4.6 Article

Video-Based Detection of Generalized Tonic-Clonic Seizures Using Deep Learning

Journal

IEEE JOURNAL OF BIOMEDICAL AND HEALTH INFORMATICS
Volume 25, Issue 8, Pages 2997-3008

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JBHI.2021.3049649

Keywords

Training; Epilepsy; Deep learning; Monitoring; Hospitals; Electroencephalography; Pediatrics; Epilepsy; seizure detection; video

Funding

  1. Epilepsy Research Fund
  2. Scientific & Technological Fundation of Shaanxi Province [2018SF-096]
  3. NARSAD Young Investigator Grant by the Brain & Behavior Research Foundation

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Automated detection of generalized tonic-clonic seizures (GTCSs) from videos using deep learning has been proven feasible and effective, showing better performance and potential compared to traditional methods. Results demonstrate that deep learning networks based on video sequences outperform detection based on individual frames, with an average sensitivity of 88% and specificity of 92%, and a detection latency of approximately 22 seconds.
Timely detection of seizures is crucial to implement optimal interventions, and may help reduce the risk of sudden unexpected death in epilepsy (SUDEP) in patients with generalized tonic-clonic seizures (GTCSs). While video-based automated seizure detection systems may be able to provide seizure alarms in both in-hospital and at-home settings, earlier studies have primarily employed hand-designed features for such a task. In contrast, deep learning-based approaches do not rely on prior feature selection and have demonstrated outstanding performance in many data classification tasks. Despite these advantages, neural network-based video classification has rarely been attempted for seizure detection. We here assessed the feasibility and efficacy of automated GTCSs detection from videos using deep learning. We retrospectively identified 76 GTCS videos from 37 participants who underwent long-term video-EEG monitoring (LTM) along with interictal video data from the same patients, and 10 full-night seizure-free recordings from additional patients. Using a leave-one-subject-out cross-validation approach (LOSO-CV), we evaluated the performance to detect seizures based on individual video frames (convolutional neural networks, CNNs) or video sequences [CNN+long short-term memory (LSTM) networks]. CNN+LSTM networks based on video sequences outperformed GTCS detection based on individual frames yielding a mean sensitivity of 88% and mean specificity of 92% across patients. The average detection latency after presumed clinical seizure onset was 22 seconds. Detection performance increased as a function of training dataset size. Collectively, we demonstrated that automated video-based GTCS detection with deep learning is feasible and efficacious. Deep learning-based methods may be able to overcome some limitations associated with traditional approaches using hand-crafted features, serve as a benchmark for future methods and analyses, and improve further with larger datasets.

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