Previsão de internações hospitalares de dengue por meio de séries temporais

Detalhes bibliográficos
Ano de defesa: 2019
Autor(a) principal: Silva, Fabio Junior Francisco da lattes
Orientador(a): Araujo, Wellington Candeia de lattes
Banca de defesa: Carvalho Filho, Djalma de Melo lattes, Costa, Rodrigo Alves lattes, Milanez, Alysson Filgueira
Tipo de documento: Dissertação
Tipo de acesso: Acesso aberto
Idioma: por
Instituição de defesa: Universidade Estadual da Paraíba
Programa de Pós-Graduação: Programa de Pós-Graduação Profissional em Ciência e Tecnologia em Saúde - PPGCTS
Departamento: Pró-Reitoria de Pós-Graduação e Pesquisa - PRPGP
País: BR
Palavras-chave em Português:
Palavras-chave em Inglês:
Área do conhecimento CNPq:
Link de acesso: https://repositorio.uepb.edu.br/handle/123456789/72812
Resumo: Aedes aegypti is the vector of comorbidities yellow fever, dengue fever, chikungunya and zika. Among them, dengue is the most common disease and the one that causes the most deaths, becoming a public health concern in Brazil and worldwide. Brazil presents ideal conditions for mosquito proliferation and concentrates most dengue cases in the Americas. Controlling the vector is challenging and needs strategic action involving government and civil society. Infection by dengue virus can be asymptomatic, mild or cause a serious disease that puts the patient's life at risk, who will need to be admitted to a hospital for treatment. It is known that hospital beds are limited, the demand for dengue is representative and hospitalization generates costs. The incidence of dengue has tendency and seasonality, the main components of a time series. To contribute to state and municipal health management in combating Aedes aegypti, as well as hospital management of dengue hospitalizations, this research created an algorithm for the prediction of dengue hospitalizations using computational statistical models for time series analysis focusing on planning and management of disease control. The main statistical techniques used (Exponential Smoothing, Autoregressive Integrated Moving Average Model (ARIMA), Autoregressive Artificial Neural Networks, Model combination, Linear Regression and Naive Methods) to forecast 8-week time series and a real estimate of 4-weeks, because DATASUS releases data is 4-weeks late. The adjustment of the parameters of each model was performed automatically in the Integrated Development Environment (IDE) RStudio, by functions of the forecast package that contains implementations of the statistical models of time series for the programming language R. Using multiple forecasting methods applied concomitantly over the same time series has improved forecast accuracy. The algorithm made about 8 predictions every 10 with Mean Absolute Percentage Error (MAPE) below 26%. This is another strategy with potential to be used in dengue control in Brazil, because the algorithm created may be the basis for the development, in the future works, of a web service that provides health managers (Ministers, Secretaries, Directors and Coordinators) the possibility of predicting hospitalizations for dengue according to reality of each one. From this study, research opportunities arose to explore statistical methods that deal with count time series for predicting dengue hospitalizations with a focus on the health establishment where the data occur, as well as conducting a Systematic Literature Review, considering the classical methods and machine learning techniques, to answer the questions: Which statistical methods for forecasting time series (discrete/count or continuous) are most used? Are classical methods more efficient than machine learning approaches? Which error metrics are safer for choosing the most accurate model among candidates for a given time series forecast?
