Miao Yao, Iimura Yasushi, Sugano Hidenori, Fukumori Kosuke, Tanaka Toshihisa
Tokyo University of Agriculture and Technology, Tokyo, Japan.
Department of Neurosurgery, Juntendo University School of Medicine, Tokyo, Japan.
Cogn Neurodyn. 2023 Dec;17(6):1591-1607. doi: 10.1007/s11571-022-09915-x. Epub 2022 Dec 7.
Automatic seizure onset zone (SOZ) localization using interictal electrocorticogram (ECoG) improves the diagnosis and treatment of patients with medically refractory epilepsy. This study aimed to investigate the characteristics of phase-amplitude coupling (PAC) extracted from interictal ECoG and the feasibility of PAC serving as a promising biomarker for SOZ identification. We employed the mean vector length modulation index approach on the 20-s ECoG window to calculate PAC features between low-frequency rhythms (0.5-24 Hz) and high frequency oscillations (HFOs) (80-560 Hz). We used statistical measures to test the significant difference in PAC between the SOZ and non-seizure onset zone (NSOZ). To overcome the drawback of handcraft feature engineering, we established novel machine learning models to learn automatically the characteristics of the obtained PAC features and classify them to identify the SOZ. Besides, to handle imbalanced dataset classification, we introduced novel feature-wise/class-wise re-weighting strategies in conjunction with classifiers. In addition, we proposed a time-series nest cross-validation to provide more accurate and unbiased evaluations for this model. Seven patients with focal cortical dysplasia were included in this study. The experiment results not only showed that a significant coupling at band pairs of slow waves and HFOs exists in the SOZ when compared with the NSOZ, but also indicated the effectiveness of the PAC features and the proposed models in achieving better classification performance .
使用发作间期皮质脑电图(ECoG)自动定位癫痫发作起始区(SOZ)可改善药物难治性癫痫患者的诊断和治疗。本研究旨在探讨从发作间期ECoG中提取的相位-振幅耦合(PAC)特征,以及PAC作为一种有前景的SOZ识别生物标志物的可行性。我们采用平均向量长度调制指数方法,对20秒的ECoG窗口计算低频节律(0.5 - 24 Hz)和高频振荡(HFOs)(80 - 560 Hz)之间的PAC特征。我们使用统计方法来检验SOZ和非癫痫发作起始区(NSOZ)之间PAC的显著差异。为了克服手工特征工程的缺点,我们建立了新颖的机器学习模型,以自动学习所获得的PAC特征的特性并对其进行分类以识别SOZ。此外,为了处理不平衡数据集分类问题,我们结合分类器引入了新颖的特征级/类别级重新加权策略。此外,我们提出了一种时间序列嵌套交叉验证,为该模型提供更准确和无偏的评估。本研究纳入了7例局灶性皮质发育不良患者。实验结果不仅表明与NSOZ相比,SOZ中慢波和HFOs频段对之间存在显著耦合,还表明PAC特征和所提出的模型在实现更好的分类性能方面的有效性。