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Review
. 2024 Jun:155:109736.
doi: 10.1016/j.yebeh.2024.109736. Epub 2024 Apr 17.

Artificial intelligence/machine learning for epilepsy and seizure diagnosis

Affiliations
Review

Artificial intelligence/machine learning for epilepsy and seizure diagnosis

Kenneth Han et al. Epilepsy Behav. 2024 Jun.

Abstract

Accurate seizure and epilepsy diagnosis remains a challenging task due to the complexity and variability of manifestations, which can lead to delayed or missed diagnosis. Machine learning (ML) and artificial intelligence (AI) is a rapidly developing field, with growing interest in integrating and applying these tools to aid clinicians facing diagnostic uncertainties. ML algorithms, particularly deep neural networks, are increasingly employed in interpreting electroencephalograms (EEG), neuroimaging, wearable data, and seizure videos. This review discusses the development and testing phases of AI/ML tools, emphasizing the importance of generalizability and interpretability in medical applications, and highlights recent publications that demonstrate the current and potential utility of AI to aid clinicians in diagnosing epilepsy. Current barriers of AI integration in patient care include dataset availability and heterogeneity, which limit studies' quality, interpretability, comparability, and generalizability. ML and AI offer substantial promise in improving the accuracy and efficiency of epilepsy diagnosis. The growing availability of diverse datasets, enhanced processing speed, and ongoing efforts to standardize reporting contribute to the evolving landscape of AI applications in clinical care.

Keywords: Artificial intelligence; EEG; Epilepsy diagnosis; Epilepsy imaging; Machine learning; Seizure detection.

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Conflict of interest statement

Declaration of competing interest The authors declare the following financial interests/personal relationships which may be considered as potential competing interests: K.H. and C.L. have no relevant disclosures. D.F. receives salary support for consulting and clinical trial related activities performed on behalf of The Epilepsy Study Consortium, a non-profit organization. He receives no personal income for these activities. NYU receives a fixed amount from the Epilepsy Study Consortium towards Dr. Friedman’s salary. Within the past two years, The Epilepsy Study Consortium received payments for research services performed by Dr. Friedman from: Biogen, Biohaven, Cerberal Therapeutics, Cerevel, Encoded, Epalex, Equilibre, Jannsen, Longboard, Ludbeck, Marinus, Modulite, Neurocrine, Ono, Praxis, PureTech, Rapport Therapeutics, SK Lifescience, Supernus, UCB, and Xenon. He has also served as a paid consultant for Neurelis Pharmaceuticals and Meili Technologies. He has received travel support from the Epilepsy Foundation. He has received research support from NINDS, NSF and CDC unrelated to this study. He holds equity interests in Neuroview Technology. He received royalty income from Oxford University Press.

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