论文标题
具有高无症状传播率的传染病的时空模型
Spatio-temporal models of infectious disease with high rates of asymptomatic transmission
论文作者
论文摘要
令人惊讶的是,Mercurial Covid-19大流行强调了不仅需要加速有关传染病的研究,而且还需要使用新颖的技术和观点来研究它们。由于疾病的高度无私的性质,遏制当前大流行的困难的主要原因是。在这项调查中,我们开发了一个建模框架,以研究具有高无症状传播率的疾病的时空演化,并将此框架应用于具有数学可拖延地理位置的假设国家。也就是说,广场县均匀地组织成矩形。我们首先得出了在县一级应用的易感,感染和恢复人群的时间动态模型。接下来,我们使用基于似然的参数估计来得出在州范围内的时间上变化的疾病传播参数。尽管这两种方法为我们提供了一些空间结构并显示了行为和政策变化的影响,但它们错过了热区的演变,这些热区在当前大流行期间造成了很大的资源分配困难。显然,与许多其他疾病一样,病例的分布不会基于人口密度,但会不断发展。我们将其建模为一个扩散过程,其中扩散率在空间上根据人口分布而变化,并且根据当前模拟无症状病例的当前数量而变化。随着最终的添加与SIR模型的变化变化,我们在假设设置中捕获了“热区”的演变。
The surprisingly mercurial Covid-19 pandemic has highlighted the need to not only accelerate research on infectious disease, but to also study them using novel techniques and perspectives. A major contributor to the difficulty of containing the current pandemic is due to the highly asymptomatic nature of the disease. In this investigation, we develop a modeling framework to study the spatio-temporal evolution of diseases with high rates of asymptomatic transmission, and we apply this framework to a hypothetical country with mathematically tractable geography; namely, square counties uniformly organized into a rectangle. We first derive a model for the temporal dynamics of susceptible, infected, and recovered populations, which is applied at the county level. Next we use likelihood-based parameter estimation to derive temporally varying disease transmission parameters on the state-wide level. While these two methods give us some spatial structure and show the effects of behavioral and policy changes, they miss the evolution of hot zones that have caused significant difficulties in resource allocation during the current pandemic. It is evident that the distribution of cases will not be stagnantly based on the population density, as with many other diseases, but will continuously evolve. We model this as a diffusive process where the diffusivity is spatially varying based on the population distribution, and temporally varying based on the current number of simulated asymptomatic cases. With this final addition coupled to the SIR model with temporally varying transmission parameters, we capture the evolution of "hot zones" in our hypothetical setup.