School of Management, Jinan University, Guangzhou 510632, China.
College of Economics, Jinan University, Guangzhou 510632, China.
Int J Environ Res Public Health. 2023 Feb 9;20(4):3007. doi: 10.3390/ijerph20043007.
The COVID-19 outbreak at the end of December 2019 spread rapidly all around the world. The objective of this study is to investigate and understand the relationship between public health measures and the development of the pandemic through Google search behaviors in the United States. Our collected data includes Google search queries related to COVID-19 from 1 January to 4 April 2020. After using unit root tests (ADF test and PP test) to examine the stationary and a Hausman test to choose a random effect model, a panel data analysis is conducted to investigate the key query terms with the newly added cases. In addition, a full sample regression and two sub-sample regressions are proposed to explain: (1) The changes in COVID-19 cases number are partly related to search variables related to treatments and medical resources, such as ventilators, hospitals, and masks, which correlate positively with the number of new cases. In contrast, regarding public health measures, social distancing, lockdown, stay-at-home, and self-isolation measures were negatively associated with the number of new cases in the US. (2) In mild states, which ranked one to twenty by the average daily new cases from least to most in 50 states, the query terms about public health measures (quarantine, lockdown, and self-isolation) have a significant negative correlation with the number of new cases. However, only the query terms about lockdown and self-isolation are also negatively associated with the number of new cases in serious states (states ranking 31 to 50). Furthermore, public health measures taken by the government during the COVID-19 outbreak are closely related to the situation of controlling the pandemic.
2019 年 12 月底爆发的 COVID-19 疫情在全球迅速蔓延。本研究的目的是通过美国谷歌搜索行为来调查和了解公共卫生措施与大流行发展之间的关系。我们收集的数据包括 2020 年 1 月 1 日至 4 月 4 日与 COVID-19 相关的谷歌搜索查询。在使用单位根检验(ADF 检验和 PP 检验)检验平稳性和豪斯曼检验选择随机效应模型之后,进行面板数据分析以调查与新发病例相关的关键查询词。此外,提出了全样本回归和两个子样本回归来解释:(1)COVID-19 病例数量的变化部分与与治疗和医疗资源相关的搜索变量有关,例如呼吸机、医院和口罩,这些变量与新发病例数量呈正相关。相比之下,关于公共卫生措施,社会疏远、封锁、居家和自我隔离措施与美国新发病例数量呈负相关。(2)在轻度状态中,根据 50 个州的平均每日新发病例数量从最少到最多进行排名,第 1 到 20 位,与公共卫生措施(隔离、封锁和自我隔离)相关的查询词与新发病例数量呈显著负相关。然而,仅封锁和自我隔离的查询词也与严重状态(排名第 31 到 50 位的州)的新发病例数量呈负相关。此外,在 COVID-19 爆发期间政府采取的公共卫生措施与控制大流行的情况密切相关。