Data-driven prediction and origin identification of epidemics in population networks

R Soc Open Sci. 2021 Jan 20;8(1):200531. doi: 10.1098/rsos.200531. eCollection 2021 Jan.

Abstract

Effective intervention strategies for epidemics rely on the identification of their origin and on the robustness of the predictions made by network disease models. We introduce a Bayesian uncertainty quantification framework to infer model parameters for a disease spreading on a network of communities from limited, noisy observations; the state-of-the-art computational framework compensates for the model complexity by exploiting massively parallel computing architectures. Using noisy, synthetic data, we show the potential of the approach to perform robust model fitting and additionally demonstrate that we can effectively identify the disease origin via Bayesian model selection. As disease-related data are increasingly available, the proposed framework has broad practical relevance for the prediction and management of epidemics.

Keywords: Bayesian model selection; SIR model; epidemic modelling; inverse problem; transitional Markov chain Monte Carlo; uncertainty quantification.