Maruo K, Yamaguchi Y, Noma H, Gosho M
Department of Clinical Epidemiology, Translational Medical Center, National Center of Neurology and Psychiatry, Tokyo, Japan.
Japan-Asia Data Science, Development, Astellas Pharma Inc., Tokyo, Japan.
Stat Med. 2017 Jul 10;36(15):2420-2434. doi: 10.1002/sim.7279. Epub 2017 Mar 10.
We derived results for inference on parameters of the marginal model of the mixed effect model with the Box-Cox transformation based on the asymptotic theory approach. We also provided a robust variance estimator of the maximum likelihood estimator of the parameters of this model in consideration of the model misspecifications. Using these results, we developed an inference procedure for the difference of the model median between treatment groups at the specified occasion in the context of mixed effects models for repeated measures analysis for randomized clinical trials, which provided interpretable estimates of the treatment effect. From simulation studies, it was shown that our proposed method controlled type I error of the statistical test for the model median difference in almost all the situations and had moderate or high performance for power compared with the existing methods. We illustrated our method with cluster of differentiation 4 (CD4) data in an AIDS clinical trial, where the interpretability of the analysis results based on our proposed method is demonstrated. Copyright © 2017 John Wiley & Sons, Ltd.
我们基于渐近理论方法,得出了关于具有Box-Cox变换的混合效应模型边际模型参数推断的结果。考虑到模型误设,我们还提供了该模型参数最大似然估计量的稳健方差估计量。利用这些结果,我们针对随机临床试验重复测量分析的混合效应模型,开发了一种在特定场合下治疗组间模型中位数差异的推断程序,该程序提供了可解释的治疗效果估计。模拟研究表明,我们提出的方法在几乎所有情况下都能控制模型中位数差异统计检验的I型错误,并且与现有方法相比,在检验效能方面具有中等或较高的性能。我们用一项艾滋病临床试验中的分化簇4(CD4)数据说明了我们的方法,其中展示了基于我们提出的方法的分析结果的可解释性。版权所有© 2017约翰·威利父子有限公司。