Spatiotemporal Associations Between Social Vulnerability, Environmental Measurements, and COVID‐19 in the Conterminous United States

Abstract This study summarizes the results from fitting a Bayesian hierarchical spatiotemporal model to coronavirus disease 2019 (COVID‐19) cases and deaths at the county level in the United States for the year 2020. Two models were created, one for cases and one for deaths, utilizing a scaled Besag...

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Main Authors: Daniel P. Johnson, Niranjan Ravi, Christian V. Braneon
Format: Article
Language:English
Published: American Geophysical Union (AGU) 2021-08-01
Series:GeoHealth
Subjects:
Online Access:https://doi.org/10.1029/2021GH000423
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spelling doaj-815dede90e9d4afba321a93c79ace6bf2021-08-26T13:41:07ZengAmerican Geophysical Union (AGU)GeoHealth2471-14032021-08-0158n/an/a10.1029/2021GH000423Spatiotemporal Associations Between Social Vulnerability, Environmental Measurements, and COVID‐19 in the Conterminous United StatesDaniel P. Johnson0Niranjan Ravi1Christian V. Braneon2Department of Geography Indiana University—Purdue University at Indianapolis Indianapolis IN USADepartment of Electrical and Computer Engineering Indiana University—Purdue University at Indianapolis Indianapolis IN USANASA Goddard Institute for Space Studies New York NY USAAbstract This study summarizes the results from fitting a Bayesian hierarchical spatiotemporal model to coronavirus disease 2019 (COVID‐19) cases and deaths at the county level in the United States for the year 2020. Two models were created, one for cases and one for deaths, utilizing a scaled Besag, York, Mollié model with Type I spatial‐temporal interaction. Each model accounts for 16 social vulnerability and 7 environmental variables as fixed effects. The spatial pattern between COVID‐19 cases and deaths is significantly different in many ways. The spatiotemporal trend of the pandemic in the United States illustrates a shift out of many of the major metropolitan areas into the United States Southeast and Southwest during the summer months and into the upper Midwest beginning in autumn. Analysis of the major social vulnerability predictors of COVID‐19 infection and death found that counties with higher percentages of those not having a high school diploma, having non‐White status and being Age 65 and over to be significant. Among the environmental variables, above ground level temperature had the strongest effect on relative risk to both cases and deaths. Hot and cold spots, areas of statistically significant high and low COVID‐19 cases and deaths respectively, derived from the convolutional spatial effect show that areas with a high probability of above average relative risk have significantly higher Social Vulnerability Index composite scores. The same analysis utilizing the spatiotemporal interaction term exemplifies a more complex relationship between social vulnerability, environmental measurements, COVID‐19 cases, and COVID‐19 deaths.https://doi.org/10.1029/2021GH000423spatial epidemiologysocial vulnerabilityCOVID‐19 pandemicBayesian spatiotemporal disease modelingenvironmental determinants of COVID‐19remote sensing and COVID‐19
collection DOAJ
language English
format Article
sources DOAJ
author Daniel P. Johnson
Niranjan Ravi
Christian V. Braneon
spellingShingle Daniel P. Johnson
Niranjan Ravi
Christian V. Braneon
Spatiotemporal Associations Between Social Vulnerability, Environmental Measurements, and COVID‐19 in the Conterminous United States
GeoHealth
spatial epidemiology
social vulnerability
COVID‐19 pandemic
Bayesian spatiotemporal disease modeling
environmental determinants of COVID‐19
remote sensing and COVID‐19
author_facet Daniel P. Johnson
Niranjan Ravi
Christian V. Braneon
author_sort Daniel P. Johnson
title Spatiotemporal Associations Between Social Vulnerability, Environmental Measurements, and COVID‐19 in the Conterminous United States
title_short Spatiotemporal Associations Between Social Vulnerability, Environmental Measurements, and COVID‐19 in the Conterminous United States
title_full Spatiotemporal Associations Between Social Vulnerability, Environmental Measurements, and COVID‐19 in the Conterminous United States
title_fullStr Spatiotemporal Associations Between Social Vulnerability, Environmental Measurements, and COVID‐19 in the Conterminous United States
title_full_unstemmed Spatiotemporal Associations Between Social Vulnerability, Environmental Measurements, and COVID‐19 in the Conterminous United States
title_sort spatiotemporal associations between social vulnerability, environmental measurements, and covid‐19 in the conterminous united states
publisher American Geophysical Union (AGU)
series GeoHealth
issn 2471-1403
publishDate 2021-08-01
description Abstract This study summarizes the results from fitting a Bayesian hierarchical spatiotemporal model to coronavirus disease 2019 (COVID‐19) cases and deaths at the county level in the United States for the year 2020. Two models were created, one for cases and one for deaths, utilizing a scaled Besag, York, Mollié model with Type I spatial‐temporal interaction. Each model accounts for 16 social vulnerability and 7 environmental variables as fixed effects. The spatial pattern between COVID‐19 cases and deaths is significantly different in many ways. The spatiotemporal trend of the pandemic in the United States illustrates a shift out of many of the major metropolitan areas into the United States Southeast and Southwest during the summer months and into the upper Midwest beginning in autumn. Analysis of the major social vulnerability predictors of COVID‐19 infection and death found that counties with higher percentages of those not having a high school diploma, having non‐White status and being Age 65 and over to be significant. Among the environmental variables, above ground level temperature had the strongest effect on relative risk to both cases and deaths. Hot and cold spots, areas of statistically significant high and low COVID‐19 cases and deaths respectively, derived from the convolutional spatial effect show that areas with a high probability of above average relative risk have significantly higher Social Vulnerability Index composite scores. The same analysis utilizing the spatiotemporal interaction term exemplifies a more complex relationship between social vulnerability, environmental measurements, COVID‐19 cases, and COVID‐19 deaths.
topic spatial epidemiology
social vulnerability
COVID‐19 pandemic
Bayesian spatiotemporal disease modeling
environmental determinants of COVID‐19
remote sensing and COVID‐19
url https://doi.org/10.1029/2021GH000423
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