We consider a flexible Bayesian evidence synthesis approach to model the age-specific transmission dynamics of COVID-19 based on daily age-stratified mortality counts. The temporal evolution of transmission rates in populations containing multiple types of individual are reconstructed via an appropriate dimension-reduction formulation driven by independent diffusion processes assigned to the key epidemiological parameters. A suitably tailored Susceptible-Exposed-Infected-Removed (SEIR) compartmental model is used to capture the latent counts of infections and to account for fluctuations in transmission influenced by phenomena like public health interventions and changes in human behaviour. We analyze the outbreak of COVID-19 in Greece and Austria and validate the proposed model using the estimated counts of cumulative infections from a large-scale seroprevalence survey in England.
翻译:我们考虑一种灵活的贝叶斯证据综合方法,根据每日年龄分层的死亡率计数,模拟COVID-19的年龄特定传播动态; 包含多种类型个人的人口传播率的时间变化,通过指定主要流行病学参数的独立传播过程驱动的适当的减少规模配方,重新得到重建; 使用一个适当定制的可感知-受感染-受感染-受感染(SEIR)的分块模型,以记录潜在的感染数,并计算受公共卫生干预和人类行为变化等现象影响而传播的波动; 我们分析希腊和奥地利的COVID-19爆发,并利用英格兰大规模血清反应调查得出的累积感染估计数来验证拟议模式。