Automatic classification of hyperkinetic, tonic, and tonic-clonic seizures using unsupervised clustering of video signals
Ojanen, Petri; Kertész, Csaba; Morales, Elizabeth; Rai, Pragya; Annala, Kaapo; Knight, Andrew; Peltola, Jukka (2023)
Ojanen, Petri
Kertész, Csaba
Morales, Elizabeth
Rai, Pragya
Annala, Kaapo
Knight, Andrew
Peltola, Jukka
2023
1270482
Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi:tuni-2023122011085
https://urn.fi/URN:NBN:fi:tuni-2023122011085
Kuvaus
Peer reviewed
Tiivistelmä
Introduction: This study evaluated the accuracy of motion signals extracted from video monitoring data to differentiate epileptic motor seizures in patients with drug-resistant epilepsy. 3D near-infrared video was recorded by the Nelli® seizure monitoring system (Tampere, Finland). Methods: 10 patients with 130 seizures were included in the training dataset, and 17 different patients with 98 seizures formed the testing dataset. Only seizures with unequivocal hyperkinetic, tonic, and tonic-clonic semiology were included. Motion features from the catch22 feature collection extracted from video were explored to transform the patients' videos into numerical time series for clustering and visualization. Results: Changes in feature generation provided incremental discrimination power to differentiate between hyperkinetic, tonic, and tonic-clonic seizures. Temporal motion features showed the best results in the unsupervised clustering analysis. Using these features, the system differentiated hyperkinetic, tonic and tonic-clonic seizures with 91, 88, and 45% accuracy after 100 cross-validation runs, respectively. F1-scores were 93, 90, and 37%, respectively. Overall accuracy and f1-score were 74%. Conclusion: The selected features of motion distinguished semiological differences within epileptic seizure types, enabling seizure classification to distinct motor seizure types. Further studies are needed with a larger dataset and additional seizure types. These results indicate the potential of video-based hybrid seizure monitoring systems to facilitate seizure classification improving the algorithmic processing and thus streamlining the clinical workflow for human annotators in hybrid (algorithmic-human) seizure monitoring systems.
Kokoelmat
- TUNICRIS-julkaisut [19879]