Abstract

Detection of epileptic seizure activities from long-term multi-channel electroencephalogram (EEG) signals plays a significant role in the timely treatment of the patients with epilepsy. Visual identification of epileptic seizure in long-term EEG is cumbersome and tedious for neurologists, which might also lead to human error. Therefore, an automated tool for accurate detection of seizures in a long-term multi-channel EEG is essential for the clinical diagnosis. This study proposes an algorithm using multi-features and multilayer perceptron neural network (MLPNN) classifier. After appropriate approval from the ethical committee, recordings of EEG data were collected from the Institute of Neurosciences, Ramaiah Memorial College and Hospital, Bengaluru. Initially, preprocessing was performed to remove the power-line noise and motion artifacts. Four features, namely power spectral density (Yule–Walker), entropy (Shannon and Renyi), and Teager energy, were extracted. The Wilcoxon rank-sum test and descriptive analysis ensure the suitability of the proposed features for pattern classification. Single and multi-features were fed to the MLPNN classifier to evaluate the performance of the study. The simulation results showed sensitivity, specificity, and false detection rate of 97.1%, 97.8%, and 1 h−1, respectively, using multi-features. Further, the results indicate the proposed study is suitable for real-time seizure recognition from multi-channel EEG recording. The graphical user interface was developed in MATLAB to provide an automated biomarker for normal and epileptic EEG signals.

Highlights

  • EEG is a clinical procedure carried out for monitoring, diagnosing, and determining neurological disorders related to epilepsy [1]

  • Epilepsy is a neurological disorder caused due to abnormal electrical discharges in the brain that are characterized by seizures and sudden changes in the electrical activity of the brain

  • 5 Conclusion This study provides a multi-channel EEG analysis for the detection of epileptic seizures using PSD, entropy, Teager energy, and multilayer perceptron neural network (MLPNN) classifier

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Summary

Introduction

EEG is a clinical procedure carried out for monitoring, diagnosing, and determining neurological disorders related to epilepsy [1]. The long-term video-EEG recording is a significant milestone to capture and analyze ictal events and help in the contribution of valuable clinical information. Traditional methods of analyzing EEG are time-consuming and a tedious job done by neurologists. Visual interpretation of these long-term EEG recordings can lead to human error and is inefficient [5]. The EEG recordings of epileptic seizure are similar to the waves that are a part of background noise and artifacts. For these reasons, automated detection of epileptic

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