Department of Computer Science and Center for Network Science and Technology, Rensselaer Polytechnic Institute, Troy, NY 12180, USA.
Department of Civil and Environmental Engineering, Northeastern University, Boston, MA 02115, USA.
Philos Trans A Math Phys Eng Sci. 2022 Jan 10;380(2214):20210116. doi: 10.1098/rsta.2021.0116. Epub 2021 Nov 22.
Percolation theory is essential for understanding disease transmission patterns on the temporal mobility networks. However, the traditional approach of the percolation process can be inefficient when analysing a large-scale, dynamic network for an extended period. Not only is it time-consuming but it is also hard to identify the connected components. Recent studies demonstrate that spatial containers restrict mobility behaviour, described by a hierarchical topology of mobility networks. Here, we leverage crowd-sourced, large-scale human mobility data to construct temporal hierarchical networks composed of over 175 000 block groups in the USA. Each daily network contains mobility between block groups within a Metropolitan Statistical Area (MSA), and long-distance travels across the MSAs. We examine percolation on both levels and demonstrate the changes of network metrics and the connected components under the influence of COVID-19. The research reveals the presence of functional subunits even with high thresholds of mobility. Finally, we locate a set of recurrent critical links that divide components resulting in the separation of core MSAs. Our findings provide novel insights into understanding the dynamical community structure of mobility networks during disruptions and could contribute to more effective infectious disease control at multiple scales. This article is part of the theme issue 'Data science approaches to infectious disease surveillance'.
渗流理论对于理解时间移动性网络上的疾病传播模式至关重要。然而,当分析一个大规模、动态的网络并持续较长时间时,传统的渗流过程方法可能效率低下。它不仅耗时,而且难以识别连接组件。最近的研究表明,空间容器限制了移动行为,这由移动性网络的层次拓扑结构描述。在这里,我们利用众包的大规模人类移动性数据来构建由美国超过 175000 个街区组组成的时间层次网络。每个日常网络包含都包含了都会区内街区组之间的流动性,以及跨越都会区的长途旅行。我们在两个层面上研究了渗流,并展示了 COVID-19 对网络指标和连接组件的影响。研究结果表明,即使在高流动性阈值下,也存在功能子单元。最后,我们找到了一组经常出现的关键链路,这些链路将组件分割开来,导致核心都会区的分离。我们的研究结果为理解移动性网络在干扰期间的动态社区结构提供了新的见解,并可能有助于在多个尺度上更有效地控制传染病。本文是主题为“传染病监测的数据科学方法”的一部分。