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首页> 外文期刊>Genetic epidemiology. >Strategy to Control Type I Error Increases Power to Identify Genetic Variation Using the Full Biological Trajectory
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Strategy to Control Type I Error Increases Power to Identify Genetic Variation Using the Full Biological Trajectory

机译:控制I型错误的策略可提高利用完整生物轨迹识别遗传变异的能力

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摘要

Genome-wide association studies have been successful in identifying loci that underlie continuous traits measured at a single time point. To additionally consider continuous traits longitudinally, it is desirable to look at SNP effects at baseline and over time using linear-mixed effects models. Estimation and interpretation of two coefficients in the same model raises concern regarding the optimal control of type I error. To investigate this issue, we calculate type I error and power under an alternative for joint tests, including the two degree of freedom likelihood ratio test, and compare this to single degree of freedom tests for each effect separately at varying alpha levels. We show which joint tests are the optimal way to control the type I error and also illustrate that information can be gained by joint testing in situations where either or both SNP effects are underpowered. We also show that closed form power calculations can approximate simulated power for the case of balanced data, provide reasonable approximations for imbalanced data, but overestimate power for complicated residual error structures. We conclude that a two degree of freedom test is an attractive strategy in a hypothesis-free genome-wide setting and recommend its use for genome-wide studies employing linear-mixed effects models.
机译:全基因组关联研究已成功鉴定出在单个时间点测得的连续性状基础的基因座。为了在纵向上额外考虑连续性状,需要使用线性混合效应模型在基线和随时间推移查看SNP效应。同一模型中两个系数的估计和解释引起了对I型误差的最佳控制的关注。为了研究此问题,我们在替代测试(包括两个自由度似然比测试)下,计算了I型误差和功效,并将其与单个自由度测试进行了比较,以分别在不同的alpha水平下对每种效果进行测试。我们展示了哪些联合测试是控制I型错误的最佳方法,并且还说明了在SNP效果之一或全部不足的情况下,可以通过联合测试获得信息。我们还表明,对于平衡数据,闭合形式的幂计算可以近似模拟功率,对于不平衡数据可以提供合理的近似值,但是对于复杂的残留误差结构,则可以高估功率。我们得出结论,在没有假设的全基因组范围内,两自由度测试是一种有吸引力的策略,并建议将其用于采用线性混合效应模型的全基因组研究。

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