Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba

Detalhes bibliográficos
Autor(a) principal: Batista, Ewerthon Dyego de Araújo
Data de Publicação: 2021
Tipo de documento: Dissertação
Idioma: por
Título da fonte: Biblioteca Digital de Teses e Dissertações da UEPB
Texto Completo: http://tede.bc.uepb.edu.br/jspui/handle/tede/3990
Resumo: Dengue is a disease caused by the DENV virus and transmitted to humans through the Aedes aegypti mosquito. Although it is not a new disease, there is still no regulated vaccine in Brazil that can be used without restriction in the population. Therefore, the fight against the disease is done through actions to eliminate the transmitting mosquito. Dengue numbers returned to grow in Brazil and Paraíba. According to the seventh epidemiological bulletin of arbovirus in Paraíba, there was an increase of 53% of dengue cases in relation to the cases of the previous year. The objective of this work was to create a system capable of forecasting notifications and hospitalizations caused by dengue in the municipalities of Paraíba. Through Machine Learning (Random Forest and Support Vector Regression) and Deep Learning (Multilayer Perceptron, Long Short-Term Memory and Convolutional Neural Network) techniques and using epidemiological, climatic and sanitary data, between 2010 and 2019, the system was able to find the best combination of predictive attributes, the best parameters for the techniques, make predictions of cases of hospitalizations and notifications caused by dengue for the municipalities of Paraíba Bayeux, Cabedelo, Cajazeiras, Campina Grande, Catolé do Rocha, João Pessoa, Monteiro, Patos and Santa Rita, determine which techniques produce better results per city and, finally, the statistical difference between the approaches was demonstrated. The results produced demonstrate the superiority of Deep Learning techniques in comparison to Machine learning techniques. During notification case forecasting, the Long Short-Term Memory (LSTM) technique obtained better results in 66.67% of cities, Convolutional Neural Network (CNN) in 22.22% and Multilayer Perceptron (MLP) in 11.11 %. Regarding hospitalizations, LSTM had the lowest error rate in 33.34% of the municipalities, CNN, MLP and Random Forest (RF) each obtained better results in 22.22% of the cities.
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spelling Araújo, Wellington Candeia de045.655.074-71http://lattes.cnpq.br/7101691755497961Bublitz, Frederico Moreira036.362.114-80http://lattes.cnpq.br/3910966211279217Vasconcelos, Danilo de Almeida021.989.174-59http://lattes.cnpq.br/7097483050598928Ramos, Felipe Barbosa Araújo081.538.434-35http://lattes.cnpq.br/3071265324776966061.835.784-01http://lattes.cnpq.br/1455229028605780Batista, Ewerthon Dyego de Araújo2022-01-04T12:44:53Z2999-12-312021-10-07BATISTA, E. D. de A. Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba. 2021. 119f. Dissertação (Programa de Pós-Graduação Profissional em Ciência e Tecnologia em Saúde - PPGCTS) - Universidade Estadual da Paraíba, Campina Grande, 2021.http://tede.bc.uepb.edu.br/jspui/handle/tede/3990Dengue is a disease caused by the DENV virus and transmitted to humans through the Aedes aegypti mosquito. Although it is not a new disease, there is still no regulated vaccine in Brazil that can be used without restriction in the population. Therefore, the fight against the disease is done through actions to eliminate the transmitting mosquito. Dengue numbers returned to grow in Brazil and Paraíba. According to the seventh epidemiological