IEEE Access (Jan 2024)

WKLD-Based Feature Extraction for Diagnosis of Epilepsy Based on EEG

  • Haoyang Cai,
  • Ying Yan,
  • Guanting Liu,
  • Jun Cai,
  • Adrian David Cheok,
  • Na Liu,
  • Chengcheng Hua,
  • Jing Lian,
  • Zhiyong Fan,
  • Anqi Chen

DOI
https://doi.org/10.1109/ACCESS.2024.3401568
Journal volume & issue
Vol. 12
pp. 69276 – 69287

Abstract

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High-performance automated detection methods for epilepsy play a crucial role in clinical diagnostic support. To address the challenge of effectively extracting features from epileptic EEG signals, characterized by strong spontaneity and complexity, a novel feature extraction approach based on Window Kullback-Leibler Divergence (WKLD) is proposed, coupled with discrete wavelet analysis for EEG signal feature extraction. Then, a Residual Multidimensional Taylor Network (ResMTN) classifier is applied for epilepsy state classification. Experimental results demonstrate an accuracy of 98% in classifying EEG signals during seizure and interictal periods, with both specificity and sensitivity reaching 98.18%, outperforming existing widely-used feature extraction and classification methods.

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