| Literature DB >> 31564174 |
Guoyang Liu1,2, Weidong Zhou1,2, Minxing Geng1,2.
Abstract
Automatic seizure detection is significant for the diagnosis of epilepsy and reducing the massive workload of reviewing continuous EEGs. In this work, a novel approach, combining Stockwell transform (S-transform) with deep Convolutional Neural Networks (CNN), is proposed to detect seizure onsets in long-term intracranial EEG recordings. Primarily, raw EEG data is filtered with wavelet decomposition. Then, S-transform is used to obtain a proper time-frequency representation of each EEG segment. After that, a 15-layer deep CNN using dropout and batch normalization serves as a robust feature extractor and classifier. Finally, smoothing and collar technique are applied to the outputs of CNN to improve the detection accuracy and reduce the false detection rate (FDR). The segment-based and event-based evaluation assessments and receiver operating characteristic (ROC) curves are employed for the performance evaluation on a public EEG database containing 21 patients. A segment-based sensitivity of 97.01% and a specificity of 98.12% are yielded. For the event-based assessment, this method achieves a sensitivity of 95.45% with an FDR of 0.36/h.Entities:
Keywords: Convolutional neural networks (CNN); S-transform; Seizure detection; deep learning; time-frequency representation
Year: 2019 PMID: 31564174 DOI: 10.1142/S0129065719500242
Source DB: PubMed Journal: Int J Neural Syst ISSN: 0129-0657 Impact factor: 5.866