2 research outputs found
Análise espaço-temporal da doença de Chagas e seus fatores de risco ambientais e demográficos no municĂpio de Barcarena, Pará, Brasil
To the Federal University of Pará (UFPA), to the Laboratory of Epidemiology and
Geoprocessing (EpiGeo) of the University of the State of Pará (UEPA), to the Laboratory
of Geoprocessing of the Evandro Chagas Institute (LabGeo/IEC), to the Health Department of
the Municipality of Barcarena (SESMUB), to the Coordination for the Improvement of Higher
Education Personnel (CAPES) and the National Council for Scientific and Technological
Development (CNPq).Universidade do Estado do Pará. Belém, PA, Brazil.Universidade do Estado do Pará. Belém, PA, Brazil.Universidade do Estado do Pará. Belém, PA, Brazil.Universidade do Estado do Pará. Belém, PA, Brazil.Ministério da Saúde. Secretaria de Vigilância em Saúde. Instituto Evandro Chagas. Ananindeua, PA, Brasil.Secretaria Municipal de Saúde de Barcarena. Barcarena, PA, Brazil.Universidade do Estado do Pará. Belém, PA, Brazil.Universidade do Estado do Pará. Belém, PA, Brazil.Introduction: Chagas disease is a parasitosis considered a serious problem of public health. In the
municipality of Barcarena, Pará, from 2007 to 2014, occurred the highest prevalence of this disease in Brazil.
Objective: To analyze the disease distribution related to epidemiological, environmental and demographic
variables, in the area and period of the study. Methods: Epidemiological and demographic data of Barcarena
Health Department and satellite images from the National Institute For Space Research (INPE) were used.
The deforestation data were obtained through satellite image classification, using artificial neural network.
The statistical significance was done with the χ2 test, and the spatial dependence tests among the variables were
done using Kernel and Moran techniques. Results: The epidemiological curve indicated a disease seasonal
pattern. The major percentage of the cases were in male, brown skin color, adult, illiterate, urban areas and
with probable oral contamination. It was confirmed the spatial dependence of the disease cases with the
different types of deforestation identified in the municipality, as well as agglomerations of cases in urban and
rural areas. Discussion: The disease distribution did not occur homogeneously, possibly due to the municipality
demographic dynamics, with intense migratory flows that generates the deforestation. Conclusion: Different
relationships among the variables studied and the occurrence of the disease in the municipality were observed.
The technologies used were satisfactory to construct the disease epidemiological scenarios