Epileptic Seizure Detection Using a Hybrid 1D CNN-Machine Learning Approach from EEG Data.

Fatima Hassan, Syed Fawad Hussain, Saeed Mian Qaisar
Author Information
  1. Fatima Hassan: Faculty of Computer Science and Engineering, G. I. K. Institute, Topi, Pakistan.
  2. Syed Fawad Hussain: Faculty of Computer Science and Engineering, G. I. K. Institute, Topi, Pakistan. ORCID
  3. Saeed Mian Qaisar: Electrical and Computer Engineering Department, Effat University, Jeddah 22332, Saudi Arabia. ORCID

Abstract

Electroencephalography (EEG) is a widely used technique for the detection of epileptic seizures. It can be recorded in a noninvasive manner to present the electrical activity of the brain. The visual inspection of nonlinear and highly complex EEG signals is both costly and time-consuming. Therefore, an effective automatic detection system is needed to assist in the long-term evaluation and treatment of patients. Traditional approaches based on machine learning require feature extraction, while deep learning approaches are time-consuming and require more layers for effective feature learning and processing of complex EEG waveforms. Deep learning-based approaches also have weak generalization ability. This paper proposes a solution based on the combination of convolution neural networks (CNN) and machine learning classifiers. It preprocesses the EEG signal using the Butterworth filter and performs feature extraction using CNN. From the extracted set of features, the approach selects only the relevant features using mutual information-based estimators to reduce the curse of dimensionality and improve classification accuracy. The selected features are then passed as input to different machine learning classifiers. The suggested solution is evaluated on the University of Bonn dataset and CHB-MIT datasets. Our model effectively predicts 2, 3, 4, and 5 classes with accuracy of 100%, 99%, 94.6%, and 94%, respectively, for the Bonn dataset and 98% for CHB-MIT datasets.

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MeSH Term

Humans
Seizures
Neural Networks, Computer
Machine Learning

Word Cloud

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