Author/Authors :
Marateb, Hamid Reza Department of Biomedical Engineering - Faculty of Engineering - University of Isfahan, Isfahan , Goudarzi, Sobhan Department of Biomedical Engineering - Faculty of Engineering - University of Isfahan, Isfahan
Abstract :
Background: Coronary heart diseases/coronary artery diseases (CHDs/CAD), the most common form of cardiovascular disease
(CVD), are a major cause for death and disability in developing/developed countries. CAD risk factors could be detected by
physicians to prevent the CAD occurrence in the near future. Invasive coronary angiography, a current diagnosis method, is
costly and associated with morbidity and mortality in CAD patients. The aim of this study was to design a computer-based
noninvasive CAD diagnosis system with clinically interpretable rules. Materials and Methods: In this study, the Cleveland
CAD dataset from the University of California UCI (Irvine) was used. The interval-scale variables were discretized, with cut
points taken from the literature. A fuzzy rule-based system was then formulated based on a neuro-fuzzy classifier (NFC)
whose learning procedure was speeded up by the scaled conjugate gradient algorithm. Two feature selection (FS) methods,
multiple logistic regression (MLR) and sequential FS, were used to reduce the required attributes. The performance of the
NFC (without/with FS) was then assessed in a hold-out validation framework. Further cross-validation was performed on the
best classifier. Results: In this dataset, 16 complete attributes along with the binary CHD diagnosis (gold standard) for 272
subjects (68% male) were analyzed. MLR + NFC showed the best performance. Its overall sensitivity, specificity, accuracy, type
I error (α) and statistical power were 79%, 89%, 84%, 0.1 and 79%, respectively. The selected features were “age and ST/heart
rate slope categories,” “exercise-induced angina status,” fluoroscopy, and thallium-201 stress scintigraphy results. Conclusion:
The proposed method showed “substantial agreement” with the gold standard. This algorithm is thus, a promising tool for
screening CAD patients.
Keywords :
fuzzy logic , data mining , coronary artery diseas , clinical prediction rul , Classification