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Tracking and prediction of dengue outbreak using cloud-based services and artificial neural network

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PUB-JAR-M-2016-ElijordeFI-FLT.pdf (1021.Kb)
Date
2016
Author
Elijorde, Frank I. ORCID
Clarite, Denmar S.
Gerardo, Bobby D. ORCID
Byun, Yungcheol
MeSH term
Dengue MeSH
Taxonomic term
Aedes aegypti GBIF
Geographic name
Iloilo TGN
Metadata
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Abstract
Dengue is considered as one of the diseases which needs serious attention, especially in the less developed areas of the world. In order to allow sufficient time in taking necessary decisions and actions to safeguard the situation for local authorities, an accurate analysis of dengue epidemic seasons is crucial in preventing and counteracting its effect. To address the issue, this paper proposes a web-based dengue tracking system (DTS) that utilizes environmental factors in predicting the future behavior of dengue cases. The study aimed to track down and analyze the dengue cases that take place in the city of Iloilo, Philippines. The researchers used Artificial Neural Network for prediction based on the amount of rainfall, relative humidity, mean temperature, and monthly recorded cases. The system can serve a valuable purpose for the health sectors as it guides them to take action on recorded cases in areas which are prone to dengue. Through this, early detection and warning of dengue case growth can be monitored and preventive measures can be implemented immediately, thereby reducing the possibility of an outbreak.
URI
https://hdl.handle.net/20.500.14353/406
Recommended Citation
Elijorde, F. I., Clarite, D. S., Gerardo, B. D., & Byun, Y. (2016). Tracking and prediction of dengue outbreak using cloud-based services and artificial neural network. International Journal of Multimedia and Ubiquitous Engineering, 11(5), 355-366.
DOI
10.14257/ijmue.2016.11.5.33
Type
Article
ISSN
1975-0080
Keywords
Decision Support System Dengue Monitoring Outbreak Prediction Heat maps Artificial Neural Network Disease outbreak Cloud-based service Web-based dengue tracking system (DTS) Area mapping Dengue case mapping Hotspot mapping Trends analysis Weather-based predictive methods Weather-based dengue early warning system Tracking
Subject
Dengue OCLC - FAST (Faceted Application of Subject Terminology) Dengue--Prevention OCLC - FAST (Faceted Application of Subject Terminology) Neural networks (Computer science) OCLC - FAST (Faceted Application of Subject Terminology) Decision support systems OCLC - FAST (Faceted Application of Subject Terminology) Algorithms OCLC - FAST (Faceted Application of Subject Terminology) Epidemics OCLC - FAST (Faceted Application of Subject Terminology) Dengue--Diagnosis OCLC - FAST (Faceted Application of Subject Terminology)
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  • Journal articles published externally [121]
  • Scholarly and Creative Works of Faculty Members and Researchers [26]

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