The role of epidemiological models is crucial for informing public health officials during a public health emergency, such as the COVID-19 pandemic. However, traditional epidemiological models fail to capture the time-varying effects of mitigation strategies and do not account for under-reporting of active cases, thus introducing bias in the estimation of model parameters. To infer more accurate parameter estimates and to reduce the uncertainty of these estimates, we extend the SIR and SEIR epidemiological models with two time-varying parameters that capture the transmission rate and the rate at which active cases are reported to health officials. Using two real data sets of COVID-19 cases, we perform Bayesian inference via our SIR and SEIR models with time-varying transmission and reporting rates and via their standard counterparts with constant rates; our approach provides parameter estimates with more realistic interpretation, and one-week ahead predictions with reduced uncertainty. Furthermore, we find consistent under-reporting in the number of active cases in the data that we consider, suggesting that the initial phase of the pandemic was more widespread than previously reported.
翻译:流行病学模型的作用对于在公共卫生紧急情况下向公共卫生官员提供信息至关重要,如COVID-19大流行,然而,传统的流行病学模型未能捕捉到减缓战略的时间变化效应,而且没有说明未充分报告积极病例的情况,从而在模型参数估计方面造成偏差。为了推算更准确的参数估计数并减少这些估计数的不确定性,我们将SIR和SEIR流行病学模型扩展为两个时间变化参数,其中两个参数反映了传播率和向卫生官员报告积极病例的速度。我们使用COVID-19两套真实数据集,通过SIR和SEIR模型进行巴耶斯推断,其传播和报告率在时间上变化,并通过标准对应机构以不变的比率进行;我们的方法提供了参数估计数,提供更现实的解释,并提前一周作出不确定性减少的预测。此外,我们发现,我们所考虑的数据中积极病例的数量一直报告不足,表明该流行病的最初阶段比以前报告的更为普遍。