bulletin of arbovirus in Paraíba, there was an increase of 53% of dengue cases in relation to the cases of the previous year. The objective of this work was to create a system capable of forecasting notifications and hospitalizations caused by dengue in the municipalities of Paraíba. Through Machine Learning (Random Forest and Support Vector Regression) and Deep Learning (Multilayer Perceptron, Long Short-Term Memory and Convolutional Neural Network) techniques and using epidemiological, climatic and sanitary data, between 2010 and 2019, the system was able to find the best combination of predictive attributes, the best parameters for the techniques, make predictions of cases of hospitalizations and notifications caused by dengue for the municipalities of Paraíba Bayeux, Cabedelo, Cajazeiras, Campina Grande, Catolé do Rocha, João Pessoa, Monteiro, Patos and Santa Rita, determine which techniques produce better results per city and, finally, the statistical difference between the approaches was demonstrated. The results produced demonstrate the superiority of Deep Learning techniques in comparison to Machine learning techniques. During notification case forecasting, the Long Short-Term Memory (LSTM) technique obtained better results in 66.67% of cities, Convolutional Neural Network (CNN) in 22.22% and Multilayer Perceptron (MLP) in 11.11 %. Regarding hospitalizations, LSTM had the lowest error rate in 33.34% of the municipalities, CNN, MLP and Random Forest (RF) each obtained better results in 22.22% of the cities.Dengue é uma doença causada pelo vírus DENV e transmitida para o homem através do mosquito Aedes aegypti. Embora não seja uma doença nova, ainda não existe uma vacina regulamentada no Brasil que possa ser usada sem restrição na população. Logo, o combate contra a doença é feito através de ações para eliminação do mosquito transmissor. Os números da dengue voltaram a crescer no Brasil e na Paraíba. De acordo com o sétimo boletim epidemiológico de arbovirose da Paraíba, houve um acréscimo de 53% dos casos de dengue em relação aos casos do ano anterior. O objetivo deste trabalho foi criar um sistema capaz de realizar previsões de notificações e de internações causadas por dengue nos municípios da Paraíba. Por meio de técnicas de Machine Learning (Random Forest e Support Vector Regression) e de Deep Learning (Multilayer Perceptron, Long Short-Term Memory e Convolutional Neural Network) e utilizando dados epidemiológicos, climáticos e sanitários, entre os anos de 2010 e 2019, o sistema foi capaz de encontrar a melhor combinação de atributos previsores, os melhores parâmetros para as técnicas, realizar previsões de casos de internações e de notificações causadas por dengue para os municípios paraibanos Bayeux, Cabedelo, Cajazeiras, Campina Grande, Catolé do Rocha, João Pessoa, Monteiro, Patos e Santa Rita, determinar quais técnicas produzem melhores resultados por cidade e, finalmente, foi demonstrada a diferença estatística entre as abordagens. Os resultados produzidos demonstram a superioridade das técnicas de Deep Learning em comparação as técnicas de Machine learing. Durante a previsão de casos de notificações, a técnica Long Short-Term Memory (LSTM) obteve melhores resultados em 66,67% das cidades, Convolutional Neural Network (CNN) em 22,22% e Multilayer Perceptron (MLP) em 11,11%. Em relação às internações, LSTM obteve menor taxa de erro em 33,34% dos munícipios, CNN, MLP e Random Forest (RF) obtiveram, cada uma delas, melhores resultados em 22,22% das cidades.Submitted by Concluinte