论文标题

早期流行病,渗透率和共证于19

Early epidemic spread, percolation and Covid-19

论文作者

Oliveira, Goncalo

论文摘要

人类到人类传播感染疾病的传播疾病在人群中使用人类相互作用作为传播载体传播。这种爆发的早期阶段可以通过图形对其边缘编码个体之间的这些相互作用(顶点)的图表进行建模。本文试图说明每个人都需要各种相互作用的情况,因此传播疾病的概率不同。这些结果中的大多数也可以用渗透理论的语言来说明。 本文的主要贡献是:(1)扩展到此设置,这些结果以前在每个人只有一种相互作用的情况下已知。 (2)找到基本繁殖数$ r_0 $的明确公式,仅取决于沿着不同边缘传输疾病的概率以及相关图的度分布的前两个矩。 (3)在最近的COVID-19大流行中,我们使用开发的框架来计算在树木和学位分布的人群中传播的模型疾病的$ R_0 $。在这种情况下,我们还将计算爆发不会导致流行病的可能性。在所有情况下,如果没有进行干预措施,我们都会发现这种概率很低。

Human to human transmissible infectious diseases spread in a population using human interactions as its transmission vector. The early stages of such an outbreak can be modeled by a graph whose edges encode these interactions between individuals, the vertices. This article attempts to account for the case when each individual entails in different kinds of interactions which have therefore different probabilities of transmitting the disease. The majority of these results can be also stated in the language of percolation theory. The main contributions of the article are: (1) Extend to this setting some results which were previously known in the case when each individual has only one kind of interactions. (2) Find an explicit formula for the basic reproduction number $R_0$ which depends only on the probabilities of transmitting the disease along the different edges and the first two moments of the degree distributions of the associated graphs. (3) Motivated by the recent Covid-19 pandemic, we use the framework developed to compute the $R_0$ of a model disease spreading in populations whose trees and degree distributions are adjusted to several different countries. In this setting, we shall also compute the probability that the outbreak will not lead to an epidemic. In all cases we find such probability to be very low if no interventions are put in place.

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