We present and evaluate the capacity of a deep neural network to learn robust features from EEG to automatically detect seizures. This is a challenging problem because seizure manifestations on EEG are extremely variable both inter- and intra-patient. By simultaneously capturing spectral, temporal and spatial information our recurrent convolutional neural network learns a general spatially invariant representation of a seizure. The proposed approach exceeds significantly previous results obtained on cross-patient classifiers both in terms of sensitivity and false positive rate. Furthermore, our model proves to be robust to missing channel and variable electrode montage.
@article{arxiv.1608.00220,
title = {Learning Robust Features using Deep Learning for Automatic Seizure Detection},
author = {Pierre Thodoroff and Joelle Pineau and Andrew Lim},
journal= {arXiv preprint arXiv:1608.00220},
year = {2016}
}
Comments
Presented at 2016 Machine Learning and Healthcare Conference (MLHC 2016), Los Angeles, CA