Division of Bioinformatics, International Institute for Zoonosis Control, Hokkaido University, Sapporo, Hokkaido, 001-0020, Japan.
Data Solution Unit 2 (Marriage and Family/Automobile Business/Travel), Data Management and Planning Office, Product Development Management Office, Recruit Co., Ltd, Chiyoda-ku, Tokyo, 100-6640, Japan.
Sci Rep. 2022 Nov 17;12(1):19780. doi: 10.1038/s41598-022-24323-1.
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.
人类行为的变化还没有被很好地理解,这一局限性一直是疫情预测的严重障碍。人们普遍认为,为了降低感染的风险,他们会根据疫情的状况或政府的干预措施,改变各自的行为。我们必须首先确定导致这些决策的因素,以预测这些变化。然而,由于缺乏观察未来行为决策的方法,对疾病的行为反应的理解是有限的。在这里,我们展示了住宿预订数据可以揭示决策过程,这些决策过程支撑着为降低 COVID-19 感染风险而采取的行为变化,即出行回避。我们发现,对于短期未来行为的出行回避动机是动态变化的,与疫情状况和/或政府干预有关。我们开发的方法可以定量测量和预测大规模人群的行为,以确定 COVID-19 感染的未来风险。这些发现使我们能够更好地理解对疾病传播的反应的行为变化,从而有助于开发可靠的疾病传播长期预测。