Abstract

Electroencephalography is the recording of brain electrical activities that can be used to diagnose brain seizure disorders. By identifying brain activity patterns and their correspondence between symptoms and diseases, it is possible to give an accurate diagnosis and appropriate drug therapy to patients. This work aims to categorize electroencephalography signals on different channels' recordings for classifying and predicting epileptic seizures. The collection of the electroencephalography recordings contained in the dataset attributes 179 information and 11,500 instances. Instances are of five categories, where one is the symptoms of epilepsy seizure. We have used traditional, ensemble methods and deep machine learning techniques highlighting their performance for the epilepsy seizure detection task. One dimensional convolutional neural network, ensemble machine learning techniques like bagging, boosting (AdaBoost, gradient boosting, and XG boosting), and stacking is implemented. Traditional machine learning techniques such as decision tree, random forest, extra tree, ridge classifier, logistic regression, K-Nearest Neighbor, Naive Bayes (gaussian), and Kernel Support Vector Machine (polynomial, gaussian) are used for classifying and predicting epilepsy seizure. Before using ensemble and traditional techniques, we have preprocessed the data set using the Karl Pearson coefficient of correlation to eliminate irrelevant attributes. Further accuracy of classification and prediction of the classifiers are manipulated using k-fold cross-validation methods and represent the Receiver Operating Characteristic Area Under the Curve for each classifier. After sorting and comparing algorithms, we have found the convolutional neural network and extra tree bagging classifiers to have better performance than all other ensemble and traditional classifiers.

Highlights

  • The electroencephalography (EEG) recording of different channels shows the electrical activities of the brain and is used to understand and elucidate brain functions in order to help us to diagnose neurological disorders

  • A channel is interpreted as one pair of electrodes, and a signal is a recording of the channel

  • Higher frequencies in EEG channels are the symptoms of the abnormal state of the subject that may say suffering from epilepsy seizure

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Summary

Introduction

The electroencephalography (EEG) recording of different channels shows the electrical activities of the brain and is used to understand and elucidate brain functions in order to help us to diagnose neurological disorders. During the EEG test, the computer screen represents the brain's electrical signals into wavy lines, and these wavy lines are the track and record of the electrical activities of the brain. 256 electrodes are placed on the brain, which is recorded the signals from different areas of the brain. Given that the cortex is functionally organized and movement diverges as a function, the EEG can vary and significantly differ depending on the topographic location of the recording electrodes. Higher frequencies in EEG channels are the symptoms of the abnormal state of the subject that may say suffering from epilepsy seizure

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