How does FDA recommend using Bayesian Statistics to inform Regulatory Decisionmaking around clinical trials?

FDA’s January 2026 draft guidance on Bayesian methodology in drug and biologics trials signals a clear willingness to see Bayesian methods used for regulatory decisionmaking around clinical trials. The guidance lays out how sponsors (i.e., pharmaceutical manufacturers) should pre-specify priors, success criteria, and simulations so that Bayesian designs remain interpretable, control error rates when needed,…

Types of uncertainty in health economic modelling

There are four primary types of uncertainty in health economic modelling: Heterogeneity: Variation between individuals that can be explained by their characteristics Stochastic uncertainty: Variation between individuals that cannot be explained by their characteristics, Parameter uncertainty: Uncertainty in the estimated values for the parameters that define the model Structural uncertainty: Uncertainty in model outcomes that…

How big a problem are catastrophic health expenditures? The Watts Catastrophic Health Expenditure (WCHE) metric explained

Catastrophic healthcare expenditures (CHE) are highly problematic for families are are unequally distributed throughout society. However, how can we quantify the incidence, intensity and inequality of CHE in a society? A paper by Ogwang and Mwabu (2025) provide one methodology by using the Watts poverty measure and adapting it to measure CHE. We first describe…

Which econometric method should you use for causal inference of health policy?

TL;DR A paper by Ress and Wild (2024) provide the following recommendations in answering this question. When aiming to control for a large covariate set, consider using the superlearner to estimate nuisance parameters. When employing the superlearner to estimate nuisance parameters, consider using doubly robust estimation approaches, such as AIPW and TMLE. When faced with…