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Leveraging interictal multimodal features and graph neural networks for automated planning of epilepsy surgery.

Publication ,  Journal Article
Nejedly, P; Hrtonova, V; Pail, M; Cimbalnik, J; Daniel, P; Travnicek, V; Dolezalova, I; Mivalt, F; Kremen, V; Jurak, P; Worrell, GA; Klimes, P ...
Published in: Brain Commun
2025

Precise localization of the epileptogenic zone is pivotal for planning minimally invasive surgeries in drug-resistant epilepsy. Here, we present a graph neural network (GNN) framework that integrates interictal intracranial EEG features, electrode topology, and MRI features to automate epilepsy surgery planning. We retrospectively evaluated the model using leave-one-patient-out cross-validation on a dataset of 80 drug-resistant epilepsy patients treated at St. Anne's University Hospital (Brno, Czech Republic), comprising 31 patients with good postsurgical outcomes (Engel I) and 49 with poor outcomes (Engel II-IV). The GNN predictions demonstrated a significantly better (P < 0.05, Mann-Whitney-U test) area under the precision-recall curve in patients with good outcomes (area under the precision-recall curve: 0.69) compared with those with poor outcomes (area under the precision-recall curve: 0.33), indicating that the model captures clinically relevant targets in successful cases. In patients with poor outcomes, the graph neural network proposed alternative intervention sites that diverged from the original clinical plans, highlighting its potential to identify alternative therapeutic targets. We show that topology-aware GNNs significantly outperformed (P < 0.05, Wilcoxon signed-rank test) traditional neural networks while using the same intracranial EEG features, emphasizing the importance of incorporating implantation topology into predictive models. These findings uncover the potential of GNNs to automatically suggest targets for epilepsy surgery, which can assist the clinical team during the planning process.

Duke Scholars

Published In

Brain Commun

DOI

EISSN

2632-1297

Publication Date

2025

Volume

7

Issue

3

Start / End Page

fcaf140

Location

England

Related Subject Headings

  • 5202 Biological psychology
  • 3209 Neurosciences
  • 3202 Clinical sciences
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Nejedly, P., Hrtonova, V., Pail, M., Cimbalnik, J., Daniel, P., Travnicek, V., … Brazdil, M. (2025). Leveraging interictal multimodal features and graph neural networks for automated planning of epilepsy surgery. Brain Commun, 7(3), fcaf140. https://doi.org/10.1093/braincomms/fcaf140
Nejedly, Petr, Valentina Hrtonova, Martin Pail, Jan Cimbalnik, Pavel Daniel, Vojtech Travnicek, Irena Dolezalova, et al. “Leveraging interictal multimodal features and graph neural networks for automated planning of epilepsy surgery.Brain Commun 7, no. 3 (2025): fcaf140. https://doi.org/10.1093/braincomms/fcaf140.
Nejedly P, Hrtonova V, Pail M, Cimbalnik J, Daniel P, Travnicek V, et al. Leveraging interictal multimodal features and graph neural networks for automated planning of epilepsy surgery. Brain Commun. 2025;7(3):fcaf140.
Nejedly, Petr, et al. “Leveraging interictal multimodal features and graph neural networks for automated planning of epilepsy surgery.Brain Commun, vol. 7, no. 3, 2025, p. fcaf140. Pubmed, doi:10.1093/braincomms/fcaf140.
Nejedly P, Hrtonova V, Pail M, Cimbalnik J, Daniel P, Travnicek V, Dolezalova I, Mivalt F, Kremen V, Jurak P, Worrell GA, Frauscher B, Klimes P, Brazdil M. Leveraging interictal multimodal features and graph neural networks for automated planning of epilepsy surgery. Brain Commun. 2025;7(3):fcaf140.

Published In

Brain Commun

DOI

EISSN

2632-1297

Publication Date

2025

Volume

7

Issue

3

Start / End Page

fcaf140

Location

England

Related Subject Headings

  • 5202 Biological psychology
  • 3209 Neurosciences
  • 3202 Clinical sciences