Adaptable Web Prediction Framework for Disease Prediction Based on the Hybrid Case Based Reasoning Model

Nowadays, we are witnessing the rapid development of medicine and various methods that are used for early detection of diseases. In order to make quality decisions in diagnosis and prevention of disease, various decision support systems based on machine learning methods have been introduced in the m...

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Main Authors: B. Trstenjak, D. Donko, Z. Avdagic
Format: Article
Language:English
Published: D. G. Pylarinos 2016-12-01
Series:Engineering, Technology & Applied Science Research
Subjects:
Online Access:http://etasr.com/index.php/ETASR/article/download/753/393
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spelling doaj-ee8194c3cc174450b8988d29f414bed62020-12-02T10:19:34ZengD. G. PylarinosEngineering, Technology & Applied Science Research2241-44871792-80362016-12-016612121216Adaptable Web Prediction Framework for Disease Prediction Based on the Hybrid Case Based Reasoning ModelB. Trstenjak0D. Donko1 Z. Avdagic2Department of Computer Engineering Medimurje University of Applied Sciences, Cakovec, CroatiaDepartment of Computer Science Faculty of Electrical Engineering, Sarajevo, Bosnia and HerzegovinaDepartment of Computer Science Faculty of Electrical Engineering, Sarajevo, Bosnia and HerzegovinaNowadays, we are witnessing the rapid development of medicine and various methods that are used for early detection of diseases. In order to make quality decisions in diagnosis and prevention of disease, various decision support systems based on machine learning methods have been introduced in the medical domain. Such systems play an increasingly important role in medical practice. This paper presents a new web framework concept for disease prediction. The proposed framework is object-oriented and enables online prediction of various diseases. The framework enables online creation of different autonomous prediction models depending on the characteristics of diseases. Prediction process in the framework is based on a hybrid Case Based Reasoning classifier. The framework was evaluated on disease datasets from public repositories. Experimental evaluation shows that the proposed framework achieved high diagnosis accuracy. http://etasr.com/index.php/ETASR/article/download/753/393disease predictionweb frameworkhybrid modelCase Based Reasoning
collection DOAJ
language English
format Article
sources DOAJ
author B. Trstenjak
D. Donko
Z. Avdagic
spellingShingle B. Trstenjak
D. Donko
Z. Avdagic
Adaptable Web Prediction Framework for Disease Prediction Based on the Hybrid Case Based Reasoning Model
Engineering, Technology & Applied Science Research
disease prediction
web framework
hybrid model
Case Based Reasoning
author_facet B. Trstenjak
D. Donko
Z. Avdagic
author_sort B. Trstenjak
title Adaptable Web Prediction Framework for Disease Prediction Based on the Hybrid Case Based Reasoning Model
title_short Adaptable Web Prediction Framework for Disease Prediction Based on the Hybrid Case Based Reasoning Model
title_full Adaptable Web Prediction Framework for Disease Prediction Based on the Hybrid Case Based Reasoning Model
title_fullStr Adaptable Web Prediction Framework for Disease Prediction Based on the Hybrid Case Based Reasoning Model
title_full_unstemmed Adaptable Web Prediction Framework for Disease Prediction Based on the Hybrid Case Based Reasoning Model
title_sort adaptable web prediction framework for disease prediction based on the hybrid case based reasoning model
publisher D. G. Pylarinos
series Engineering, Technology & Applied Science Research
issn 2241-4487
1792-8036
publishDate 2016-12-01
description Nowadays, we are witnessing the rapid development of medicine and various methods that are used for early detection of diseases. In order to make quality decisions in diagnosis and prevention of disease, various decision support systems based on machine learning methods have been introduced in the medical domain. Such systems play an increasingly important role in medical practice. This paper presents a new web framework concept for disease prediction. The proposed framework is object-oriented and enables online prediction of various diseases. The framework enables online creation of different autonomous prediction models depending on the characteristics of diseases. Prediction process in the framework is based on a hybrid Case Based Reasoning classifier. The framework was evaluated on disease datasets from public repositories. Experimental evaluation shows that the proposed framework achieved high diagnosis accuracy.
topic disease prediction
web framework
hybrid model
Case Based Reasoning
url http://etasr.com/index.php/ETASR/article/download/753/393
work_keys_str_mv AT btrstenjak adaptablewebpredictionframeworkfordiseasepredictionbasedonthehybridcasebasedreasoningmodel
AT ddonko adaptablewebpredictionframeworkfordiseasepredictionbasedonthehybridcasebasedreasoningmodel
AT zavdagic adaptablewebpredictionframeworkfordiseasepredictionbasedonthehybridcasebasedreasoningmodel
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