Yu Han, Hutson Alan, Ma Xiaoyi
Department of Biostatistics and Bioinformatics, Roswell Park Comprehensive Cancer Center, Elm and Carlton Streets, Buffalo, NY, 14623, USA.
Sci Rep. 2025 Jul 8;15(1):24454. doi: 10.1038/s41598-025-10566-1.
In this work, we proposed a novel inferential procedure assisted by machine learning based adjustment for randomized control trials. The method was developed under the Rosenbaum's framework of exact tests in randomized experiments with covariate adjustments, replacing the traditional linear model with nonparametric models that capture the complex relationships between covariates and outcomes. Through extensive simulation experiments, we showed the proposed method can robustly control the type I error and can boost the statistical efficiency for a randomized controlled trial (RCT). This advantage was further demonstrated in a real-world example. The simplicity, flexibility, and robustness of the proposed method makes it a competitive candidate as a routine inference procedure for RCTs, especially when nonlinear association or interaction among covariates is expected. Its application may remarkably reduce the required sample size and cost of RCTs, such as phase III clinical trials.
在这项工作中,我们为随机对照试验提出了一种由基于机器学习调整辅助的新型推断程序。该方法是在罗森鲍姆关于带有协变量调整的随机实验的精确检验框架下开发的,用非参数模型取代了传统线性模型,非参数模型能够捕捉协变量与结果之间的复杂关系。通过大量的模拟实验,我们表明所提出的方法能够稳健地控制一类错误,并且可以提高随机对照试验(RCT)的统计效率。这一优势在一个实际例子中得到了进一步证明。所提出方法的简单性、灵活性和稳健性使其成为RCT常规推断程序的一个有竞争力的候选方法,特别是当预期协变量之间存在非线性关联或相互作用时。其应用可能会显著减少RCT所需的样本量和成本,如III期临床试验。