Journal of Southern Medical University ›› 2023, Vol. 43 ›› Issue (1): 17-28.doi: 10.12122/j.issn.1673-4254.2023.01.03

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Construction of an epileptic seizure prediction model using a semi-supervised method of generative adversarial and long short term memory network combined with Stockwell transform

LIAO Jiahui, LI Hanyi, ZHAN Chang'an, YANG Feng   

  1. School of Biomedical Engineering, Southern Medical University, Guangzhou 510515, China
  • Online:2023-01-20 Published:2023-02-22

Abstract: Objective To propose a semi-supervised epileptic seizure prediction model (ST-WGAN-GP-Bi-LSTM) to enhance the prediction performance by improving time-frequency analysis of electroencephalogram (EEG) signals, enhancing the stability of the unsupervised feature learning model and improving the design of back-end classifier. Methods Stockwell transform (ST) of the epileptic EEG signals was performed to locate the time-frequency information by adaptive adjustment of the resolution and retaining the absolute phase to obtain the time-frequency inputs. When there was no overlap between the generated data distribution and the real EEG data distribution, to avoid failure of feature learning due to a constant JS divergence, Wasserstein GAN was used as a feature learning model, and the cost function based on EM distance and gradient penalty strategy was adopted to constrain the unsupervised training process to allow the generation of a high-order feature extractor. A temporal prediction model was finally constructed based on a bi-directional long short term memory network (Bi-LSTM), and the classification performance was improved by obtaining the temporal correlation between high-order time-frequency features. The CHB-MIT scalp EEG dataset was used to validate the proposed patient- specific seizure prediction method. Results The AUC, sensitivity, and specificity of the proposed method reached 90.40%, 83.62%, and 86.69%, respectively. Compared with the existing semi-supervised methods, the propose method improved the original performance by 17.77% , 15.41% , and 53.66% . The performance of this method was comparable to that of a supervised prediction model based on CNN. Conclusion The utilization of ST, WGAN-GP, and Bi-LSTM effectively improves the prediction performance of the semi-supervised deep learning model, which can be used for optimization of unsupervised feature extraction in epileptic seizure prediction.

Key words: epileptic seizure prediction; scalp EEG; Stockwell transform; generative adversarial network; bi- directional long short term memory network