Deep active learning for interictal ictal injury continuum EEG patterns

Volume: 351, Pages: 108966 - 108966
Published: Mar 1, 2021
Abstract
Seizures and seizure-like electroencephalography (EEG) patterns, collectively referred to as "ictal interictal injury continuum" (IIIC) patterns, are commonly encountered in critically ill patients. Automated detection is important for patient care and to enable research. However, training accurate detectors requires a large labeled dataset. Active Learning (AL) may help select informative examples to label, but the optimal AL approach remains...
Paper Details
Title
Deep active learning for interictal ictal injury continuum EEG patterns
Published Date
Mar 1, 2021
Volume
351
Pages
108966 - 108966
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