Sep 3 – 4, 2025
Hörsaalgebäude, Campus Poppelsdorf, Universität Bonn
Europe/Berlin timezone

VISOR: VIsual Seizure Onset detection peRsonalized for epilepsy patients

Not scheduled
1h 30m
Open Space (first floor)

Open Space (first floor)

Poster Life Sciences Poster Session

Speaker

Uttam Kumar

Description

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 the state-of-the-art baselines by at least 5 percentage points for seizure onset detection in terms of the F1 score and indicates higher effectiveness for more complex patterns of propagating seizures.

Author

Co-author

Presentation materials

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