プレプリント / バージョン1

Future behaviours decision-making: the case study of travel avoidance during COVID-19 outbreaks

##article.authors##

  • Ito, Koichi Division of Bioinformatics, International Institute for Zoonosis Control, Hokkaido University
  • Shunsuke Kanemitsu Data Solution Unit 2(Marriage & Family/Automobile Business/Travel), Data Management & Planning Office, Product Development Management Office, Recruit Co., Ltd
  • Ryusuke Kimura SaaS Data Solution Unit, Data Management & Planning Office, Product Development Management Office, Recruit Co., Ltd
  • Ryosuke Omori Division of Bioinformatics, International Institute for Zoonosis Control, Hokkaido University

DOI:

https://doi.org/10.51094/jxiv.101

キーワード:

Covid-19、 Risk Reduction Behaviors、 Data Interpretations、 Statistical、 Data Mining、 Epidemiology

抄録

Human behavioural changes are poorly understood, and this limitation has been a serious obstacle to epidemic forecasting. It is generally understood that people change their respective behaviours to reduce the risk of infection in response to the status of an epidemic or government interventions. We must first identify the factors that lead to such decision-making to predict these changes. However, due to an absence of a method to observe decision-making for future behaviour, understanding the behavioural responses to disease is limited. Here, we show that accommodation reservation data could reveal the decision-making process that underpins behavioural changes, travel avoidance, for reducing the risk of COVID-19 infections. We found that the motivation to avoid travel with respect to only short-term future behaviours dynamically varied and was associated with the outbreak status and/or the interventions of the government. Our developed method can quantitatively measure and predict a large-scale population’s behaviour to determine the future risk of COVID-19 infections. These findings enable us to better understand behavioural changes in response to disease spread, and thus, contribute to the development of reliable long-term forecasting of disease spread.

ダウンロード *前日までの集計結果を表示します

ダウンロード実績データは、公開の翌日以降に作成されます。

引用文献

Lalmuanawma, S., Hussain, J. & Chhakchhuak, L. Applications of machine learning and artificial intelligence for Covid-19 (SARS-CoV-2) pandemic: A review. Chaos Solitons Fractals 139, 110059 (2020).

Moran, K. R. et al. Epidemic Forecasting is Messier Than Weather Forecasting: The Role of Human Behavior and Internet Data Streams in Epidemic Forecast. J Infect Dis. 214, S404–S408 (2016).

Telenti, A. et al. After the pandemic: perspectives on the future trajectory of COVID-19. Nature 596, 495–504 (2021).

Metcalf, C. J. E. & Lessler, J. Opportunities and challenges in modeling emerging infectious diseases. Science 357, 149–152 (2017).

Butler, D. Models overestimate Ebola cases. Nature 515, 18–18 (2014).

Funk, S., Knight, G. M. & Jansen, V. A. A. Ebola: the power of behaviour change. Nature 515, 492–492 (2014).

Funk, S. et al. The impact of control strategies and behavioural changes on the elimination of Ebola from Lofa County, Liberia. Philos Trans R Soc Lond B Biol Sci 372, 20160302 (2017).

Funk, S. et al. Assessing the performance of real-time epidemic forecasts: A case study of Ebola in the Western Area region of Sierra Leone, 2014-15. PLOS Computational Biology 15, e1006785 (2019).

Leung, G. M. et al. The impact of community psychological responses on outbreak control for severe acute respiratory syndrome in Hong Kong. J Epidemiol Community Health 57, 857–863 (2003).

Goodwin, R., Haque, S., Neto, F. & Myers, L. B. Initial psychological responses to Influenza A, H1N1 (‘Swine flu’). BMC Infect Dis 9, 166 (2009).

Cowling, B. J. et al. Community psychological and behavioral responses through the first wave of the 2009 influenza A(H1N1) pandemic in Hong Kong. J Infect Dis 202, 867–876 (2010).

Jalloh, M. F. et al. Evidence of behaviour change during an Ebola virus disease outbreak, Sierra Leone. Bulletin of the World Health Organization 98, 330-340B (2020).

Pan, Y. et al. Quantifying human mobility behaviour changes during the COVID-19 outbreak in the United States. Sci Rep 10, 20742 (2020).

Perrotta, D. et al. Behaviours and attitudes in response to the COVID-19 pandemic: insights from a cross-national Facebook survey. EPJ Data Sci. 10, 1–13 (2021).

Funk, S., Gilad, E., Watkins, C. & Jansen, V. A. A. The spread of awareness and its impact on epidemic outbreaks. Proc. Natl Acad. Sci. 106, 6872–6877 (2009).

Grantz, K. H. et al. The use of mobile phone data to inform analysis of COVID-19 pandemic epidemiology. Nat. Commun. 11, 4961 (2020).

Oliver, N. et al. Mobile phone data for informing public health actions across the COVID-19 pandemic life cycle. Science Advances 6, eabc0764 (2020).

