Causal rule ensemble method for estimating heterogeneous treatment effect with consideration of prognostic effects

Stat Methods Med Res. 2024 Apr 27:9622802241247728. doi: 10.1177/09622802241247728. Online ahead of print.

Abstract

We propose a novel framework based on the RuleFit method to estimate heterogeneous treatment effect in randomized clinical trials. The proposed method estimates a rule ensemble comprising a set of prognostic rules, a set of prescriptive rules, as well as the linear effects of the original predictor variables. The prescriptive rules provide an interpretable description of the heterogeneous treatment effect. By including a prognostic term in the proposed model, the selected rule is represented as an heterogeneous treatment effect that excludes other effects. We confirmed that the performance of the proposed method was equivalent to that of other ensemble learning methods through numerical simulations and demonstrated the interpretation of the proposed method using a real data application.

Keywords: Heterogeneous treatment effect; RuleFit; machine learning; metalearner; randomized clinical trial.