Wavelet feature extraction for ECG beat classification

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Date

2015

Authors

Sani Saminu
Nalan Ǒzkurt
Ibrahim Abdullahi Karaye

Journal Title

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Volume Title

Publisher

IEEE Computer Society help@computer.org

Open Access Color

Green Open Access

No

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No
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Top 10%
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Abstract

Electrocardiography (ECG) signal is a bioelectrical signal which depicts the cardiac activity of the heart. It is a technique used primarily as a diagnostic tool for various cardiac diseases. ECG provides necessary information on the electrophysiology and changes that may occur in the heart. Due to the increase in mortality rate associated with cardiac diseases worldwide despite recent technological advancement early detection of these diseases is of paramount importance. This paper has proposed a robust ECG feature extraction technique suitable for mobile devices by extracting only 200 samples between R-R intervals as equivalent R-T interval using Pan Tompkins algorithm at preprocessing stage. The discrete wavelet transform (DWT) of R-T interval samples are calculated and the statistical parameters of wavelet coefficients such as mean median standard deviation maximum minimum energy and entropy are used as a time-frequency domain feature. The proposed hybrid technique has been tested by classifying three ECG beats as normal right bundle branch block (Rbbb) and paced beat using the signals from Massachusetts Institute of Technology Beth Israel Hospital (MIT-BIH) arrhythmia database and processed using Matlab 2013 environment. Classification has been performed using neural network backpropagation algorithm because of its simplicity. While equivalent R-T interval features gives average accuracy of 98.22% the proposed hybrid method gives a promising result with average accuracy of 99.84% with reduced classifier computational complexity. © 2017 Elsevier B.V. All rights reserved.

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Keywords

Dwt, Ecg, Ecg Feature Extraction, Mobile Devices, Pan Tompkins, Backpropagation Algorithms, Cardiology, Classification (of Information), Complex Networks, Diagnosis, Discrete Wavelet Transforms, Electrocardiography, Electrophysiology, Extraction, Feature Extraction, Frequency Domain Analysis, Heart, Mobile Devices, Wavelet Transforms, Dwt, Ecg Beat Classifications, Ecg Feature Extractions, Massachusetts Institute Of Technology, Pan Tompkins, Statistical Parameters, Technological Advancement, Wavelet Feature Extractions, Biomedical Signal Processing, Backpropagation algorithms, Cardiology, Classification (of information), Complex networks, Diagnosis, Discrete wavelet transforms, Electrocardiography, Electrophysiology, Extraction, Feature extraction, Frequency domain analysis, Heart, Mobile devices, Wavelet transforms, DWT, Ecg beat classifications, ECG Feature extractions, Massachusetts Institute of Technology, Pan Tompkins, Statistical parameters, Technological advancement, Wavelet feature extractions, Biomedical signal processing

Fields of Science

03 medical and health sciences, 0302 clinical medicine, 0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

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OpenCitations Citation Count
10

Source

2014 6th IEEE International Conference on Adaptive Science and Technology ICAST 2014

Volume

Issue

Start Page

1

End Page

6
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Scopus : 3

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