Methods for Analysis of Pre-Post Data in Clinical Research: A Comparison of Five Common Methods.

Nathaniel S O'Connell, Lin Dai, Yunyun Jiang, Jaime L Speiser, Ralph Ward, Wei Wei, Rachel Carroll, Mulugeta Gebregziabher
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引用次数: 106

Abstract

Often repeated measures data are summarized into pre-post-treatment measurements. Various methods exist in the literature for estimating and testing treatment effect, including ANOVA, analysis of covariance (ANCOVA), and linear mixed modeling (LMM). Under the first two methods, outcomes can either be modeled as the post treatment measurement (ANOVA-POST or ANCOVA-POST), or a change score between pre and post measurements (ANOVA-CHANGE, ANCOVA-CHANGE). In LMM, the outcome is modeled as a vector of responses with or without Kenward-Rogers adjustment. We consider five methods common in the literature, and discuss them in terms of supporting simulations and theoretical derivations of variance. Consistent with existing literature, our results demonstrate that each method leads to unbiased treatment effect estimates, and based on precision of estimates, 95% coverage probability, and power, ANCOVA modeling of either change scores or post-treatment score as the outcome, prove to be the most effective. We further demonstrate each method in terms of a real data example to exemplify comparisons in real clinical context.

Abstract Image

临床研究前后数据分析的方法:五种常用方法的比较。
通常重复测量的数据被总结为预处理后测量。文献中存在多种估计和检验治疗效果的方法,包括方差分析(ANOVA)、协方差分析(ANCOVA)和线性混合模型(LMM)。在前两种方法下,结果既可以建模为治疗后测量(ANOVA-POST或ANCOVA-POST),也可以建模为治疗前后测量之间的变化评分(ANOVA-CHANGE, ANCOVA-CHANGE)。在LMM中,结果被建模为有或没有Kenward-Rogers调整的响应向量。我们考虑了文献中常见的五种方法,并从支持模拟和方差的理论推导方面对它们进行了讨论。与现有文献一致,我们的研究结果表明,每种方法都可以得出无偏的治疗效果估计,并且基于估计的精度、95%的覆盖概率和功率,以改变评分或治疗后评分为结果的ANCOVA模型被证明是最有效的。我们进一步展示了每个方法在一个真实的数据例子,以举例比较在真实的临床环境。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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