Department of Psychological and Brain Sciences, Drexel University, Philadelphia, Pennsylvania.
Department of Mathematics and Statistics, Villanova University, Villanova, Pennsylvania.
Stat Med. 2023 Dec 10;42(28):5229-5246. doi: 10.1002/sim.9909. Epub 2023 Sep 20.
Graphical approach provides a useful framework for multiplicity adjustment in clinical trials with multiple endpoints. When designing a graphical approach, initial weight and transition probability for the endpoints are often assigned based on clinical importance. For example, practitioners may prefer putting more weights on some primary endpoints. The clinical preference can be formulated as a constrain in the sample size optimization problem. However, there has been a lack of theoretical guidance on how to specify initial weight and transition probability in a graphical approach to meet the clinical preference but at the same time to minimize the sample size needed for a power requirement. To fill this gap, we propose statistical methods to optimize sample size over initial weight and transition probability in a graphical approach under a common setting, which is to use marginal power for each endpoint in a trial design. Importantly, we prove that some of the commonly used graphical approaches such as putting all initial weights on one endpoint are suboptimal. Our methods are flexible, which can be used for both single-arm trials and randomized controlled trials with either continuous or binary or mixed types of endpoints. Additionally, we prove the existence of optimal solution where all marginal powers are placed exactly at the prespecified values, assuming continuity. Two hypothetical clinical trial designs are presented to illustrate the application of our methods under different scenarios. Results are first presented for a design with two endpoints and are further generalized to three or more endpoints. Our findings are helpful to guide the design of a graphical approach and the sample size calculation in clinical trials.
图形化方法为具有多个终点的临床试验中的多重调整提供了一个有用的框架。在设计图形化方法时,通常根据临床重要性为终点分配初始权重和转移概率。例如,医生可能更倾向于给一些主要终点分配更多权重。这种临床偏好可以在样本量优化问题中作为约束条件来制定。然而,目前缺乏关于如何在图形化方法中指定初始权重和转移概率以满足临床偏好,同时最小化满足功效所需的样本量的理论指导。为了填补这一空白,我们提出了在常见设置下通过初始权重和转移概率优化图形化方法中样本量的统计方法,即在试验设计中为每个终点使用边缘功效。重要的是,我们证明了一些常用的图形化方法,例如将所有初始权重都放在一个终点上,是次优的。我们的方法具有灵活性,可用于具有连续或二进制或混合类型终点的单臂试验和随机对照试验。此外,我们证明了在连续性假设下,所有边缘功效都恰好放置在预定值的最优解的存在性。提出了两个假设性临床试验设计,以说明在不同情况下我们的方法的应用。结果首先针对具有两个终点的设计呈现,并进一步推广到三个或更多终点。我们的发现有助于指导临床试验中图形化方法的设计和样本量计算。