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Nonparametric Evaluation of Quantitative Traits in Population-Based Association Studies when the Genetic Model is Unknown

机译:在人群为基础的关联研究数量性状的非参数评价当遗传模型是未知

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摘要

Statistical association between a single nucleotide polymorphism (SNP) genotype and a quantitative trait in genome-wide association studies is usually assessed using a linear regression model, or, in the case of non-normally distributed trait values, using the Kruskal-Wallis test. While linear regression models assume an additive mode of inheritance via equi-distant genotype scores, Kruskal-Wallis test merely tests global differences in trait values associated with the three genotype groups. Both approaches thus exhibit suboptimal power when the underlying inheritance mode is dominant or recessive. Furthermore, these tests do not perform well in the common situations when only a few trait values are available in a rare genotype category (disbalance), or when the values associated with the three genotype categories exhibit unequal variance (variance heterogeneity). We propose a maximum test based on Marcus-type multiple contrast test for relative effect sizes. This test allows model-specific testing of either dominant, additive or recessive mode of inheritance, and it is robust against variance heterogeneity. We show how to obtain mode-specific simultaneous confidence intervals for the relative effect sizes to aid in interpreting the biological relevance of the results. Further, we discuss the use of a related all-pairwise comparisons contrast test with range preserving confidence intervals as an alternative to Kruskal-Wallis heterogeneity test. We applied the proposed maximum test to the Bogalusa Heart Study dataset, and gained a remarkable increase in the power to detect association, particularly for rare genotypes. Our simulation study also demonstrated that the proposed non-parametric tests control family-wise error rate in the presence of non-normality and variance heterogeneity contrary to the standard parametric approaches. We provide a publicly available R library nparcomp that can be used to estimate simultaneous confidence intervals or compatible multiplicity-adjusted p-values associated with the proposed maximum test.
机译:使用kruskal-wallis试验,通常使用线性回归模型评估单个核苷酸多态性(SNP)基因型与基因组关联研究中的定量性状和定量性状之间的统计结合。虽然线性回归模型通过Equi-Hix-遥控基因型评分呈现遗传模式,但Kruskal-Wallis测试仅测试与三种基因型组相关的特征值的全局差异。因此,当潜在的遗传模式是主导或隐性时,这两种方法都表现出次优势。此外,当仅在罕见基因型类别(不平衡)中只有几种特征值或与三种基因型类相关的值表现出不平等的方差(方差异质性)时,这些测试在常见情况下不会良好。我们提出了基于Marcus型多对比度测试的最大测试,以进行相对效果大小。该测试允许特定于模型的遗传,附加或隐性遗传模式的测试,并且对方差异质性具有稳健。我们展示了如何获得特定于模式的同步置信区间,以帮助解释结果的生物相关性。此外,我们讨论使用相关的全对比较对比度测试,其范围保持置位间隔作为Kruskal-Wallis异质性测试的替代方案。我们将建议的最大测试应用于Bogalusa心脏研究数据集,并获得了检测关联的能力显着增加,特别是对于罕见基因型。我们的仿真研究还证明,所提出的非参数测试在非正常性和方差异质性存在下控制家庭明智的错误率与标准参数方法相反。我们提供公开的R库NParComp,可用于估计与所提出的最大测试相关联的同时置信区间或兼容的多个调整的P值。

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