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Published in: Journal of Medical Systems 5/2012

01-10-2012 | Original Paper

Design of a Fuzzy-based Decision Support System for Coronary Heart Disease Diagnosis

Authors: Adel Lahsasna, Raja Noor Ainon, Roziati Zainuddin, Awang Bulgiba

Published in: Journal of Medical Systems | Issue 5/2012

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Abstract

In the present paper, a fuzzy rule-based system (FRBS) is designed to serve as a decision support system for Coronary heart disease (CHD) diagnosis that not only considers the decision accuracy of the rules but also their transparency at the same time. To achieve the two above mentioned objectives, we apply a multi-objective genetic algorithm to optimize both the accuracy and transparency of the FRBS. In addition and to help assess the certainty and the importance of each rule by the physician, an extended format of fuzzy rules that incorporates the degree of decision certainty and importance or support of each rule at the consequent part of the rules is introduced. Furthermore, a new way for employing Ensemble Classifiers Strategy (ECS) method is proposed to enhance the classification ability of the FRBS. The results show that the generated rules are humanly understandable while their accuracy compared favorably with other benchmark classification methods. In addition, the produced FRBS is able to identify the uncertainty cases so that the physician can give a special consideration to deal with them and this will result in a better management of efforts and tasks. Furthermore, employing ECS has specifically improved the ability of FRBS to detect patients with CHD which is desirable feature for any CHD diagnosis system.
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Metadata
Title
Design of a Fuzzy-based Decision Support System for Coronary Heart Disease Diagnosis
Authors
Adel Lahsasna
Raja Noor Ainon
Roziati Zainuddin
Awang Bulgiba
Publication date
01-10-2012
Publisher
Springer US
Published in
Journal of Medical Systems / Issue 5/2012
Print ISSN: 0148-5598
Electronic ISSN: 1573-689X
DOI
https://doi.org/10.1007/s10916-012-9821-7

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