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早期阿尔茨海默病中的网络过度兴奋:功能连接是否是一种潜在的生物标志物?

Network Hyperexcitability in Early Alzheimer's Disease: Is Functional Connectivity a Potential Biomarker?

机构信息

Department of Neurology, Amsterdam Neuroscience, Clinical Neurophysiology and MEG Center, Vrij Universiteit Amsterdam, Amsterdam UMC, PO Box 7057, 1007 MB, Amsterdam, The Netherlands.

Alzheimer Center Amsterdam, Neurology, Vrije Universiteit Amsterdam, Amsterdam UMC location VUmc, Amsterdam, The Netherlands.

出版信息

Brain Topogr. 2023 Jul;36(4):595-612. doi: 10.1007/s10548-023-00968-7. Epub 2023 May 12.

Abstract

Network hyperexcitability (NH) is an important feature of the pathophysiology of Alzheimer's disease. Functional connectivity (FC) of brain networks has been proposed as a potential biomarker for NH. Here we use a whole brain computational model and resting-state MEG recordings to investigate the relation between hyperexcitability and FC. Oscillatory brain activity was simulated with a Stuart Landau model on a network of 78 interconnected brain regions. FC was quantified with amplitude envelope correlation (AEC) and phase coherence (PC). MEG was recorded in 18 subjects with subjective cognitive decline (SCD) and 18 subjects with mild cognitive impairment (MCI). Functional connectivity was determined with the corrected AECc and phase lag index (PLI), in the 4-8 Hz and the 8-13 Hz bands. The excitation/inhibition balance in the model had a strong effect on both AEC and PC. This effect was different for AEC and PC, and was influenced by structural coupling strength and frequency band. Empirical FC matrices of SCD and MCI showed a good correlation with model FC for AEC, but less so for PC. For AEC the fit was best in the hyperexcitable range. We conclude that FC is sensitive to changes in E/I balance. The AEC was more sensitive than the PLI, and results were better for the thetaband than the alpha band. This conclusion was supported by fitting the model to empirical data. Our study justifies the use of functional connectivity measures as surrogate markers for E/I balance.

摘要

网络过度兴奋(NH)是阿尔茨海默病病理生理学的一个重要特征。脑网络的功能连接(FC)已被提出作为 NH 的潜在生物标志物。在这里,我们使用全脑计算模型和静息状态 MEG 记录来研究过度兴奋和 FC 之间的关系。使用 Stuart Landau 模型在 78 个相互连接的脑区网络上模拟振荡脑活动。使用幅度包络相关(AEC)和相位相干性(PC)来量化 FC。在 18 名有主观认知减退(SCD)和 18 名有轻度认知障碍(MCI)的受试者中记录了 MEG。通过校正后的 AECc 和相位滞后指数(PLI)在 4-8 Hz 和 8-13 Hz 频段确定功能连接。模型中的兴奋/抑制平衡对 AEC 和 PC 都有强烈的影响。这种影响在 AEC 和 PC 之间是不同的,并且受到结构耦合强度和频带的影响。SCD 和 MCI 的经验 FC 矩阵与 AEC 的模型 FC 相关性较好,但与 PC 的相关性较差。对于 AEC,在过度兴奋范围内拟合最好。我们得出的结论是,FC 对 E/I 平衡的变化敏感。AEC 比 PLI 更敏感,theta 频段的结果优于 alpha 频段。通过将模型拟合到经验数据,支持了这一结论。我们的研究证明了功能连接测量作为 E/I 平衡替代标志物的使用是合理的。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8668/10293463/a019dae97d1d/10548_2023_968_Fig1_HTML.jpg

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