论文标题
COVID-19中的空间传播和异质性的简约模型
A parsimonious model for spatial transmission and heterogeneity in the COVID-19 propagation
论文作者
论文摘要
关于国家层面累积死亡人数的原始数据通常表明COVID-19疾病发生率的空间可变分布。一个重要的问题是确定这种空间模式是否是爆发过程中环境异质性(例如气候条件)的结果。另一个基本问题是了解Covid-19的空间传播。为了解决这些问题,我们考虑了四个候选流行病学模型在初始条件,接触率和非本地传输方面具有不同的复杂性,并且使用混合的概率 - 概率 - 地位方法将它们适合法国死亡率数据。使用标准统计标准,我们选择具有非本地传输的模型,该模型对应于取决于地理位置的县图的扩散,并具有时间依赖性的接触率和空间恒定的参数。这种原始的空间简约模型表明,在一个地理中间规模的集中国家(例如法国)中,一旦建立了流行病,诸如限制政策,卫生措施和社会疏远等全球过程的影响淹没了当地因素的影响。此外,这种建模方法揭示了潜在的流行病学动力学,包括局部免疫力,并允许我们评估非本地相互作用对疾病未来扩散的作用。鉴于其理论和数值简单性及其准确跟踪Covid-19的流行曲线的能力,我们在这里开发的框架,特别是非本地模型和相关的估计程序,对研究流行病的空间动力学具有一般兴趣。
Raw data on the cumulative number of deaths at a country level generally indicate a spatially variable distribution of the incidence of COVID-19 disease. An important issue is to determine whether this spatial pattern is a consequence of environmental heterogeneities, such as the climatic conditions, during the course of the outbreak. Another fundamental issue is to understand the spatial spreading of COVID-19. To address these questions, we consider four candidate epidemiological models with varying complexity in terms of initial conditions, contact rates and non-local transmissions, and we fit them to French mortality data with a mixed probabilistic-ODE approach. Using standard statistical criteria, we select the model with non-local transmission corresponding to a diffusion on the graph of counties that depends on the geographic proximity, with time-dependent contact rate and spatially constant parameters. This original spatially parsimonious model suggests that in a geographically middle size centralized country such as France, once the epidemic is established, the effect of global processes such as restriction policies, sanitary measures and social distancing overwhelms the effect of local factors. Additionally, this modeling approach reveals the latent epidemiological dynamics including the local level of immunity, and allows us to evaluate the role of non-local interactions on the future spread of the disease. In view of its theoretical and numerical simplicity and its ability to accurately track the COVID-19 epidemic curves, the framework we develop here, in particular the non-local model and the associated estimation procedure, is of general interest in studying spatial dynamics of epidemics.