Sentinel Nodes Identification for Infectious Disease Surveillance on Temporal Social Networks

Jiachen Geng, Yuanxi Li, Z. Zhang, Li Tao
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引用次数: 4

Abstract

Active surveillance, which aims at detecting and controlling infectious diseases at an early stage, is essential to prevent the spread of infections, protect people’s health, and promote social good. One difficult problem in active surveillance is how to intelligently sample a small group of nodes as sentinels from a large number of individuals for detecting the outbreaks of infectious diseases as early as possible. To sample sentinels, the existing methods depending on the global information about a social network are infeasible for mapping out social connections is time-consuming and inaccurate. Instead, some existing studies utilize local information about individuals’ connected neighbors to heuristically select sentinels. However, few of them take into account the temporal structure of social connections, which is believed to have a direct effect on the spread of infectious diseases. In this paper, we propose two temporal-network surveillance strategies for selecting sentinels based on the friendship paradox theory, a sociological theory describing a phenomenon in social networks that most people have fewer friends than their friends have. By simulating our strategies with three existing strategies based on the susceptible-infected (SI) model, the results show that our proposed 1st AN and 2nd RN strategies can detect the outbreak of infectious diseases earlier than the other strategies on the synthetic temporal network and two real-world temporal social networks, respectively. CCS CONCEPTS • Social and professional topics → Surveillance; • Networks;
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基于时间社会网络的传染病监测前哨节点识别
主动监测的目的是在早期阶段发现和控制传染病,这对于防止感染蔓延、保护人民健康和促进社会福祉至关重要。主动监测中的一个难题是如何从大量个体中智能抽取少量节点作为哨兵,以便尽早发现传染病的爆发。对于样本哨兵,现有的依赖于社会网络全局信息的方法对于绘制社会关系是不可行的,耗时且不准确。相反,一些现有的研究利用有关个体连接邻居的本地信息来启发式地选择哨兵。然而,很少有人考虑到社会关系的时间结构,而人们认为这对传染病的传播有直接影响。在本文中,我们基于友谊悖论理论提出了两种选择哨兵的时间网络监视策略。友谊悖论理论是一种社会学理论,描述了社交网络中大多数人的朋友比他们的朋友少的现象。通过对现有的三种基于易感感染(SI)模型的策略进行仿真,结果表明,我们提出的第1种ann和第2种RN策略分别在合成时间网络和两个真实时间社会网络上比其他策略更早地检测到传染病的爆发。•社会和专业话题→监控;•网络;
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