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spelling 2020-05-05T15:42:34Z2026-02-26T13:41:47Z2019-12-20SILVA, F. J. F. da. Previsão de internações hospitalares de dengue por meio de séries temporais. 2019. 119f. Dissertação (Programa de Pós-Graduação Profissional em Ciência e Tecnologia em Saúde - PPGCTS) - Universidade Estadual da Paraíba, Campina Grande, 2019.https://repositorio.uepb.edu.br/handle/123456789/7281224004014016P0Aedes aegypti is the vector of comorbidities yellow fever, dengue fever, chikungunya and zika. Among them, dengue is the most common disease and the one that causes the most deaths, becoming a public health concern in Brazil and worldwide. Brazil presents ideal conditions for mosquito proliferation and concentrates most dengue cases in the Americas. Controlling the vector is challenging and needs strategic action involving government and civil society. Infection by dengue virus can be asymptomatic, mild or cause a serious disease that puts the patient's life at risk, who will need to be admitted to a hospital for treatment. It is known that hospital beds are limited, the demand for dengue is representative and hospitalization generates costs. The incidence of dengue has tendency and seasonality, the main components of a time series. To contribute to state and municipal health management in combating Aedes aegypti, as well as hospital management of dengue hospitalizations, this research created an algorithm for the prediction of dengue hospitalizations using computational statistical models for time series analysis focusing on planning and management of disease control. The main statistical techniques used (Exponential Smoothing, Autoregressive Integrated Moving Average Model (ARIMA), Autoregressive Artificial Neural Networks, Model combination, Linear Regression and Naive Methods) to forecast 8-week time series and a real estimate of 4-weeks, because DATASUS releases data is 4-weeks late. The adjustment of the parameters of each model was performed automatically in the Integrated Development Environment (IDE) RStudio, by functions of the forecast package that contains implementations of the statistical models of time series for the programming language R. Using multiple forecasting methods applied concomitantly over the same time series has improved forecast accuracy. The algorithm made about 8 predictions every 10 with Mean Absolute Percentage Error (MAPE) below 26%. This is another strategy with potential to be used in dengue control in Brazil, because the algorithm created may be the basis for the development, in the future works, of a web service that provides health managers (Ministers, Secretaries, Directors and Coordinators) the possibility of predicting hospitalizations for dengue according to reality of each one. From this study, research opportunities arose to explore statistical methods that deal with count time series for predicting dengue hospitalizations with a focus on the health establishment where the data occur, as well as conducting a Systematic Literature Review, considering the classical methods and machine learning techniques, to answer the questions: Which statistical methods for forecasting time series (discrete/count or continuous) are most used? Are classical methods more efficient than machine learning approaches? Which error metrics are safer for choosing the most accurate model among candidates for a given time series forecast?O Aedes aegypti é o vetor das comorbidades febre amarela, dengue, chikungunya e zika. Dentre elas, a dengue é a mais comum e a que causa mais mortes, se tornando preocupação de saúde pública no Brasil e no mundo. O Brasil apresenta condições ideais para a proliferação do mosquito e concentra a maior parte dos casos de dengue nas Américas. Controlar o vetor é desafiador e precisa de ações estratégicas envolvendo governo e a sociedade civil. A infecção pelo vírus da dengue pode ser assintomática, branda ou ocasionar doença grave que coloca em risco a vida do paciente, o qual precisará ser internado em hospital para tratamento. Sabe-se que os leitos hospitalares são limitados, a demanda de internações por dengue é representativa e a internação gera custo. A incidência de dengue apresenta tendência e sazonalidade, principais componentes de uma série temporal. Para contribuir com a gestão estadual e municipal de saúde no combate ao Aedes aegypti, bem como a gestão hospitalar das internações, esta pesquisa definiu um algoritmo para a previsão de internações hospitalares por dengue utilizando modelos estatísticos computacionais para análise de séries temporais com foco no planejamento e gestão do combate à doença. Foram utilizadas as técnicas estatísticas (Suavização Exponencial, Modelo de Média Móvel Integrado Autorregressivo (ARIMA), Redes Neurais Artificiais Autorregressivas, Combinação de modelos, Regressão Linear e método inocentes/ingênuo) para realizar a previsão das séries temporais com horizonte de 8 semanas e estimativa real de 4 semanas, pois o DATASUS libera os dados com 4 semanas de atraso. O ajuste dos parâmetros de cada modelo foi executado de forma automática no ambiente de desenvolvimento integrado (IDE) RStudio, por funções do pacote forecast que contém implementações dos modelos estatísticos de séries temporais para a linguagem de programação R. A utilização de diversos métodos de previsão aplicados concomitantemente sobre a mesma série temporal melhorou a precisão da previsão. O algoritmo realizou cerca de 8 previsões a cada 10 com erro médio percentual absoluto (MAPE) inferior a 26%. Esta é mais uma estratégia com potencial para ser utilizada no controle da dengue no Brasil, pois o algoritmo criado pode ser a base para o desenvolvimento, em trabalhos futuros, de um serviço web que forneça aos gestores da saúde (Ministros, Secretários, Diretores e Coordenadores) a realização de previsão de internações por dengue de acordo com a realidade local. A partir deste estudo surgiram oportunidades de pesquisa para exploração de métodos estatísticos que lidam com séries temporais contáveis para a previsão de internações por dengue com foco no estabelecimento de saúde onde os dados ocorrem, bem como a realização de Revisão Sistemática da Literatura, considerando o métodos clássicos e técnicas de aprendizagem de máquina, para responder as perguntas: Quais métodos estatísticos para a previsão de séries temporais (discretas/contáveis ou contínuas) são mais utilizados? Os métodos clássicos são mais eficientes que as abordagens com aprendizagem de máquina? Quais métricas de erro são mais seguras para a escolha do modelo mais preciso entre os candidatos a determinada previsão de série temporal?application/pdfUniversidade Estadual da ParaíbaPrograma de Pós-Graduação Profissional em Ciência e Tecnologia em Saúde - PPGCTSUEPBBRPró-Reitoria de Pós-Graduação e Pesquisa - PRPGPPró-Reitoria de Pós-Graduação e Pesquisa - PRPGPStatistical modelsArtificial intelligenceForecast of time seriesDengueCIENCIAS DA SAUDEModelos estatísticosInteligência artificialPrevisão de séries temporaisAedes aegyptiPrevisão de internações hospitalares de dengue por meio de séries temporaisinfo:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/masterThesisCarvalho Filho, Djalma de Melohttp://lattes.cnpq.br/8550727408970303Costa, Rodrigo Alveshttp://lattes.cnpq.br/9704524780307293Milanez, Alysson FilgueiraAraujo, Wellington Candeia dehttp://lattes.cnpq.br/7101691755497961http://lattes.cnpq.br/5452563274309391Silva, Fabio Junior Francisco dainfo:eu-repo/semantics/openAccessporreponame:Repositório Institucional da Universidade Estadual da Paraíba (UEPB)instname:Universidade Estadual da Paraíba (UEPB)instacron:UEPBORIGINALPDF - Fábio Júnior Francisco da Silva.pdfPDF - Fábio Júnior Francisco da Silva.pdfPDF - Fábio Júnior Francisco da Silvaapplication/pdf2708552https://repositorio.uepb.edu.br/bitstreams/42b4a406-a060-4a90-a354-a0e47b7ab3db/download6a2038f271ced75438db8167ed8af4cbMD52trueAnonymousREADLICENSElicense.txtlicense.txttext/plain; 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dc.title.none.fl_str_mv Previsão de internações hospitalares de dengue por meio de séries temporais
title Previsão de internações hospitalares de dengue por meio de séries temporais
spellingShingle Previsão de internações hospitalares de dengue por meio de séries temporais
Silva, Fabio Junior Francisco da
Statistical models
Artificial intelligence
Forecast of time series
Dengue
CIENCIAS DA SAUDE
Modelos estatísticos
Inteligência artificial
Previsão de séries temporais
Aedes aegypti
title_short Previsão de internações hospitalares de dengue por meio de séries temporais
title_full Previsão de internações hospitalares de dengue por meio de séries temporais
title_fullStr Previsão de internações hospitalares de dengue por meio de séries temporais
title_full_unstemmed Previsão de internações hospitalares de dengue por meio de séries temporais
title_sort Previsão de internações hospitalares de dengue por meio de séries temporais
author Silva, Fabio Junior Francisco da
author_facet Silva, Fabio Junior Francisco da
author_role author
dc.contributor.referee1.fl_str_mv Carvalho Filho, Djalma de Melo
dc.contributor.referee1Lattes.fl_str_mv http://lattes.cnpq.br/8550727408970303
dc.contributor.referee2.fl_str_mv Costa, Rodrigo Alves
dc.contributor.referee2Lattes.fl_str_mv http://lattes.cnpq.br/9704524780307293
dc.contributor.referee3.fl_str_mv Milanez, Alysson Filgueira
dc.contributor.advisor1.fl_str_mv Araujo, Wellington Candeia de
dc.contributor.advisor1Lattes.fl_str_mv http://lattes.cnpq.br/7101691755497961
