论文标题
COVID-19以及基础公共干预措施和流行病学状况的互联网搜索工作
Internet search effort on Covid-19 and the underlying public interventions and epidemiological status
论文作者
论文摘要
疾病扩散是需要跨学科方法的复杂现象。 COVID-19在非常短的时间范围内表现出全球空间扩散,导致全球大流行。使用政府干预措施分析了希腊在希腊的Covid-19的网络搜索工作,以每周的时间量表为主题,例如使用政府干预措施,例如学校关闭,运动限制,国家和国际旅行限制,持有家庭要求,掩盖需求,财务支持措施,财务支持措施以及新案例的新案例,例如新的案例和新的死亡案例,例如新的死亡和新的covariates covAriates covarariates。通过机器学习,分析了Covid-19的Web搜索工作与16个总体解释协变量之间的关系。将网络搜索时间与同一周RT表示的相应流行病学状况进行了比较。结果表明,训练有素的模型在实际和预测的Web搜索工作之间表现出R2 = 91%。预测网络搜索工作的前五个变量是新死亡,向非格里克国民的国际边界,新案件,测试政策以及内部运动的限制。在RT达到顶峰的同一周中,Web搜索达到顶峰,尽管在这些日期期间没有新的死亡或新病例达到峰值,并且在公共媒体上很少报道RT。随着2020年8月1日至15日(旅游季节的顶峰)的网络搜索工作和RT达到顶峰,讨论了这一点的含义。
Disease spread is a complex phenomenon requiring an interdisciplinary approach. Covid-19 exhibited a global spatial spread in a very short time frame resulting in a global pandemic. Data of web search effort in Greece on Covid-19 as a topic for one year on a weekly temporal scale were analyzed using governmental intervention measures such a s school closures, movement restrictions, national and international travelling restrictions, stay at home requirements, mask requirements, financial support measures, and epidemiological variables such as new cases and new deaths as potential explanatory covariates. The relationship between web search effort on Covid-19 and the 16 in total explanatory covariates was analyzed with machine learning. Web search in time was compared with the corresponding epidemiological situation, expressed by the Rt at the same week. Results indicated that the trained model exhibited a fit of R2 = 91% between the actual and predicted web search effort. The top five variables for predicting web search effort were new deaths, the opening of international borders to non-Greek nationals, new cases, testing policy, and restrictions in internal movements. Web search peaked during the same weeks that the Rt was peaking although new deaths or new cases were not peaking during those dates, and Rt rarely is reported in public media. As both web search effort and Rt peaked during 1-15 August 2020, the peak of the tourist season, the implications of this are discussed.