Jiao Junfeng, Chen Yefu, Azimian Amin
Urban Information Lab, The School of Architecture, the University of Texas at Austin, Austin, TX 78705 USA.
Comput Urban Sci. 2021;1(1):27. doi: 10.1007/s43762-021-00028-5. Epub 2021 Dec 4.
Although studies have previously investigated the spatial factors of COVID-19, most of them were conducted at a low resolution and chose to limit their study areas to high-density urbanized regions. Hence, this study aims to investigate the economic-demographic disparities in COVID-19 infections and their spatial-temporal patterns in areas with different population densities in the United States. In particular, we examined the relationships between demographic and economic factors and COVID-19 density using ordinary least squares, geographically weighted regression analyses, and random forest based on zip code-level data of four regions in the United States. Our results indicated that the demographic and economic disparities are significant. Moreover, several areas with disadvantaged groups were found to be at high risk of COVID19 infection, and their infection risk changed at different pandemic periods. The findings of this study can contribute to the planning of public health services, such as the adoption of smarter and comprehensive policies for allocating economic recovery resources and vaccines during a public health crisis.
尽管此前已有研究对新冠疫情的空间因素进行过调查,但大多数研究的分辨率较低,且选择将研究区域限制在高密度城市化地区。因此,本研究旨在调查美国不同人口密度地区新冠病毒感染情况的经济人口差异及其时空模式。具体而言,我们利用美国四个地区邮政编码级别的数据,通过普通最小二乘法、地理加权回归分析和随机森林,研究了人口和经济因素与新冠病毒感染密度之间的关系。我们的结果表明,人口和经济差异显著。此外,还发现几个弱势群体聚居地区新冠病毒感染风险较高,且在不同疫情阶段其感染风险有所变化。本研究结果有助于公共卫生服务规划,例如在公共卫生危机期间采用更明智、全面的政策来分配经济复苏资源和疫苗。