Bénard Adrien, Maliia Dragos-Mihai, Yochum Maxime, Köksal-Ersöz Elif, Houvenaghel Jean-François, Wendling Fabrice, Sauleau Paul, Benquet Pascal
University of Rennes, INSERM, LTSI-UMR 1099, Rennes, F-35042, France.
Neurology Department, Rennes University Hospital, Rennes, France.
Brain Topogr. 2025 May 13;38(4):43. doi: 10.1007/s10548-025-01115-0.
Electroencephalography (EEG) recordings are widely used in neuroscience to identify healthy individual brain rhythms and to detect alterations associated with various brain diseases. However, understanding the cellular origins of scalp EEG signals and their spatiotemporal changes during the resting state (RS) in humans remains challenging, as cellular-level recordings are typically restricted to animal models. The objective of this study was to simulate individual-specific spatiotemporal features of RS EEG and measure the degree of similarity between real and simulated EEG. Using a physiologically grounded whole-brain computational model (based on known neuronal subtypes and their structural and functional connectivity) that simulates interregional cortical circuitry activity, realistic individual EEG recordings during RS of three healthy subjects were created. The model included interconnected neural mass modules simulating activities of different neuronal subtypes, including pyramidal cells and four types of GABAergic interneurons. High-definition EEG and source localization were used to delineate the cortical extent of alpha and beta-gamma rhythms. To evaluate the realism of the simulated EEG, we developed a similarity index based on cross-correlation analysis in the frequency domain across various bipolar channels respecting standard longitudinal montage. Alpha oscillations were produced by strengthening the somatostatin-pyramidal loop in posterior regions, while beta-gamma oscillations were generated by increasing the excitability of parvalbumin-interneurons on pyramidal neurons in anterior regions. The generation of realistic individual RS EEG rhythms represents a significant advance for research fields requiring data augmentation, including brain-computer interfaces and artificial intelligence training.
脑电图(EEG)记录在神经科学中被广泛用于识别健康个体的脑节律,并检测与各种脑部疾病相关的变化。然而,了解人类静息状态(RS)期间头皮EEG信号的细胞起源及其时空变化仍然具有挑战性,因为细胞水平的记录通常仅限于动物模型。本研究的目的是模拟RS EEG的个体特异性时空特征,并测量真实EEG与模拟EEG之间的相似程度。使用基于已知神经元亚型及其结构和功能连接的生理基础全脑计算模型来模拟区域间皮质回路活动,创建了三名健康受试者RS期间的真实个体EEG记录。该模型包括相互连接的神经团模块,模拟不同神经元亚型的活动,包括锥体细胞和四种类型的γ-氨基丁酸能中间神经元。使用高清EEG和源定位来描绘α和β-γ节律的皮质范围。为了评估模拟EEG的真实性,我们基于跨相关分析在频域中针对各种双极通道开发了一个相似性指数,遵循标准纵向导联。通过加强后区生长抑素-锥体循环产生α振荡,而通过增加前区小清蛋白中间神经元对锥体神经元的兴奋性产生β-γ振荡。生成真实的个体RS EEG节律代表了包括脑机接口和人工智能训练在内的需要数据增强的研究领域的重大进展。