Use of Poisson spatiotemporal regression models for the Brazilian Amazon Forest: malaria count data
INTRODUCTION: Malaria is a serious problem in the Brazilian Amazon region, and the detection of possible risk factors could be of great interest for public health authorities. The objective of this article was to investigate the association between environmental variables and the yearly registers of malaria in the Amazon region using Bayesian spatiotemporal methods. METHODS: We used Poisson spatiotemporal regression models to analyze the Brazilian Amazon forest malaria count for the period from 1999 to 2008. In this study, we included some covariates that could be important in the yearly prediction of malaria, such as deforestation rate. We obtained the inferences using a Bayesian approach and Markov Chain Monte Carlo (MCMC) methods to simulate samples for the joint posterior distribution of interest. The discrimination of different models was also discussed. RESULTS: The model proposed here suggests that deforestation rate, the number of inhabitants per km², and the human development index (HDI) are important in the prediction of malaria cases. CONCLUSIONS: It is possible to conclude that human development, population growth, deforestation, and their associated ecological alterations are conducive to increasing malaria risk. We conclude that the use of Poisson regression models that capture the spatial and temporal effects under the Bayesian paradigm is a good strategy for modeling malaria counts.
Main Authors: | , , , , |
---|---|
Format: | Digital revista |
Language: | English |
Published: |
Sociedade Brasileira de Medicina Tropical - SBMT
2011
|
Online Access: | http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0037-86822011000600019 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
id |
oai:scielo:S0037-86822011000600019 |
---|---|
record_format |
ojs |
spelling |
oai:scielo:S0037-868220110006000192012-01-06Use of Poisson spatiotemporal regression models for the Brazilian Amazon Forest: malaria count dataAchcar,Jorge AlbertoMartinez,Edson ZangiacomiSouza,Aparecida Doniseti Pires deTachibana,Vilma MayumiFlores,Edilson Ferreira Malaria Statistics Deforestation Environment Amazon Bayesian methods INTRODUCTION: Malaria is a serious problem in the Brazilian Amazon region, and the detection of possible risk factors could be of great interest for public health authorities. The objective of this article was to investigate the association between environmental variables and the yearly registers of malaria in the Amazon region using Bayesian spatiotemporal methods. METHODS: We used Poisson spatiotemporal regression models to analyze the Brazilian Amazon forest malaria count for the period from 1999 to 2008. In this study, we included some covariates that could be important in the yearly prediction of malaria, such as deforestation rate. We obtained the inferences using a Bayesian approach and Markov Chain Monte Carlo (MCMC) methods to simulate samples for the joint posterior distribution of interest. The discrimination of different models was also discussed. RESULTS: The model proposed here suggests that deforestation rate, the number of inhabitants per km², and the human development index (HDI) are important in the prediction of malaria cases. CONCLUSIONS: It is possible to conclude that human development, population growth, deforestation, and their associated ecological alterations are conducive to increasing malaria risk. We conclude that the use of Poisson regression models that capture the spatial and temporal effects under the Bayesian paradigm is a good strategy for modeling malaria counts.info:eu-repo/semantics/openAccessSociedade Brasileira de Medicina Tropical - SBMTRevista da Sociedade Brasileira de Medicina Tropical v.44 n.6 20112011-12-01info:eu-repo/semantics/articletext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S0037-86822011000600019en10.1590/S0037-86822011000600019 |
institution |
SCIELO |
collection |
OJS |
country |
Brasil |
countrycode |
BR |
component |
Revista |
access |
En linea |
databasecode |
rev-scielo-br |
tag |
revista |
region |
America del Sur |
libraryname |
SciELO |
language |
English |
format |
Digital |
author |
Achcar,Jorge Alberto Martinez,Edson Zangiacomi Souza,Aparecida Doniseti Pires de Tachibana,Vilma Mayumi Flores,Edilson Ferreira |
spellingShingle |
Achcar,Jorge Alberto Martinez,Edson Zangiacomi Souza,Aparecida Doniseti Pires de Tachibana,Vilma Mayumi Flores,Edilson Ferreira Use of Poisson spatiotemporal regression models for the Brazilian Amazon Forest: malaria count data |
author_facet |
Achcar,Jorge Alberto Martinez,Edson Zangiacomi Souza,Aparecida Doniseti Pires de Tachibana,Vilma Mayumi Flores,Edilson Ferreira |
author_sort |
Achcar,Jorge Alberto |
title |
Use of Poisson spatiotemporal regression models for the Brazilian Amazon Forest: malaria count data |
title_short |
Use of Poisson spatiotemporal regression models for the Brazilian Amazon Forest: malaria count data |
title_full |
Use of Poisson spatiotemporal regression models for the Brazilian Amazon Forest: malaria count data |
title_fullStr |
Use of Poisson spatiotemporal regression models for the Brazilian Amazon Forest: malaria count data |
title_full_unstemmed |
Use of Poisson spatiotemporal regression models for the Brazilian Amazon Forest: malaria count data |
title_sort |
use of poisson spatiotemporal regression models for the brazilian amazon forest: malaria count data |
description |
INTRODUCTION: Malaria is a serious problem in the Brazilian Amazon region, and the detection of possible risk factors could be of great interest for public health authorities. The objective of this article was to investigate the association between environmental variables and the yearly registers of malaria in the Amazon region using Bayesian spatiotemporal methods. METHODS: We used Poisson spatiotemporal regression models to analyze the Brazilian Amazon forest malaria count for the period from 1999 to 2008. In this study, we included some covariates that could be important in the yearly prediction of malaria, such as deforestation rate. We obtained the inferences using a Bayesian approach and Markov Chain Monte Carlo (MCMC) methods to simulate samples for the joint posterior distribution of interest. The discrimination of different models was also discussed. RESULTS: The model proposed here suggests that deforestation rate, the number of inhabitants per km², and the human development index (HDI) are important in the prediction of malaria cases. CONCLUSIONS: It is possible to conclude that human development, population growth, deforestation, and their associated ecological alterations are conducive to increasing malaria risk. We conclude that the use of Poisson regression models that capture the spatial and temporal effects under the Bayesian paradigm is a good strategy for modeling malaria counts. |
publisher |
Sociedade Brasileira de Medicina Tropical - SBMT |
publishDate |
2011 |
url |
http://old.scielo.br/scielo.php?script=sci_arttext&pid=S0037-86822011000600019 |
work_keys_str_mv |
AT achcarjorgealberto useofpoissonspatiotemporalregressionmodelsforthebrazilianamazonforestmalariacountdata AT martinezedsonzangiacomi useofpoissonspatiotemporalregressionmodelsforthebrazilianamazonforestmalariacountdata AT souzaaparecidadonisetipiresde useofpoissonspatiotemporalregressionmodelsforthebrazilianamazonforestmalariacountdata AT tachibanavilmamayumi useofpoissonspatiotemporalregressionmodelsforthebrazilianamazonforestmalariacountdata AT floresedilsonferreira useofpoissonspatiotemporalregressionmodelsforthebrazilianamazonforestmalariacountdata |
_version_ |
1756380452976852992 |