The Social and Economic Factors Underlying the Incidence of COVID-19 Cases and Deaths in US Counties During the Initial Outbreak Phase

IF 0.6 Q4 ECONOMICS
Nivedita Mukherji
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引用次数: 13

Abstract

This paper uncovers the socioeconomic and health/lifestyle factors that can explain the differential impact of the coronavirus pandemic on different parts of the United States during the initial outbreak phase of the pandemic. Using a dynamic panel representation of an epidemiological model of disease spread, the paper develops a Vulnerability Index for US counties from the daily reported number of cases over a 20-day period of rapid disease growth. County-level economic, demographic, and health factors are used to explain the differences in the values of this index and thereby the transmission and concentration of the disease across the country. These factors are also used to examine the number of reported deaths. The paper finds that counties with high median income have a high incidence of cases but reported lower deaths. Income inequality, as measured by the Gini coefficient, is found to be associated with more deaths and more cases. The remarkable similarity in the distribution of cases across the country and the distribution of distance-weighted international passengers served by the top international airports is evidence of the spread of the virus by way of international travel. The distributions of age, race and health risk factors such as obesity and diabetes are found to be particularly significant factors in explaining the differences in mortality across counties. Counties with better access to health care, as measured by the number of primary care physicians per capita, have lower deaths, and so do places with more health awareness as measured by flu vaccination prevalence. Environmental health conditions such as the amount of air pollution are found to be associated with counties with higher deaths from the virus. It is hoped that research such as these will help policymakers to develop risk factors for each region of the country to better contain the spread of infectious diseases in the future.
在疫情爆发初期,美国县COVID-19病例和死亡发生率背后的社会和经济因素
本文揭示了社会经济和健康/生活方式因素,这些因素可以解释冠状病毒大流行在大流行爆发初期对美国不同地区的不同影响。本文使用疾病传播流行病学模型的动态面板表示,根据20天疾病快速增长期间每天报告的病例数,为美国各县制定了脆弱性指数。县级经济、人口和健康因素被用来解释该指数值的差异,从而解释疾病在全国的传播和集中。这些因素也用于检查报告的死亡人数。论文发现,收入中位数高的县发病率高,但报告的死亡率较低。研究发现,以基尼系数衡量的收入不平等与更多的死亡和病例有关。全国各地病例分布和主要国际机场服务的距离加权国际旅客分布显著相似,这是病毒通过国际旅行传播的证据。年龄、种族和健康风险因素(如肥胖和糖尿病)的分布被发现是解释各县死亡率差异的特别重要因素。以人均初级保健医生的数量衡量,获得卫生保健机会更好的县的死亡率较低;以流感疫苗接种普及率衡量,卫生意识更强的地区的死亡率也较低。研究发现,空气污染程度等环境卫生条件与该病毒死亡率较高的县有关。人们希望,诸如此类的研究将帮助决策者为该国的每个地区制定风险因素,以便在未来更好地控制传染病的传播。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.20
自引率
22.20%
发文量
13
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