2021年中国人口迁移网络时空分析

IF 8.8 3区 医学 Q1 Medicine Infectious Disease Modelling Pub Date : 2023-10-11 DOI:10.1016/j.idm.2023.10.003
Wenjie Li , Ye Yao
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引用次数: 0

摘要

人口迁移是传染病传播大尺度时空模型的重要组成部分。识别网络中最具影响力的传播者对于控制和理解传染病的传播过程至关重要。我们使用百度Migration的2021年全年数据来构建移动网络。网络的节点代表城市,边缘代表城市之间的人口流动。通过k-shell分解和Louvain算法,我们可以得到每个城市和社区分区的k-shell值。然后,我们通过生成随机网络来识别复杂网络中最有效的节点或路径。进一步分析迁移矩阵的特征值,找出对网络影响最大的节点。通过Kendall’s τ检验,我们还发现了k-shell值与特征值的一致性。主要结果是,在春节和国庆节期间,网络传染病爆发的风险较高,长三角是全年疫情风险最高的地区。上海在k-壳值和特征值分析中都是最显著的节点。为了更准确地模拟传染病的传播,应考虑网络的时空特性。
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The spatiotemporal analysis of the population migration network in China, 2021

Population migration is a critical component of large-scale spatiotemporal models of infectious disease transmission. Identifying the most influential spreaders in networks is vital to controlling and understanding the spreading process of infectious diseases. We used Baidu Migration data for the whole year of 2021 to build mobility networks. The nodes of the network represent cities, and the edges represent the population flow between cities. By applying the k-shell decomposition and the Louvain algorithm, we could get the k-shell values for each city and community partition. Then, we identified the most efficient nodes or pathways in a complex network by generating random networks. Furthermore, we analyzed the eigenvalue of the migration matrix to find the nodes that have the most impact on the network. We also found the consistency between k-shell value and eigenvalue through Kendall's τ test. The main result is that in Spring Festival and National Day, the network is at higher risk of an infectious disease outbreak and the Yangtze River Delta is at the highest risk of an epidemic all year around. Shanghai is the most significant node in both k-shell value and eigenvalue analysis. The spatiotemporal property of the network should be taken into account to model the transmission of infectious diseases more accurately.

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来源期刊
Infectious Disease Modelling
Infectious Disease Modelling Mathematics-Applied Mathematics
CiteScore
17.00
自引率
3.40%
发文量
73
审稿时长
17 weeks
期刊介绍: Infectious Disease Modelling is an open access journal that undergoes peer-review. Its main objective is to facilitate research that combines mathematical modelling, retrieval and analysis of infection disease data, and public health decision support. The journal actively encourages original research that improves this interface, as well as review articles that highlight innovative methodologies relevant to data collection, informatics, and policy making in the field of public health.
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