Robust Causal Inference of Drug-drug Interactions
Di Shu, Peisong Han, Sean Hennessy, Todd A Miano

TL;DR
This paper introduces robust, empirical likelihood-based methods for estimating causal drug-drug interactions, improving bias and efficiency over traditional IPTW, with applications to real-world medical data.
Contribution
It proposes two novel multiple robustness estimators for causal DDIs that outperform standard methods in bias and efficiency, especially under model misspecification.
Findings
Proposed estimators are more robust and efficient than IPTW.
Simulation studies confirm finite sample advantages.
Applied methods to real medical data on drug interactions.
Abstract
There is growing interest in developing causal inference methods for multi-valued treatments with a focus on pairwise average treatment effects. Here we focus on a clinically important, yet less-studied estimand: causal drug-drug interactions (DDIs), which quantifies the degree to which the causal effect of drug A is altered by the presence versus the absence of drug B. Confounding adjustment when studying the effects of DDIs can be accomplished via inverse probability of treatment weighting (IPTW), a standard approach originally developed for binary treatments and later generalized to multi-valued treatments. However, this approach generally results in biased results when the propensity score model is misspecified. Motivated by the need for more robust techniques, we propose two empirical likelihood-based weighting approaches that allow for specifying a set of propensity score models,…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods in Clinical Trials · Pharmaceutical Economics and Policy
