Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological study

Detalhes bibliográficos
Autor(a) principal: Lima, Marcos Venicius Malveira de
Data de Publicação: 2020
Outros Autores: Laporta, Gabriel Zorello
Tipo de documento: preprint
Idioma: por
Título da fonte: SciELO Preprints
Texto Completo: https://preprints.scielo.org/index.php/scielo/preprint/view/1322
Resumo: Objective. To evaluate predictive power of different time-series models of malaria cases in the state of Amapá, Brazil, in the period 1997-2016. Methods. This is an ecological study of time series with malaria cases registered in the state of Amapá. Ten 3 deterministic or stochastic statistical models were used for simulation and testing in 3, 6, and 12 month forecast horizons. Results. The initial test showed that the series is stationary. Deterministic models performed better than stochastic models. The ARIMA model showed absolute errors of less than 2% on the logarithmic scale and relative errors 3.4-5.8 times less than the null model. The prediction of future cases of malaria in the horizons of 6 and 12 months in advance was possible. Conclusion. It is recommended the use of the ARIMA model to predict future scenarios and to anticipate planning in state health services in the Amazon Region.
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spelling Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological studyEvaluación de modelos de predicción para la aparición de la malaria en el estado del Amapá, Brasil, 1997-2016: un estudio ecológicoAvaliação de modelos de predição para ocorrência de malária no estado do Amapá, 1997-2016: um estudo ecológicoEstudos de Séries TemporaisMaláriaTécnicas de Apoio para a DecisãoMonitoramento EpidemiológicoPrevisõesTime Series StudiesMalariaDecision Support TechniquesEpidemiological MonitoringForecastingObjective. To evaluate predictive power of different time-series models of malaria cases in the state of Amapá, Brazil, in the period 1997-2016. Methods. This is an ecological study of time series with malaria cases registered in the state of Amapá. Ten 3 deterministic or stochastic statistical models were used for simulation and testing in 3, 6, and 12 month forecast horizons. Results. The initial test showed that the series is stationary. Deterministic models performed better than stochastic models. The ARIMA model showed absolute errors of less than 2% on the logarithmic scale and relative errors 3.4-5.8 times less than the null model. The prediction of future cases of malaria in the horizons of 6 and 12 months in advance was possible. Conclusion. It is recommended the use of the ARIMA model to predict future scenarios and to anticipate planning in state health services in the Amazon Region.Objetivo. Avaliar a capacidade preditiva de diferentes modelos de série temporal de casos de malária no estado do Amapá, Brasil, no período 1997-2016. Métodos. Estudo ecológico de séries temporais com casos de malária registrados no Amapá. Foram utilizados dez modelos estatísticos determinísticos ou estocásticos para simulação e teste em horizontes de previsão de 3, 6 e 12 meses. Resultados. O teste inicial mostrou que a série é estacionária. Os modelos determinísticos apresentaram melhor desempenho do que os modelos estocásticos. O modelo ARIMA apresentou erros absolutos menores do que 2% na escala logarítmica e erros relativos 3,4-5,8 vezes menores em relação ao modelo nulo. A predição de casos futuros de malária nos horizontes de 6 e 12 meses de antecedência foi possível. Conclusão. Recomenda-se o uso de modelo ARIMA para a previsão de cenários futuros e para a antecipação do planejamento nos serviços de saúde dos estados da Região Amazônica.SciELO PreprintsSciELO PreprintsSciELO Preprints2020-10-21info:eu-repo/semantics/preprintinfo:eu-repo/semantics/publishedVersionapplication/pdfhttps://preprints.scielo.org/index.php/scielo/preprint/view/132210.1590/SciELOPreprints.1322porhttps://preprints.scielo.org/index.php/scielo/article/view/1322/2074Copyright (c) 2020 Marcos Venicius Malveira de Lima, Gabriel Zorello Laportahttps://creativecommons.org/licenses/by/4.0info:eu-repo/semantics/openAccessLima, Marcos Venicius Malveira de Laporta, Gabriel Zorello reponame:SciELO Preprintsinstname:SciELOinstacron:SCI2020-10-21T10:39:12Zoai:ops.preprints.scielo.org:preprint/1322Servidor de preprintshttps://preprints.scielo.org/index.php/scieloONGhttps://preprints.scielo.org/index.php/scielo/oaiscielo.submission@scielo.orgopendoar:2020-10-21T10:39:12SciELO Preprints - SciELOfalse
