| Literature DB >> 34992706 |
Paul J Birrell1, Lorenz Wernisch1, Brian D M Tom1, Leonhard Held2, Gareth O Roberts3, Richard G Pebody4, Daniela De Angelis1.
Abstract
A prompt public health response to a new epidemic relies on the ability to monitor and predict its evolution in real time as data accumulate. The 2009 A/H1N1 outbreak in the UK revealed pandemic data as noisy, contaminated, potentially biased and originating from multiple sources. This seriously challenges the capacity for real-time monitoring. Here, we assess the feasibility of real-time inference based on such data by constructing an analytic tool combining an age-stratified SEIR transmission model with various observation models describing the data generation mechanisms. As batches of data become available, a sequential Monte Carlo (SMC) algorithm is developed to synthesise multiple imperfect data streams, iterate epidemic inferences and assess model adequacy amidst a rapidly evolving epidemic environment, substantially reducing computation time in comparison to standard MCMC, to ensure timely delivery of real-time epidemic assessments. In application to simulated data designed to mimic the 2009 A/H1N1 epidemic, SMC is shown to have additional benefits in terms of assessing predictive performance and coping with parameter nonidentifiability.Entities:
Keywords: SEIR transmission model; Sequential Monte Carlo; pandemic influenza; real-time inference; resample-move
Year: 2020 PMID: 34992706 PMCID: PMC7612182 DOI: 10.1214/19-AOAS1278
Source DB: PubMed Journal: Ann Appl Stat ISSN: 1932-6157 Impact factor: 2.083