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Improved Small Sample Inference Methods for a Mixed-Effects Model for Repeated Measures Approach in Incomplete Longitudinal Data Analysis

机译:在不完全纵向数据分析中改进了用于反复测量方法的混合效应模型的小样本推理方法

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The mixed-effects model for repeated measures (MMRM) approach has been widely applied for longitudinal clinical trials. Many of the standard inference methods of MMRM could possibly lead to the inflation of type I error rates for the tests of treatment effect, when the longitudinal dataset is small and involves missing measurements. We propose two improved inference methods for the MMRM analyses, (1) the Bartlett correction with the adjustment term approximated by bootstrap, and (2) the Monte Carlo test using an estimated null distribution by bootstrap. These methods can be implemented regardless of model complexity and missing patterns via a unified computational framework. Through simulation studies, the proposed methods maintain the type I error rate properly, even for small and incomplete longitudinal clinical trial settings. Applications to a postnatal depression clinical trial are also presented.
机译:重复措施(MMRM)方法的混合效应模型已广泛应用于纵向临床试验。当纵向数据集很小时,MMRM的许多标准推理方法可能导致I型错误率的误差率为治疗效果的测试,并且涉及缺少测量。我们为MMRM分析提出了两个改进的推理方法,(1)BARTLETT校正与由自举近似的调整术语校正,(2)使用估计的NULL分布通过BOOTSTRAP测试的蒙特卡罗测试。无论通过统一计算框架模拟复杂性和缺少模式如何,都可以实现这些方法。通过仿真研究,即使对于小和不完整的纵向临床试验设置,所提出的方法也适用于I型错误率。还提出了在出生后抑郁症的应用。

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