OtherOpen Access
Computer-assisted EEG diagnostic review for idiopathic generalized epilepsy
Authors
Author Affiliations
Queens University, Historical Archives, The University of Melbourne, St. Vincent's Birmingham, ...
Published InbioRxiv (Cold Spring Harbor Laboratory)
Year2019
Citations20
Abstract
Abstract Epilepsy diagnosis can be costly, time-consuming and not uncommonly inaccurate. The reference standard diagnostic monitoring is continuous video-EEG monitoring, ideally capturing all events or concordant interictal discharges. Automating EEG data review would save time and resources, thus enabling more people to receive reference standard monitoring and also potentially herald a more quantitative approach to therapeutic outcomes. There is substantial research into automated detection of seizures and epileptic activity from EEG. However, automated detection software is not widely used in the clinic; and, despite numerous published algorithms, few methods have regulatory approval for detecting epileptic activity from EEG. This study reports on a deep learning algorithm for computer-assisted EEG review. Deep, convolutional neural networks were trained to detect epileptic discharges…
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