无尖峰头皮脑电图的时空微状态动力学为难治性颞叶癫痫提供了一种潜在的生物标记。

Rui Feng, Jingwen Yang, Hao Huang, Zelin Chen, Ruiyan Feng, N U Farrukh Hameed, Xudong Zhang, Jie Hu, Liang Chen, Shuo Lu
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引用次数: 0

摘要

难治性颞叶癫痫(TLE)是最常见的癫痫亚型之一,危害着全球 5000 多万人。尽管脑电图(EEG)已被广泛认为是筛查和诊断癫痫的经典工具,但多年来,它主要依赖于识别癫痫放电和致痫区定位,然而,由于难治性癫痫的网络性质,这限制了对难治性癫痫的理解。这项研究假设,基于静息态头皮脑电图的微状态动力学可以提供疾病的额外网络描述,并为 TLE 提供潜在的补充评估工具,即使脑电图上没有可检测到的癫痫放电。我们提出了一种基于机器学习的脑电图微状态时空动态(EEG-MiSTD)分析新框架,以全面模拟毫秒级变化的全脑网络动态。即使没有癫痫放电,只需100秒的静息状态脑电图,这种方法就能成功地将TLE患者与健康对照组区分开来,并与癫痫灶的侧向性有关。此外,研究还发现微状态的时间和空间特征与临床参数广泛相关,这进一步证明了 TLE 是一种网络性疾病。初步研究表明,空间地形图对后续手术结果很敏感。从这一新的角度来看,我们的研究结果表明,时空微状态动态可能是该疾病的一种生物标志物。所开发的脑电图-微状态框架或许可被视为一种通用工具,以用户友好的方式检查其他类型癫痫的动态脑网络破坏。
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Spatiotemporal Microstate Dynamics of Spike-free Scalp EEG Offer a Potential Biomarker for Refractory Temporal Lobe Epilepsy.

Refractory temporal lobe epilepsy (TLE) is one of the most frequently observed subtypes of epilepsy and endangers more than 50 million people world-wide. Although electroencephalogram (EEG) had been widely recognized as a classic tool to screen and diagnose epilepsy, for many years it heavily relied on identifying epileptic discharges and epileptogenic zone localization, which however, limits the understanding of refractory epilepsy due to the network nature of this disease. This work hypothesizes that the microstate dynamics based on resting-state scalp EEG can offer an additional network depiction of the disease and provide potential complementary evaluation tool for the TLE even without detectable epileptic discharges on EEG. We propose a novel framework for EEG microstate spatial-temporal dynamics (EEG-MiSTD) analysis based on machine learning to comprehensively model millisecond-changing whole-brain network dynamics. With only 100 seconds of resting-state EEG even without epileptic discharges, this approach successfully distinguishes TLE patients from healthy controls and is related to the lateralization of epileptic focus. Besides, microstate temporal and spatial features are found to be widely related to clinical parameters, which further demonstrate that TLE is a network disease. A preliminary exploration suggests that the spatial topography is sensitive to the following surgical outcomes. From such a new perspective, our results suggest that spatiotemporal microstate dynamics is potentially a biomarker of the disease. The developed EEG-MiSTD framework can probably be considered as a general tool to examine dynamical brain network disruption in a user-friendly way for other types of epilepsy.

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