通过形态与背景的对比对高频振荡进行分类,并与手术结果相关。

IF 2.3 4区 医学 Q3 CLINICAL NEUROLOGY Journal of Clinical Neurophysiology Pub Date : 2024-10-02 DOI:10.1097/WNP.0000000000001121
Kurt Qing, Erica Von Stein, Lisa Yamada, Adam Fogarty, Paul Nuyujukian
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引用次数: 0

摘要

目的:在颅内脑电图记录中,发作期高频振荡(HFOs)是癫痫发作起始区的可靠指标。发作间期高频振荡也经常被观察到,它可能是补充发作数据的有用生物标志物,但区分病理性和生理性高频振荡仍是一项具有挑战性的任务。我们提出了一种根据与背景的形态对比对 HFO 进行分类的方法:我们回顾性地筛选了斯坦福医学中心在两年内因癫痫而接受颅内记录的 31 名连续患者,其中 13 名患者符合纳入标准。采用自动事件检测器分析发作间期脑电图数据,然后进行形态特征提取和k均值聚类。该算法不仅使用事件特征,还结合了事件附近的背景特征。与背景有较高形态对比的高频振荡被标记为病理性振荡,病理高频振荡最活跃的 "热点 "被识别出来,并与临床确定的癫痫发作起始区进行比较:结果:利用对比度特征进行聚类后,分组的分离度更高,边界更一致。13 名患者中有 11 名接受了手术治疗,热点与癫痫发作区匹配的患者预后较好,5 名 "匹配 "患者中有 4 名在术后 1+ 年无致残性癫痫发作(恩格尔 I 级或国际抗癫痫联盟 1-2 级),而所有 "不匹配 "患者仍有致残性癫痫发作(费雪精确检验 P-value = 0.015):结论:与背景对比度较高的高频振荡更有可能代表阵发性爆发的病理活动。结论:与背景对比度较高的高频振荡更有可能代表阵发性病理活动。在已识别的癫痫发作起始区之外存在高频振荡热点的患者可能对手术反应不佳。
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Classifying High-Frequency Oscillations by Morphologic Contrast to Background, With Surgical Outcome Correlates.

Purpose: Ictal high-frequency oscillations (HFOs) are a reliable indicator of a seizure onset zone for intracranial EEG recordings. Interictal HFOs often are also observed and may be a useful biomarker to supplement ictal data, but distinguishing pathologic from physiologic HFOs continues to be a challenging task. We present a method of classifying HFOs based on morphologic contrast to the background.

Methods: We retrospectively screened 31 consecutive patients who underwent intracranial recordings for epilepsy at Stanford Medical Center during a 2-year period, and 13 patients met the criteria for inclusion. Interictal EEG data were analyzed using an automated event detector followed by morphologic feature extraction and k-means clustering. Instead of only using event features, the algorithm also incorporated features of the background adjacent to the events. High-frequency oscillations with higher morphologic contrast to the background were labeled as pathologic, and "hotspots" with the most active pathologic HFOs were identified and compared with clinically determined seizure onset zones.

Results: Clustering with contrast features produced groups with better separation and more consistent boundaries. Eleven of the 13 patients proceeded to surgery, and patients whose hotspots matched seizure onset zones had better outcomes, with 4 out of 5 "match" patients having no disabling seizures at 1+ year postoperatively (Engel I or International League Against Epilepsy Class 1-2), while all "mismatch" patients continued to have disabling seizures (Fisher exact test P-value = 0.015).

Conclusions: High-frequency oscillations with higher contrast to background more likely represent paroxysmal bursts of pathologic activity. Patients with HFO hotspots outside of identified seizure onset zones may not respond as well to surgery.

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来源期刊
Journal of Clinical Neurophysiology
Journal of Clinical Neurophysiology 医学-临床神经学
CiteScore
4.60
自引率
4.20%
发文量
198
审稿时长
6-12 weeks
期刊介绍: ​The Journal of Clinical Neurophysiology features both topical reviews and original research in both central and peripheral neurophysiology, as related to patient evaluation and treatment. Official Journal of the American Clinical Neurophysiology Society.
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