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基于社会经济数据的机器学习驱动的时空脆弱性评估,用于美国各县预防新冠疫情影响

A machine learning-driven spatio-temporal vulnerability appraisal based on socio-economic data for COVID-19 impact prevention in the U.S. counties.

作者信息

Moosazadeh Mohammad, Ifaei Pouya, Tayerani Charmchi Amir Saman, Asadi Somayeh, Yoo ChangKyoo

机构信息

Department of Environmental Science and Engineering, Center for Environmental Studies, College of Engineering, Kyung Hee University, Seocheon-dong 1, Giheung-gu, Yongin-Si, Gyeonggi-Do 446-701, South Korea.

Department of Architectural Engineering, Pennsylvania State University, 213 Engineering Unit, University Park, PA 16802, United States.

出版信息

Sustain Cities Soc. 2022 Aug;83:103990. doi: 10.1016/j.scs.2022.103990. Epub 2022 Jun 5.

Abstract

A mature and hybrid machine-learning model is verified by mature empirical analysis to measure county-level COVID-19 vulnerability and track the impact of the imposition of pandemic control policies in the U.S. A total of 30 county-level social, economic, and medical variables and a timeline of the imposed policies constitutes a COVID-19 database. A hybrid feature-selection model composed of four machine-learning algorithms is developed to emphasize the regional impact of community features on the case fatality rate (CFR). A COVID-19 vulnerability index (COVULin) is proposed to measure the county's vulnerability, the effects of model's parameters on mortality, and the efficiency of control policies. The results showed that the dense counties in which minority groups represent more than 45% of the population and those with poverty rates greater than 24% were the most vulnerable counties during the first and the last pandemic peaks, respectively. Highly-correlated CFR and COVULin scores indicated a close agreement between the model outcomes and COVID-19 impacts. Counties with higher poverty and uninsured rates were the most resistant to government intervention. It is anticipated that the proposed model can play an essential role in identifying vulnerable communities and help reduce damages during long-term alike disasters.

摘要

一个成熟的混合机器学习模型通过成熟的实证分析进行验证,以衡量美国县级新冠疫情脆弱性,并追踪实施大流行控制政策的影响。总共30个县级社会、经济和医疗变量以及实施政策的时间线构成了一个新冠疫情数据库。开发了一个由四种机器学习算法组成的混合特征选择模型,以强调社区特征对病死率(CFR)的区域影响。提出了一个新冠疫情脆弱性指数(COVULin),以衡量县的脆弱性、模型参数对死亡率的影响以及控制政策的效率。结果表明,少数群体占人口比例超过45%的人口密集县以及贫困率超过24%的县分别是第一波和最后一波疫情高峰期间最脆弱的县。高度相关的CFR和COVULin分数表明模型结果与新冠疫情影响之间高度一致。贫困率和未参保率较高的县对政府干预的抵抗力最强。预计所提出的模型可以在识别脆弱社区方面发挥重要作用,并有助于减少长期类似灾难期间的损害。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/371d/9167466/68c50d98e41d/gr1_lrg.jpg

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