dc.contributor.authorLattes.fl_str_mv http://lattes.cnpq.br/5452563274309391
dc.contributor.author.fl_str_mv Silva, Fabio Junior Francisco da
contributor_str_mv Carvalho Filho, Djalma de Melo
Costa, Rodrigo Alves
Milanez, Alysson Filgueira
Araujo, Wellington Candeia de
dc.subject.eng.fl_str_mv Statistical models
Artificial intelligence
Forecast of time series
Dengue
topic Statistical models
Artificial intelligence
Forecast of time series
Dengue
CIENCIAS DA SAUDE
Modelos estatísticos
Inteligência artificial
Previsão de séries temporais
Aedes aegypti
dc.subject.cnpq.fl_str_mv CIENCIAS DA SAUDE
dc.subject.por.fl_str_mv Modelos estatísticos
Inteligência artificial
Previsão de séries temporais
Aedes aegypti
description Aedes aegypti is the vector of comorbidities yellow fever, dengue fever, chikungunya and zika. Among them, dengue is the most common disease and the one that causes the most deaths, becoming a public health concern in Brazil and worldwide. Brazil presents ideal conditions for mosquito proliferation and concentrates most dengue cases in the Americas. Controlling the vector is challenging and needs strategic action involving government and civil society. Infection by dengue virus can be asymptomatic, mild or cause a serious disease that puts the patient's life at risk, who will need to be admitted to a hospital for treatment. It is known that hospital beds are limited, the demand for dengue is representative and hospitalization generates costs. The incidence of dengue has tendency and seasonality, the main components of a time series. To contribute to state and municipal health management in combating Aedes aegypti, as well as hospital management of dengue hospitalizations, this research created an algorithm for the prediction of dengue hospitalizations using computational statistical models for time series analysis focusing on planning and management of disease control. The main statistical techniques used (Exponential Smoothing, Autoregressive Integrated Moving Average Model (ARIMA), Autoregressive Artificial Neural Networks, Model combination, Linear Regression and Naive Methods) to forecast 8-week time series and a real estimate of 4-weeks, because DATASUS releases data is 4-weeks late. The adjustment of the parameters of each model was performed automatically in the Integrated Development Environment (IDE) RStudio, by functions of the forecast package that contains implementations of the statistical models of time series for the programming language R. Using multiple forecasting methods applied concomitantly over the same time series has improved forecast accuracy. The algorithm made about 8 predictions every 10 with Mean Absolute Percentage Error (MAPE) below 26%. This is another strategy with potential to be used in dengue control in Brazil, because the algorithm created may be the basis for the development, in the future works, of a web service that provides health managers (Ministers, Secretaries, Directors and Coordinators) the possibility of predicting hospitalizations for dengue according to reality of each one. From this study, research opportunities arose to explore statistical methods that deal with count time series for predicting dengue hospitalizations with a focus on the health establishment where the data occur, as well as conducting a Systematic Literature Review, considering the classical methods and machine learning techniques, to answer the questions: Which statistical methods for forecasting time series (discrete/count or continuous) are most used? Are classical methods more efficient than machine learning approaches? Which error metrics are safer for choosing the most accurate model among candidates for a given time series forecast?
publishDate 2019
dc.date.issued.fl_str_mv 2019-12-20
dc.date.accessioned.fl_str_mv 2020-05-05T15:42:34Z
2026-02-26T13:41:47Z
dc.type.status.fl_str_mv info:eu-repo/semantics/publishedVersion
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dc.identifier.citation.fl_str_mv SILVA, F. J. F. da. Previsão de internações hospitalares de dengue por meio de séries temporais. 2019. 119f. Dissertação (Programa de Pós-Graduação Profissional em Ciência e Tecnologia em Saúde - PPGCTS) - Universidade Estadual da Paraíba, Campina Grande, 2019.
dc.identifier.uri.fl_str_mv https://repositorio.uepb.edu.br/handle/123456789/72812
dc.identifier.capesdegreeprogramcode.none.fl_str_mv 24004014016P0
identifier_str_mv SILVA, F. J. F. da. Previsão de internações hospitalares de dengue por meio de séries temporais. 2019. 119f. Dissertação (Programa de Pós-Graduação Profissional em Ciência e Tecnologia em Saúde - PPGCTS) - Universidade Estadual da Paraíba, Campina Grande, 2019.
24004014016P0
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