A novel fuzzy hybrid neural network using higher-order statistics demonstrated good efficiency for the recognition and classification of different types of electrocardiographic beats.
ECG beat classification
Fuzzy hybrid neural network
ECG beat recognition and classification efficiency
This paper presents the application of the fuzzy neural network for electrocardiographic (ECG) beat recognition and classification. The new classification algorithm of the ECG beats, applying the fuzzy hybrid neural network and the features drawn from the higher order statistics has been proposed in the paper. The cumulants of the second, third, and fourth orders have been used for the feature selection. The hybrid fuzzy neural network applied in the solution consists of the fuzzy self-organizing subnetwork connected in cascade with the multilayer perceptron, working as the final classifier. The c-means and Gustafson-Kessel algorithms for the self-organization of the neural network have been applied. The results of experiments of recognition of different types of beats on the basis of the ECG waveforms have confirmed good efficiency of the proposed solution. The investigations show that the method may find practical application in the recognition and classification of different type heart beats.
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S. Osowski
Warsaw University of Technology
Trần Hoài Linh
Pham Ngoc Thach University of Medicine
IEEE Transactions on Biomedical Engineering
Warsaw University of Technology
Military University of Technology in Warsaw
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Osowski et al. (Mon,) conducted a other in ECG beat classification. Fuzzy hybrid neural network was evaluated on ECG beat recognition and classification efficiency. A novel fuzzy hybrid neural network using higher-order statistics demonstrated good efficiency for the recognition and classification of different types of electrocardiographic beats.
synapsesocial.com/papers/6a1565ab5347fbb1739fb82c — DOI: https://doi.org/10.1109/10.959322