Cargando…

Spatiotemporal Analysis for COVID-19 Delta Variant Using GIS-Based Air Parameter and Spatial Modeling

The coronavirus disease of 2019 (COVID-19) pandemic is currently a global challenge, with 210 countries, including Indonesia, seeking to minimize its spread. Therefore, this study aims to determine the spatiotemporal spread pattern of this virus in Surabaya using various data on confirmed cases from...

Descripción completa

Detalles Bibliográficos
Autores principales: Cahyadi, Mokhamad Nur, Handayani, Hepi Hapsari, Warmadewanthi, IDAA, Rokhmana, Catur Aries, Sulistiawan, Soni Sunarso, Waloedjo, Christrijogo Sumartono, Raharjo, Agus Budi, , Endroyono, Atok, Mohamad, Navisa, Shilvy Choiriyatun, Wulansari, Mega, Jin, Shuanggen
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8835317/
https://www.ncbi.nlm.nih.gov/pubmed/35162634
http://dx.doi.org/10.3390/ijerph19031614
_version_ 1784649402635255808
author Cahyadi, Mokhamad Nur
Handayani, Hepi Hapsari
Warmadewanthi, IDAA
Rokhmana, Catur Aries
Sulistiawan, Soni Sunarso
Waloedjo, Christrijogo Sumartono
Raharjo, Agus Budi
, Endroyono
Atok, Mohamad
Navisa, Shilvy Choiriyatun
Wulansari, Mega
Jin, Shuanggen
author_facet Cahyadi, Mokhamad Nur
Handayani, Hepi Hapsari
Warmadewanthi, IDAA
Rokhmana, Catur Aries
Sulistiawan, Soni Sunarso
Waloedjo, Christrijogo Sumartono
Raharjo, Agus Budi
, Endroyono
Atok, Mohamad
Navisa, Shilvy Choiriyatun
Wulansari, Mega
Jin, Shuanggen
author_sort Cahyadi, Mokhamad Nur
collection PubMed
description The coronavirus disease of 2019 (COVID-19) pandemic is currently a global challenge, with 210 countries, including Indonesia, seeking to minimize its spread. Therefore, this study aims to determine the spatiotemporal spread pattern of this virus in Surabaya using various data on confirmed cases from 28 April to 26 October 2021. It also aims to determine the relationship between pollutant parameters, such as carbon monoxide (CO), nitrogen dioxide (NO(2)), sulfur dioxide (SO(2)), and ozone (O(3)), as well as the government’s high social restrictions policy in Java-Bali. Several methods, such as the weighted mean center, directional distribution, Getis–Ord Gi*, Moran’s I, and geographically weighted regression, were used to identify the spatial spread pattern of the virus. The weighted mean center indicated that the epicenter location of the outbreak moved randomly. The directional distribution demonstrated a decrease of 21 km(2) at the end of the study phase, which proved that its spread has significantly reduced in Surabaya. Meanwhile, the Getis–Ord Gi* results demonstrated that the eastern and southern parts of the study region were highly infected. Moran’s I demonstrate that COVID-19 cases clustered during the spike. The geographically weighted regression model indicated a number of influence zones in the northeast, northwest, and a few in the southwest parts at the peak of R(2) 0.55. The relationship between COVID-19 cases and air pollution parameters proved that people living at the outbreak’s center have low pollution levels due to lockdown. Furthermore, the lockdown policy reduced CO, NO(2), SO(2), and O(3). In addition, increase in air pollutants; namely, NO(2), CO, SO(2) and O(3), was recorded after 7 weeks of lockdown implementation (started from 18 August).
format Online
Article
Text
id pubmed-8835317
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher MDPI
record_format MEDLINE/PubMed
