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Family-Based Association Tests with Longitudinal Measurements: Handling Missing Data

机译:纵向测量的基于家庭的关联测试:处理缺失数据

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摘要

Several family-based approaches have been previously proposed to enhance the power for testing genetic association when the traits are measured longitudinally or repeatedly. In this paper, we show that some of these FBAT approaches can be easily extended to accommodate incomplete data and remain unbiased tests. We also show that because of the nature of FBAT approaches, we can impute the missing phenotypes without biasing our tests and achieve higher power. We propose two imputation techniques based on E-M algorithm and the conditional mean model, respectively. Through simulation studies, these two imputation techniques are shown to have correct false positive rate and generally achieve higher power than complete case analysis or simple mean-imputation. Application of these approaches for testing an association between Body Mass Index and a previously reported candidate SNP confirms our results. [PUBLICATION ABSTRACT]
机译:以前已经提出了几种基于家庭的方法,以增强在纵向或反复测量性状时测试遗传关联的能力。在本文中,我们证明了其中的一些FBAT方法可以轻松扩展,以容纳不完整的数据并保持无偏测试。我们还表明,由于FBAT方法的性质,我们可以估算缺失的表型而不会偏倚我们的测试并获得更高的功效。我们分别提出了两种基于E-M算法和条件均值模型的插补技术。通过仿真研究,这两种插补技术被证明具有正确的误报率,并且比完整的案例分析或简单的均值输入通常具有更高的功效。这些方法用于测试体重指数和先前报道的候选SNP之间的关联的方法证实了我们的结果。 [出版物摘要]

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