Background
Conducting a properly-powered randomised controlled trial is not feasible in certain settings, due to small populations and a lack of trial-eligible patients, for life-threatening and severely debilitating conditions with high unmet need, and for ethical reasons. Regulators recognize that externally controlled clinical trials may be required in special circumstances, and marketing authorisation applications featuring externally controlled trials are increasing. The reliance of payers and health technology assessment bodies on such research designs is also growing. For instance, in the absence of head-to-head comparisons between all relevant comparators, “unanchored” indirect comparisons are often required in therapeutic areas with a rapidly evolving treatment landscape.
Methods
Various statistical methods have been proposed to adjust for imbalances in baseline covariates between the clinical trial and the external control. The most widely-used methodologies are singly robust propensity score-based weighting and outcome modelling-based approaches. Alternative weighting methods based on entropy balancing will be presented, which directly enforce covariate balance and are generally more stable, precise and robust to model misspecification than the standard “modelling” approaches to weighting. The presentation will introduce doubly robust estimators that augment the entropy balancing approaches by fitting a model for the conditional outcome expectation, then combining the predictions of the outcome model with the entropy balancing weights. The methods are evaluated in a simulation study and their application illustrated in an example analysis.
Results and Conclusions
The presentation integrates parallel developments in the areas of indirect treatment comparisons (meta-analysis) and causal inference, under a unified framework for target estimands and covariate adjustment. Decision-makers have expressed a preference for doubly robust estimation approaches that can consistently estimate treatment effects as long as either a propensity score model or an outcome model is correct, but not necessarily both. Augmented entropy balancing-based estimators that are doubly robust and more bias-robust than commonly used approaches, as demonstrated by simulations involving binary outcomes, are presented.