COVID-19 Death Rates and County Subdivision Level Contextual Characteristics: A Connecticut Case Study

As of July 15th, 2020, at least 3,483,832 and 136,938 confirmed COVID-19 cases and deaths have been reported respectively in the U.S.A., posing unprecedented socioeconomic and health challenges to the country. Existing empirical evidence examining the spatial association between contextual factors a...

Full description

Saved in:
Bibliographic Details
Main Author: Yunliang Meng
Format: Article
Language:deu
Published: Unité Mixte de Recherche 8504 Géographie-cités 2021-02-01
Series:Cybergeo
Subjects:
Online Access:https://journals.openedition.org/cybergeo/36057
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1849337761137426432
author Yunliang Meng
author_facet Yunliang Meng
author_sort Yunliang Meng
collection DOAJ
description As of July 15th, 2020, at least 3,483,832 and 136,938 confirmed COVID-19 cases and deaths have been reported respectively in the U.S.A., posing unprecedented socioeconomic and health challenges to the country. Existing empirical evidence examining the spatial association between contextual factors and COVID-19 death rates, however, remains sparse and ambiguous. The objective of this research is to examine the spatial relationship between COVID-19 death rates and contextual characteristics at the county subdivision level in the State of Connecticut, U.S.A. The analysis shows that explanatory variables, such as income, race, age, type of housing, and underlying medical condition indicators, are associated with COVID-19 death rates in the state. Most importantly, the association between COVID-19 death rates and the explanatory variables in our analysis significantly varies over space, highlighting the need for local and context-specific COVID-19 prevention and intervention programs.
format Article
id doaj-art-98de3b3aa25a437d9b5c3bc48a723525
institution Kabale University
issn 1278-3366
language deu
publishDate 2021-02-01
publisher Unité Mixte de Recherche 8504 Géographie-cités
record_format Article
series Cybergeo
spelling doaj-art-98de3b3aa25a437d9b5c3bc48a7235252025-08-20T03:44:35ZdeuUnité Mixte de Recherche 8504 Géographie-citésCybergeo1278-33662021-02-0110.4000/cybergeo.36057COVID-19 Death Rates and County Subdivision Level Contextual Characteristics: A Connecticut Case StudyYunliang MengAs of July 15th, 2020, at least 3,483,832 and 136,938 confirmed COVID-19 cases and deaths have been reported respectively in the U.S.A., posing unprecedented socioeconomic and health challenges to the country. Existing empirical evidence examining the spatial association between contextual factors and COVID-19 death rates, however, remains sparse and ambiguous. The objective of this research is to examine the spatial relationship between COVID-19 death rates and contextual characteristics at the county subdivision level in the State of Connecticut, U.S.A. The analysis shows that explanatory variables, such as income, race, age, type of housing, and underlying medical condition indicators, are associated with COVID-19 death rates in the state. Most importantly, the association between COVID-19 death rates and the explanatory variables in our analysis significantly varies over space, highlighting the need for local and context-specific COVID-19 prevention and intervention programs.https://journals.openedition.org/cybergeo/36057regressionquantitative geographydiseasemortalityCovid-19
spellingShingle Yunliang Meng
COVID-19 Death Rates and County Subdivision Level Contextual Characteristics: A Connecticut Case Study
Cybergeo
regression
quantitative geography
disease
mortality
Covid-19
title COVID-19 Death Rates and County Subdivision Level Contextual Characteristics: A Connecticut Case Study
title_full COVID-19 Death Rates and County Subdivision Level Contextual Characteristics: A Connecticut Case Study
title_fullStr COVID-19 Death Rates and County Subdivision Level Contextual Characteristics: A Connecticut Case Study
title_full_unstemmed COVID-19 Death Rates and County Subdivision Level Contextual Characteristics: A Connecticut Case Study
title_short COVID-19 Death Rates and County Subdivision Level Contextual Characteristics: A Connecticut Case Study
title_sort covid 19 death rates and county subdivision level contextual characteristics a connecticut case study
topic regression
quantitative geography
disease
mortality
Covid-19
url https://journals.openedition.org/cybergeo/36057
work_keys_str_mv AT yunliangmeng covid19deathratesandcountysubdivisionlevelcontextualcharacteristicsaconnecticutcasestudy