Graduate School of Informatics and Engineering, The University of Electro-Communications, 1-5-1 Chofugaoka, Chofu, Tokyo 182-8585, Japan.
Department of General Medicine, Juntendo University Faculty of Medicine, 3-1-3 Hongo, Bunkyo-Ku, Tokyo 113-8421, Japan.
Int J Environ Res Public Health. 2021 Jul 12;18(14):7439. doi: 10.3390/ijerph18147439.
This study aimed to analyze population flow using global positioning system (GPS) location data and evaluate influenza infection pathways by determining the relationship between population flow and the number of drugs sold at pharmacies. Neural collective graphical models (NCGMs; Iwata and Shimizu 2019) were applied for 25 cell areas, each measuring 10 × 10 km, in Osaka, Kyoto, Nara, and Hyogo prefectures to estimate population flow. An NCGM uses a neural network to incorporate the spatiotemporal dependency issue and reduce the estimated parameters. The prescription peaks between several cells with high population flow showed a high correlation with a delay of one to two days or with a seven-day time-lag. It was observed that not much population flows from one cell to the outside area on weekdays. This observation may have been due to geographical features and undeveloped transportation networks. The number of prescriptions for anti-influenza drugs in that cell remained low during the observation period. The present results indicate that influenza did not spread to areas with undeveloped traffic networks, and the peak number of drug prescriptions arrived with a time lag of several days in areas with a high amount of area-to-area movement due to commuting.
本研究旨在利用全球定位系统 (GPS) 位置数据分析人口流动,并通过确定人口流动与药店销售药品数量之间的关系来评估流感感染途径。应用神经集体图模型 (NCGM;Iwata 和 Shimizu 2019) 对大阪、京都、奈良和兵库县的 25 个 10×10km 的单元格区域的人口流动进行估计。NCGM 使用神经网络来解决时空依赖性问题并减少估计参数。在人口流动较大的几个单元格之间,处方高峰呈现出与延迟一到两天或七天时间滞后的高度相关性。在工作日,很少有从一个单元格流向外部区域的人口流动。这种观察结果可能是由于地理位置和不完善的交通网络造成的。在观察期间,该单元格的抗流感药物处方数量保持较低水平。本研究结果表明,流感并未传播到交通网络不完善的地区,由于通勤导致的区域间流动较大的地区,药物处方的高峰数量会延迟几天到达。