DocumentCode :
76894
Title :
Intelligent electrocardiogram pattern classification and recognition using low-cost cardio-care system
Author :
Sutar, Rajendra G. ; Kothari, Ashwin G.
Author_Institution :
Electron. Dept., Mumbai Univ., Mumbai, India
Volume :
9
Issue :
1
fYear :
2015
fDate :
1 2015
Firstpage :
134
Lastpage :
143
Abstract :
Electrocardiogram (ECG) contains detailed information regarding incidental abnormality of a subject. Manual analysis of a long time ECG record is a lengthy process. Computerised ECG analysis supports clinicians in decision making. While designing a low-cost diagnostic support system, constraints on the system resources limit the processing speed, eventually affecting the reliability. To resolve these issues, three key factors have been addressed in this study: the feature extraction method, total number of features and the database used. For feature extraction, `polar Teager energy´ algorithm has been developed, yielding nearly 70% saving in processing time as compared to other well-known methods. Using features with linear relationship leads to reduction in feature vector dimension, without compromising its classification performance. Therefore the linear relationship between two ECG features, namely `informational entropy´(S) and `mean Teager energy´ has been revealed. These features are utilised for ECG beat classification using `fuzzy C-means clustering´ algorithm. The algorithm is evaluated using the MIT-BIH database and then tested by ECG measured with the cardio-care unit. The QRS detection performance of the proposed method is very good, with 0.27% detection error rate. For classification of ECG beats, average sensitivity and positive prediction rate achieved are 98.93% each.
Keywords :
decision making; decision support systems; electrocardiography; entropy; feature extraction; medical computing; medical diagnostic computing; pattern classification; signal classification; ECG beat classiflcation; MIT-BIH database; QRS detection performance; cardiocare unit; computerised ECG analysis; decision making; diagnostic support system; feature extraction method; feature vector dimension; informational entropy; intelligent electrocardiogram pattern classification; intelligent electrocardiogram pattern recognition; mean Teager energy; polar Teager energy algorithm;
fLanguage :
English
Journal_Title :
Science, Measurement & Technology, IET
Publisher :
iet
ISSN :
1751-8822
Type :
jour
DOI :
10.1049/iet-smt.2013.0156
Filename :
7047402
Link To Document :
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