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Modeling of multivariate longitudinal phenotypes in family genetic studies with Bayesian multiplicity adjustment

机译:贝叶斯多重性调整在家庭遗传研究中多元纵向表型的建模

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摘要

Genetic studies often collect data on multiple traits. Most genetic association analyses, however, consider traits separately and ignore potential correlation among traits, partially because of difficulties in statistical modeling of multivariate outcomes. When multiple traits are measured in a pedigree longitudinally, additional challenges arise because in addition to correlation between traits, a trait is often correlated with its own measures over time and with measurements of other family members. We developed a Bayesian model for analysis of bivariate quantitative traits measured longitudinally in family genetic studies. For a given trait, family-specific and subject-specific random effects account for correlation among family members and repeated measures, respectively. Correlation between traits is introduced by incorporating multivariate random effects and allowing time-specific trait residuals to correlate as in seemingly unrelated regressions. The proposed model can examine multiple single-nucleotide variations simultaneously, as well as incorporate familyspecific, subject-specific, or time-varying covariates. Bayesian multiplicity technique is used to effectively control false positives. Genetic Analysis Workshop 18 simulated data illustrate the proposed approach's applicability in modeling longitudinal multivariate outcomes in family genetic association studies.
机译:遗传研究经常收集有关多个性状的数据。但是,大多数遗传关联分析会分别考虑性状,而忽略性状之间的潜在相关性,部分原因是多元统计结果的统计建模存在困难。当在一个家谱中纵向测量多个性状时,会产生额外的挑战,因为除了性状之间的相关性外,一个性状通常还会随时间推移与其自身的度量以及其他家庭成员的度量相关联。我们开发了一种贝叶斯模型,用于分析在家族遗传研究中纵向测量的双变量定量性状。对于给定的特征,特定于家庭和特定于受试者的随机效应分别说明了家庭成员之间的相关性和重复测量。通过合并多变量随机效应并允许特定时间的特征残差关联起来(如看似无关的回归),来引入性状之间的相关性。提出的模型可以同时检查多个单核苷酸变异,以及合并家族特异性,受试者特异性或时变协变量。贝叶斯多重性技术用于有效控制误报。遗传分析研讨会18的模拟数据说明了该方法在家庭遗传协会研究的纵向多变量结果建模中的适用性。

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