Mixed model repeated measures (MMRM) is the most common analysis approach used in clinical trials for Alzheimer's disease and other progressive diseases measured with continuous outcomes measured over time. The model treats time as a categorical variable, which allows an unconstrained estimate of the mean for each study visit in each randomized group. Categorizing time in this way can be problematic when assessments occur off-schedule, as including off-schedule visits can induce bias, and excluding them ignores valuable information and violates the intention to treat principle. This problem has been exacerbated by clinical trial visits which have been delayed due to the COVID19 pandemic. As an alternative to MMRM, we propose a constrained longitudinal data analysis with natural cubic splines that treats time as continuous and uses test version effects to model the mean over time. The spline model is shown to be superior, in practice and simulation studies, to categorical-time models like MMRM and models that assume a proportional treatment effect.
翻译:混合模式重复措施(MMRM)是老年痴呆症和其他累进性疾病的临床试验中最常用的分析方法,这些试验是长期持续测算的结果。模型将时间作为绝对变量处理,这样可以对每个随机群体每次研究访问的平均值进行不受限制的估算。这种方式的分类在评估脱离计划时可能会有问题,因为包括不定期访问在内的评估可能会引起偏见,而排除它们会忽略宝贵的信息,并违反治疗原则的意图。由于COVID19大流行而推迟的临床试验访问加剧了这一问题。作为MMRM的一种替代办法,我们建议用天然立方螺纹进行有限制的纵向数据分析,将时间作为连续的测试版本效果来模拟平均时间。在实践和模拟研究中,样板模型显示优于像MMRM和具有比例治疗效果的模型等绝对时间模型。