Spatiotemporal heterogeneity and its determinants of COVID-19 transmission in typical labor export provinces of China

Abstract Background Previous studies have indicated that the risk of infectious disease spread is greatest in locations where a population has massive and convenient access to the epicenter of an outbreak. However, the spatiotemporal variations and risk determinants of COVID-19 in typical labor expo...

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Main Authors: Li Wang, Chengdong Xu, Jinfeng Wang, Jiajun Qiao, Mingtao Yan, Qiankun Zhu
Format: Article
Language:English
Published: BMC 2021-03-01
Series:BMC Infectious Diseases
Subjects:
Online Access:https://doi.org/10.1186/s12879-021-05926-x
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spelling doaj-960e0540779d402abc648126e18e0deb2021-03-11T11:23:17ZengBMCBMC Infectious Diseases1471-23342021-03-0121111210.1186/s12879-021-05926-xSpatiotemporal heterogeneity and its determinants of COVID-19 transmission in typical labor export provinces of ChinaLi Wang0Chengdong Xu1Jinfeng Wang2Jiajun Qiao3Mingtao Yan4Qiankun Zhu5College of Environment and Planning, Henan UniversityState Key Laboratory of Resources and Environmental Information System, Institute of Geographic Science and Natural Resource Research, Chinese Academy of SciencesState Key Laboratory of Resources and Environmental Information System, Institute of Geographic Science and Natural Resource Research, Chinese Academy of SciencesCollege of Environment and Planning, Henan UniversityCollege of Environment and Planning, Henan UniversityCollege of Environment and Planning, Henan UniversityAbstract Background Previous studies have indicated that the risk of infectious disease spread is greatest in locations where a population has massive and convenient access to the epicenter of an outbreak. However, the spatiotemporal variations and risk determinants of COVID-19 in typical labor export regions of China remain unclear. Understanding the geographical distribution of the disease and the socio-economic factors affecting its transmission is critical for disease prevention and control. Methods A total of 2152 COVID-19 cases were reported from January 21 to February 24, 2020 across the 34 cities in Henan and Anhui. A Bayesian spatiotemporal hierarchy model was used to detect the spatiotemporal variations of the risk posed by COVID-19, and the GeoDetector q statistic was used to evaluate the determinant power of the potential influence factors. Results The risk posed by COVID-19 showed geographical spatiotemporal heterogeneity. Temporally, there was an outbreak period and control period. Spatially, there were high-risk regions and low-risk regions. The high-risk regions were mainly in the southwest areas adjacent to Hubei and cities that served as economic and traffic hubs, while the low-risk regions were mainly in western Henan and eastern Anhui, far away from the epicenter. The accessibility, local economic conditions, and medical infrastructure of Wuhan in Hubei province all played an important role in the spatiotemporal heterogeneity of COVID-19 transmission. The results indicated that the q statistics of the per capita GDP and the proportion of primary industry GDP were 0.47 and 0.47, respectively. The q statistic of the population flow from Wuhan was 0.33. In particular, the results showed that the q statistics for the interaction effects between population density and urbanization, population flow from Wuhan, per capita GDP, and the number of doctors were all greater than 0.8. Conclusions COVID-19 showed significant spatiotemporal heterogeneity in the labor export regions of China. The high-risk regions were mainly located in areas adjacent to the epicenter as well as in big cities that served as traffic hubs. Population access to the epicenter, as well as local economic and medical conditions, played an important role in the interactive effects of the disease transmission.https://doi.org/10.1186/s12879-021-05926-xCOVID-19Labor export regionSpatiotemporal patternSocioeconomic risk factors
collection DOAJ
language English
format Article
sources DOAJ
author Li Wang
Chengdong Xu
Jinfeng Wang
Jiajun Qiao
Mingtao Yan
Qiankun Zhu
spellingShingle Li Wang
Chengdong Xu
Jinfeng Wang
Jiajun Qiao
Mingtao Yan
Qiankun Zhu
Spatiotemporal heterogeneity and its determinants of COVID-19 transmission in typical labor export provinces of China
BMC Infectious Diseases
COVID-19
Labor export region
Spatiotemporal pattern
Socioeconomic risk factors
author_facet Li Wang
Chengdong Xu
Jinfeng Wang
Jiajun Qiao
Mingtao Yan
Qiankun Zhu
author_sort Li Wang
title Spatiotemporal heterogeneity and its determinants of COVID-19 transmission in typical labor export provinces of China
title_short Spatiotemporal heterogeneity and its determinants of COVID-19 transmission in typical labor export provinces of China
title_full Spatiotemporal heterogeneity and its determinants of COVID-19 transmission in typical labor export provinces of China
title_fullStr Spatiotemporal heterogeneity and its determinants of COVID-19 transmission in typical labor export provinces of China
title_full_unstemmed Spatiotemporal heterogeneity and its determinants of COVID-19 transmission in typical labor export provinces of China
title_sort spatiotemporal heterogeneity and its determinants of covid-19 transmission in typical labor export provinces of china
publisher BMC
series BMC Infectious Diseases
issn 1471-2334
publishDate 2021-03-01
description Abstract Background Previous studies have indicated that the risk of infectious disease spread is greatest in locations where a population has massive and convenient access to the epicenter of an outbreak. However, the spatiotemporal variations and risk determinants of COVID-19 in typical labor export regions of China remain unclear. Understanding the geographical distribution of the disease and the socio-economic factors affecting its transmission is critical for disease prevention and control. Methods A total of 2152 COVID-19 cases were reported from January 21 to February 24, 2020 across the 34 cities in Henan and Anhui. A Bayesian spatiotemporal hierarchy model was used to detect the spatiotemporal variations of the risk posed by COVID-19, and the GeoDetector q statistic was used to evaluate the determinant power of the potential influence factors. Results The risk posed by COVID-19 showed geographical spatiotemporal heterogeneity. Temporally, there was an outbreak period and control period. Spatially, there were high-risk regions and low-risk regions. The high-risk regions were mainly in the southwest areas adjacent to Hubei and cities that served as economic and traffic hubs, while the low-risk regions were mainly in western Henan and eastern Anhui, far away from the epicenter. The accessibility, local economic conditions, and medical infrastructure of Wuhan in Hubei province all played an important role in the spatiotemporal heterogeneity of COVID-19 transmission. The results indicated that the q statistics of the per capita GDP and the proportion of primary industry GDP were 0.47 and 0.47, respectively. The q statistic of the population flow from Wuhan was 0.33. In particular, the results showed that the q statistics for the interaction effects between population density and urbanization, population flow from Wuhan, per capita GDP, and the number of doctors were all greater than 0.8. Conclusions COVID-19 showed significant spatiotemporal heterogeneity in the labor export regions of China. The high-risk regions were mainly located in areas adjacent to the epicenter as well as in big cities that served as traffic hubs. Population access to the epicenter, as well as local economic and medical conditions, played an important role in the interactive effects of the disease transmission.
topic COVID-19
Labor export region
Spatiotemporal pattern
Socioeconomic risk factors
url https://doi.org/10.1186/s12879-021-05926-x
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