Scientific Reports (May 2024)

The value of linear and non-linear quantitative EEG analysis in paediatric epilepsy surgery: a machine learning approach

  • Mattia Mercier,
  • Chiara Pepi,
  • Giusy Carfi-Pavia,
  • Alessandro De Benedictis,
  • Maria Camilla Rossi Espagnet,
  • Greta Pirani,
  • Federico Vigevano,
  • Carlo Efisio Marras,
  • Nicola Specchio,
  • Luca De Palma

DOI
https://doi.org/10.1038/s41598-024-60622-5
Journal volume & issue
Vol. 14, no. 1
pp. 1 – 10

Abstract

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Abstract Epilepsy surgery is effective for patients with medication-resistant seizures, however 20–40% of them are not seizure free after surgery. Aim of this study is to evaluate the role of linear and non-linear EEG features to predict post-surgical outcome. We included 123 paediatric patients who underwent epilepsy surgery at Bambino Gesù Children Hospital (January 2009–April 2020). All patients had long term video-EEG monitoring. We analysed 1-min scalp interictal EEG (wakefulness and sleep) and extracted 13 linear and non-linear EEG features (power spectral density (PSD), Hjorth, approximate entropy, permutation entropy, Lyapunov and Hurst value). We used a logistic regression (LR) as feature selection process. To quantify the correlation between EEG features and surgical outcome we used an artificial neural network (ANN) model with 18 architectures. LR revealed a significant correlation between PSD of alpha band (sleep), Mobility index (sleep) and the Hurst value (sleep and awake) with outcome. The fifty-four ANN models gave a range of accuracy (46–65%) in predicting outcome. Within the fifty-four ANN models, we found a higher accuracy (64.8% ± 7.6%) in seizure outcome prediction, using features selected by LR. The combination of PSD of alpha band, mobility and the Hurst value positively correlate with good surgical outcome.

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