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Centrality in Epidemic Networks with Time-Delay: A Decision-Support Framework for Epidemic Containment

机译:随着延时的流行网络中的流行网络中的中心:流行遏制的决策支持框架

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During an epidemic, infectious individuals might not be detectable until some time after becoming infected. The studies show that carriers with mild or no symptoms are the main contributors to the transmission of a virus within the population. The average time it takes to develop the symptoms causes a delay in the spread dynamics of the disease. When considering the influence of delay on the disease propagation in epidemic networks, depending on the value of the time-delay and the network topology, the peak of epidemic could be considerably different in time, duration, and intensity. Motivated by the recent worldwide outbreak of the COVID-19 virus and the topological extent in which this virus has spread over the course of a few months, this study aims to highlight the effect of time-delay in the progress of such infectious diseases in the meta-population networks rather than individuals or a single population. In this regard, the notions of epidemic network centrality in terms of the underlying interaction graph of the network, structure of the uncertainties, and symptom development duration are investigated to establish a centrality-based analysis of the disease evolution. A traffic volume convex optimization method is then developed to control the outbreak by identifying the sub-populations with the highest centrality and then isolating them while maintaining the same overall traffic volume (motivated by economic considerations) in the meta-population level. The numerical results, along with the theoretical expectations, highlight the impact of time-delay as well as the importance of considering the worst-case scenarios in investigating the most effective methods of epidemic containment.
机译:在疫情期间,在被感染后的一段时间之前,感染者可能无法检测到。研究表明,具有轻度或无症状的载体是在人口中传播病毒的主要贡献者。发展症状所需的平均时间导致疾病的蔓延动态延迟。在考虑延迟延迟流行网络中疾病传播的影响时,根据时延的价值和网络拓扑的价值,流行病的峰值在时间,持续时间和强度的时间内可能具有显着不同。近几个月内,这项病毒在几个月内传播的拓扑病毒和拓扑范围的激励,这项研究旨在突出时间延迟在此类传染病进程中的效果元人口网络而不是个人或单一人口。在这方面,对网络的基本相互作用图,不确定性的结构和症状开发持续时间方面的流行病网络中心的概念进行了调查,以建立基于中心的疾病演化分析。然后开发出交通量凸优化方法以通过识别具有最高中心的子群体来控制爆发,然后在荟萃人群水平中保持相同的整体交通量(经济考虑激励)的同时隔离它们。数值结果以及理论期望,突出了时滞的影响以及考虑研究最有效的流行遏制方法的最坏情况的重要性。

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