Journal article

Using Bayesian evidence synthesis to quantify uncertainty in population trends in smoking behaviour

S Wade, P Sarich, P Vaneckova, S Behar-Harpaz, PJ Ngo, PB Grogan, S Cressman, CE Gartner, JM Murray, T Blakely, E Banks, MC Tammemagi, K Canfell, MF Weber, M Caruana

Statistical Methods in Medical Research | Published : 2025

Abstract

Simulation models of smoking behaviour provide vital forecasts of exposure to inform policy targets, estimates of the burden of disease, and impacts of tobacco control interventions. A key element of useful model-based forecasts is a clear picture of uncertainty due to the data used to inform the model, however, assessment of this parameter uncertainty is incomplete in almost all tobacco control models. As a remedy, we demonstrate a Bayesian approach to model calibration that quantifies parameter uncertainty. With a model calibrated to Australian data, we observed that the smoking cessation rate in Australia has increased with calendar year since the late 20th century, and in 2016 people who..

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University of Melbourne Researchers