{VISOR}: {VIsual} Seizure Onset Detection {PeRsonalized} for Epilepsy Patients

The onset detection of epileptic seizures from multivariate Electroencephalogram ({EEG}) data is a challenging task. The variation in seizure patterns across patients and epilepsy types makes it particularly difficult to create a generic solution. Existing approaches indicate low recall due to their inability to capture complex seizure onset patterns. In this paper, we propose {VISOR} – a novel approach to detect the onset of epileptic seizures based on novel patient profiles and visual, personalized feature representations. {VISOR} leverages a vision transformer model to learn the spatio-temporal relationships between features, capture individual seizure propagation patterns, and perform seizure onset detection in a heterogeneous multi-patient dataset. Evaluation on a real-world dataset demonstrates that {VISOR} outperforms state-of-the-art baselines by at least 5\% points for seizure onset detection in terms of the F1 score and indicates higher effectiveness for more complex patterns of propagating seizures.

  • Published in:
    Advances in Knowledge Discovery and Data Mining
  • Type:
    Inproceedings
  • Authors:
    Kumar, Uttam; Yu, Ran; Wenzel, Michael; Demidova, Elena
  • Year:
    2025

Citation information

Kumar, Uttam; Yu, Ran; Wenzel, Michael; Demidova, Elena: {VISOR}: {VIsual} Seizure Onset Detection {PeRsonalized} for Epilepsy Patients, Advances in Knowledge Discovery and Data Mining, 2025, 482--494, Springer Nature, Kumar.etal.2025a,