Abstract

Epilepsy is a chronic neurological disease characterized by a large electrical explosion that is excessive and uncontrolled, as defined by the world health organization. It is an anomaly that affects people of all ages. An electroencephalogram (EEG) of the brain activity is a widely known method designed as a reference dedicated to study epileptic seizures and to record the changes in brain electrical activity. Therefore, the prediction and early detection of epilepsy is necessary to provide timely preventive interventions that allow patients to be relieved from the harmful consequences of epileptic seizures. Despite decades of research, the prediction of these seizures with accuracy remains an unresolved problem. In this article, we have proposed five deep learning models on intracranial electroencephalogram (iEEG) datasets with the aim of automatically predicting epileptic seizures. The proposed models are based on the Convolutional Neural Network (CNN) model, the fusion of the two CNNs (2-CNN), the fusion of the three CNNs (3-CNN), the fusion of the four CNNs (4-CNN), and transfer learning with ResNet50. The experimental results show that our proposed methods based on 3-CNN and 4-CNN gave the best values. They both achieve an accuracy value of 95%. Finally, our proposed methods are compared with previous studies, which confirm that seizure prediction performance was significantly improved.

Highlights

  • Epilepsy is a neurological disease produced by an abnormal function of the activity of the brain

  • We will present the main results obtained after the application of the 1-CNInNt,h2i-sCsNecNti,o3n,CwNeNw, ialnl dpr4e-sCeNntNthme omdaeilns arensdutltrsanosbftearinleeadrnaifntegrwthitehaRpepslNicaetti5o0n. of the 1-Convolutional Neural Network (CNN), 2-CNN, 3-CNN, and 4-CNN models and transfer learning with ResNet50

  • The 4-CNN gives an accuracy value of 95.5%, recall of 95.5%, and 95.0% for the F1-score

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Summary

Introduction

Epilepsy is a neurological disease produced by an abnormal function of the activity of the brain. It is similar to convulsive disorders, which cause repetitive and sudden seizures. These seizures are due to synchronous or simultaneous activity of brain cells that should be inactive. This last phenomenon is compared to a thunderstorm. The EEG electroencephalography provides information on the electrical activity generated by nerve cells in the cerebral cortex in real time and with excellent temporal resolution in the order of ten milliseconds [1]. Detection by EEG signals requires direct investigation by a physician and significant effort and time. There is a need to develop an automatic and computer-assisted method to diagnose epilepsy

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