Mo Baichuan, Feng Kairui, Shen Yu, Tam Clarence, Li Daqing, Yin Yafeng, Zhao Jinhua
Department of Civil and Environmental Engineering, Massachusetts Institute of Technology, Cambridge, MA 02139, United States.
Department of Civil and Environmental Engineering, Princeton University, Princeton, NJ 08540, United States.
Transp Res Part C Emerg Technol. 2021 Jan;122:102893. doi: 10.1016/j.trc.2020.102893. Epub 2020 Dec 15.
Passenger contact in public transit (PT) networks can be a key mediate in the spreading of infectious diseases. This paper proposes a time-varying weighted PT encounter network to model the spreading of infectious diseases through the PT systems. Social activity contacts at both local and global levels are also considered. We select the epidemiological characteristics of coronavirus disease 2019 (COVID-19) as a case study along with smart card data from Singapore to illustrate the model at the metropolitan level. A scalable and lightweight theoretical framework is derived to capture the time-varying and heterogeneous network structures, which enables to solve the problem at the whole population level with low computational costs. Different control policies from both the public health side and the transportation side are evaluated. We find that people's preventative behavior is one of the most effective measures to control the spreading of epidemics. From the transportation side, partial closure of bus routes helps to slow down but cannot fully contain the spreading of epidemics. Identifying "influential passengers" using the smart card data and isolating them at an early stage can also effectively reduce the epidemic spreading.
公共交通(PT)网络中的乘客接触可能是传染病传播的关键媒介。本文提出了一种时变加权的公共交通接触网络,以模拟传染病在公共交通系统中的传播。同时还考虑了本地和全球层面的社会活动接触。我们选择2019冠状病毒病(COVID-19)的流行病学特征作为案例研究,并结合新加坡的智能卡数据,在大都市层面说明该模型。推导了一个可扩展且轻量级的理论框架,以捕捉时变和异质的网络结构,从而能够以较低的计算成本在整个人口层面解决问题。评估了来自公共卫生方面和交通方面的不同控制政策。我们发现,人们的预防行为是控制疫情传播最有效的措施之一。从交通方面来看,部分公交线路的关闭有助于减缓但无法完全遏制疫情的传播。利用智能卡数据识别“有影响力的乘客”并在早期将他们隔离,也可以有效地减少疫情传播。