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Exploring local and global regression models to estimate the spatial variability of Zika and Chikungunya cases in Recife, Brazil
Anjos, Rafael Silva dos; Nóbrega, Ranyére Silva; Ferreira, Henrique dos Santos; Lacerda, António Pais de; Sousa-Neves, Nuno de.
Affiliation
  • Anjos, Rafael Silva dos; Universidade Federal de Pernambuco. Departamento de Ciências Geográficas. Recife. BR
  • Nóbrega, Ranyére Silva; Universidade Federal de Pernambuco. Departamento de Ciências Geográficas. Recife. BR
  • Ferreira, Henrique dos Santos; Universidade Federal de Pernambuco. Departamento de Ciências Geográficas. Recife. BR
  • Lacerda, António Pais de; University of Lisbon. Department of Medicine. Lisbon. PT
  • Sousa-Neves, Nuno de; University of Évora. Department of Landscape. Environment and Planning. Évora. PT
Rev. Soc. Bras. Med. Trop ; 53: e20200027, 2020. tab, graf
Article in English | Sec. Est. Saúde SP, Coleciona SUS, LILACS | ID: biblio-1136802
Responsible library: BR1.1
ABSTRACT
Abstract

INTRODUCTION:

In this study, we aim to compare spatial statistic models to estimate the spatial distribution of Zika and Chikungunya infections in the city of Recife, Brazil. We also aim to establish the relationship between the diseases and the analyzed geographical conditions.

METHODS:

The models were defined by combining three categories type of spatial unit, calculation of the dependent variable format, and estimation methods (Geographical Weighted Regression [GWR] and Ordinary Least Square [OLS]). We identified the most accurate model to estimate the spatial distribution of the diseases. After selecting the model that provided best results, the relationship between the geographical conditions and the incidence of the diseases was analyzed.

RESULTS:

It was observed that the matrix of 100 meters (as the spatial unit) showed the highest efficiency to estimate the diseases. The best results were observed in the models that utilized the kernel density estimation (as the calculation of the dependent variable). In all models, the GWR method showed the best results. By considering the OLS coefficient values, it was observed that all geographical conditions are related to the incidence of Zika and Chikungunya, while the GWR coefficient values showed where this relationship was more noticeable.

CONCLUSIONS:

The model that utilized the combination of the matrix of 100 meters, kernel density estimation (as the calculation of the dependent variable) and GWR method showed the highest efficiency in estimating the spatial distribution of the diseases. The coefficient values showed that all analyzed geographical conditions are related to the illnesses' incidence.
Subject(s)


Full text: Available Collection: National databases / Brazil Health context: Neglected Diseases Health problem: Chikungunya Fever / Neglected Diseases Database: LILACS / Sec. Est. Saúde SP / Coleciona SUS Main subject: Chikungunya Fever / Zika Virus / Zika Virus Infection Type of study: Diagnostic study / Prognostic study Limits: Humans Country/Region as subject: South America / Brazil Language: English Journal: Rev. Soc. Bras. Med. Trop Year: 2020 Document type: Article Institution/Affiliation country: Universidade Federal de Pernambuco/BR / University of Lisbon/PT / University of Évora/PT

Full text: Available Collection: National databases / Brazil Health context: Neglected Diseases Health problem: Chikungunya Fever / Neglected Diseases Database: LILACS / Sec. Est. Saúde SP / Coleciona SUS Main subject: Chikungunya Fever / Zika Virus / Zika Virus Infection Type of study: Diagnostic study / Prognostic study Limits: Humans Country/Region as subject: South America / Brazil Language: English Journal: Rev. Soc. Bras. Med. Trop Year: 2020 Document type: Article Institution/Affiliation country: Universidade Federal de Pernambuco/BR / University of Lisbon/PT / University of Évora/PT
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