The evolution of epidemiological parameters, such as instantaneous reproduction number Rt, is important for understanding the transmission dynamics of infectious diseases. Current estimates of time-varying epidemiological parameters often face problems such as lagging observations, averaging inference, and improper quantification of uncertainties. To address these problems, we propose a Bayesian data assimilation framework for time-varying parameter estimation. Specifically, this framework is applied to Rt estimation, resulting in the state-of-the-art DARt system. With DARt, time misalignment caused by lagging observations is tackled by incorporating observation delays into the joint inference of infections and Rt; the drawback of averaging is overcome by instantaneously updating upon new observations and developing a model selection mechanism that captures abrupt changes; the uncertainty is quantified and reduced by employing Bayesian smoothing. We validate the performance of DARt and demonstrate its power in revealing the transmission dynamics of COVID-19. The proposed approach provides a promising solution for accurate and timely estimating transmission dynamics from reported data.
翻译:为解决这些问题,我们提议采用巴伊西亚数据同化框架,以进行时间与时间相移的参数估计,具体地说,这一框架适用于Rt估算,从而形成最先进的DARt系统。DARt利用DARt,通过将观测延迟纳入感染和Rt的共同推断,解决时间变化造成的时间错位问题;通过对新观察进行即时更新和开发模型选择机制,以捕捉突然变化,克服平均值的缺点;通过采用巴伊西亚平滑法,量化不确定性并减少不确定性。我们验证DARt的性能,并展示其在揭示COVID-19传播动态方面的力量。拟议方法为准确和及时估计所报告的数据传播动态提供了很有希望的解决办法。