Gao Zhongshe, Gu Ziyu, Yang Lixin
School of Mathematics and Statistics, Tianshui Normal University, Tianshui 741000, China.
School of Mathematics and Data Science, Shaanxi University of Science & Technology, Xi'an 710021, China.
Entropy (Basel). 2023 May 26;25(6):849. doi: 10.3390/e25060849.
Community structure exists widely in real social networks. To investigate the effect of community structure on the spreading of infectious diseases, this paper proposes a community network model that considers both the connection rate and the number of connected edges. Based on the presented community network, a new SIRS transmission model is constructed via the mean-field theory. Furthermore, the basic reproduction number of the model is calculated via the next-generation matrix method. The results reveal that the connection rate and the number of connected edges of the community nodes play crucial roles in the spreading process of infectious diseases. Specifically, it is demonstrated that the basic reproduction number of the model decreases as the community strength increases. However, the density of infected individuals within the community increases as the community strength increases. For community networks with weak strength, infectious diseases are likely not to be eradicated and eventually will become endemic. Therefore, controlling the frequency and range of intercommunity contact will be an effective initiative to curb outbreaks of infectious diseases throughout the network. Our results can provide a theoretical basis for preventing and controlling the spreading of infectious diseases.
社区结构广泛存在于真实的社会网络中。为了研究社区结构对传染病传播的影响,本文提出了一种同时考虑连接率和连接边数量的社区网络模型。基于所提出的社区网络,通过平均场理论构建了一种新的SIRS传播模型。此外,通过下一代矩阵方法计算了该模型的基本再生数。结果表明,社区节点的连接率和连接边数量在传染病传播过程中起着关键作用。具体而言,结果表明该模型的基本再生数随着社区强度的增加而降低。然而,社区内感染个体的密度随着社区强度的增加而增加。对于强度较弱的社区网络,传染病很可能无法根除并最终成为地方病。因此,控制社区间接触的频率和范围将是遏制整个网络传染病爆发的有效举措。我们的结果可为预防和控制传染病传播提供理论依据。