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論文
タイトル
Night-time population consistently explains the transmission dynamics of coronavirus disease 2019 in three megacities in Japan
タイトル(英)
Night-time population consistently explains the transmission dynamics of coronavirus disease 2019 in three megacities in Japan
参照URL
https://researchmap.jp/read0145056/published_papers/42649143
著者
Yuta Okada,Syudo Yamasaki,Atsushi Nishida,Ryosuke Shibasaki,Hiroshi Nishiura
著者(英)
Yuta Okada,Syudo Yamasaki,Atsushi Nishida,Ryosuke Shibasaki,Hiroshi Nishiura
担当区分
概要
概要(英)
Background Mobility data are crucial for understanding the dynamics of coronavirus disease 2019 (COVID-19), but the consistency of the usefulness of these data over time has been questioned. The present study aimed to reveal the relationship between the transmissibility of COVID-19 in Tokyo, Osaka, and Aichi prefectures and the daily night-time population in metropolitan areas belonging to each prefecture. Methods In Japan, the de facto population estimated from GPS-based location data from mobile phone users is regularly monitored by Ministry of Health, Labor, and Welfare and other health departments. Combined with this data, we conducted a time series linear regression analysis to explore the relationship between daily reported case counts of COVID-19 in Tokyo, Osaka, and Aichi, and night-time de facto population in downtown areas estimated from mobile phone location data, from February 2020 to May 2022. As an approximation of the effective reproduction number, the weekly ratio of cases was used. Models using night-time population with lags ranging from 7 to 14 days were tested. In time-varying regression analysis, the night-time population level and the daily change in night-time population level were included as explanatory variables. In the fixed-effect regression analysis, the inclusion of either the night-time population level or daily change, or both, as explanatory variables was tested, and autocorrelation was adjusted by introducing first-order autoregressive error of residuals. In both regression analyses, the lag of night-time population used in best fit models was determined using the information criterion. Results In the time-varying regression analysis, night-time population level tended to show positive to neutral effects on COVID-19 transmission, whereas the daily change of night-time population showed neutral to negative effects. The fixed-effect regression analysis revealed that for Tokyo and Osaka, regression models with 8-day-lagged night-time population level and daily change were the best fit, whereas in Aichi, the model using only the 9-day-lagged night-time population level was the best fit using the widely applicable information criterion. For all regions, the best-fit model suggested a positive relationship between night-time population and transmissibility, which was maintained over time. Conclusion Our results revealed that, regardless of the period of interest, a positive relationship between night-time population levels and COVID-19 dynamics was observed. The introduction of vaccinations and major outbreaks of Omicron BA. Two subvariants in Japan did not dramatically change the relationship between night-time population and COVID-19 dynamics in three megacities in Japan. Monitoring the night-time population continues to be crucial for understanding and forecasting the short-term future of COVID-19 incidence.
出版者・発行元
出版者・発行元(英)
Frontiers Media SA
誌名
Frontiers in Public Health
誌名(英)
Frontiers in Public Health
11
開始ページ
1163698
終了ページ
出版年月
2023年6月21日
査読の有無
査読有り
招待の有無
掲載種別
研究論文(学術雑誌)
ISSN
DOI URL
https://doi.org/10.3389/fpubh.2023.1163698
共同研究・競争的資金等の研究課題
研究者
西田 淳志 (ニシダ アツシ) , 山崎 修道 (ヤマサキ シュウドウ)