Mestrado (concluinte.mestrado@setor.uepb.edu.br) on 2021-11-03T22:20:15Z No. of bitstreams: 2 PDF - Ewerthon Dyego de Araujo Batista.pdf: 5673145 bytes, checksum: 9ac6eb9ad601283357f6475b1e0cedff (MD5) Termos BDTD - Ewerthon Dyego de Araujo Batista.pdf: 220997 bytes, checksum: 4970a4e435456526f49f8180d4133c85 (MD5)Approved for entry into archive by Jean Medeiros (jeanletras@uepb.edu.br) on 2021-11-04T13:25:35Z (GMT) No. of bitstreams: 2 PDF - Ewerthon Dyego de Araujo Batista.pdf: 5673145 bytes, checksum: 9ac6eb9ad601283357f6475b1e0cedff (MD5) Termos BDTD - Ewerthon Dyego de Araujo Batista.pdf: 220997 bytes, checksum: 4970a4e435456526f49f8180d4133c85 (MD5)Made available in DSpace on 2022-01-04T12:44:53Z (GMT). No. of bitstreams: 2 PDF - Ewerthon Dyego de Araujo Batista.pdf: 5673145 bytes, checksum: 9ac6eb9ad601283357f6475b1e0cedff (MD5) Termos BDTD - Ewerthon Dyego de Araujo Batista.pdf: 220997 bytes, checksum: 4970a4e435456526f49f8180d4133c85 (MD5) Previous issue date: 2021-10-07application/pdfporUniversidade Estadual da ParaíbaPrograma de Pós-Graduação Profissional em Ciência e Tecnologia em Saúde - PPGCTSUEPBBrasilPró-Reitoria de Pós-Graduação e Pesquisa - PRPGPDengueDeep learningInteligência artificialMachine learningDengueMachine learningDeep learningCIENCIA DA COMPUTACAO::SISTEMAS DE COMPUTACAOUtilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da ParaíbaUse of machine learning and deep learning techniques for the prediction of dengue cases in the cities of Paraíbainfo:eu-repo/semantics/publishedVersioninfo:eu-repo/semantics/masterThesis-29166148784905393766006006005248714503811102788930092515683771531info:eu-repo/semantics/embargoedAccessreponame:Biblioteca Digital de Teses e Dissertações da UEPBinstname:Universidade Estadual da Paraíba (UEPB)instacron:UEPBORIGINALPDF - Ewerthon Dyego de Araujo Batista.pdfPDF - Ewerthon Dyego de Araujo Batista.pdfapplication/pdf5673145http://tede.bc.uepb.edu.br/jspui/bitstream/tede/3990/2/PDF+-+Ewerthon+Dyego+de+Araujo+Batista.pdf9ac6eb9ad601283357f6475b1e0cedffMD52Termos de Depósito da BDTDTermos de Depósito da BDTDapplication/pdf220997http://tede.bc.uepb.edu.br/jspui/bitstream/tede/3990/3/Termos+de+Dep%C3%B3sito+da+BDTD4970a4e435456526f49f8180d4133c85MD53LICENSElicense.txtlicense.txttext/plain; charset=utf-81960http://tede.bc.uepb.edu.br/jspui/bitstream/tede/3990/1/license.txt6052ae61e77222b2086e666b7ae213ceMD51tede/39902022-01-04 09:45:51.883oai:tede.bc.uepb.edu.br:tede/3990TElDRU7Dh0EgREUgRElTVFJJQlVJw4fDg08gTsODTy1FWENMVVNJVkEKCkNvbSBhIGFwcmVzZW50YcOnw6NvIGRlc3RhIGxpY2Vuw6dhLCB2b2PDqiAobyBhdXRvciAoZXMpIG91IG8gdGl0dWxhciBkb3MgZGlyZWl0b3MgZGUgYXV0b3IpIGNvbmNlZGUgw6AgVW5pdmVyc2lkYWRlIApFc3RhZHVhbCBkYSBQYXJhw61iYSBvIGRpcmVpdG8gbsOjby1leGNsdXNpdm8gZGUgcmVwcm9kdXppciwgIHRyYWR1emlyIChjb25mb3JtZSBkZWZpbmlkbyBhYmFpeG8pLCBlL291IApkaXN0cmlidWlyIGEgc3VhIHRlc2Ugb3UgZGlzc2VydGHDp8OjbyAoaW5jbHVpbmRvIG8gcmVzdW1vKSBwb3IgdG9kbyBvIG11bmRvIG5vIGZvcm1hdG8gaW1wcmVzc28gZSBlbGV0csO0bmljbyBlIAplbSBxdWFscXVlciBtZWlvLCBpbmNsdWluZG8gb3MgZm9ybWF0b3Mgw6F1ZGlvIG91IHbDrWRlby4KClZvY8OqIGNvbmNvcmRhIHF1ZSBhIFVFUEIgcG9kZSwgc2VtIGFsdGVyYXIgbyBjb250ZcO6ZG8sIHRyYW5zcG9yIGEgc3VhIHRlc2Ugb3UgZGlzc2VydGHDp8OjbyAKcGFyYSBxdWFscXVlciBtZWlvIG91IGZvcm1hdG8gcGFyYSBmaW5zIGRlIHByZXNlcnZhw6fDo28uCgpWb2PDqiB0YW1iw6ltIGNvbmNvcmRhIHF1ZSBhIFVFUEIgcG9kZSBtYW50ZXIgbWFpcyBkZSB1bWEgY8OzcGlhIGRhIHN1YSB0ZXNlIG91IApkaXNzZXJ0YcOnw6NvIHBhcmEgZmlucyBkZSBzZWd1cmFuw6dhLCBiYWNrdXAgZSBwcmVzZXJ2YcOnw6NvLgoKVm9jw6ogZGVjbGFyYSBxdWUgYSBzdWEgdGVzZSBvdSBkaXNzZXJ0YcOnw6NvIMOpIG9yaWdpbmFsIGUgcXVlIHZvY8OqIHRlbSBvIHBvZGVyIGRlIGNvbmNlZGVyIG9zIGRpcmVpdG9zIGNvbnRpZG9zIApuZXN0YSBsaWNlbsOnYS4gVm9jw6ogdGFtYsOpbSBkZWNsYXJhIHF1ZSBvIGRlcMOzc2l0byBkYSBzdWEgdGVzZSBvdSBkaXNzZXJ0YcOnw6NvIG7Do28sIHF1ZSBzZWphIGRlIHNldSAKY29uaGVjaW1lbnRvLCBpbmZyaW5nZSBkaXJlaXRvcyBhdXRvcmFpcyBkZSBuaW5ndcOpbS4KCkNhc28gYSBzdWEgdGVzZSBvdSBkaXNzZXJ0YcOnw6NvIGNvbnRlbmhhIG1hdGVyaWFsIHF1ZSB2b2PDqiBuw6NvIHBvc3N1aSBhIHRpdHVsYXJpZGFkZSBkb3MgZGlyZWl0b3MgYXV0b3JhaXMsIHZvY8OqIApkZWNsYXJhIHF1ZSBvYnRldmUgYSBwZXJtaXNzw6NvIGlycmVzdHJpdGEgZG8gZGV0ZW50b3IgZG9zIGRpcmVpdG9zIGF1dG9yYWlzIHBhcmEgY29uY2VkZXIgw6AgVUVQQiAKb3MgZGlyZWl0b3MgYXByZXNlbnRhZG9zIG5lc3RhIGxpY2Vuw6dhLCBlIHF1ZSBlc3NlIG1hdGVyaWFsIGRlIHByb3ByaWVkYWRlIGRlIHRlcmNlaXJvcyBlc3TDoSBjbGFyYW1lbnRlIAppZGVudGlmaWNhZG8gZSByZWNvbmhlY2lkbyBubyB0ZXh0byBvdSBubyBjb250ZcO6ZG8gZGEgdGVzZSBvdSBkaXNzZXJ0YcOnw6NvIG9yYSBkZXBvc2l0YWRhLgoKQ0FTTyBBIFRFU0UgT1UgRElTU0VSVEHDh8ODTyBPUkEgREVQT1NJVEFEQSBURU5IQSBTSURPIFJFU1VMVEFETyBERSBVTSBQQVRST0PDjU5JTyBPVSAKQVBPSU8gREUgVU1BIEFHw4pOQ0lBIERFIEZPTUVOVE8gT1UgT1VUUk8gT1JHQU5JU01PIFFVRSBOw4NPIFNFSkEgQSBVRVBCLCAKVk9Dw4ogREVDTEFSQSBRVUUgUkVTUEVJVE9VIFRPRE9TIEUgUVVBSVNRVUVSIERJUkVJVE9TIERFIFJFVklTw4NPIENPTU8gVEFNQsOJTSBBUyAKREVNQUlTIE9CUklHQcOHw5VFUyBFWElHSURBUyBQT1IgQ09OVFJBVE8gT1UgQUNPUkRPLgoKQSBVRVBCIHNlIGNvbXByb21ldGUgYSBpZGVudGlmaWNhciBjbGFyYW1lbnRlIG8gc2V1IG5vbWUgKHMpIG91IG8ocykgbm9tZShzKSBkbyhzKSAKZGV0ZW50b3IoZXMpIGRvcyBkaXJlaXRvcyBhdXRvcmFpcyBkYSB0ZXNlIG91IGRpc3NlcnRhw6fDo28sIGUgbsOjbyBmYXLDoSBxdWFscXVlciBhbHRlcmHDp8OjbywgYWzDqW0gZGFxdWVsYXMgCmNvbmNlZGlkYXMgcG9yIGVzdGEgbGljZW7Dp2EuCg==Biblioteca Digital de Teses e Dissertaçõeshttp://tede.bc.uepb.edu.br/jspui/PUBhttp://tede.bc.uepb.edu.br/oai/requestbc@uepb.edu.br||opendoar:2022-01-04T12:45:51Biblioteca Digital de Teses e Dissertações da UEPB - Universidade Estadual da Paraíba (UEPB)false
dc.title.por.fl_str_mv Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba
dc.title.alternative.eng.fl_str_mv Use of machine learning and deep learning techniques for the prediction of dengue cases in the cities of Paraíba
title Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba
spellingShingle Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba
Batista, Ewerthon Dyego de Araújo
Dengue
Deep learning
Inteligência artificial
Machine learning
Dengue
Machine learning
Deep learning
CIENCIA DA COMPUTACAO::SISTEMAS DE COMPUTACAO
title_short Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba
title_full Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba
title_fullStr Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba
title_full_unstemmed Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba
title_sort Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba
author Batista, Ewerthon Dyego de Araújo
author_facet Batista, Ewerthon Dyego de Araújo
author_role author
dc.contributor.advisor1.fl_str_mv Araújo, Wellington Candeia de
dc.contributor.advisor1ID.fl_str_mv 045.655.074-71
dc.contributor.advisor1Lattes.fl_str_mv http://lattes.cnpq.br/7101691755497961
dc.contributor.referee1.fl_str_mv Bublitz, Frederico Moreira
dc.contributor.referee1ID.fl_str_mv 036.362.114-80
dc.contributor.referee1Lattes.fl_str_mv http://lattes.cnpq.br/3910966211279217
dc.contributor.referee2.fl_str_mv Vasconcelos, Danilo de Almeida
dc.contributor.referee2ID.fl_str_mv 021.989.174-59
dc.contributor.referee2Lattes.fl_str_mv http://lattes.cnpq.br/7097483050598928
dc.contributor.referee3.fl_str_mv Ramos, Felipe Barbosa Araújo
dc.contributor.referee3ID.fl_str_mv 081.538.434-35
dc.contributor.referee3Lattes.fl_str_mv http://lattes.cnpq.br/3071265324776966
dc.contributor.authorID.fl_str_mv 061.835.784-01
