Machine learning to optimize precision in the analysis of randomized trials: A journey in pre-specified, yet data-adaptive learning
- URL: http://arxiv.org/abs/2512.13610v1
- Date: Mon, 15 Dec 2025 18:05:45 GMT
- Title: Machine learning to optimize precision in the analysis of randomized trials: A journey in pre-specified, yet data-adaptive learning
- Authors: Laura B. Balzer, Mark J. van der Laan, Maya L. Petersen,
- Abstract summary: We tell our story of developing, evaluating, and implementing a machine learning-based approach for covariate adjustment.<n>We provide the rationale for as well as the practical concerns with such an approach for estimating marginal effects.<n>We present the results from applying our approach in the primary, pre-specified analysis of 8 recently published trials.
- Score: 2.6827221447298406
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Covariate adjustment is an approach to improve the precision of trial analyses by adjusting for baseline variables that are prognostic of the primary endpoint. Motivated by the SEARCH Universal HIV Test-and-Treat Trial (2013-2017), we tell our story of developing, evaluating, and implementing a machine learning-based approach for covariate adjustment. We provide the rationale for as well as the practical concerns with such an approach for estimating marginal effects. Using schematics, we illustrate our procedure: targeted machine learning estimation (TMLE) with Adaptive Pre-specification. Briefly, sample-splitting is used to data-adaptively select the combination of estimators of the outcome regression (i.e., the conditional expectation of the outcome given the trial arm and covariates) and known propensity score (i.e., the conditional probability of being randomized to the intervention given the covariates) that minimizes the cross-validated variance estimate and, thereby, maximizes empirical efficiency. We discuss our approach for evaluating finite sample performance with parametric and plasmode simulations, pre-specifying the Statistical Analysis Plan, and unblinding in real-time on video conference with our colleagues from around the world. We present the results from applying our approach in the primary, pre-specified analysis of 8 recently published trials (2022-2024). We conclude with practical recommendations and an invitation to implement our approach in the primary analysis of your next trial.
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