Wavelet De-Noising and Genetic Algorithm-Based Least Squares Twin SVM for Classification of Arrhythmias

被引:0
作者
Duan Li
Hongxin Zhang
Mingming Zhang
机构
[1] School of Electronic Engineering,School of Physics and Electronic Information Engineering
[2] Beijing University of Posts and Telecommunications,undefined
[3] Henan Polytechnic University,undefined
来源
Circuits, Systems, and Signal Processing | 2017年 / 36卷
关键词
Wavelet de-noising; Maximum entropy; Power spectral density; Least squares twin support vector machine; Genetic algorithm; ECG arrhythmia;
D O I
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中图分类号
学科分类号
摘要
The automatic detection of cardiac arrhythmias is a challenging task since the small variations in electrocardiogram (ECG) signals cannot be distinguished by the human eye. We propose a fast recognition method to diagnose heart diseases that is less time consuming and achieves better performance by combining wavelet de-noising with a genetic algorithm (GA)-based least squares twin support vector machine (LSTSVM). First, adaptive wavelet de-noising is employed for noise reduction. Second, power spectral density in combination with timing interval features is extracted to evaluate the classifier. Finally, a GA, particle swarm optimization (PSO), and chaotic PSO are compared for parameter optimization of the proposed directed acyclic graph LSTSVM multiclass classifiers. ECG heartbeats taken from the MIT-BIH arrhythmia database are used to examine the proposed method and other traditional classifiers such as multilayer perception, probabilistic neural network, learning vector quantization, extreme learning machine, SVM, and current TWSVMs. Number of our training samples is <3.2 % of all samples. Our proposed method demonstrates a high classification accuracy of 99.1403 % with low ratio of training and testing sample sizes; furthermore, it achieves a more rapid training and testing time of 0.2044 and 55.7383 s, respectively.
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页码:2828 / 2846
页数:18
相关论文
共 136 条
[1]  
Alickovic E(2015)Effect of multiscale PCA de-noising in ECG beat classification for diagnosis of cardiovascular disease Circuits Syst.Signal Process. 34 513-533
[2]  
Subasi A(2004)Fetal magnetocardiographic mapping using independent component analysis Physiol. Meas. 25 1459-1472
[3]  
Comani S(2004)Independent component analysis:fetal signal reconstruction from magnetocardiographic recordings Comput. Methods Progr. Biomed. 75 163-177
[4]  
Mantini D(2001)One-pass training of optimal architecture auto-associative neural network for detecting ectopic beats Electron Lett. 37 1126-1127
[5]  
Alleva GLS(2014)Laplacian smooth twin support vector machine for semi-supervised classification Int. J. Mach. Learn. Cybern. 5 459-468
[6]  
Romani GL(2016)MLTSVM: a novel twin support vector machine to multi-label learning Pattern Recognit. 52 61-74
[7]  
Comani S(2000)Adaptive wavelet thresholding for image denoising and compression IEEE Trans. Image Process. 9 1532-1546
[8]  
Mantinic D(2008)RETRACTED: a new statistical PCA-ICA algorithm for lacation of R-peaks in ECG Int. J. Cardiol. 129 146-148
[9]  
Pennesi P(2014)Recursive least squares projection twin support vector machines for nonlinear classification Neurocomputing 130 3-9
[10]  
Lagatta A(1994)Ideal spatial adaptation by wavelet shrinkage Biometrika 81 425-455