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Efficient Bayesian inference of fully stochastic epidemiological models with applications to COVID-19.

Published version
Peer-reviewed

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Abstract

Epidemiological forecasts are beset by uncertainties about the underlying epidemiological processes, and the surveillance process through which data are acquired. We present a Bayesian inference methodology that quantifies these uncertainties, for epidemics that are modelled by (possibly) non-stationary, continuous-time, Markov population processes. The efficiency of the method derives from a functional central limit theorem approximation of the likelihood, valid for large populations. We demonstrate the methodology by analysing the early stages of the COVID-19 pandemic in the UK, based on age-structured data for the number of deaths. This includes maximum a posteriori estimates, Markov chain Monte Carlo sampling of the posterior, computation of the model evidence, and the determination of parameter sensitivities via the Fisher information matrix. Our methodology is implemented in PyRoss, an open-source platform for analysis of epidemiological compartment models.

Description

Journal Title

R Soc Open Sci

Conference Name

Journal ISSN

2054-5703
2054-5703

Volume Title

8

Publisher

The Royal Society

Rights and licensing

Except where otherwised noted, this item's license is described as Attribution 4.0 International
Sponsorship
European Research Council (740269)
Royal Society (RP170002)
Royal Society (NF170411)
EPSRC (2089780)
Engineering and Physical Sciences Research Council (2089780)
This work was undertaken as a contribution to the Rapid Assistance in Modelling the Pandemic (RAMP) initiative, coordinated by the Royal Society. This work was funded in part by the European Research Council under the Horizon 2020 Programme, ERC grant no. 740269, and by the Royal Society grant no. RP17002. The authors are also grateful for financial support from the EPSRC doctoral training programme (A.B., J.D., G.T.), the Leverhulme Trust (P.B.R. and H.K.), the Cambridge Trust and Jardine foundation (Y.I.L.).