dc.contributor.authorLattes.fl_str_mv http://lattes.cnpq.br/1455229028605780
dc.contributor.author.fl_str_mv Batista, Ewerthon Dyego de Araújo
contributor_str_mv Araújo, Wellington Candeia de
Bublitz, Frederico Moreira
Vasconcelos, Danilo de Almeida
Ramos, Felipe Barbosa Araújo
dc.subject.por.fl_str_mv Dengue
Deep learning
Inteligência artificial
topic Dengue
Deep learning
Inteligência artificial
Machine learning
Dengue
Machine learning
Deep learning
CIENCIA DA COMPUTACAO::SISTEMAS DE COMPUTACAO
dc.subject.eng.fl_str_mv Machine learning
Dengue
Machine learning
Deep learning
dc.subject.cnpq.fl_str_mv CIENCIA DA COMPUTACAO::SISTEMAS DE COMPUTACAO
description Dengue is a disease caused by the DENV virus and transmitted to humans through the Aedes aegypti mosquito. Although it is not a new disease, there is still no regulated vaccine in Brazil that can be used without restriction in the population. Therefore, the fight against the disease is done through actions to eliminate the transmitting mosquito. Dengue numbers returned to grow in Brazil and Paraíba. According to the seventh epidemiological bulletin of arbovirus in Paraíba, there was an increase of 53% of dengue cases in relation to the cases of the previous year. The objective of this work was to create a system capable of forecasting notifications and hospitalizations caused by dengue in the municipalities of Paraíba. Through Machine Learning (Random Forest and Support Vector Regression) and Deep Learning (Multilayer Perceptron, Long Short-Term Memory and Convolutional Neural Network) techniques and using epidemiological, climatic and sanitary data, between 2010 and 2019, the system was able to find the best combination of predictive attributes, the best parameters for the techniques, make predictions of cases of hospitalizations and notifications caused by dengue for the municipalities of Paraíba Bayeux, Cabedelo, Cajazeiras, Campina Grande, Catolé do Rocha, João Pessoa, Monteiro, Patos and Santa Rita, determine which techniques produce better results per city and, finally, the statistical difference between the approaches was demonstrated. The results produced demonstrate the superiority of Deep Learning techniques in comparison to Machine learning techniques. During notification case forecasting, the Long Short-Term Memory (LSTM) technique obtained better results in 66.67% of cities, Convolutional Neural Network (CNN) in 22.22% and Multilayer Perceptron (MLP) in 11.11 %. Regarding hospitalizations, LSTM had the lowest error rate in 33.34% of the municipalities, CNN, MLP and Random Forest (RF) each obtained better results in 22.22% of the cities.
publishDate 2021
dc.date.issued.fl_str_mv 2021-10-07
dc.date.accessioned.fl_str_mv 2022-01-04T12:44:53Z
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dc.identifier.citation.fl_str_mv BATISTA, E. D. de A. Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba. 2021. 119f. Dissertação (Programa de Pós-Graduação Profissional em Ciência e Tecnologia em Saúde - PPGCTS) - Universidade Estadual da Paraíba, Campina Grande, 2021.
dc.identifier.uri.fl_str_mv http://tede.bc.uepb.edu.br/jspui/handle/tede/3990
identifier_str_mv BATISTA, E. D. de A. Utilização de técnicas de machine learning e de deep learning para a predição de casos de dengue nos municípios da Paraíba. 2021. 119f. Dissertação (Programa de Pós-Graduação Profissional em Ciência e Tecnologia em Saúde - PPGCTS) - Universidade Estadual da Paraíba, Campina Grande, 2021.
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