IEEE Transactions on Neural Systems and Rehabilitation Engineering (Jan 2023)

Automatic Epileptic Tissue Localization Through Spatial Pattern Clustering of High Frequency Activity

  • Mu Shen,
  • Hongchuan Niu,
  • Qing Xia,
  • Bing Zou,
  • Yubo Zheng,
  • Yuanli Zhao,
  • Lei Li,
  • Xianzeng Liu,
  • Lin Zhang

DOI
https://doi.org/10.1109/TNSRE.2023.3237226
Journal volume & issue
Vol. 31
pp. 981 – 990

Abstract

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High-frequency activity (HFA) in intracranial electroencephalography recordings are diagnostic biomarkers for refractory epilepsy. Clinical utilities based on HFA have been extensively examined. HFA often exhibits different spatial patterns corresponding to specific states of neural activation, which will potentially improve epileptic tissue localization. However, research on quantitative measurement and separation of such patterns is still lacking. In this paper, spatial pattern clustering of HFA (SPC-HFA) is developed. The process is composed of three steps: (1) feature extraction: skewness which quantifies the intensity of HFA is extracted; (2) clustering: k-means clustering is applied to separate column vectors within the feature matrix into intrinsic spatial patterns; (3) localization: the determination of epileptic tissue is performed based on the cluster centroid with HFA expanding to the largest spatial extent. Experiments were conducted on a public iEEG dataset with 20 patients. Compared with existing localization methods, SPC-HFA demonstrates improvement (Cohen’s d $>0.2$ ) and ranks top in 10 out of 20 patients in terms of the area under the curve. In addition, after extending SPC-HFA to high-frequency oscillation detection algorithms, corresponding localization results also improve with effect size Cohen’s d $\geq 0.48$ . Therefore, SPC-HFA can be utilized to guide clinical and surgical treatment of refractory epilepsy.

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