Investigation on Elman neural network for detection of cardiomyopathy

Deterioration of structure and function of heart muscle is indicative of a degenerative disease known as cardiomyopathy. As a result, the hypertrophic condition of the heart often revealed itself in the form of abnormal sinus rhythm that can be detected via an electrocardiogram (ECG). In order to reduce the risk of misinterpretation by cardiologists, a variety of computational methods have been suggested for automated classification of arrhythmias. This paper proposes to explore Elman neural network for detecting cardiomyopathy. A total of 600 ECG beat samples were acquired from an established online database. Initially, the signals were filtered to eliminate high-frequency interference and perform baseline rectification. Nine time-based descriptors from leads I, II and III were used for training, testing and validation of the network structures. A total of five hidden-node node structures were tested with four different learning algorithms. Results show that all the network structure managed to achieve more than 90% classification accuracy. The fastest convergence was achieved with the Levenberg-Marquardt algorithm with an average of 16 epochs.

[1]  Ataollah Ebrahimzadeh,et al.  Detection of premature ventricular contractions using MLP neural networks: A comparative study , 2010 .

[2]  Elif Derya íbeyli Recurrent neural networks employing Lyapunov exponents for analysis of ECG signals , 2010 .

[3]  Elif Derya Übeyli Recurrent neural networks employing Lyapunov exponents for analysis of ECG signals , 2010, Expert Syst. Appl..

[4]  A. H. Jahidin,et al.  Classification of bundle branch blocks using multilayered perceptron network , 2011, 2011 IEEE International Conference on Control System, Computing and Engineering.

[5]  Ataollah Ebrahimzadeh,et al.  Classification of the electrocardiogram signals using supervised classifiers and efficient features , 2010, Comput. Methods Programs Biomed..

[6]  Majid Moavenian,et al.  A comparative study of DWT, CWT and DCT transformations in ECG arrhythmias classification , 2010, Expert Syst. Appl..

[7]  Yüksel Özbay,et al.  Integration of type-2 fuzzy clustering and wavelet transform in a neural network based ECG classifier , 2011, Expert Syst. Appl..

[8]  Majid Moavenian,et al.  A qualitative comparison of Artificial Neural Networks and Support Vector Machines in ECG arrhythmias classification , 2010, Expert Syst. Appl..

[9]  Michael Negnevitsky,et al.  Artificial Intelligence: A Guide to Intelligent Systems , 2001 .

[10]  Ali Ghaffari,et al.  ECG arrhythmia recognition via a neuro-SVM-KNN hybrid classifier with virtual QRS image-based geometrical features , 2012, Expert Syst. Appl..

[11]  A. H. Jahidin,et al.  Detection of cardiomyopathy using multilayered perceptron network , 2012, 2012 IEEE 8th International Colloquium on Signal Processing and its Applications.

[12]  Pablo Laguna,et al.  Bioelectrical Signal Processing in Cardiac and Neurological Applications , 2005 .

[13]  A. H. Jahidin,et al.  Hybrid multilayered perceptron network for classification of bundle branch blocks , 2012, 2012 International Conference on Biomedical Engineering (ICoBE).

[14]  Adam Gacek Preprocessing and analysis of ECG signals - A self-organizing maps approach , 2011, Expert Syst. Appl..

[15]  G Bortolan,et al.  Assessment and comparison of different methods for heartbeat classification. , 2008, Medical engineering & physics.

[16]  Ken-ichi Funahashi,et al.  On the approximate realization of continuous mappings by neural networks , 1989, Neural Networks.