4.5 Article

Seizure forecasting using minimally invasive, ultra-long-term subcutaneous EEG: Generalizable cross-patient models

Journal

EPILEPSIA
Volume -, Issue -, Pages -

Publisher

WILEY
DOI: 10.1111/epi.17265

Keywords

deep neural networks; epilepsy; LSTM neural networks; machine learning; seizure forecasting; subcutaneous EEG

Funding

  1. Epilepsy Foundation of America
  2. National Institute for Health and Care Research Biomedical Research Centre South London
  3. European Commission [115902]
  4. Medical Research Council Centre for Neurodevelopmental Disorders [MR/N026063/1]
  5. Foundation for the National Institutes of Health [UG3 NS123066]

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This study presents a generalized approach for forecasting seizures in epilepsy patients using recurrent neural networks and deep learning classifiers. The results show that the cross-patient classifiers achieved better than chance performance in four out of six patients, indicating the potential of this method for seizure prediction.
This study describes a generalized cross-patient seizure-forecasting approach using recurrent neural networks with ultra-long-term subcutaneous EEG (sqEEG) recordings. Data from six patients diagnosed with refractory epilepsy and monitored with an sqEEG device were used to develop a generalized algorithm for seizure forecasting using long short-term memory (LSTM) deep-learning classifiers. Electrographic seizures were identified by a board-certified epileptologist. One-minute data segments were labeled as preictal or interictal based on their relationship to confirmed seizures. Data were separated into training and testing data sets, and to compensate for the unbalanced data ratio in training, noise-added copies of preictal data segments were generated to expand the training data set. The mean and standard deviation (SD) of the training data were used to normalize all data, preserving the pseudo-prospective nature of the analysis. Different architecture classifiers were trained and tested using a leave-one-patient-out cross-validation method, and the area under the receiver-operating characteristic (ROC) curve (AUC) was used to evaluate the performance classifiers. The importance of each input signal was evaluated using a leave-one-signal-out method with repeated training and testing for each classifier. Cross-patient classifiers achieved performance significantly better than chance in four of the six patients and an overall mean AUC of 0.602 +/- 0.126 (mean +/- SD). A time in warning of 37.386% +/- 5.006% (mean +/- std) and sensitivity of 0.691 +/- 0.068 (mean +/- std) were observed for patients with better than chance results. Analysis of input channels showed a significant contribution (p < .05) by the Fourier transform of signals channels to overall classifier performance. The relative contribution of input signals varied among patients and architectures, suggesting that the inclusion of all signals contributes to robustness in a cross-patient classifier. These early results show that it is possible to forecast seizures training with data from different patients using two-channel ultra-long-term sqEEG.

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