Premature Ventricular Contraction Arrhythmia Detection and Classification with Gaussian Process and S Transform

This paper presents an efficient Bayesian classification system based on Gaussian process classifiers (GPC) for detecting premature ventricular contraction (PVC) beats in electrocardiographic (ECG) signals. GPC have the advantage over SVM classifiers in that the parameters of its kernel are automatically selected according to the Bayesian estimation procedure based on Laplace approximation. We also propose to feed the classifier with different representations of the ECG signals based on morphology, discrete wavelet transform, and S-transform. The latter representation has never been used for ECG signals before. The experimental results obtained on 48 records (i.e., 109887 heart beats) of the MIT-BIH arrhythmia database showed that for all feature representations adopted in this work, the proposed GP classifier combined with the S-transform and trained with only 600 beats from PVC and Non-PVC classes can provide an overall accuracy and a sensitivity above 96% on the whole 48 recordings.

[1]  Athina P. Petropulu,et al.  Higher-order spectral analysis , 2006 .

[2]  Farid Melgani,et al.  Active Learning Methods for Electrocardiographic Signal Classification , 2010, IEEE Transactions on Information Technology in Biomedicine.

[3]  Patrick E. McSharry,et al.  Advanced Methods And Tools for ECG Data Analysis , 2006 .

[4]  Hsiao-Lung Chan,et al.  Human identification by quantifying similarity and dissimilarity in electrocardiogram phase space , 2009, Pattern Recognit..

[5]  Dimitrios Hatzinakos,et al.  A new ECG feature extractor for biometric recognition , 2009, 2009 16th International Conference on Digital Signal Processing.

[6]  Farid Melgani,et al.  Classification of Electrocardiogram Signals With Support Vector Machines and Particle Swarm Optimization , 2008, IEEE Transactions on Information Technology in Biomedicine.

[7]  Stéphane Mallat,et al.  A Theory for Multiresolution Signal Decomposition: The Wavelet Representation , 1989, IEEE Trans. Pattern Anal. Mach. Intell..

[8]  Stéphane Mallat,et al.  Multifrequency Channel Decompositions of Images , 1989 .

[9]  Yüksel Özbay,et al.  A new method for classification of ECG arrhythmias using neural network with adaptive activation function , 2010, Digit. Signal Process..

[10]  Farid Melgani,et al.  Gaussian Process Approach to Remote Sensing Image Classification , 2010, IEEE Transactions on Geoscience and Remote Sensing.

[11]  A. Haar Zur Theorie der orthogonalen Funktionensysteme , 1910 .

[12]  Majid Moavenian,et al.  A comparative study of DWT, CWT and DCT transformations in ECG arrhythmias classification , 2010, Expert Syst. Appl..

[13]  Vladimir Vapnik,et al.  Statistical learning theory , 1998 .

[14]  I. Daubechies Orthonormal bases of compactly supported wavelets II: variations on a theme , 1993 .

[15]  Hyun-Chul Kim,et al.  Bayesian Gaussian Process Classification with the EM-EP Algorithm , 2006, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[16]  Lalu Mansinha,et al.  Localization of the complex spectrum: the S transform , 1996, IEEE Trans. Signal Process..