Bayesian inference for high-dimensional discrete-time epidemic models: spatial dynamics of the UK COVID-19 outbreak
Bayesian inference for high-dimensional discrete-time epidemic models: spatial dynamics of the UK COVID-19 outbreak
Stochastic epidemic models which incorporate interactions between space and human mobility are a key tool to inform prioritisation of outbreak control to appropriate locations. However, methods for fitting such models to national-level population data are currently unfit for purpose due to the difficulty of marginalising over high-dimensional, highly-correlated censored epidemiological event data. Here we propose a new Bayesian MCMC approach to inference on a spatially-explicit stochastic SEIR meta-population model, using a suite of novel model-informed Metropolis-Hastings samplers. We apply this method to UK COVID-19 case data, showing real-time spatial results that were used to inform UK policy during the pandemic.
Chris P Jewell、Christopher Suter、Alison C Hale、Barry S Rowlingson、Jonathan M Read、Gareth O Roberts
医学研究方法生物科学研究方法、生物科学研究技术预防医学
Chris P Jewell,Christopher Suter,Alison C Hale,Barry S Rowlingson,Jonathan M Read,Gareth O Roberts.Bayesian inference for high-dimensional discrete-time epidemic models: spatial dynamics of the UK COVID-19 outbreak[EB/OL].(2023-06-09)[2025-08-07].https://arxiv.org/abs/2306.07987.点此复制
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