Data-driven electrophysiological feature based on deep learning to detect epileptic seizures.
Shota YamamotoTakufumi YanagisawaRyohei FukumaSatoru OshinoNaoki TaniHui Ming KhooKohtaroh EdakawaMaki KobayashiMasataka TanakaYuya FujitaHaruhiko KishimaPublished in: Journal of neural engineering (2021)
Objective. To identify a new electrophysiological feature characterising the epileptic seizures, which is commonly observed in different types of epilepsy.Methods. We recorded the intracranial electroencephalogram (iEEG) of 21 patients (12 women and 9 men) with multiple types of refractory epilepsy. The raw iEEG signals of the early phase of epileptic seizures and interictal states were classified by a convolutional neural network (Epi-Net). For comparison, the same signals were classified by a support vector machine (SVM) using the spectral power and phase-amplitude coupling. The features learned by Epi-Net were derived by a modified integrated gradients method. We considered the product of powers multiplied by the relative contribution of each frequency amplitude as a data-driven epileptogenicity index (d-EI). We compared the d-EI and other conventional features in terms of accuracy to detect the epileptic seizures. Finally, we compared the d-EI among the electrodes to evaluate its relationship with the resected area and the Engel classification.Results. Epi-Net successfully identified the epileptic seizures, with an area under the receiver operating characteristic curve of 0.944 ± 0.067, which was significantly larger than that of the SVM (0.808 ± 0.253,n =21;p =0.025). The learned iEEG signals were characterised by increased powers of 17-92 Hz and >180 Hz in addition to decreased powers of other frequencies. The proposed d-EI detected them with better accuracy than the other iEEG features. Moreover, the surgical resection of areas with a larger increase in d-EI was observed for all nine patients with Engel class ⩽1, but not for the 4 of 12 patients with Engel class >1, demonstrating the significant association with seizure outcomes.Significance.We derived an iEEG feature from the trained Epi-Net, which identified the epileptic seizures with improved accuracy and might contribute to identification of the epileptogenic zone.
Keyphrases
- deep learning
- temporal lobe epilepsy
- convolutional neural network
- machine learning
- artificial intelligence
- end stage renal disease
- chronic kidney disease
- newly diagnosed
- ejection fraction
- prognostic factors
- lymph node
- magnetic resonance
- pregnancy outcomes
- polycystic ovary syndrome
- resistance training
- body composition
- room temperature
- resting state