Abstract

An automatic detection system for distinguishing normal, ictal, and interictal electroencephalogram (EEG) signals is of great help in clinical practice. This paper presents a three-class classification system based on discrete wavelet transform (DWT) and the nonlinear sparse extreme learning machine (SELM) for epilepsy and epileptic seizure detection. Three-level lifting DWT using Daubechies order 4 wavelet is introduced to decompose EEG signals into delta, theta, alpha, and beta subbands. Considering classification accuracy and computational complexity, the maximum and standard deviation values of each subband are computed to create an eight-dimensional feature vector. After comparing five multiclass SELM strategies, the one-against-one strategy with the highest accuracy is chosen for the three-class classification system. The performance of the designed three-class classification system is tested with publicly available epilepsy dataset. The results show that the system achieves high enough classification accuracy by combining the SELM and DWT and reduces training and testing time by decreasing computational complexity and feature dimension. With excellent classification performance and low computation complexity, this three-class classification system can be utilized for practical epileptic EEG detection, and it offers great potentials for portable automatic epilepsy and seizure detection system in the future hardware implementation.

Highlights

  • Epilepsy is one of the most common chronic neurological disorders and is a condition with recurrent evoking of seizure

  • The cost parameter C and kernel parameter σ2 have different influence on the classification performance of the Gaussian sparse extreme learning machine (SELM). 2σ2 is tuned with 12 different values, that is, 1, 5, 10, 60, 100, 200, 300, 400, 500, 600, 700, and 800, and C is Electrode types Electrode placement Number of segments Segment duration (s)

  • This work is the first work to implement the multiclass SELM based on liftingbased DWT (LDWT) for epilepsy and seizure detection

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Summary

Introduction

Epilepsy is one of the most common chronic neurological disorders and is a condition with recurrent evoking of seizure. The seizure detection relies on “interviewing” patients and inspecting EEG recordings by highly trained professionals in hospitals [3, 4]. This approach is extremely inaccurate and inconvenient, and epilepsy patients may show normal states when their seizures do not occur. Differentiating between healthy and interictal (seizure-free) EEG signals can be used to diagnose epilepsy in a clinical setting and, the detection of seizure is of importance for instant treatment [5]. Automatic classification of healthy, ictal (seizure), and interictal EEG signals is of great clinical significance

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