A New Wavelet-Based Neural Network for Classification of Epileptic-Related States using EEG

被引:0
|
作者
E. Juárez-Guerra
V. Alarcon-Aquino
P. Gómez-Gil
J. M. Ramírez-Cortés
E. S. García-Treviño
机构
[1] Universidad Autónoma de Tlaxcala,Instituto de Investigaciones en Ecosistemas y Sustentabilidad
[2] Universidad de las Américas,undefined
[3] Instituto Nacional de Astrofísica Óptica y Electrónica,undefined
[4] UNAM,undefined
来源
关键词
Wavelet-based neural networks; Epileptic seizure detection; EEG analysis; Machine learning classification; Wavelet selection;
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学科分类号
摘要
In this paper, we present a novel neural network able to classify epileptic seizures using electroencephalogram (EEG) signals, called “Multidimensional Radial Wavelons Feed-Forward Wavelet Neural Network” (MRW-FFWNN). The network is part of a classification system, which distinguishes among three brain states related to epilepsy namely ictal, interictal and healthy. Efficient methods for pre-processing EEG’s, extracting features and getting the final class decisions were selected using a statistical three-fold cross-validation method, which assures the robustness of the system and its generalization ability. The following methods were systematically analyzed to find the most appropriate for this problem: 1) Infinite Impulse Response (IIR) and Finite Impulse Response (FIR) filters for noise reduction; 2) discrete Wavelet Transform (DWT) and Maximal Overlap Discrete Wavelet Transform (MODWT) for frequency decomposition of the EEG signals; 3) average correlation and maximum voting correlation for selecting a suitable mother wavelet for frequency decomposition; 4) Binary-tree and one-vs-one (OVO) decomposition strategies for primary binary classification; 5) voting and weighted-voting strategy aggregation strategies for the final classification. The integrated system was assessed using a three-fold cross validation, applied to a benchmark provided by the University of Bonn, getting an average accuracy of 93.33% when tested using sets Z, S and F and 95.0% when sets Z, S, F and O were used. The proposed network got competitive accuracy, compared with other state-of-the art classifiers, training in almost a half of the time than the ones with similar accuracy.
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页码:187 / 211
页数:24
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