Title of article :
Comparison of Support-Vector Machine and Sparse Representation Using a Modified Rule-Based Method for Automated Myocardial Ischemia Detection
Author/Authors :
Tseng, Yi-Li Department of Electrical Engineering - Fu Jen Catholic University - New Taipei City, Taiwan , Lin, Keng-Sheng National Taiwan University - Taipei, Taiwan , Jaw, Fu-Shan National Taiwan University - Taipei, Taiwan
Abstract :
An automatic method is presented for detecting myocardial ischemia, which can be considered as the early symptom of acute
coronary events. Myocardial ischemia commonly manifests as ST- and T-wave changes on ECG signals. The methods in this study
are proposed to detect abnormal ECG beats using knowledge-based features and classification methods. A novel classification
method, sparse representation-based classification (SRC), is involved to improve the performance of the existing algorithms. A
comparison was made between two classification methods, SRC and support-vector machine (SVM), using rule-based vectors
as input feature space. The two methods are proposed with quantitative evaluation to validate their performances. The results of
SRC method encompassed with rule-based features demonstrate higher sensitivity than that of SVM. However, the specificity and
precision are a trade-off. Moreover, SRC method is less dependent on the selection of rule-based features and can achieve high
performance using fewer features. The overall performances of the two methods proposed in this study are better than the previous
methods.
Keywords :
Support-Vector , SVM , Automated , Using
Journal title :
Computational and Mathematical Methods in Medicine