College of Computer Science and Technology, Jilin University, Changchun, 130012, China.
Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education, Jilin University, Changchun, 130012, China.
Sci Rep. 2017 Jul 6;7(1):4804. doi: 10.1038/s41598-017-03868-6.
To help health policy makers gain response time to mitigate infectious disease threats, it is essential to have an efficient epidemic surveillance. One common method of disease surveillance is to carefully select nodes (sentinels, or sensors) in the network to report outbreaks. One would like to choose sentinels so that they discover the outbreak as early as possible. The optimal choice of sentinels depends on the network structure. Studies have addressed this problem for static networks, but this is a first step study to explore designing surveillance systems for early detection on temporal networks. This paper is based on the idea that vaccination strategies can serve as a method to identify sentinels. The vaccination problem is a related question that is much more well studied for temporal networks. To assess the ability to detect epidemic outbreaks early, we calculate the time difference (lead time) between the surveillance set and whole population in reaching 1% prevalence. We find that the optimal selection of sentinels depends on both the network's temporal structures and the infection probability of the disease. We find that, for a mild infectious disease (low infection probability) on a temporal network in relation to potential disease spreading (the Prostitution network), the strategy of selecting latest contacts of random individuals provide the most amount of lead time. And for a more uniform, synthetic network with community structure the strategy of selecting frequent contacts of random individuals provide the most amount of lead time.
为了帮助卫生政策制定者争取时间以减轻传染病威胁,高效的疫情监测至关重要。疾病监测的一种常见方法是仔细选择网络中的节点(哨兵或传感器)来报告疫情爆发。人们希望选择能够尽早发现疫情爆发的哨兵。最佳哨兵选择取决于网络结构。已有研究针对静态网络解决了这个问题,但这是探索设计用于临时网络早期检测的监测系统的初步研究。本文基于疫苗接种策略可以作为识别哨兵的一种方法的想法。疫苗接种问题是针对临时网络研究得更深入的相关问题。为了评估早期检测疫情爆发的能力,我们计算了监测集和整个人群达到 1%流行率的时间差(领先时间)。我们发现,最佳的哨兵选择取决于网络的时间结构和疾病的感染概率。我们发现,对于临时网络上的轻度传染病(低感染概率)与潜在疾病传播(卖淫网络)的关系,选择随机个体的最新联系人的策略提供了最多的领先时间。对于具有社区结构的更均匀、综合网络,选择随机个体的频繁联系人的策略提供了最多的领先时间。