Cargando…

Spatio-temporal multidisciplinary analysis of socio-environmental conditions to explore the COVID-19 early evolution in urban sites in South America

This study aimed to analyse how socio-environmental conditions affected the early evolution of COVID-19 in 14 urban sites in South America based on a spatio-temporal multidisciplinary approach. The daily incidence rate of new COVID-19 cases with symptoms as the dependent variable and meteorological-...

Descripción completa

Detalles Bibliográficos
Autores principales: Mantilla Caicedo, Gilma C., Rusticucci, Matilde, Suli, Solange, Dankiewicz, Verónica, Ayala, Salvador, Caiman Peñarete, Alexandra, Díaz, Martín, Fontán, Silvia, Chesini, Francisco, Jiménez-Buitrago, Diana, Barreto Pedraza, Luis R., Barrera, Facundo
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Elsevier 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10162854/
https://www.ncbi.nlm.nih.gov/pubmed/37200576
http://dx.doi.org/10.1016/j.heliyon.2023.e16056
_version_ 1785037776383639552
author Mantilla Caicedo, Gilma C.
Rusticucci, Matilde
Suli, Solange
Dankiewicz, Verónica
Ayala, Salvador
Caiman Peñarete, Alexandra
Díaz, Martín
Fontán, Silvia
Chesini, Francisco
Jiménez-Buitrago, Diana
Barreto Pedraza, Luis R.
Barrera, Facundo
author_facet Mantilla Caicedo, Gilma C.
Rusticucci, Matilde
Suli, Solange
Dankiewicz, Verónica
Ayala, Salvador
Caiman Peñarete, Alexandra
Díaz, Martín
Fontán, Silvia
Chesini, Francisco
Jiménez-Buitrago, Diana
Barreto Pedraza, Luis R.
Barrera, Facundo
author_sort Mantilla Caicedo, Gilma C.
collection PubMed
description This study aimed to analyse how socio-environmental conditions affected the early evolution of COVID-19 in 14 urban sites in South America based on a spatio-temporal multidisciplinary approach. The daily incidence rate of new COVID-19 cases with symptoms as the dependent variable and meteorological-climatic data (mean, maximum, and minimum temperature, precipitation, and relative humidity) as the independent variables were analysed. The study period was from March to November of 2020. We inquired associations of these variables with COVID-19 data using Spearman's non-parametric correlation test, and a principal component analysis considering socio economic and demographic variables, new cases, and rates of COVID-19 new cases. Finally, an analysis using non-metric multidimensional scale ordering by the Bray-Curtis similarity matrix of meteorological data, socio economic and demographic variables, and COVID-19 was performed. Our findings revealed that the average, maximum, and minimum temperatures and relative humidity were significantly associated with rates of COVID-19 new cases in most of the sites, while precipitation was significantly associated only in four sites. Additionally, demographic variables such as the number of inhabitants, the percentage of the population aged 60 years and above, the masculinity index, and the GINI index showed a significant correlation with COVID-19 cases. Due to the rapid evolution of the COVID-19 pandemic, these findings provide strong evidence that biomedical, social, and physical sciences should join forces in truly multidisciplinary research that is critically needed in the current state of our region.
format Online
Article
Text
id pubmed-10162854
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher Elsevier
record_format MEDLINE/PubMed
spelling pubmed-101628542023-05-08 Spatio-temporal multidisciplinary analysis of socio-environmental conditions to explore the COVID-19 early evolution in urban sites in South America Mantilla Caicedo, Gilma C. Rusticucci, Matilde Suli, Solange Dankiewicz, Verónica Ayala, Salvador Caiman Peñarete, Alexandra Díaz, Martín Fontán, Silvia Chesini, Francisco Jiménez-Buitrago, Diana Barreto Pedraza, Luis R. Barrera, Facundo Heliyon Research Article This study aimed to analyse how socio-environmental conditions affected the early evolution of COVID-19 in 14 urban sites in South America based on a spatio-temporal multidisciplinary approach. The daily incidence rate of new COVID-19 cases with symptoms as the dependent variable and meteorological-climatic data (mean, maximum, and minimum temperature, precipitation, and relative humidity) as the independent variables were analysed. The study period was from March to November of 2020. We inquired associations of these variables with COVID-19 data using Spearman's non-parametric correlation test, and a principal component analysis considering socio economic and demographic variables, new cases, and rates of COVID-19 new cases. Finally, an analysis using non-metric multidimensional scale ordering by the Bray-Curtis similarity matrix of meteorological data, socio economic and demographic variables, and COVID-19 was performed. Our findings revealed that the average, maximum, and minimum temperatures and relative humidity were significantly associated with rates of COVID-19 new cases in most of the sites, while precipitation was significantly associated only in four sites. Additionally, demographic variables such as the number of inhabitants, the percentage of the population aged 60 years and above, the masculinity index, and the GINI index showed a significant correlation with COVID-19 cases. Due to the rapid evolution of the COVID-19 pandemic, these findings provide strong evidence that biomedical, social, and physical sciences should join forces in truly multidisciplinary research that is critically needed in the current state of our region. Elsevier 2023-05-06 /pmc/articles/PMC10162854/ /pubmed/37200576 http://dx.doi.org/10.1016/j.heliyon.2023.e16056 Text en © 2023 Published by Elsevier Ltd. https://creativecommons.org/licenses/by-nc-nd/4.0/This is an open access article under the CC BY-NC-ND license (http://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Research Article
Mantilla Caicedo, Gilma C.
Rusticucci, Matilde
Suli, Solange
Dankiewicz, Verónica
Ayala, Salvador
Caiman Peñarete, Alexandra
Díaz, Martín
Fontán, Silvia
Chesini, Francisco
Jiménez-Buitrago, Diana
Barreto Pedraza, Luis R.
Barrera, Facundo
Spatio-temporal multidisciplinary analysis of socio-environmental conditions to explore the COVID-19 early evolution in urban sites in South America
title Spatio-temporal multidisciplinary analysis of socio-environmental conditions to explore the COVID-19 early evolution in urban sites in South America
title_full Spatio-temporal multidisciplinary analysis of socio-environmental conditions to explore the COVID-19 early evolution in urban sites in South America
title_fullStr Spatio-temporal multidisciplinary analysis of socio-environmental conditions to explore the COVID-19 early evolution in urban sites in South America
title_full_unstemmed Spatio-temporal multidisciplinary analysis of socio-environmental conditions to explore the COVID-19 early evolution in urban sites in South America
title_short Spatio-temporal multidisciplinary analysis of socio-environmental conditions to explore the COVID-19 early evolution in urban sites in South America
title_sort spatio-temporal multidisciplinary analysis of socio-environmental conditions to explore the covid-19 early evolution in urban sites in south america
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10162854/
https://www.ncbi.nlm.nih.gov/pubmed/37200576
http://dx.doi.org/10.1016/j.heliyon.2023.e16056
work_keys_str_mv AT mantillacaicedogilmac spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT rusticuccimatilde spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT sulisolange spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT dankiewiczveronica spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT ayalasalvador spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT caimanpenaretealexandra spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT diazmartin spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT fontansilvia spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT chesinifrancisco spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT jimenezbuitragodiana spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT barretopedrazaluisr spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica
AT barrerafacundo spatiotemporalmultidisciplinaryanalysisofsocioenvironmentalconditionstoexplorethecovid19earlyevolutioninurbansitesinsouthamerica