Zhang Lei, Liu Maoxing, Hou Qiang, Azizi Asma, Kang Yun
School of Big Data, North University of China, Taiyuan Shanxi, 030051, China.
School of Science, North University of China, Taiyuan Shanxi, 030051, China.
Appl Math Model. 2021 Jan;89:907-918. doi: 10.1016/j.apm.2020.07.039. Epub 2020 Aug 6.
Seasonal forcing and contact patterns are two key features of many disease dynamics that generate periodic patterns. Both features have not been ascertained deeply in the previous works. In this work, we develop and analyze a non-autonomous degree-based mean field network model within a Susceptible-Infected-Susceptible (SIS) framework. We assume that the disease transmission rate being periodic to study synergistic impacts of the periodic transmission and the heterogeneity of the contact network on the infection threshold and dynamics for seasonal diseases. We demonstrate both analytically and numerically that (1) the disease free equilibrium point is globally asymptotically stable if the basic reproduction number is less than one; and (2) there exists a unique global periodic solution that both susceptible and infected individuals coexist if the basic reproduction number is larger than one. We apply our framework to Scale-free contact networks for the simulation. Our results show that heterogeneity in the contact networks plays an important role in accelerating disease spreading and increasing the amplitude of the periodic steady state solution. These results confirm the need to address factors that create periodic patterns and contact patterns in seasonal disease when making policies to control an outbreak.
季节性强迫和接触模式是许多疾病动态变化的两个关键特征,它们会产生周期性模式。在以往的研究中,这两个特征都没有得到深入探讨。在这项工作中,我们在易感-感染-易感(SIS)框架内开发并分析了一个基于度的非自治平均场网络模型。我们假设疾病传播率是周期性的,以研究周期性传播和接触网络异质性对季节性疾病感染阈值和动态变化的协同影响。我们通过解析和数值方法证明:(1)如果基本再生数小于1,则无病平衡点是全局渐近稳定的;(2)如果基本再生数大于1,则存在一个唯一的全局周期解,易感个体和感染个体共存。我们将我们的框架应用于无标度接触网络进行模拟。我们结果表明,接触网络中的异质性在加速疾病传播和增加周期稳态解的振幅方面起着重要作用。这些结果证实了在制定控制疫情爆发的政策时,需要考虑那些在季节性疾病中产生周期性模式和接触模式的因素。