A multivariate analysis on spatiotemporal evolution of Covid-19 in Brazil
This data-driven work aims to analyze and classify the spatiotemporal distribution of all Brazilian states considering data so diverse as the number of Covid-19 cases, deaths, confirmed cases per 100 k inhabitants, mortality per 100 k inhabitants and case fatality rates as health indicators. We also...
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2020-01-01
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doaj-1b9eda4d39a84f649ed4072f95d8490b2021-04-02T16:20:58ZengKeAi Communications Co., Ltd.Infectious Disease Modelling2468-04272020-01-015670680A multivariate analysis on spatiotemporal evolution of Covid-19 in BrazilMarcio Luis Ferreira Nascimento, Ph.D.0Nano Group @ UFBA, Department of Chemical Engineering, Polytechnic School, Federal University of Bahia, Rua Aristides Novis 2, Federação, 40210 - 630, Salvador, BA, Brazil; PEI - Graduate Program in Industrial Engineering, Department of Chemical Engineering, Polytechnic School, Federal University of Bahia, Rua Aristides Novis 2, Federação, 40210 - 630, Salvador, BA, Brazil; Institute of Humanities, Arts and Sciences, Federal University of Bahia, Rua Barão de Jeremoabo s/n, Classroom Pavilion V, Ondina University Campus, 40170-115, Salvador, BA, Brazil.This data-driven work aims to analyze and classify the spatiotemporal distribution of all Brazilian states considering data so diverse as the number of Covid-19 cases, deaths, confirmed cases per 100 k inhabitants, mortality per 100 k inhabitants and case fatality rates as health indicators. We also considered population, area and population density as geographic indicators. Finally, GDP and HDI were taken into account as economic and social criteria. For this task data were collected from April 3rd until August 8th, 2020, corresponding to epidemiological weeks 14–32, reaching three million cases and a hundred thousand deaths. With this data it was possible to classify Brazilian states using multivariate methods into possible groups by means of non-hierarchical (k-means) cluster as well as factor analysis. It was possible to group all states plus the Federal District into five clusters, taking into account these 10 variables over the first five months of the epidemic. Group changes between states were observed over time and clusters, and between three and four factors were found. However, even with great difference on health indicators during days, the number of clusters remains fixed. Also, São Paulo and Rio de Janeiro states were ranked at top list taking into account all epidemiological weeks. Correlations were observed between variables, such as the number of Covid cases and deaths with GDP for most of epidemiological weeks. Some clusters were more critical due to specific variables, including cities that are main hotspots. These multivariate findings would provide a comprehensive description of the ongoing Covid-19 epidemic and may help to guide subsequent studies to understand and control virus transmission.http://www.sciencedirect.com/science/article/pii/S2468042720300427PandemicCOVID-19CoronavirusK-means clusteringFactor analysisSpatiotemporal analysis |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Marcio Luis Ferreira Nascimento, Ph.D. |
spellingShingle |
Marcio Luis Ferreira Nascimento, Ph.D. A multivariate analysis on spatiotemporal evolution of Covid-19 in Brazil Infectious Disease Modelling Pandemic COVID-19 Coronavirus K-means clustering Factor analysis Spatiotemporal analysis |
author_facet |
Marcio Luis Ferreira Nascimento, Ph.D. |
author_sort |
Marcio Luis Ferreira Nascimento, Ph.D. |
title |
A multivariate analysis on spatiotemporal evolution of Covid-19 in Brazil |
title_short |
A multivariate analysis on spatiotemporal evolution of Covid-19 in Brazil |
title_full |
A multivariate analysis on spatiotemporal evolution of Covid-19 in Brazil |
title_fullStr |
A multivariate analysis on spatiotemporal evolution of Covid-19 in Brazil |
title_full_unstemmed |
A multivariate analysis on spatiotemporal evolution of Covid-19 in Brazil |
title_sort |
multivariate analysis on spatiotemporal evolution of covid-19 in brazil |
publisher |
KeAi Communications Co., Ltd. |
series |
Infectious Disease Modelling |
issn |
2468-0427 |
publishDate |
2020-01-01 |
description |
This data-driven work aims to analyze and classify the spatiotemporal distribution of all Brazilian states considering data so diverse as the number of Covid-19 cases, deaths, confirmed cases per 100 k inhabitants, mortality per 100 k inhabitants and case fatality rates as health indicators. We also considered population, area and population density as geographic indicators. Finally, GDP and HDI were taken into account as economic and social criteria. For this task data were collected from April 3rd until August 8th, 2020, corresponding to epidemiological weeks 14–32, reaching three million cases and a hundred thousand deaths. With this data it was possible to classify Brazilian states using multivariate methods into possible groups by means of non-hierarchical (k-means) cluster as well as factor analysis. It was possible to group all states plus the Federal District into five clusters, taking into account these 10 variables over the first five months of the epidemic. Group changes between states were observed over time and clusters, and between three and four factors were found. However, even with great difference on health indicators during days, the number of clusters remains fixed. Also, São Paulo and Rio de Janeiro states were ranked at top list taking into account all epidemiological weeks. Correlations were observed between variables, such as the number of Covid cases and deaths with GDP for most of epidemiological weeks. Some clusters were more critical due to specific variables, including cities that are main hotspots. These multivariate findings would provide a comprehensive description of the ongoing Covid-19 epidemic and may help to guide subsequent studies to understand and control virus transmission. |
topic |
Pandemic COVID-19 Coronavirus K-means clustering Factor analysis Spatiotemporal analysis |
url |
http://www.sciencedirect.com/science/article/pii/S2468042720300427 |
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