Dual-Task Graph Neural Network for Joint Seizure Onset Zone Localization and Outcome Prediction using Stereo EEG
Syeda Abeera Amir, Artur Agaronyan, William Gaillard, Chima Oluigbo, Syed Muhammad Anwar

TL;DR
This paper presents a dual-task graph neural network that jointly predicts seizure outcomes and localizes seizure onset zones from stereo EEG data, improving clinical decision-making in epilepsy surgery.
Contribution
It introduces a novel GNN framework that combines seizure outcome prediction and SOZ localization using functional connectivity graphs from sEEG recordings.
Findings
Achieved 89.31% accuracy in seizure outcome prediction.
Achieved 94.72% accuracy in SOZ localization.
Validated model robustness through ablation studies.
Abstract
Accurately localizing the brain regions that triggers seizures and predicting whether a patient will be seizure-free after surgery are vital for surgical planning and patient management in drug-resistant epilepsy. Stereo-electroencephalography (sEEG) delivers high-fidelity intracranial recordings that enable clinicians to precisely locate epileptogenic networks. However, the clinical identification is subjective and dependent on the expertise of the clinical team. Data driven approaches in this domain are sparse, despite the fact that sEEG offers high temporal-fidelity related to seizure dynamics that can be leveraged using graph structures ideal for imitating brain networks. In this study, we introduce a dual-task graph-neural network (GNN) framework that operates on windowed sEEG recordings to jointly predict seizure-freedom outcomes and identify seizure-onset-zone (SOZ) channels. We…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces · Functional Brain Connectivity Studies · Epilepsy research and treatment
