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德国的流动性与 COVID-19 之间的关系:利用苹果的流动性趋势数据对病例发生进行建模。

The Relationship between Mobility and COVID-19 in Germany: Modeling Case Occurrence using Apple's Mobility Trends Data.

机构信息

Department of the Natural and Built Environment, Sheffield Hallam University, Sheffield, United Kingdom.

Department of Pathology, Institute of Pathology and Neuropathology, Eberhard Karls University, Tübingen, Germany.

出版信息

Methods Inf Med. 2020 Dec;59(6):179-182. doi: 10.1055/s-0041-1726276. Epub 2021 Mar 26.

Abstract

BACKGROUND

Restrictions on social interaction and movement were implemented by the German government in March 2020 to reduce the transmission of coronavirus disease 2019 (COVID-19). Apple's "Mobility Trends" (AMT) data details levels of community mobility; it is a novel resource of potential use to epidemiologists.

OBJECTIVE

The aim of the study is to use AMT data to examine the relationship between mobility and COVID-19 case occurrence for Germany. Is a change in mobility apparent following COVID-19 and the implementation of social restrictions? Is there a relationship between mobility and COVID-19 occurrence in Germany?

METHODS

AMT data illustrates mobility levels throughout the epidemic, allowing the relationship between mobility and disease to be examined. Generalized additive models (GAMs) were established for Germany, with mobility categories, and date, as explanatory variables, and case numbers as response.

RESULTS

Clear reductions in mobility occurred following the implementation of movement restrictions. There was a negative correlation between mobility and confirmed case numbers. GAM using all three categories of mobility data accounted for case occurrence as well and was favorable (AIC or Akaike Information Criterion: 2504) to models using categories separately (AIC with "driving," 2511. "transit," 2513. "walking," 2508).

CONCLUSION

These results suggest an association between mobility and case occurrence. Further examination of the relationship between movement restrictions and COVID-19 transmission may be pertinent. The study shows how new sources of online data can be used to investigate problems in epidemiology.

摘要

背景

2020 年 3 月,德国政府实施了限制社交互动和行动的措施,以减少 2019 年冠状病毒病(COVID-19)的传播。苹果公司的“流动趋势”(AMT)数据详细说明了社区流动水平;这是一种潜在有用的流行病学新资源。

目的

本研究旨在使用 AMT 数据研究德国流动与 COVID-19 病例发生之间的关系。COVID-19 和社会限制实施后,流动是否发生变化?德国的流动性与 COVID-19 发生之间是否存在关系?

方法

AMT 数据说明了整个疫情期间的流动水平,使我们能够研究流动与疾病之间的关系。为德国建立了广义加性模型(GAMs),将流动类别和日期作为解释变量,病例数作为响应。

结果

在实施行动限制后,流动性明显下降。流动与确诊病例数呈负相关。使用所有三类流动数据的 GAM 同样可以很好地解释病例发生情况(AIC 或 Akaike 信息准则:2504),优于单独使用类别(AIC 与“驾驶”,2511. “交通”,2513. “步行”,2508)的模型。

结论

这些结果表明流动与病例发生之间存在关联。进一步研究行动限制与 COVID-19 传播之间的关系可能是相关的。该研究展示了如何使用新的在线数据源来研究流行病学中的问题。

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