Space-Time Cluster’s Detection and Geographical Weighted Regression Analysis of COVID-19 Mortality on Texas Counties
As COVID-19 run rampant in high-density housing sites, it is important to use real-time data in tracking the virus mobility. Emerging cluster detection analysis is a precise way of blunting the spread of COVID-19 as quickly as possible and save lives. To track compliable mobility of COVID-19 on a sp...
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doaj-16cfe1adebc14292a2172d25d23c4e5f2021-06-01T00:47:58ZengMDPI AGInternational Journal of Environmental Research and Public Health1661-78271660-46012021-05-01185541554110.3390/ijerph18115541Space-Time Cluster’s Detection and Geographical Weighted Regression Analysis of COVID-19 Mortality on Texas CountiesJinting Zhang0Xiu Wu1T. Edwin Chow2School of Resource and Environmental Science, Wuhan University, Wuhan 430079, ChinaDepartment of Geography, Texas State University, San Marcos, TX 78666, USADepartment of Geography, Texas State University, San Marcos, TX 78666, USAAs COVID-19 run rampant in high-density housing sites, it is important to use real-time data in tracking the virus mobility. Emerging cluster detection analysis is a precise way of blunting the spread of COVID-19 as quickly as possible and save lives. To track compliable mobility of COVID-19 on a spatial-temporal scale, this research appropriately analyzed the disparities between spatial-temporal clusters, expectation maximization clustering (EM), and hierarchical clustering (HC) analysis on Texas county-level. Then, based on the outcome of clustering analysis, the sensitive counties are Cottle, Stonewall, Bexar, Tarrant, Dallas, Harris, Jim hogg, and Real, corresponding to Southeast Texas analysis in Geographically Weighted Regression (GWR) modeling. The sensitive period took place in the last two quarters in 2020 and the first quarter in 2021. We explored PostSQL application to portray tracking Covid-19 trajectory. We captured 14 social, economic, and environmental impact’s indices to perform principal component analysis (PCA) to reduce dimensionality and minimize multicollinearity. By using the PCA, we extracted five factors related to mortality of COVID-19, involved population and hospitalization, adult population, natural supply, economic condition, air quality or medical care. We established the GWR model to seek the sensitive factors. The result shows that adult population, economic condition, air quality, and medical care are the sensitive factors. Those factors also triggered high increase of COVID-19 mortality. This research provides geographical understanding and solution of controlling COVID-19, reference of implementing geographically targeted ways to track virus mobility, and satisfy for the need of emergency operations plan (EOP).https://www.mdpi.com/1660-4601/18/11/5541geographical weighted regressionspace-time cluster’s detectionCOVID-19mortality |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Jinting Zhang Xiu Wu T. Edwin Chow |
spellingShingle |
Jinting Zhang Xiu Wu T. Edwin Chow Space-Time Cluster’s Detection and Geographical Weighted Regression Analysis of COVID-19 Mortality on Texas Counties International Journal of Environmental Research and Public Health geographical weighted regression space-time cluster’s detection COVID-19 mortality |
author_facet |
Jinting Zhang Xiu Wu T. Edwin Chow |
author_sort |
Jinting Zhang |
title |
Space-Time Cluster’s Detection and Geographical Weighted Regression Analysis of COVID-19 Mortality on Texas Counties |
title_short |
Space-Time Cluster’s Detection and Geographical Weighted Regression Analysis of COVID-19 Mortality on Texas Counties |
title_full |
Space-Time Cluster’s Detection and Geographical Weighted Regression Analysis of COVID-19 Mortality on Texas Counties |
title_fullStr |
Space-Time Cluster’s Detection and Geographical Weighted Regression Analysis of COVID-19 Mortality on Texas Counties |
title_full_unstemmed |
Space-Time Cluster’s Detection and Geographical Weighted Regression Analysis of COVID-19 Mortality on Texas Counties |
title_sort |
space-time cluster’s detection and geographical weighted regression analysis of covid-19 mortality on texas counties |
publisher |
MDPI AG |
series |
International Journal of Environmental Research and Public Health |
issn |
1661-7827 1660-4601 |
publishDate |
2021-05-01 |
description |
As COVID-19 run rampant in high-density housing sites, it is important to use real-time data in tracking the virus mobility. Emerging cluster detection analysis is a precise way of blunting the spread of COVID-19 as quickly as possible and save lives. To track compliable mobility of COVID-19 on a spatial-temporal scale, this research appropriately analyzed the disparities between spatial-temporal clusters, expectation maximization clustering (EM), and hierarchical clustering (HC) analysis on Texas county-level. Then, based on the outcome of clustering analysis, the sensitive counties are Cottle, Stonewall, Bexar, Tarrant, Dallas, Harris, Jim hogg, and Real, corresponding to Southeast Texas analysis in Geographically Weighted Regression (GWR) modeling. The sensitive period took place in the last two quarters in 2020 and the first quarter in 2021. We explored PostSQL application to portray tracking Covid-19 trajectory. We captured 14 social, economic, and environmental impact’s indices to perform principal component analysis (PCA) to reduce dimensionality and minimize multicollinearity. By using the PCA, we extracted five factors related to mortality of COVID-19, involved population and hospitalization, adult population, natural supply, economic condition, air quality or medical care. We established the GWR model to seek the sensitive factors. The result shows that adult population, economic condition, air quality, and medical care are the sensitive factors. Those factors also triggered high increase of COVID-19 mortality. This research provides geographical understanding and solution of controlling COVID-19, reference of implementing geographically targeted ways to track virus mobility, and satisfy for the need of emergency operations plan (EOP). |
topic |
geographical weighted regression space-time cluster’s detection COVID-19 mortality |
url |
https://www.mdpi.com/1660-4601/18/11/5541 |
work_keys_str_mv |
AT jintingzhang spacetimeclustersdetectionandgeographicalweightedregressionanalysisofcovid19mortalityontexascounties AT xiuwu spacetimeclustersdetectionandgeographicalweightedregressionanalysisofcovid19mortalityontexascounties AT tedwinchow spacetimeclustersdetectionandgeographicalweightedregressionanalysisofcovid19mortalityontexascounties |
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