Clinical Research Institute, Shanghai Jiao Tong University School of Medicine, Shanghai, China.
Clinical Research Center, Renji Hospital, Shanghai Jiaotong University School of Medicine, Shanghai, China.
BMC Med Res Methodol. 2023 Mar 28;23(1):72. doi: 10.1186/s12874-023-01893-w.
In pre-post designs, analysis of covariance (ANCOVA) is a standard technique to detect the treatment effect with a continuous variable measured at baseline and follow-up. For measurements subject to a high degree of variability, it may be advisable to repeat the pre-treatment and/or follow-up assessments. In general, repeating the follow-up measurements is more advantageous than repeating the pre-treatment measurements, while the latter can still be valuable and improve efficiency in clinical trials.
In this article, we report investigations of using multiple pre-treatment and post-treatment measurements in randomized clinical trials. We consider the sample size formula for ANCOVA under general correlation structures with the pre-treatment mean included as the covariate and the mean follow-up value included as the response. We propose an optimal experimental design of multiple pre-post allocations under a specified constraint, that is, given the total number of pre-post treatment visits. The optimal number of the pre-treatment measurements is derived. For non-linear models, closed-form formulas for sample size/power calculations are generally unavailable, but we conduct Monte Carlo simulation studies instead.
Theoretical formulas and simulation studies show the benefits of repeating the pre-treatment measurements in pre-post randomized studies. The optimal pre-post allocation derived from the ANCOVA extends well to binary measurements in simulation studies, using logistic regression and generalized estimating equations (GEE).
Repeating baselines and follow-up assessments is a valuable and efficient technique in pre-post design. The proposed optimal pre-post allocation designs can minimize the sample size, i.e., achieve maximum power.
在前后测设计中,协方差分析(ANCOVA)是一种标准技术,可用于检测具有基线和随访时测量的连续变量的治疗效果。对于具有高度变异性的测量,重复预处理和/或随访评估可能是明智的。一般来说,重复随访测量比重复预处理测量更有利,而后者在临床试验中仍然有价值,可以提高效率。
本文报告了在随机临床试验中使用多次预处理和后处理测量的研究。我们考虑了一般相关结构下包含预处理均值作为协变量和随访均值作为响应的 ANCOVA 的样本量公式。我们提出了一种在特定约束下的多次前后分配的最优实验设计,即给定前后治疗访视的总数。推导出最优的预处理测量次数。对于非线性模型,样本量/功效计算的封闭形式公式通常不可用,但我们进行了蒙特卡罗模拟研究。
理论公式和模拟研究表明,在前后随机研究中重复预处理测量具有优势。从 ANCOVA 推导出的最优前后分配在模拟研究中很好地扩展到了二进制测量,使用逻辑回归和广义估计方程(GEE)。
重复基线和随访评估是前后设计中一种有价值且高效的技术。提出的最优前后分配设计可以最小化样本量,即实现最大功效。