Liu, L., Hou, A., Biderman, A., Ratti, C. & Chen, J. Understanding individual and collective mobility patterns from smart card records: A case study in Shenzhen. in 2009 12th International IEEE Conference on Intelligent Transportation Systems 1–6 (2009). doi:10.1109/ITSC.2009.5309662.

Jurdak, R. et al. Understanding Human Mobility from Twitter. PLOS ONE 10, e0131469 (2015).

Bengtsson, L. et al. Using Mobile Phone Data to Predict the Spatial Spread of Cholera. Sci Rep 5, 8923 (2015).

Finger, F. et al. Mobile phone data highlights the role of mass gatherings in the spreading of cholera outbreaks. Proc. Natl Acad. Sci. 113, 6421–6426 (2016).

Green, D. et al. Using mobile phone data for epidemic response in low resource settings—A case study of COVID-19 in Malawi. Data & Policy 3, (2021).

Wesolowski, A. et al. Quantifying the impact of human mobility on malaria. Science 338, 267–270 (2012).

Wesolowski, A. et al. Impact of human mobility on the emergence of dengue epidemics in Pakistan. Proc. Natl Acad. Sci. 112, 11887–11892 (2015).

Jia, J. S. et al. Population flow drives spatio-temporal distribution of COVID-19 in China. Nature 582, 389–394 (2020).

Gao, S. et al. Association of Mobile Phone Location Data Indications of Travel and Stay-at-Home Mandates With COVID-19 Infection Rates in the US. JAMA Network Open 3, e2020485–e2020485 (2020).

Koo, J. R. et al. Interventions to mitigate early spread of SARS-CoV-2 in Singapore: a modelling study. Lancet Infect. Dis. 20, 678–688 (2020).

Nagata, S. et al. Mobility Change and COVID-19 in Japan: Mobile Data Analysis of Locations of Infection. Journal of Epidemiology 31, 387–391 (2021).

Schlosser, F. et al. COVID-19 lockdown induces disease-mitigating structural changes in mobility networks. Proc. Natl Acad. Sci. 117, 32883–32890 (2020).

Kraemer, M. U. G. et al. The effect of human mobility and control measures on the COVID-19 epidemic in China. Science 368, 493–497 (2020).

Kwok, K. O. et al. Community Responses during Early Phase of COVID-19 Epidemic, Hong Kong. Emerg Infect Dis 26, 1575–1579 (2020).

Usher, K., Jackson, D., Durkin, J., Gyamfi, N. & Bhullar, N. Pandemic-related behaviours and psychological outcomes; A rapid literature review to explain COVID-19 behaviours. Int. J. Ment. Health Nurs. 29, 1018–1034 (2020).

Parady, G., Taniguchi, A. & Takami, K. Travel behavior changes during the COVID-19 pandemic in Japan: Analyzing the effects of risk perception and social influence on going-out self-restriction. Transportation Research Interdisciplinary Perspectives 7, 100181 (2020).

Japan Travel and Tourism Association & VALUES, Inc. Travel and tourism websites views ranking in 2020. https://www.nihon-kankou.or.jp/home/userfiles/files/autoupload/2022/02/1643812044.pdf (2022).

Statistics Bureau of Japan. 2020 Population Census. https://www.stat.go.jp/english/data/kokusei/2020/summary.html (2021).

Japan Tourism Agency. Accommodation and Travel Statistics Survey (November 2021; only available in Japanese). https://www.mlit.go.jp/kankocho/siryou/toukei/shukuhakutoukei.html (2021).

Ministry of Health, Labour and Welfare of the Japanese government. Trend in the number of newly confirmed cases (daily). https://www.mhlw.go.jp/stf/covid-19/open-data_english.html (2022).

Cabinet Secretariat of Japanese government. Measures to be taken based on the basic response policy (only available in Japanese). https://corona.go.jp/emergency/ (2022).

Ministry of Health, Labour and Welfare of the Japanese government. Set up a task force comprising medical experts to contain COVID-19 clusters (only available in Japanese). https://www.mhlw.go.jp/stf/newpage_09743.html (2020).

Rankin, C. H. et al. Habituation revisited: an updated and revised description of the behavioral characteristics of habituation. Neurobiol Learn Mem 92, 135–138 (2009).

Saha, K., Torous, J., Caine, E. D. & Choudhury, M. D. Psychosocial Effects of the COVID-19 Pandemic: Large-scale Quasi-Experimental Study on Social Media. J. Medical Internet Res. 22, e22600 (2020).

Choi, B. C. K. & Pak, A. W. P. A Catalog of Biases in Questionnaires. Prev Chronic Dis 2, A13 (2004).

公開済


投稿日時: 2022-06-23 02:04:27 UTC

公開日時: 2022-06-24 09:48:32 UTC
研究分野
生物学・生命科学・基礎医学