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城市公共交通系统中呼吸道传染病传播的动态模型

Dynamic model of respiratory infectious disease transmission in urban public transportation systems.

作者信息

Guo Zuiyuan, Xiao Guangquan, Wang Yayu, Li Sidong, Du Jianhong, Dai Botao, Gong Lili, Xiao Dan

机构信息

Department of Infectious Disease Prevention and Control, PLA Northern Theater Command Center for Disease Control and Prevention, Shenyang, China.

Training Base of Non-Commissioned Officer Specialized in Aviation Support of Naval Aeronautical University, Qingdao, China.

出版信息

Heliyon. 2023 Mar 11;9(3):e14500. doi: 10.1016/j.heliyon.2023.e14500. eCollection 2023 Mar.

Abstract

During the epidemics of respiratory infectious diseases, the use of public transportation increases the risk of disease transmission. Therefore, we established a dynamic model to provide an in-depth understanding of the mechanism of epidemic spread via this route. We designed a computer program to model a rail transit system including four transit lines in a small town in which assumed 70% of the residents commute via these trams in weekdays and the remaining residents take the tram at random. The model could identify the best travel route for each passenger and the specific passengers onboard when the tram passed through each station, and simulate the dynamic spread of a respiratory pathogen as the passengers used the rail transit system. Based on the program operating, we estimated that all residents in the town were ultimately infected, including 86.6% who were infected due to the public transportation system. The remaining individuals were infected at home. As the infection rate increased, the number of infected individuals increased more rapidly. Reducing the frequency of trams, driving private cars or riding bicycles, showing nucleic acid certificates and wearing masks for passengers, etc., are effective measures for the prevention of the spread of epidemic diseases.

摘要

在呼吸道传染病流行期间,使用公共交通会增加疾病传播的风险。因此,我们建立了一个动态模型,以深入了解通过这条途径传播流行病的机制。我们设计了一个计算机程序,对一个小镇的轨道交通系统进行建模,该系统包括四条线路,假设70%的居民在工作日通过这些电车通勤,其余居民随机乘坐电车。该模型可以为每位乘客确定最佳出行路线,以及电车经过每个车站时车上的具体乘客,并模拟呼吸道病原体在乘客使用轨道交通系统时的动态传播。根据程序运行情况,我们估计该镇所有居民最终都会被感染,其中86.6%是由于公共交通系统而感染的。其余人员在家中被感染。随着感染率的增加,感染人数增长得更快。减少电车运行频率、驾驶私家车或骑自行车、乘客出示核酸证明和佩戴口罩等,都是预防流行病传播的有效措施。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e10b/10034446/fc03ceb02136/gr1.jpg

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