Wang Guojin, Yao Wei
School of Management, Fudan University, 220 Handan Road, Shanghai, 200433, China.
Shanghai Key Laboratory of Acupuncture Mechanism and Acupoint Function, Fudan University, 220 Handan Road, Shanghai, 200433, China.
Infect Dis Model. 2023 Dec 29;9(1):177-184. doi: 10.1016/j.idm.2023.12.007. eCollection 2024 Mar.
Networks haven been widely used to understand the spread of infectious disease. This study examines the properties of small-world networks in modeling infectious disease on campus. Two different small-world models are developed and the behaviors of infectious disease in the models are observed through numerical simulations. The results show that the behavior pattern of infectious disease in a small-world network is different from those in a regular network or a random network. The spread of the infectious disease increases as the proportion of long-distance connections increasing, which indicates that reducing the contact among people is an effective measure to control the spread of infectious disease. The probability of node position exchange in a network () had no significant effect on the spreading speed, which suggests that reducing human mobility in closed environments does not help control infectious disease. However, the spreading speed is proportional to the number of shared nodes (), which means reducing connections between different groups and dividing students into separate sections will help to control infectious disease. In the end, the simulating speed of the small-world network is tested and the quadratic relationship between simulation time and the number of nodes may limit the application of the SW network in areas with large populations.
网络已被广泛用于理解传染病的传播。本研究考察了小世界网络在校园传染病建模中的特性。开发了两种不同的小世界模型,并通过数值模拟观察模型中传染病的行为。结果表明,小世界网络中传染病的行为模式不同于规则网络或随机网络中的行为模式。传染病的传播随着长距离连接比例的增加而增加,这表明减少人与人之间的接触是控制传染病传播的有效措施。网络中节点位置交换的概率()对传播速度没有显著影响,这表明在封闭环境中减少人员流动无助于控制传染病。然而,传播速度与共享节点的数量()成正比,这意味着减少不同群体之间的连接并将学生分成不同的部分将有助于控制传染病。最后,测试了小世界网络的模拟速度,模拟时间与节点数量之间的二次关系可能会限制小世界网络在人口众多地区的应用。