癫痫分类的新视角:将癫痫发作动力型分类法应用于无创脑电图并检测睡眠阶段的动态变化。

IF 2.7 3区 医学 Q3 NEUROSCIENCES eNeuro Pub Date : 2025-01-16 Print Date: 2025-01-01 DOI:10.1523/ENEURO.0157-24.2024
Miriam Guendelman, Rotem Vekslar, Oren Shriki
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引用次数: 0

摘要

癫痫是一种以反复发作为特征的神经系统疾病,严重影响患者的生活质量。目前的分类方法主要集中在临床观察和脑电图(EEG)分析,往往忽视潜在的动力驱动癫痫发作。本研究使用表面脑电图数据来识别癫痫发作过渡,使用基于动态系统的框架-癫痫发作动力型分类-以前仅在侵入性数据中进行了检查。我们对158例局灶性癫痫患者的1177次发作的表面脑电图记录进行主成分和独立成分分析,将信号分解为独立成分(ICs)。将ic视觉标记为明确的癫痫发作过渡和分岔形态,然后在临床因素背景下使用贝叶斯多层模型进行检查。我们的分析表明,与非快速眼动(NREM)睡眠(尤其是NREM3)期间的发生率降低相比,某些发作性分岔(SNIC和SupH)在清醒期间更为普遍。我们在建模方法的背景下讨论了我们的结果的可能含义,并提出了继续这一探索的其他途径。此外,我们证明了使用机器学习自动化该分类过程的可行性,在识别与癫痫发作相关的ic和分类尖峰间隔变化方面实现了高性能。我们的研究结果表明,表面脑电图中的噪声可能会掩盖某些分岔形态,我们建议技术改进可以提高检测精度。扩展数据集并纳入长期生物节律,如昼夜节律和多日周期,可以提供更全面的癫痫动态理解并改善临床决策。传统的癫痫分类侧重于临床症状和电生理体征,但往往忽略了潜在的癫痫动态。癫痫动态型的分类引入了一种新的计算方法,将电生理过渡特征与这些动态联系起来。虽然以前应用于侵入性记录,但本研究将分类法扩展到非侵入性脑电图。我们的分析揭示了睡眠阶段和发作动态之间的关系。我们建议将这些建模方法与睡眠和昼夜动力学模型相结合,可以揭示癫痫发作时间和泛化的见解,为更好的诊断开辟新的途径。这种分类的广泛采用受到其劳动密集型目视检查过程的限制。在这里,我们展示了自动分类的潜力,使分析能够扩展到更大的队列。
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A New Perspective in Epileptic Seizure Classification: Applying the Taxonomy of Seizure Dynamotypes to Noninvasive EEG and Examining Dynamical Changes across Sleep Stages.

Epilepsy, a neurological disorder characterized by recurrent unprovoked seizures, significantly impacts patient quality of life. Current classification methods focus primarily on clinical observations and electroencephalography (EEG) analysis, often overlooking the underlying dynamics driving seizures. This study uses surface EEG data to identify seizure transitions using a dynamical systems-based framework-the taxonomy of seizure dynamotypes-previously examined only in invasive data. We applied principal component and independent component (IC) analysis to surface EEG recordings from 1,177 seizures in 158 patients with focal epilepsy, decomposing the signals into ICs. The ICs were visually labeled for clear seizure transitions and bifurcation morphologies (BifMs), which were then examined using Bayesian multilevel modeling in the context of clinical factors. Our analysis reveals that certain onset bifurcations (saddle node on invariant circle and supercritical Hopf) are more prevalent during wakefulness compared with their reduced rate during nonrapid eye movement (NREM) sleep, particularly NREM3. We discuss the possible implications of our results in the context of modeling approaches and suggest additional avenues to continue this exploration. Furthermore, we demonstrate the feasibility of automating this classification process using machine learning, achieving high performance in identifying seizure-related ICs and classifying interspike interval changes. Our findings suggest that the noise in surface EEG may obscure certain BifMs, and we suggest technical improvements that could enhance detection accuracy. Expanding the dataset and incorporating long-term biological rhythms, such as circadian and multiday cycles, may provide a more comprehensive understanding of seizure dynamics and improve clinical decision-making.

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来源期刊
eNeuro
eNeuro Neuroscience-General Neuroscience
CiteScore
5.00
自引率
2.90%
发文量
486
审稿时长
16 weeks
期刊介绍: An open-access journal from the Society for Neuroscience, eNeuro publishes high-quality, broad-based, peer-reviewed research focused solely on the field of neuroscience. eNeuro embodies an emerging scientific vision that offers a new experience for authors and readers, all in support of the Society’s mission to advance understanding of the brain and nervous system.
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