Litcius/Paper detail

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

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

2024Scientific Reports12 citationsDOIOpen Access PDF

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.

Topics & Concepts

EpilepsyElectroencephalographyComputer scienceEpilepsy surgeryLinear modelValue (mathematics)Artificial intelligenceMachine learningMedicinePsychiatryEEG and Brain-Computer InterfacesEpilepsy research and treatmentFunctional Brain Connectivity Studies