Artificial Intelligent Based Arrhythmia Identification Via Single Lead Ecg Recording

Electrocardiogram (ECG) represents the electrical activities of our heart. It provides various information about our heart status such as cardiac disorder or arrhythmia. ECG has become the most common diagnostic tool in heart analysis as well as in monitoring for cardiac problem. In the past century...

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Main Author: Lim, Guo Jin
Format: Monograph
Language:English
Published: Universiti Sains Malaysia 2017
Subjects:
Online Access:http://eprints.usm.my/52909/
http://eprints.usm.my/52909/1/Artificial%20Intelligent%20Based%20Arrhythmia%20Identification%20Via%20Single%20Lead%20Ecg%20Recording_Lim%20Guo%20Jin_E3_2017.pdf
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author Lim, Guo Jin
author_facet Lim, Guo Jin
author_sort Lim, Guo Jin
building USM Institutional Repository
collection Online Access
description Electrocardiogram (ECG) represents the electrical activities of our heart. It provides various information about our heart status such as cardiac disorder or arrhythmia. ECG has become the most common diagnostic tool in heart analysis as well as in monitoring for cardiac problem. In the past century, arrhythmia has become the most common heart disease, showing the least symptoms while having the greatest effect toward the victims. Despite the plenty of studies that have been done in Arrhythmia detection, it problematic as Arrhythmia may only happen periodically. The main goal of this study is to develop an artificial neural network based algorithm which is able to classify the ECG rhythm. At the first stage, the ECG signal is classified into noisy ECG and clean ECG. Only clean ECG signal will be fetched into the second stage to be classified into Arrhythmia or Normal Sinus rhythm. Different features have been used in both stages and been fetched into trained MLP neural network for classification purpose. At first stage classification, 6 features have been selected as input and 15 number of neurons in hidden layer have been used. Meanwhile at the second stage, 4 features have been selected as input and 40 numbers of hidden layer’s neuron has been used. Final accuracy of 83.3% has been achieved during the training stage by using 300 training data. Final score of 0.7076 (Perfect score = 1) has been achieved when the 8528 data has been fetched into the developed neural network. In conclusion, suitable features have been identified which are average and standard deviation of heart rate and R-peak amplitude. Finally, a high accuracy neural network has been developed in this study.
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spelling usm-529092022-06-15T08:24:10Z http://eprints.usm.my/52909/ Artificial Intelligent Based Arrhythmia Identification Via Single Lead Ecg Recording Lim, Guo Jin T Technology TK Electrical Engineering. Electronics. Nuclear Engineering Electrocardiogram (ECG) represents the electrical activities of our heart. It provides various information about our heart status such as cardiac disorder or arrhythmia. ECG has become the most common diagnostic tool in heart analysis as well as in monitoring for cardiac problem. In the past century, arrhythmia has become the most common heart disease, showing the least symptoms while having the greatest effect toward the victims. Despite the plenty of studies that have been done in Arrhythmia detection, it problematic as Arrhythmia may only happen periodically. The main goal of this study is to develop an artificial neural network based algorithm which is able to classify the ECG rhythm. At the first stage, the ECG signal is classified into noisy ECG and clean ECG. Only clean ECG signal will be fetched into the second stage to be classified into Arrhythmia or Normal Sinus rhythm. Different features have been used in both stages and been fetched into trained MLP neural network for classification purpose. At first stage classification, 6 features have been selected as input and 15 number of neurons in hidden layer have been used. Meanwhile at the second stage, 4 features have been selected as input and 40 numbers of hidden layer’s neuron has been used. Final accuracy of 83.3% has been achieved during the training stage by using 300 training data. Final score of 0.7076 (Perfect score = 1) has been achieved when the 8528 data has been fetched into the developed neural network. In conclusion, suitable features have been identified which are average and standard deviation of heart rate and R-peak amplitude. Finally, a high accuracy neural network has been developed in this study. Universiti Sains Malaysia 2017-06-01 Monograph NonPeerReviewed application/pdf en http://eprints.usm.my/52909/1/Artificial%20Intelligent%20Based%20Arrhythmia%20Identification%20Via%20Single%20Lead%20Ecg%20Recording_Lim%20Guo%20Jin_E3_2017.pdf Lim, Guo Jin (2017) Artificial Intelligent Based Arrhythmia Identification Via Single Lead Ecg Recording. Project Report. Universiti Sains Malaysia, Pusat Pengajian Kejuruteraan Elektrik & Elektronik. (Submitted)
spellingShingle T Technology
TK Electrical Engineering. Electronics. Nuclear Engineering
Lim, Guo Jin
Artificial Intelligent Based Arrhythmia Identification Via Single Lead Ecg Recording
title Artificial Intelligent Based Arrhythmia Identification Via Single Lead Ecg Recording
title_full Artificial Intelligent Based Arrhythmia Identification Via Single Lead Ecg Recording
title_fullStr Artificial Intelligent Based Arrhythmia Identification Via Single Lead Ecg Recording
title_full_unstemmed Artificial Intelligent Based Arrhythmia Identification Via Single Lead Ecg Recording
title_short Artificial Intelligent Based Arrhythmia Identification Via Single Lead Ecg Recording
title_sort artificial intelligent based arrhythmia identification via single lead ecg recording
topic T Technology
TK Electrical Engineering. Electronics. Nuclear Engineering
url http://eprints.usm.my/52909/
http://eprints.usm.my/52909/1/Artificial%20Intelligent%20Based%20Arrhythmia%20Identification%20Via%20Single%20Lead%20Ecg%20Recording_Lim%20Guo%20Jin_E3_2017.pdf