Spatial analysis of COVID-19 incidence and its determinants using spatial modeling: A study on India
The first incident of COVID-19 case in India was recorded on 30th January, 2020 which turns to 100,000 marks on May 19th and by June 3rd it was over 200,000 active cases and 5,800 deaths. Geographic Information System (GIS) based spatial models can be helpful for better understanding of different fa...
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doaj-a1cfaeab092e4f669d4c7d9dc5a1b5152021-07-27T04:09:30ZengElsevierEnvironmental Challenges2667-01002021-08-014100096Spatial analysis of COVID-19 incidence and its determinants using spatial modeling: A study on IndiaIpsita Dutta0Tirthankar Basu1Arijit Das2Department of Geography, University of Gour Banga, Malda, West Bengal 732103, IndiaCorresponding author.; Department of Geography, University of Gour Banga, Malda, West Bengal 732103, IndiaDepartment of Geography, University of Gour Banga, Malda, West Bengal 732103, IndiaThe first incident of COVID-19 case in India was recorded on 30th January, 2020 which turns to 100,000 marks on May 19th and by June 3rd it was over 200,000 active cases and 5,800 deaths. Geographic Information System (GIS) based spatial models can be helpful for better understanding of different factors that have triggered COVID-19 spread at district level in India. In the present study, 19 variables were considered that can explain the variability of the disease. Different spatial statistical techniques were used to describe the spatial distribution of COVID-19 and identify significant clusters. Spatial lag and error models (SLM and SEM) were employed to examine spatial dependency, geographical weighted regression (GWR) and multi-scale GWR (MGWR) were employed to examine at local level. The results show that the global models perform poorly in explaining the factors for COVID-19 incidences. MGWR shows the best-fit-model to explain the variables affecting COVID-19 (R2= 0.75) with lowest AICc value. Population density, urbanization and bank facility were found to be most susceptible for COVID-19 cases. These indicate the necessity of effective policies related to social distancing, low mobility. Mapping of different significant variables using MGWR can provide significant insights for policy makers for taking necessary actions.http://www.sciencedirect.com/science/article/pii/S2667010021000755COVID-19PandemicGWRMGWRIndia |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ipsita Dutta Tirthankar Basu Arijit Das |
spellingShingle |
Ipsita Dutta Tirthankar Basu Arijit Das Spatial analysis of COVID-19 incidence and its determinants using spatial modeling: A study on India Environmental Challenges COVID-19 Pandemic GWR MGWR India |
author_facet |
Ipsita Dutta Tirthankar Basu Arijit Das |
author_sort |
Ipsita Dutta |
title |
Spatial analysis of COVID-19 incidence and its determinants using spatial modeling: A study on India |
title_short |
Spatial analysis of COVID-19 incidence and its determinants using spatial modeling: A study on India |
title_full |
Spatial analysis of COVID-19 incidence and its determinants using spatial modeling: A study on India |
title_fullStr |
Spatial analysis of COVID-19 incidence and its determinants using spatial modeling: A study on India |
title_full_unstemmed |
Spatial analysis of COVID-19 incidence and its determinants using spatial modeling: A study on India |
title_sort |
spatial analysis of covid-19 incidence and its determinants using spatial modeling: a study on india |
publisher |
Elsevier |
series |
Environmental Challenges |
issn |
2667-0100 |
publishDate |
2021-08-01 |
description |
The first incident of COVID-19 case in India was recorded on 30th January, 2020 which turns to 100,000 marks on May 19th and by June 3rd it was over 200,000 active cases and 5,800 deaths. Geographic Information System (GIS) based spatial models can be helpful for better understanding of different factors that have triggered COVID-19 spread at district level in India. In the present study, 19 variables were considered that can explain the variability of the disease. Different spatial statistical techniques were used to describe the spatial distribution of COVID-19 and identify significant clusters. Spatial lag and error models (SLM and SEM) were employed to examine spatial dependency, geographical weighted regression (GWR) and multi-scale GWR (MGWR) were employed to examine at local level. The results show that the global models perform poorly in explaining the factors for COVID-19 incidences. MGWR shows the best-fit-model to explain the variables affecting COVID-19 (R2= 0.75) with lowest AICc value. Population density, urbanization and bank facility were found to be most susceptible for COVID-19 cases. These indicate the necessity of effective policies related to social distancing, low mobility. Mapping of different significant variables using MGWR can provide significant insights for policy makers for taking necessary actions. |
topic |
COVID-19 Pandemic GWR MGWR India |
url |
http://www.sciencedirect.com/science/article/pii/S2667010021000755 |
work_keys_str_mv |
AT ipsitadutta spatialanalysisofcovid19incidenceanditsdeterminantsusingspatialmodelingastudyonindia AT tirthankarbasu spatialanalysisofcovid19incidenceanditsdeterminantsusingspatialmodelingastudyonindia AT arijitdas spatialanalysisofcovid19incidenceanditsdeterminantsusingspatialmodelingastudyonindia |
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