dc.title.none.fl_str_mv Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological study
Evaluación de modelos de predicción para la aparición de la malaria en el estado del Amapá, Brasil, 1997-2016: un estudio ecológico
Avaliação de modelos de predição para ocorrência de malária no estado do Amapá, 1997-2016: um estudo ecológico
title Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological study
spellingShingle Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological study
Lima, Marcos Venicius Malveira de
Estudos de Séries Temporais
Malária
Técnicas de Apoio para a Decisão
Monitoramento Epidemiológico
Previsões
Time Series Studies
Malaria
Decision Support Techniques
Epidemiological Monitoring
Forecasting
title_short Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological study
title_full Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological study
title_fullStr Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological study
title_full_unstemmed Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological study
title_sort Evaluation of prediction models for the occurrence of malaria in the state of Amapá, Brazil, 1997-2016: an ecological study
author Lima, Marcos Venicius Malveira de
author_facet Lima, Marcos Venicius Malveira de
Laporta, Gabriel Zorello
author_role author
author2 Laporta, Gabriel Zorello
author2_role author
dc.contributor.author.fl_str_mv Lima, Marcos Venicius Malveira de
Laporta, Gabriel Zorello
dc.subject.por.fl_str_mv Estudos de Séries Temporais
Malária
Técnicas de Apoio para a Decisão
Monitoramento Epidemiológico
Previsões
Time Series Studies
Malaria
Decision Support Techniques
Epidemiological Monitoring
Forecasting
topic Estudos de Séries Temporais
Malária
Técnicas de Apoio para a Decisão
Monitoramento Epidemiológico
Previsões
Time Series Studies
Malaria
Decision Support Techniques
Epidemiological Monitoring
Forecasting
description Objective. To evaluate predictive power of different time-series models of malaria cases in the state of Amapá, Brazil, in the period 1997-2016. Methods. This is an ecological study of time series with malaria cases registered in the state of Amapá. Ten 3 deterministic or stochastic statistical models were used for simulation and testing in 3, 6, and 12 month forecast horizons. Results. The initial test showed that the series is stationary. Deterministic models performed better than stochastic models. The ARIMA model showed absolute errors of less than 2% on the logarithmic scale and relative errors 3.4-5.8 times less than the null model. The prediction of future cases of malaria in the horizons of 6 and 12 months in advance was possible. Conclusion. It is recommended the use of the ARIMA model to predict future scenarios and to anticipate planning in state health services in the Amazon Region.
publishDate 2020
dc.date.none.fl_str_mv 2020-10-21
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dc.identifier.uri.fl_str_mv https://preprints.scielo.org/index.php/scielo/preprint/view/1322
10.1590/SciELOPreprints.1322
url https://preprints.scielo.org/index.php/scielo/preprint/view/1322
identifier_str_mv 10.1590/SciELOPreprints.1322
dc.language.iso.fl_str_mv por
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dc.relation.none.fl_str_mv https://preprints.scielo.org/index.php/scielo/article/view/1322/2074
dc.rights.driver.fl_str_mv Copyright (c) 2020 Marcos Venicius Malveira de Lima, Gabriel Zorello Laporta
https://creativecommons.org/licenses/by/4.0
info:eu-repo/semantics/openAccess
rights_invalid_str_mv Copyright (c) 2020 Marcos Venicius Malveira de Lima, Gabriel Zorello Laporta
https://creativecommons.org/licenses/by/4.0
eu_rights_str_mv openAccess
dc.format.none.fl_str_mv application/pdf
dc.publisher.none.fl_str_mv SciELO Preprints
SciELO Preprints
SciELO Preprints
publisher.none.fl_str_mv SciELO Preprints
SciELO Preprints
SciELO Preprints
dc.source.none.fl_str_mv reponame:SciELO Preprints
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instname_str SciELO
instacron_str SCI
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repository.name.fl_str_mv SciELO Preprints - SciELO
repository.mail.fl_str_mv scielo.submission@scielo.org
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