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Linear score tests for variance components in linear mixed models and applications to genetic association studies

机译:线性混合模型中方差成分的线性评分检验及其在遗传关联研究中的应用

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Summary: Following the rapid development of genome-scale genotyping technologies, genetic association mapping has become a popular tool to detect genomic regions responsible for certain (disease) phenotypes, especially in early-phase pharmacogenomic studies with limited sample size. In response to such applications, a good association test needs to be (1) applicable to a wide range of possible genetic models, including, but not limited to, the presence of gene-by-environment or gene-by-gene interactions and non-linearity of a group of marker effects, (2) accurate in small samples, fast to compute on the genomic scale, and amenable to large scale multiple testing corrections, and (3) reasonably powerful to locate causal genomic regions. The kernel machine method represented in linear mixed models provides a viable solution by transforming the problem into testing the nullity of variance components. In this study, we consider score-based tests by choosing a statistic linear in the score function. When the model under the null hypothesis has only one error variance parameter, our test is exact in finite samples. When the null model has more than one variance parameter, we develop a new moment-based approximation that performs well in simulations. Through simulations and analysis of real data, we demonstrate that the new test possesses most of the aforementioned characteristics, especially when compared to existing quadratic score tests or restricted likelihood ratio tests.
机译:简介:随着基因组规模的基因分型技术的飞速发展,遗传关联图谱已成为一种流行的工具,可以检测出负责某些(疾病)表型的基因组区域,尤其是在样本数量有限的早期药物基因组学研究中。针对此类应用,良好的关联性测试需要(1)适用于广泛的可能的遗传模型,包括但不限于存在逐个环境或逐个基因的相互作用以及非-一组标记效应的线性;(2)在小样本中准确,可以在基因组规模上快速计算,并且可以进行大规模多次测试校正,以及(3)定位因果基因组区域的功能相当强大。线性混合模型中表示的核机方法通过将问题转化为测试方差分量的零值来提供可行的解决方案。在本研究中,我们通过在得分函数中选择统计线性来考虑基于得分的测试。当原假设下的模型只有一个误差方差参数时,我们的检验在有限样本中是精确的。当零模型具有多个方差参数时,我们将开发一种新的基于矩的近似值,该近似值在模拟中表现良好。通过对真实数据的仿真和分析,我们证明了新测试具有大多数上述特征,尤其是与现有的二次得分测试或受限似然比测试相比。

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