Transport Strategy Centre, Department of Civil and Environmental Engineering, Imperial College London, London, SW7 2AZ, UK.
Department of Civil and Environmental Engineering, National University of Singapore, Queenstown, 119077, Singapore.
Sci Rep. 2022 Nov 29;12(1):20572. doi: 10.1038/s41598-022-24866-3.
The dynamics of human mobility have been known to play a critical role in the spread of infectious diseases like COVID-19. In this paper, we present a simple compact way to model the transmission of infectious disease through transportation networks using widely available aggregate mobility data in the form of a zone-level origin-destination (OD) travel flow matrix. A key feature of our model is that it not only captures the propagation of infection via direct connections between zones (first-order effects) as in most existing studies but also transmission effects that are due to subsequent interactions in the remainder of the system (higher-order effects). We demonstrate the importance of capturing higher-order effects in a simulation study. We then apply our model to study the first wave of COVID-19 infections in (i) Italy, and, (ii) the New York Tri-State area. We use daily data on mobility between Italian provinces (province-level OD data) and between Tri-State Area counties (county-level OD data), and daily reported caseloads at the same geographical levels. Our empirical results indicate substantial predictive power, particularly during the early stages of the outbreak. Our model forecasts at least 85% of the spatial variation in observed weekly COVID-19 cases. Most importantly, our model delivers crucial metrics to identify target areas for intervention.
人类流动性的动态变化被认为在传染病(如 COVID-19)的传播中起着至关重要的作用。在本文中,我们提出了一种简单紧凑的方法,使用广泛可用的以区际出行流矩阵形式呈现的聚合流动性数据,通过交通网络来模拟传染病的传播。我们模型的一个关键特征是,它不仅可以捕捉到区际之间直接连接(一阶效应)的感染传播,还可以捕捉到由于系统其余部分的后续相互作用而产生的传播效应(高阶效应)。我们通过模拟研究证明了捕捉高阶效应的重要性。然后,我们将我们的模型应用于研究 COVID-19 疫情在(i)意大利和(ii)纽约三州地区的第一波感染。我们使用了意大利各省之间的流动性(省级 OD 数据)和三州地区各县之间的流动性(县级 OD 数据)的日常数据,以及相同地理水平的每日报告病例数。我们的实证结果表明,该模型具有相当大的预测能力,尤其是在疫情早期阶段。我们的模型至少可以预测观察到的每周 COVID-19 病例的 85%的空间变化。最重要的是,我们的模型提供了确定干预目标区域的关键指标。