DocumentCode :
656487
Title :
An electrocardiogram classification method based on neural network
Author :
Klaynin, Pathrawut ; Wongseree, Waranyu ; Leelasantitham, Adisom ; Kiattisin, Supapom
Author_Institution :
Technol. of Inf. Syst. Manage. Program, Mahidol Univ., Nakorn Pathom, Thailand
fYear :
2013
fDate :
23-25 Oct. 2013
Firstpage :
1
Lastpage :
4
Abstract :
The ECG is a method for the detection of cardiovascular disease is simple and effective. The ECG. Check that the electricity produced on the heart muscle, cardiac compression. At the point where the heart muscle cells that can create a special type of electricity itself. We call this point that Sinus node electrical current to run through the muscles of the head room on the power that we have called the P wave flow to stop the connection between the atria and ventricles called the AV Node, then electricity will ran down the left and right atria, and the resulting current is called the QRS complex of normal myocardial preview graph. This paper illustrates the classification of electrocardiogram (ECG beats) are proposed trained by feedforward backpropergation method and logistic regression variable selection method. The objective of variable selection is reduce a variable of ECG beat, it will be improving classification, providing faster and avoid over fitting situation. We tested both methods so variable selection method. The ECG Data from MIT-BIH arrhythmia database for classify 5 types. These are atrial premature contraction, Normal, left bundle branch block, right bundle branch block and Premature ventricular contraction. The ECG signal model of cardiac cycle are included P wave, QRS complex, T wave and U wave. A U wave will be invisible by the T wave. So we selected and present the classification and results that make us interested in system design for find new solution for ECG Classification.
Keywords :
backpropagation; bioelectric potentials; cardiovascular system; diseases; electrocardiography; graph theory; medical signal processing; muscle; neural nets; regression analysis; signal classification; AV Node; ECG beats; ECG data; ECG signal model; MIT-BIH arrhythmia database; P wave flow; QRS complex; Sinus node electrical current; T wave; U wave; atrial premature contraction; cardiac compression; cardiac cycle; cardiovascular disease detection method; electrocardiogram classification method; feedforward backpropergation method; head room muscles; heart muscle cells; left bundle branch block; logistic regression variable selection method; neural network; normal myocardial preview graph; premature ventricular contraction; right bundle branch block; variable selection method; Databases; Electrocardiography; Heart; Input variables; Neural networks; Wavelet transforms; DC offset; Electrocardiogram; Neural Network; Variable Selection; classify the ECG; feedforward backpropergation; wavelet filter; wavelet transformation;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Biomedical Engineering International Conference (BMEiCON), 2013 6th
Conference_Location :
Amphur Muang
Print_ISBN :
978-1-4799-1466-1
Type :
conf
DOI :
10.1109/BMEiCon.2013.6687706
Filename :
6687706
Link To Document :
بازگشت