论文标题

流行波的爆发多样性通过不同的地理量表传播

Outbreak diversity in epidemic waves propagating through distinct geographical scales

论文作者

Costa, Guilherme S., Cota, Wesley, Ferreira, Silvio C.

论文摘要

在大流行的情况下,新兴传染病的一个主要特征是通过地理量表传播,以及根据采用的缓解方案对不同位置的影响。我们研究了一种随机流行模型,采用种群的方法,其中斑块代表城市。传染性遵循一个自然的城市隔室模型。后者又通过复发性迁移率相互交互。作为研究案例,我们考虑了在巴西进行数据驱动的模拟的Covid-19的流行。模拟流行曲线的特性在不同地理位置和尺度上从州(从状态)穿过中间和直接区域的不同地理位置和尺度上具有非常广泛的分布。预计流行病爆发的延迟与距离各个首都城市距离之间的相关性在几个州被牢固,而在其他州则较弱,这是多种流行病焦点的信号传播到内陆城市的影响。不同区域对同一缓解协议的反应可能会大相径庭,这意味着必须根据该地区的特异性对抗击流行病的政策进行设计,但与整体情况融为一体。实际的报告案例确认了模拟中预测的定性情景。即使我们将研究局限于巴西,前景和模型也可以扩展到其他具有异质人口分布的地理组织。

A central feature of an emerging infectious disease in a pandemic scenario is the spread through geographical scales and the impacts on different locations according to the adopted mitigation protocols. We investigated a stochastic epidemic model with the metapopulation approach in which patches represent municipalities. Contagion follows a stochastic compartmental model for municipalities; the latter, in turn, interact with each other through recurrent mobility. As a case of study, we consider the epidemic of COVID-19 in Brazil performing data-driven simulations. Properties of the simulated epidemic curves have very broad distributions across different geographical locations and scales, from states, passing through intermediate and immediate regions down to municipality levels. Correlations between delay of the epidemic outbreak and distance from the respective capital cities were predicted to be strong in several states and weak in others, signaling influences of multiple epidemic foci propagating towards the inland cities. Responses of different regions to a same mitigation protocol can vary enormously implying that the policies of combating the epidemics must be engineered according to the region' specificity but integrated with the overall situation. Real series of reported cases confirm the qualitative scenarios predicted in simulations. Even though we restricted our study to Brazil, the prospects and model can be extended to other geographical organizations with heterogeneous demographic distributions.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源