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A Sequence Kernel Association Test for Dichotomous Traits in Family Samples under a Generalized Linear Mixed Model

机译:广义线性混合模型下家庭样本二分性状的序列核关联检验

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Objective: The existing methods for identifying multiple rare variants underlying complex diseases in family samples are underpowered. Therefore, we aim to develop a new set-based method for an association study of dichotomous traits in family samples. Methods: We introduce a framework for testing the association of genetic variants with diseases in family samples based on a generalized linear mixed model. Our proposed method is based on a kernel machine regression and can be viewed as an extension of the sequence kernel association test (SKAT and famSKAT) for application to family data with dichotomous traits (F-SKAT). Results: Our simulation studies show that the original SKAT has inflated type I error rates when applied directly to family data. By contrast, our proposed F-SKAT has the correct type I error rate. Furthermore, in all of the considered scenarios, F-SKAT, which uses all family data, has higher power than both SKAT, which uses only unrelated individuals from the family data, and another method, which uses all family data. Conclusion: We propose a set-based association test that can be used to analyze family data with dichotomous phenotypes while handling genetic variants with the same or opposite directions of effects as well as any types of family relationships. (C) 2015 S. Karger AG, Basel
机译:目的:现有的鉴定家庭样本中复杂疾病潜在的多种罕见变异的方法功能不足。因此,我们旨在开发一种新的基于集合的方法,用于家庭样品中二分性状的关联研究。方法:我们介绍了一个框架,用于基于广义线性混合模型来测试家庭样本中遗传变异与疾病的关联。我们提出的方法基于核机器回归,可以看作是序列核关联测试(SKAT和famSKAT)的扩展,适用于具有二分性状的家庭数据(F-SKAT)。结果:我们的仿真研究表明,原始SKAT直接应用于家庭数据时具有较高的I型错误率。相比之下,我们提出的F-SKAT具有正确的I型错误率。此外,在所有考虑的方案中,使用所有家庭数据的F-SKAT具有比仅使用家庭数据中不相关个体的SKAT和使用所有家庭数据的另一种方法更高的功能。结论:我们提出了一种基于集合的关联测试,该测试可用于分析具有二分表型的家庭数据,同时处理具有相同或相反作用方向以及任何类型家庭关系的遗传变异。 (C)2015 S.Karger AG,巴塞尔

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