Title of article
DISCRIMINATION ABILITY OF TIME-DOMAIN FEATURES AND RULES FOR ARRHYTHMIA CLASSIFICATION
Author/Authors
Arıkan, Umut Boğaziçi University - Dept of Computer Eng, Turkey , Gürgen, Fikret Boğaziçi University - Dept of Computer Eng, Turkey
From page
111
To page
120
Abstract
This study investigates relevant diagnosis information for arrhythmia classification from previously collected cardiac data. Discrimination ability of various time-domain attributes and rules were discussed for automatic diagnosis of arrythmia using electrocardiogram (ECG) signals. Naive Bayes, C4.5, multilayer perceptron (MLP) and support vector machines (SVM) algorithms were tested on a number of the input features selected by correlative feature selection (CFS) method. Hot Spot algorithm was employed to extract a number of rules that is useful in diagnosing cardiac problems from ECG signal. 257 time domain features of 452 cases from a cardiac arrhythmia database [1] were used. Various testing configurations and performance measures such as accuracy, TP and FP rates, precision, recall and AUC were considered. The discrimination ability of selected-features and the extracted-rules were demonstrated.
Keywords
Arrhythmia , ECG , Rule extraction , Hot Spot algorithm , Classification , Naive Bayes , C4.5 , multilayer perceptron (MLP) and support vector machines (SVM).
Journal title
mathematical and computational applications
Journal title
mathematical and computational applications
Record number
2569181
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