

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摘要

Increasing empirical evidence suggests that many genetic variants influence multiple distinct phenotypes. When cross-phenotype effects exist, multivariate association methods that consider pleiotropy are often more powerful than univariate methods that model each phenotype separately. Although several statistical approaches exist for testing cross-phenotype effects for common variants, there is a lack of similar tests for gene-based analysis of rare variants. In order to fill this important gap, we introduce a statistical method for cross-phenotype analysis of rare variants using a nonparametric distance-covariance approach that compares similarity in multivariate phenotypes to similarity in rare-variant genotypes across a gene. The approach can accommodate both binary and continuous phenotypes and further can adjust for covariates. Our approach yields a closed-form test whose significance can be evaluated analytically, thereby improving computational efficiency and permitting application on a genome-wide scale. We use simulated data to demonstrate that our method, which we refer to as the Gene Association with Multiple Traits (GAMuT) test, provides increased power over competing approaches. We also illustrate our approach using exome-chip data from the Genetic Epidemiology Network of Arteriopathy.
机译:越来越多的经验证据表明,许多遗传变异会影响多种不同的表型。当存在交叉表型效应时,考虑多效性的多元关联方法通常比分别建模每个表型的单变量方法更有效。尽管存在几种统计方法可用于测试常见变体的交叉表型效应,但缺乏基于基因的罕见变体分析的类似测试方法。为了填补这一重要空白,我们引入了一种统计方法,该方法使用非参数距离-协方差方法对稀有变体进行交叉表型分析,该方法将多表型的相似性与基因中稀有基因型的相似性进行比较。该方法可以容纳二进制和连续表型,并且还可以针对协变量进行调整。我们的方法产生了一种封闭形式的测试,其重要性可以通过分析进行评估,从而提高了计算效率,并允许在全基因组范围内应用。我们使用模拟数据来证明我们的方法(称为多重性状基因关联(GAMuT)测试)比竞争方法具有更大的优势。我们还使用来自动脉病遗传流行病学网络的外显子芯片数据说明了我们的方法。

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