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Curve-based multivariate distance matrix regression analysis: application to genetic association analyses involving repeated measures

机译:基于曲线的多元距离矩阵回归分析:在涉及重复测量的遗传关联分析中的应用

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摘要

Most, if not all, human phenotypes exhibit a temporal, dosage-dependent, or age effect. Despite this fact, it is rare that data are collected over time or in sequence in relevant studies of the determinants of these phenotypes. The costs and organizational sophistication necessary to collect repeated measurements or longitudinal data for a given phenotype are clearly impediments to this, but greater efforts in this area are needed if insights into human phenotypic expression are to be obtained. Appropriate data analysis methods for genetic association studies involving repeated or longitudinal measures are also needed. We consider the use of longitudinal profiles obtained from fitted functions on repeated data collections from a set of individuals whose similarities are contrasted between sets of individuals with different genotypes to test hypotheses about genetic influences on time-dependent phenotype expression. The proposed approach can accommodate uncertainty of the fitted functions, as well as weighting factors across the time points, and is easily extended to a wide variety of complex analysis settings. We showcase the proposed approach with data from a clinical study investigating human blood vessel response to tyramine. We also compare the proposed approach with standard analytic procedures and investigate its robustness and power via simulation studies. The proposed approach is found to be quite flexible and performs either as well or better than traditional statistical methods.
机译:大多数(如果不是全部)人类表型表现出暂时性,剂量依赖性或年龄效应。尽管如此,在有关这些表型决定因素的相关研究中,很少会随着时间或顺序收集数据。收集给定表型的重复测量或纵向数据所需的成本和组织的复杂性显然阻碍了这一点,但是,如果要获得对人类表型表达的洞察力,则需要在这一领域做出更大的努力。还需要用于涉及重复或纵向措施的遗传关联研究的适当数据分析方法。我们考虑使用从拟合函数中获得的纵向分布图,这些数据来自一组个体的重复数据收集,这些个体的相似性在具有不同基因型的个体集合之间形成对比,以检验关于对时间依赖性表型表达的遗传影响的假设。所提出的方法可以适应拟合函数的不确定性以及跨时间点的加权因子,并且可以轻松地扩展到各种复杂的分析设置。我们通过一项临床研究中的数据展示了拟议的方法,该研究调查了人类血管对酪胺的反应。我们还将提议的方法与标准分析程序进行比较,并通过仿真研究来研究其鲁棒性和功能。发现所提出的方法非常灵活,并且比传统的统计方法表现更好或更好。

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