GIS-based spatial modeling of COVID-19 incidence rate in the continental United States

https://doi.org/10.1016/j.scitotenv.2020.138884Get rights and content

Highlights

  • To explore relationship between 35 environmental, socioeconomic, and demographic variables and COVID-19 incidence in US

  • Multiscale geographically weighted regression could explain 68.1% of the total variations of COVID-19 incidence in US

  • Income inequality was an influential factor in explaining COVID-19 incidence particularly in the tri-state area

Abstract

During the first 90 days of the COVID-19 outbreak in the United States, over 675,000 confirmed cases of the disease have been reported, posing unprecedented socioeconomic burden to the country. Due to inadequate research on geographic modeling of COVID-19, we investigated county-level variations of disease incidence across the continental United States. We compiled a geodatabase of 35 environmental, socioeconomic, topographic, and demographic variables that could explain the spatial variability of disease incidence. Further, we employed spatial lag and spatial error models to investigate spatial dependence and geographically weighted regression (GWR) and multiscale GWR (MGWR) models to locally examine spatial non-stationarity. The results suggested that even though incorporating spatial autocorrelation could significantly improve the performance of the global ordinary least square model, these models still represent a significantly poor performance compared to the local models. Moreover, MGWR could explain the highest variations (adj. R2: 68.1%) with the lowest AICc compared to the others. Mapping the effects of significant explanatory variables (i.e., income inequality, median household income, the proportion of black females, and the proportion of nurse practitioners) on spatial variability of COVID-19 incidence rates using MGWR could provide useful insights to policymakers for targeted interventions.

Keywords

COVID-19
GIS
Multiscale GWR
Spatial non-stationarity

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