Department of Mathematical Sciences, Michigan Technological University, Houghton, Michigan, USA.
Genet Epidemiol. 2021 Feb;45(1):64-81. doi: 10.1002/gepi.22355. Epub 2020 Oct 13.
With rapid advancements of sequencing technologies and accumulations of electronic health records, a large number of genetic variants and multiple correlated human complex traits have become available in many genetic association studies. Thus, it becomes necessary and important to develop new methods that can jointly analyze the association between multiple genetic variants and multiple traits. Compared with methods that only use a single marker or trait, the joint analysis of multiple genetic variants and multiple traits is more powerful since such an analysis can fully incorporate the correlation structure of genetic variants and/or traits and their mutual dependence patterns. However, most of existing methods that simultaneously analyze multiple genetic variants and multiple traits are only applicable to unrelated samples. We develop a new method called MF-TOWmuT to detect association of multiple phenotypes and multiple genetic variants in a genomic region with family samples. MF-TOWmuT is based on an optimally weighted combination of variants. Our method can be applied to both rare and common variants and both qualitative and quantitative traits. Our simulation results show that (1) the type I error of MF-TOWmuT is preserved; (2) MF-TOWmuT outperforms two existing methods such as Multiple Family-based Quasi-Likelihood Score Test and Multivariate Family-based Rare Variant Association Test in terms of power. We also illustrate the usefulness of MF-TOWmuT by analyzing genotypic and phenotipic data from the Genetics of Kidneys in Diabetes study. R program is available at https://github.com/gaochengPRC/MF-TOWmuT.
随着测序技术的快速发展和电子健康记录的积累,许多遗传关联研究中都获得了大量的遗传变异和多个相关的人类复杂特征。因此,开发能够联合分析多个遗传变异和多个特征之间关联的新方法变得必要和重要。与仅使用单个标记或特征的方法相比,联合分析多个遗传变异和多个特征更加强大,因为这种分析可以充分纳入遗传变异和/或特征的相关结构及其相互依存模式。然而,大多数同时分析多个遗传变异和多个特征的现有方法仅适用于无关样本。我们开发了一种名为 MF-TOWmuT 的新方法,用于检测家系样本中多个表型和多个遗传变异的关联。MF-TOWmuT 基于对变异进行最优加权组合。我们的方法适用于罕见和常见变异以及定性和定量特征。我们的模拟结果表明:(1) MF-TOWmuT 的Ⅰ型错误得到保留;(2) MF-TOWmuT 在功效方面优于现有的两种方法,如多基于家庭的拟似然评分检验和多变量基于家庭的罕见变异关联检验。我们还通过分析来自糖尿病肾脏遗传学研究的基因型和表型数据来说明 MF-TOWmuT 的有用性。R 程序可在 https://github.com/gaochengPRC/MF-TOWmuT 上获得。