Bayesian analysis of diffusion-driven multi-type epidemic models with application to COVID-19
We consider a flexible Bayesian evidence synthesis approach to model the age-specific transmission dynamics of COVID-19 based on daily mortality counts. The temporal evolution of transmission rates in populations containing multiple types of individual is reconstructed via an appropriate dimension-r...
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Zusammenfassung: | We consider a flexible Bayesian evidence synthesis approach to model the
age-specific transmission dynamics of COVID-19 based on daily mortality counts.
The temporal evolution of transmission rates in populations containing multiple
types of individual is reconstructed via an appropriate dimension-reduction
formulation driven by independent diffusion processes. A suitably tailored
compartmental model is used to learn the latent counts of infection, accounting
for fluctuations in transmission influenced by public health interventions and
changes in human behaviour. The model is fitted to freely available COVID-19
data sources from the UK, Greece and Austria and validated using a large-scale
seroprevalence survey in England. In particular, we demonstrate how model
expansion can facilitate evidence reconciliation at a latent level. The code
implementing this work is made freely available via the Bernadette R package. |
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DOI: | 10.48550/arxiv.2211.15229 |