15: Machine Learning Adjustment Boosts Efficiency of Exact Inference in Randomized Controlled Trials

Alan Hutson Co-Author
Roswell Park Cancer Institute
 
Xiaoyi Ma Co-Author
Roswell Park Comprehensive Cancer Center
 
Han Yu First Author
Roswell Park Comprehensive Cancer Center
 
Han Yu Presenting Author
Roswell Park Comprehensive Cancer Center
 
Tuesday, Aug 5: 10:30 AM - 12:20 PM
2661 
Contributed Posters 
Music City Center 
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. 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.

Keywords

Machine learning

Randomized controlled trial

Exact inference 

Main Sponsor

Section on Nonparametric Statistics