Department of Neurosurgery, Beijing Tiantan Hospital, Capital Medical University, Beijing, China.
Stereotactic and Functional Neurosurgery Laboratory, Beijing Neurosurgical Institute, Capital Medical University, Beijing, China.
Epilepsia Open. 2024 Aug;9(4):1287-1299. doi: 10.1002/epi4.12950. Epub 2024 May 29.
The present study aimed to identify various distinguishing features for use in the accurate classification of stereoelectroencephalography (SEEG) channels based on high-frequency oscillations (HFOs) inside and outside the epileptogenic zone (EZ).
HFOs were detected in patients with focal epilepsy who underwent SEEG. Subsequently, HFOs within the seizure-onset and early spread zones were defined as pathological HFOs, whereas others were defined as physiological. Three features of HFOs were identified at the channel level, namely, morphological repetition, rhythmicity, and phase-amplitude coupling (PAC). A machine-learning (ML) classifier was then built to distinguish two HFO types at the channel level by application of the above-mentioned features, and the contributions were quantified. Further verification of the characteristics and classifier performance was performed in relation to various conscious states, imaging results, EZ location, and surgical outcomes.
Thirty-five patients were included in this study, from whom 166 104 pathological HFOs in 255 channels and 53 374 physiological HFOs in 282 channels were entered into the analysis pipeline. The results revealed that the morphological repetitions of pathological HFOs were markedly higher than those of the physiological HFOs; this was also observed for rhythmicity and PAC. The classifier exhibited high accuracy in differentiating between the two forms of HFOs, as indicated by an area under the curve (AUC) of 0.89. Both PAC and rhythmicity contributed significantly to this distinction. The subgroup analyses supported these findings.
The suggested HFO features can accurately distinguish between pathological and physiological channels substantially improving its usefulness in clinical localization.
In this study, we computed three quantitative features associated with HFOs in each SEEG channel and then constructed a machine learning-based classifier for the classification of pathological and physiological channels. The classifier performed well in distinguishing the two channel types under different levels of consciousness as well as in terms of imaging results, EZ location, and patient surgical outcomes.
本研究旨在确定各种鉴别特征,以便准确分类立体脑电图(SEEG)通道内和通道外高频振荡(HFOs),这些特征基于致痫区(EZ)内外的高频振荡。
对接受 SEGE 检查的局灶性癫痫患者进行 HFO 检测。随后,将发作起始和早期传播区内的 HFO 定义为病理性 HFO,而其他 HFO 定义为生理性 HFO。在通道水平上确定了 HFO 的三个特征,即形态重复、节律性和相位-幅度耦合(PAC)。然后,通过应用上述特征构建机器学习(ML)分类器,在通道水平上区分两种 HFO 类型,并量化其贡献。还针对各种意识状态、成像结果、EZ 位置和手术结果对特征和分类器性能进行了进一步验证。
本研究纳入了 35 名患者,其中 255 个通道的 166104 个病理性 HFO 和 282 个通道的 53374 个生理性 HFO 进入分析管道。结果表明,病理性 HFO 的形态重复明显高于生理性 HFO;节律性和 PAC 也是如此。该分类器在区分两种 HFO 形式方面具有很高的准确性,曲线下面积(AUC)为 0.89。PAC 和节律性对这种区分都有显著贡献。亚组分析支持了这些发现。
所提出的 HFO 特征可以准确区分病理性和生理性通道,大大提高了其在临床定位中的实用性。