Journal Article10.1109/ACCESS.2022.3232563
Machine Learning Algorithms for Epilepsy Detection Based on Published EEG Databases: A Systematic Review
Andreas Miltiadous,Katerina D. Tzimourta,Nikolaos Giannakeas,Markos G. Tsipouras,E. Glavas,Konstantinos Kalafatakis,Alexandros T. Tzallas +6 more
- Vol. 11, pp 564-594
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TL;DR: In this article , the authors present a detailed evaluation of the signal processing and classification methodologies employed on the different databases and provide valuable insights for future work, while the increasing tendency to employ Convolutional Neural Networks that use a combination of Time-Frequency decomposition methodology images is noticed.
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Abstract: Epilepsy is the only neurological condition for which electroencephalography (EEG) is the primary diagnostic and important prognostic clinical tool. However, the manual inspection of EEG signals is a time-consuming procedure for neurologists. Thus, intense research has been made on creating machine learning methodologies for automated epilepsy detection. Also, many research or medical facilities have published databases of epileptic EEG signals to accommodate this research effort. The vast number of studies concerning epilepsy detection with EEG makes this systematic review necessary. It presents a detailed evaluation of the signal processing and classification methodologies employed on the different databases and provides valuable insights for future work. 190 studies were included in this systematic review according to the PRISMA guidelines, acquired from a systematic literature search in PubMed, Scopus, ScienceDirect and IEEE Xplore on 1st May 2021. Studies were examined based on the Signal Transformation technique, classification methodology and database for evaluation. Along with other findings, the increasing tendency to employ Convolutional Neural Networks that use a combination of Time-Frequency decomposition methodology images is noticed.
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Citations
A Dataset of Scalp EEG Recordings of Alzheimer's Disease, Frontotemporal Dementia and Healthy Subjects from Routine EEG
Andreas Miltiadous,Katerina D. Tzimourta,Theodora Afrantou,Panagiotis Ioannidis,Nikolaos Grigoriadis,Dimitrios G. Tsalikakis,Pantelis Angelidis,Markos G. Tsipouras,E. Glavas,Nikolaos Giannakeas,Alexandros T. Tzallas +10 more
TL;DR: In this paper , the authors presented a detailed description of a resting-state EEG dataset of individuals with Alzheimer's disease and frontotemporal dementia, and healthy controls, collected using a clinical EEG system with 19 scalp electrodes while participants were in a resting state with their eyes closed.
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Two-stage approach with combination of outlier detection method and deep learning enhances automatic epileptic seizure detection
Vadim V. Grubov,Sergei Nazarikov,Semen Kurkin,Nikita Utyashev,Denis A. Andrikov,О Э Карпов,Alexander E. Hramov +6 more
TL;DR: A two-stage approach combining outlier detection and deep learning enhances automatic epileptic seizure detection, improving precision while slightly decreasing recall, and has potential for clinical decision support systems using real-world EEG recordings.
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Optimization of epilepsy detection method based on dynamic EEG channel screening.
Yuebin Song,Chunling Fan,Xiaoqian Mao +2 more
TL;DR: A novel epilepsy detection method based on dynamic electroencephalogram (EEG) channel screening that not only extracts more effective epilepsy features but also finds common features among different epilepsy subjects, providing an effective approach and theoretical support for across-subject epilepsy detection in clinical scenarios.
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Robust Epileptic Seizure Detection Using Long Short-Term Memory and Feature Fusion of Compressed Time–Frequency EEG Images
Shafi Ullah Khan,Sana Ullah Jan,Insoo Koo +2 more
- 01 Dec 2023
TL;DR: A novel model that seamlessly integrates the salient features from the time–frequency domain along with pivotal statistical attributes derived from EEG signals is presented, which involves the integration of essential statistics, including the mean, median, and variance, combined with the rich data from compressed time-frequency images processed using autoencoders.
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EEG Signal-Based Machine Learning Approaches for Alzheimer's Disease: A Review of Methodological Analysis
Mohammad R. Khosravi,Hossein Parsaei,Mohammed Alghanim,Khosro Rezaee +3 more
- 27 Dec 2023
TL;DR: EEG-based studies that sought to create electrophysiological biomarkers for AD or offered an automated system for doing so are reviewed and a roadmap for future research on cognitive impairment detection systems has been laid forth.
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References
Preferred Reporting Items for Systematic Reviews and Meta-Analyses: The PRISMA Statement
David Moher,Alessandro Liberati,Alessandro Liberati,Jennifer Tetzlaff,Douglas G. Altman test +4 more
TL;DR: PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analyses) is introduced, an update of the QUOROM guidelines for reporting systematic reviews and meta-analyses.
The impact of the MIT-BIH Arrhythmia Database
George B. Moody,Roger G. Mark +1 more
TL;DR: The history of the database, its contents, what is learned about database design and construction, and some of the later projects that have been stimulated by both the successes and the limitations of the MIT-BIH Arrhythmia Database are reviewed.
4.3K
Indications of nonlinear deterministic and finite-dimensional structures in time series of brain electrical activity: dependence on recording region and brain state.
Ralph G. Andrzejak,Klaus Lehnertz,Florian Mormann,Christoph Rieke,Peter David,Christian E. Elger +5 more
TL;DR: Dynamical properties of brain electrical activity from different recording regions and from different physiological and pathological brain states are compared and strongest indications of nonlinear deterministic dynamics were found for seizure activity.
2.9K
Empirical Wavelet Transform
TL;DR: This paper presents a new approach to build adaptive wavelets, the main idea is to extract the different modes of a signal by designing an appropriate wavelet filter bank, which leads to a new wavelet transform, called the empirical wavelets transform.
Invariant Scattering Convolution Networks
Joan Bruna,Stéphane Mallat +1 more
TL;DR: The mathematical analysis of wavelet scattering networks explains important properties of deep convolution networks for classification.