Dengue fever incidence forecasting : methodological approach in comparing SVR and LSTM models for design and implementation of a web-based forecasting framework

Dengue Fever is a mosquito-borne viral disease that has been a significant public health concern in the Philippines and many other tropical and subtropical regions in the world [42]. Among the numerous efforts in controlling Dengue Fever is strengthening of the countrys health surveillance systems p...

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Main Author: CO, ISABELLE-LYNN
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Published: Archīum Ateneo 2018
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Online Access:https://archium.ateneo.edu/theses-dissertations/166
http://rizalls.lib.admu.edu.ph/#section=resource&resourceid=1535947331&currentIndex=0&view=fullDetailsDetailsTab
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spelling ph-ateneo-arc.theses-dissertations-11652021-03-21T13:36:02Z Dengue fever incidence forecasting : methodological approach in comparing SVR and LSTM models for design and implementation of a web-based forecasting framework CO, ISABELLE-LYNN Dengue Fever is a mosquito-borne viral disease that has been a significant public health concern in the Philippines and many other tropical and subtropical regions in the world [42]. Among the numerous efforts in controlling Dengue Fever is strengthening of the countrys health surveillance systems presenting a more proactive approach in mitigating such cases. In this study, two data-driven machine learning models, namely Support Vector Regression (SVR) and Long Short Term Memory (LSTM), were developed without the requirement for prior epidemiological parameters and ordinary differential equations. Performances of the models in predicting Dengue incidences in the municipalities/cities of Western Visayas Region of the Philippines were mainly evaluated using Normalized Root Mean Square Error (NRMSE) and Pearson's r Correlation. Results showed that SVR performed generally better than LSTM and naive forecasts. From the evaluation cases performed, addition of feature selection shows plausibility of performance improvement especially on LSTM. Furthermore, experiments including ovitrap indices in the feature set showed evident performance increase. To realize its use for health surveillance, the resulting models were arranged in a web microservice accessible to the cloud-enabled system called Feasibility Analysis of Syndromic Surveillance Using a Spatio-Temporal Epidemiological ModeleR (FASSSTER) for Early Detection of Diseases. 2018-01-01T08:00:00Z text https://archium.ateneo.edu/theses-dissertations/166 http://rizalls.lib.admu.edu.ph/#section=resource&resourceid=1535947331&currentIndex=0&view=fullDetailsDetailsTab Theses and Dissertations (All) Archīum Ateneo Dengue Public health surveillance System design Data mining Machine learning Communicable diseases -- Transmission -- Prevention Medical informatics.
institution Ateneo De Manila University
building Ateneo De Manila University Library
continent Asia
country Philippines
Philippines
content_provider Ateneo De Manila University Library
collection archium.Ateneo Institutional Repository
topic Dengue
Public health surveillance
System design
Data mining
Machine learning
Communicable diseases -- Transmission -- Prevention
Medical informatics.
spellingShingle Dengue
Public health surveillance
System design
Data mining
Machine learning
Communicable diseases -- Transmission -- Prevention
Medical informatics.
CO, ISABELLE-LYNN
Dengue fever incidence forecasting : methodological approach in comparing SVR and LSTM models for design and implementation of a web-based forecasting framework
description Dengue Fever is a mosquito-borne viral disease that has been a significant public health concern in the Philippines and many other tropical and subtropical regions in the world [42]. Among the numerous efforts in controlling Dengue Fever is strengthening of the countrys health surveillance systems presenting a more proactive approach in mitigating such cases. In this study, two data-driven machine learning models, namely Support Vector Regression (SVR) and Long Short Term Memory (LSTM), were developed without the requirement for prior epidemiological parameters and ordinary differential equations. Performances of the models in predicting Dengue incidences in the municipalities/cities of Western Visayas Region of the Philippines were mainly evaluated using Normalized Root Mean Square Error (NRMSE) and Pearson's r Correlation. Results showed that SVR performed generally better than LSTM and naive forecasts. From the evaluation cases performed, addition of feature selection shows plausibility of performance improvement especially on LSTM. Furthermore, experiments including ovitrap indices in the feature set showed evident performance increase. To realize its use for health surveillance, the resulting models were arranged in a web microservice accessible to the cloud-enabled system called Feasibility Analysis of Syndromic Surveillance Using a Spatio-Temporal Epidemiological ModeleR (FASSSTER) for Early Detection of Diseases.
format text
author CO, ISABELLE-LYNN
author_facet CO, ISABELLE-LYNN
author_sort CO, ISABELLE-LYNN
title Dengue fever incidence forecasting : methodological approach in comparing SVR and LSTM models for design and implementation of a web-based forecasting framework
title_short Dengue fever incidence forecasting : methodological approach in comparing SVR and LSTM models for design and implementation of a web-based forecasting framework
title_full Dengue fever incidence forecasting : methodological approach in comparing SVR and LSTM models for design and implementation of a web-based forecasting framework
title_fullStr Dengue fever incidence forecasting : methodological approach in comparing SVR and LSTM models for design and implementation of a web-based forecasting framework
title_full_unstemmed Dengue fever incidence forecasting : methodological approach in comparing SVR and LSTM models for design and implementation of a web-based forecasting framework
title_sort dengue fever incidence forecasting : methodological approach in comparing svr and lstm models for design and implementation of a web-based forecasting framework
publisher Archīum Ateneo
publishDate 2018
url https://archium.ateneo.edu/theses-dissertations/166
http://rizalls.lib.admu.edu.ph/#section=resource&resourceid=1535947331&currentIndex=0&view=fullDetailsDetailsTab
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