2022
DOI: 10.1016/j.neuroscience.2021.11.017
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An Overview of EEG-based Machine Learning Methods in Seizure Prediction and Opportunities for Neurologists in this Field

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Cited by 20 publications
(6 citation statements)
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“…The feature extraction methods mainly include time domain analysis, frequency domain analysis, time frequency domain analysis, multivariate statistical analysis, and nonlinear dynamic analysis (Donos et al, 2018;Rasheed et al, 2020). Principal component analysis, linear discriminant analysis (LDA; Alotaiby et al, 2017), and independent component analysis (Ur et al, 2013;Acharya et al, 2018a;Maimaiti et al, 2021) are widely used unsupervised time-domain methods to summarize EEG data. Frequency domain features include spectral center, coefficient of variation, power spectral density, signal energy, spectral moment, and spectral skewness, which can provide key information about data changes (Yuan et al, 2018;Acharya et al, 2018a).…”
Section: Review Of Eeg Emotion Recognition Techniques 41 Shallow Mach...mentioning
confidence: 99%
“…The feature extraction methods mainly include time domain analysis, frequency domain analysis, time frequency domain analysis, multivariate statistical analysis, and nonlinear dynamic analysis (Donos et al, 2018;Rasheed et al, 2020). Principal component analysis, linear discriminant analysis (LDA; Alotaiby et al, 2017), and independent component analysis (Ur et al, 2013;Acharya et al, 2018a;Maimaiti et al, 2021) are widely used unsupervised time-domain methods to summarize EEG data. Frequency domain features include spectral center, coefficient of variation, power spectral density, signal energy, spectral moment, and spectral skewness, which can provide key information about data changes (Yuan et al, 2018;Acharya et al, 2018a).…”
Section: Review Of Eeg Emotion Recognition Techniques 41 Shallow Mach...mentioning
confidence: 99%
“…PILEPSY is a chronic brain disease caused by the sudden abnormal discharge of neurons in the brain resulting in temporary impairment of brain function [1], [2]. The disease affects the normal life of approximately 1% of the world's population, where about 20-30% of patients are drugresistant, known as intractable patients [3], [4]. For these people, it is a feasible scheme to alert them before a coming seizure, which will take care of the self-esteem of patients and avoid the serious consequences caused by a sudden seizure when they go out for activities [5], [6].…”
Section: Introductionmentioning
confidence: 99%
“…There are four main stages of an epileptic seizure, including preictal, ictal, postictal, and interictal period. Normally, patients are in the interictal state, from which if preictal phase could be identified, an imminent seizure may be avoided by medical treatment ( Usman et al, 2019 ; Maimaiti et al, 2022 ).…”
Section: Introductionmentioning
confidence: 99%