spelling pubmed-88353172022-02-12 Spatiotemporal Analysis for COVID-19 Delta Variant Using GIS-Based Air Parameter and Spatial Modeling Cahyadi, Mokhamad Nur Handayani, Hepi Hapsari Warmadewanthi, IDAA Rokhmana, Catur Aries Sulistiawan, Soni Sunarso Waloedjo, Christrijogo Sumartono Raharjo, Agus Budi , Endroyono Atok, Mohamad Navisa, Shilvy Choiriyatun Wulansari, Mega Jin, Shuanggen Int J Environ Res Public Health Article The coronavirus disease of 2019 (COVID-19) pandemic is currently a global challenge, with 210 countries, including Indonesia, seeking to minimize its spread. Therefore, this study aims to determine the spatiotemporal spread pattern of this virus in Surabaya using various data on confirmed cases from 28 April to 26 October 2021. It also aims to determine the relationship between pollutant parameters, such as carbon monoxide (CO), nitrogen dioxide (NO(2)), sulfur dioxide (SO(2)), and ozone (O(3)), as well as the government’s high social restrictions policy in Java-Bali. Several methods, such as the weighted mean center, directional distribution, Getis–Ord Gi*, Moran’s I, and geographically weighted regression, were used to identify the spatial spread pattern of the virus. The weighted mean center indicated that the epicenter location of the outbreak moved randomly. The directional distribution demonstrated a decrease of 21 km(2) at the end of the study phase, which proved that its spread has significantly reduced in Surabaya. Meanwhile, the Getis–Ord Gi* results demonstrated that the eastern and southern parts of the study region were highly infected. Moran’s I demonstrate that COVID-19 cases clustered during the spike. The geographically weighted regression model indicated a number of influence zones in the northeast, northwest, and a few in the southwest parts at the peak of R(2) 0.55. The relationship between COVID-19 cases and air pollution parameters proved that people living at the outbreak’s center have low pollution levels due to lockdown. Furthermore, the lockdown policy reduced CO, NO(2), SO(2), and O(3). In addition, increase in air pollutants; namely, NO(2), CO, SO(2) and O(3), was recorded after 7 weeks of lockdown implementation (started from 18 August). MDPI 2022-01-30 /pmc/articles/PMC8835317/ /pubmed/35162634 http://dx.doi.org/10.3390/ijerph19031614 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Cahyadi, Mokhamad Nur
Handayani, Hepi Hapsari
Warmadewanthi, IDAA
Rokhmana, Catur Aries
Sulistiawan, Soni Sunarso
Waloedjo, Christrijogo Sumartono
Raharjo, Agus Budi
, Endroyono
Atok, Mohamad
Navisa, Shilvy Choiriyatun
Wulansari, Mega
Jin, Shuanggen
Spatiotemporal Analysis for COVID-19 Delta Variant Using GIS-Based Air Parameter and Spatial Modeling
title Spatiotemporal Analysis for COVID-19 Delta Variant Using GIS-Based Air Parameter and Spatial Modeling
title_full Spatiotemporal Analysis for COVID-19 Delta Variant Using GIS-Based Air Parameter and Spatial Modeling
title_fullStr Spatiotemporal Analysis for COVID-19 Delta Variant Using GIS-Based Air Parameter and Spatial Modeling
title_full_unstemmed Spatiotemporal Analysis for COVID-19 Delta Variant Using GIS-Based Air Parameter and Spatial Modeling
title_short Spatiotemporal Analysis for COVID-19 Delta Variant Using GIS-Based Air Parameter and Spatial Modeling
title_sort spatiotemporal analysis for covid-19 delta variant using gis-based air parameter and spatial modeling
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8835317/
https://www.ncbi.nlm.nih.gov/pubmed/35162634
http://dx.doi.org/10.3390/ijerph19031614
work_keys_str_mv AT cahyadimokhamadnur spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT handayanihepihapsari spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT warmadewanthiidaa spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT rokhmanacaturaries spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT sulistiawansonisunarso spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT waloedjochristrijogosumartono spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT raharjoagusbudi spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT endroyono spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT atokmohamad spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT navisashilvychoiriyatun spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT wulansarimega spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling
AT jinshuanggen spatiotemporalanalysisforcovid19deltavariantusinggisbasedairparameterandspatialmodeling