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Effect of non-normality and low count variants on cross-phenotype association tests in GWAS

机译:非正常性和低计数变体对GWAS中的跨表型关联试验的影响

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摘要

Many complex human diseases, such as type 2 diabetes, are characterized by multiple underlying traits/phenotypes that have substantially shared genetic architecture. Multivariate analysis of correlated traits has the potential to increase the power of detecting underlying common genetic loci. Several cross-phenotype association methods have been proposed-some require individual-level data on traits and genotypes, while the others require only summary-level data. In this article, we explore whether non-normality of multivariate trait distribution affects the inference from some of the existing multi-trait methods and how that effect is dependent on the allele count of the genetic variant being tested. We find that most of these tests are susceptible to biases that lead to spurious association signals. Even after controlling for confounders that may contribute to non-normality and then applying inverse normal transformation on the residuals of each trait, these tests may have inflated type I errors for variants with low minor allele counts (MACs). A likelihood ratio test of association based on the ordinal regression of individual-level genotype conditional on the traits seems to be the least biased and can maintain type I error when the MAC is reasonably large (e.g., MAC > 30). Application of these methods to publicly available summary statistics of eight amino acid traits on European samples seem to exhibit systematic inflation (especially for variants with low MAC), which is consistent with our findings from simulation experiments.
机译:许多复杂的人类疾病,例如2型糖尿病,其特征在于具有大量共同的遗传结构的多个潜在的特征/表型。相关性的多变量分析具有增加检测底层常见遗传基因座的力量的潜力。已经提出了几种交叉表型关联方法 - 有些需要关于特征和基因型的个体级别数据,而其他则需要仅需要摘要级别数据。在本文中,我们探讨了多元性状分配的非正常性是否会影响来自一些现有的多特征方法的推论以及如何依赖于所测试遗传变异的等位基因计数。我们发现大多数这些测试易受导致虚假关联信号的偏差的影响。即使在控制可能导致非正常性的混淆然后对每个特征的残留物上施加逆正常变换后,这些测试可能对具有低轻微等位基因计数(MAC)的变体的I型误差可能膨胀。基于个体级基因型条件对特性的序数回归的关联似然率测试似乎是最不偏向的并且当MAC合理大(例如,MAC> 30)时,可以保持I型错误。这些方法在欧洲样本上的八个氨基酸性状的公开可用概述统计似乎表现出系统的通货膨胀(特别是对于低MAC的变体),这与我们从模拟实验的研究结果一致。

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