Bayesian Prognostic Covariate Adjustment With Additive Mixture Priors
Alyssa M. Vanderbeek, Arman Sabbaghi, Jon R. Walsh, Charles, K. Fisher

TL;DR
This paper introduces Bayesian PROCOVA, a novel covariate adjustment method for RCTs that combines AI-generated prognostic scores with historical control data using additive mixture priors, improving inference efficiency.
Contribution
It presents a new Bayesian covariate adjustment approach that integrates AI-based digital twins and mixture priors, enabling unbiased and efficient treatment effect estimation in RCTs.
Findings
Bayesian PROCOVA reduces bias and variance compared to traditional methods.
The method achieves efficiency gains, leading to smaller required sample sizes.
Closed-form expressions facilitate practical implementation.
Abstract
Effective and rapid decision-making from randomized controlled trials (RCTs) requires unbiased and precise treatment effect inferences. Two strategies to address this requirement are to adjust for covariates that are highly correlated with the outcome, and to leverage historical control information via Bayes' theorem. We propose a new Bayesian prognostic covariate adjustment methodology, referred to as Bayesian PROCOVA, that combines these two strategies. Covariate adjustment in Bayesian PROCOVA is based on generative artificial intelligence (AI) algorithms that construct a digital twin generator (DTG) for RCT participants. The DTG is trained on historical control data and yields a digital twin (DT) probability distribution for each RCT participant's outcome under the control treatment. The expectation of the DT distribution, referred to as the prognostic score, defines the covariate…
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Taxonomy
TopicsStatistical Methods in Clinical Trials · Advanced Causal Inference Techniques · Statistical Methods and Inference
