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
Link To Document :
بازگشت