Prognostic Covariate Adjustment for Logistic Regression in Randomized Controlled Trials
Yunfan Li, Arman Sabbaghi, Jonathan R. Walsh, Charles K., Fisher

TL;DR
This paper introduces a method for covariate adjustment in logistic regression for RCTs using prognostic scores from AI, improving power and reducing sample size needed for conclusive results.
Contribution
It develops formulae for power and sample size calculations with prognostic score adjustment and extends the approach to various estimands using g-computation.
Findings
Prognostic score adjustment increases statistical power in logistic regression.
Adjustment reduces the required sample size for desired power.
Simulation studies confirm the validity and efficiency of the proposed method.
Abstract
Randomized controlled trials (RCTs) with binary primary endpoints introduce novel challenges for inferring the causal effects of treatments. The most significant challenge is non-collapsibility, in which the conditional odds ratio estimand under covariate adjustment differs from the unconditional estimand in the logistic regression analysis of RCT data. This issue gives rise to apparent paradoxes, such as the variance of the estimator for the conditional odds ratio from a covariate-adjusted model being greater than the variance of the estimator from the unadjusted model. We address this challenge in the context of adjustment based on predictions of control outcomes from generative artificial intelligence (AI) algorithms, which are referred to as prognostic scores. We demonstrate that prognostic score adjustment in logistic regression increases the power of the Wald test for the…
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Taxonomy
TopicsStatistical Methods in Epidemiology · Statistical Methods and Inference
MethodsLogistic Regression
