Ward Caitlin, Deardon Rob, Schmidt Alexandra M
Division of Biostatistics, University of Minnesota, Minneapolis, MN, USA.
Faculty of Veterinary Medicine, University of Calgary, Calgary, AB, Canada.
Infect Dis Model. 2023 Aug 6;8(4):947-963. doi: 10.1016/j.idm.2023.08.002. eCollection 2023 Dec.
For many infectious disease outbreaks, the at-risk population changes their behavior in response to the outbreak severity, causing the transmission dynamics to change in real-time. Behavioral change is often ignored in epidemic modeling efforts, making these models less useful than they could be. We address this by introducing a novel class of data-driven epidemic models which characterize and accurately estimate behavioral change. Our proposed model allows time-varying transmission to be captured by the level of "alarm" in the population, with alarm specified as a function of the past epidemic trajectory. We investigate the estimability of the population alarm across a wide range of scenarios, applying both parametric functions and non-parametric functions using splines and Gaussian processes. The model is set in the data-augmented Bayesian framework to allow estimation on partially observed epidemic data. The benefit and utility of the proposed approach is illustrated through applications to data from real epidemics.
对于许多传染病暴发而言,高危人群会根据暴发的严重程度改变其行为,从而导致传播动态实时变化。在疫情建模工作中,行为变化常常被忽视,这使得这些模型的作用不如其应有的那么大。我们通过引入一类新型的数据驱动型疫情模型来解决这个问题,这类模型能够刻画并准确估计行为变化。我们提出的模型允许通过人群中的“警觉”水平来捕捉随时间变化的传播情况,其中警觉被指定为过去疫情轨迹的函数。我们研究了在广泛场景下人群警觉的可估计性,使用样条函数和高斯过程应用参数函数和非参数函数。该模型设置在数据增强贝叶斯框架中,以便对部分观测到的疫情数据进行估计。通过对实际疫情数据的应用,说明了所提方法的优势和实用性。