Abstract

An electrocardiogram (ECG) beat classification scheme based on multiple signal classification (MUSIC) algorithm, morphological descriptors, and neural networks is proposed for discriminating nine ECG beat types. These are normal, fusion of ventricular and normal, fusion of paced and normal, left bundle branch block, right bundle branch block, premature ventricular concentration, atrial premature contraction, paced beat, and ventricular flutter. ECG signal samples from MIT-BIH arrhythmia database are used to evaluate the scheme. MUSIC algorithm is used to calculate pseudospectrum of ECG signals. The low-frequency samples are picked to have the most valuable heartbeat information. These samples along with two morphological descriptors, which deliver the characteristics and features of all parts of the heart, form an input feature vector. This vector is used for the initial training of a classifier neural network. The neural network is designed to have nine sample outputs which constitute the nine beat types. Two neural network schemes, namely multilayered perceptron (MLP) neural network and a probabilistic neural network (PNN), are employed. The experimental results achieved a promising accuracy of 99.03% for classifying the beat types using MLP neural network. In addition, our scheme recognizes NORMAL class with 100% accuracy and never misclassifies any other classes as NORMAL.

Highlights

  • Most physiological activities consist of certain signals that reflect the activities’ nature and functions

  • The lower recognition was resulted for PFUS arrhythmia type, which means that the proposed feature vector has a lower discrimination for them

  • It is obvious that multilayered perceptron (MLP) classifier has a higher recognition than probabilistic neural network (PNN) classifier for the proposed feature vectors

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Summary

Introduction

Most physiological activities consist of certain signals that reflect the activities’ nature and functions. These signals are of different types, such as biochemical signals in the form of neuron transition and hormone, physical signals in the form of pressure and temperature, and electrical signals in the form of voltage and current. Disease or biological system defects cause disorders in the function of physiological procedures as well as their corresponding signals. One could study the signal behaviors to identify the nature and type of disorders or diseases. Arrhythmias are heart diseases, caused by heart electricalconductive system disorders and heart diseases such as very slow (bradycardia) or very fast (tachycardia) heart functions and result in an inefficient pumping

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