Virtual resection evaluation based on sEEG propagation network for drug-resistant epilepsy

Sci Rep. 2024 Oct 26;14(1):25542. doi: 10.1038/s41598-024-77216-w.

Abstract

Drug-resistant epilepsy with frequent seizures are considered to undergo surgery to become seizure-free, but seizure-free rates have not dramatically improved, partly due to imprecise intervention locations. To address this clinical need, we construct effective connectivity to reveal epilepsy brain dynamics. Based on the propagation path captured by the high order effective connectivity, calculate the control centrality evaluation scheme of the excised area. We used three datasets: simulation dataset, clinical dataset, and public dataset. The epileptogenic propagation network was quantified by calculating high-order effective connection to obtain accurate propagation path, based on this, combined with the outdegree index for virtual resection. By removing electrodes and recalculating control centrality, we quantify each electrode or region's control centrality to evaluate the virtual resection scheme. Three datasets obtained consistent results. We track the accurate propagation path and find the obvious inflection points occurring during the excision process. The minimum intervention targets were obtained by comparing different schemes without recurrence. The clinical data with multiple seizures found that after resection, the brain reaches a stable state and is less likely to continue spreading. By quantitative analysis of control centrality to evaluate the possible excision scheme, finally we obtain the best intervention area for epilepsy, which assist in developing surgical plans.

Keywords: Control centrality; Drug-resistant epilepsy; High-order effective connection; Minimum intervention target; Propagation network.

MeSH terms

  • Adolescent
  • Adult
  • Brain / physiopathology
  • Brain / surgery
  • Child
  • Drug Resistant Epilepsy* / physiopathology
  • Drug Resistant Epilepsy* / surgery
  • Electroencephalography / methods
  • Female
  • Humans
  • Male
  • Young Adult