Public transportation network scan for rapid surveillance

Y. Tanoue, D. Yoneoka, T. Kawashima, Shinya Uryu, S. Nomura, A. Eguchi, K. Makiyama, K. Matsuura
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引用次数: 1

Abstract

As people move around using public transportation networks, such as train and airplanes, it is expected that emerging infectious diseases will spread on the network. The scan statistics approach has been frequently applied to identify high-risk locations, and the results are widely used for making a clinical decisions in a timely manner. However, they are not optimally designed for modeling the spread and might not effectively work under the emergency situation where computational time is essentially important. We propose a new scan statistics approach for the public transportation network, called PTNS (Public Transportation Network Scan). PTNS utilizes the available network structure to construct potential candidates of clusters, and thus it can work well especially in situations where public transportation is the main medium of the infection spread. Further, it is designed for rapid surveillance. Lastly, PTNS is generalized to detect space-time clusters by customizing the iteration for potential clusters creation. Using the simulation data generated with a real railway network, we showed that, PTNS outperformed the conventional methods, including Circular- and Flex-scan approaches in terms of the detection performance, while the computational time is feasible.
公共交通网络扫描快速监控
随着人们乘坐火车、飞机等公共交通网络,预计新出现的传染病也会在网络上传播。扫描统计方法经常被用于识别高危部位,其结果被广泛用于及时做出临床决策。然而,它们并不是为建模传播而设计的最佳方案,在计算时间至关重要的紧急情况下可能无法有效地工作。我们提出了一种新的公共交通网络扫描统计方法,称为PTNS(公共交通网络扫描)。PTNS利用现有的网络结构来构建潜在的群集候选者,因此它可以很好地工作,特别是在公共交通是感染传播的主要媒介的情况下。此外,它是为快速监视而设计的。最后,将PTNS推广到时空聚类检测中,通过自定义迭代生成潜在聚类。利用真实铁路网的仿真数据,我们证明了PTNS在检测性能上优于传统方法,包括Circular- scan和Flex-scan方法,并且计算时间是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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