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Gene analysis for longitudinal family data using random-effects models

机译:使用随机效应模型对纵向家庭数据进行基因分析

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摘要

We have extended our recently developed 2-step approach for gene-based analysis to the family design and to the analysis of rare variants. The goal of this approach is to study the joint effect of multiple single-nucleotide polymorphisms that belong to a gene. First, the information in a gene is summarized by 2 variables, namely the empirical Bayes estimate capturing common variation and the number of rare variants. By using random effects for the common variants, our approach acknowledges the within-gene correlations. In the second step, the 2 summaries were included as covariates in linear mixed models. To test the null hypothesis of no association, a multivariate Wald test was applied. We analyzed the simulated data sets to assess the performance of the method. Then we applied the method to the real data set and identified a significant association between FRMD4B and diastolic blood pressure (p-value = 8.3 × 10-12).
机译:我们已经将最近开发的基于基因的分析的两步法扩展到了家族设计和稀有变异的分析。这种方法的目的是研究属于一个基因的多个单核苷酸多态性的联合作用。首先,一个2个变量总结了一个基因中的信息,即经验贝叶斯估计捕获常见变异和稀有变异的数量。通过对常见变体使用随机效应,我们的方法可以确认基因内的相关性。第二步,将2个摘要作为协变量包含在线性混合模型中。为了检验没有关联的零假设,应用了多元Wald检验。我们分析了模拟的数据集,以评估该方法的性能。然后,我们将该方法应用于实际数据集,并确定FRMD4B与舒张压之间的显着相关性(p值= 8.3×10 -12 )。

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