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利用统计分析和随机森林机器学习模型,考察县级(美国)层面社交距离对 COVID-19 复合增长率的影响。

Examining the effect of social distancing on the compound growth rate of COVID-19 at the county level (United States) using statistical analyses and a random forest machine learning model.

机构信息

Biomedical Materials Science, University of Mississippi Medical Center, 2500 N State St, Jackson, MS 39216, USA.

Information Technology Laboratory, US Army Engineer Research and Development Center, 3909 Halls Ferry Rd, Vicksburg, MS 39180, USA.

出版信息

Public Health. 2020 Aug;185:27-29. doi: 10.1016/j.puhe.2020.04.016. Epub 2020 Apr 28.

Abstract

OBJECTIVES

The goal of the present work is to investigate trends among US counties and coronavirus disease 2019 (COVID-19) growth rates in relation to the existence of shelter-in-place (SIP) orders in that county.

STUDY DESIGN

This is a prospective cohort study.

METHODS

Compound growth rates were calculated using cumulative confirmed COVID-19 cases from January 21, 2020, to March 31, 2020, in all 3139 US counties. Compound growth was chosen as it gives a single number that can be used in machine learning to represent the speed of virus spread during defined time intervals. Statistical analyses and a random forest machine learning model were used to analyze the data for differences in counties with and without SIP orders.

RESULTS

Statistical analyses revealed that the March 16 presidential recommendation (limiting gatherings to ≤10 people) lowered the compound growth rate of COVID-19 for all counties in the US by 6.6%, and the counties that implemented SIP after March 16 had a further reduction of 7.8% compared with the counties that did not implement SIP after March 16. A random forest machine learning model was built to predict compound growth rate after a SIP order and was found to have an accuracy of 92.3%. The random forest found that population, longitude, and population per square mile were the most important features when predicting the effect of SIP.

CONCLUSIONS

SIP orders were found to be effective at reducing the growth rate of COVID-19 cases in the US. Counties with a large population or a high population density were found to benefit the most from a SIP order.

摘要

目的

本研究旨在调查美国各县与新冠病毒疾病 2019 年(COVID-19)增长率之间的关系,重点关注该县是否实施了就地避难所(SIP)命令。

研究设计

这是一项前瞻性队列研究。

方法

使用 2020 年 1 月 21 日至 3 月 31 日期间美国所有 3139 个县累计确诊的 COVID-19 病例计算复合增长率。选择复合增长率是因为它提供了一个单一的数字,可以在机器学习中使用,以代表在定义的时间间隔内病毒传播的速度。统计分析和随机森林机器学习模型用于分析有和没有 SIP 命令的县之间的差异。

结果

统计分析表明,3 月 16 日总统建议(限制聚会人数≤10 人)使美国所有县的 COVID-19 复合增长率降低了 6.6%,而在 3 月 16 日后实施 SIP 的县与在 3 月 16 日后未实施 SIP 的县相比,进一步降低了 7.8%。建立了一个随机森林机器学习模型来预测 SIP 命令后的复合增长率,发现准确率为 92.3%。随机森林发现,在预测 SIP 的效果时,人口、经度和每平方英里的人口是最重要的特征。

结论

SIP 命令被发现能有效降低美国 COVID-19 病例的增长率。人口多或人口密度高的县从 SIP 命令中受益最大。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b692/7186211/9b69ff8e8d95/gr1_lrg.jpg

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