Living Systems Institute, University of Exeter, Exeter, UK.
EPSRC Centre for Predictive Modelling in Healthcare, University of Exeter, Exeter, UK.
Sci Rep. 2020 Oct 19;10(1):17627. doi: 10.1038/s41598-020-74790-7.
The dynamics of the resting brain exhibit transitions between a small number of discrete networks, each remaining stable for tens to hundreds of milliseconds. These functional microstates are thought to be the building blocks of spontaneous consciousness. The electroencephalogram (EEG) is a useful tool for imaging microstates, and EEG microstate analysis can potentially give insight into altered brain dynamics underpinning cognitive impairment in disorders such as Alzheimer's disease (AD). Since EEG is non-invasive and relatively inexpensive, EEG microstates have the potential to be useful clinical tools for aiding early diagnosis of AD. In this study, EEG was collected from two independent cohorts of probable AD and cognitively healthy control participants, and a cohort of mild cognitive impairment (MCI) patients with four-year clinical follow-up. The microstate associated with the frontoparietal working-memory/attention network was altered in AD due to parietal inactivation. Using a novel measure of complexity, we found microstate transitioning was slower and less complex in AD. When combined with a spectral EEG measure, microstate complexity could classify AD with sensitivity and specificity > 80%, which was tested on an independent cohort, and could predict progression from MCI to AD in a small preliminary test cohort of 11 participants. EEG microstates therefore have potential to be a non-invasive functional biomarker of AD.
静息态大脑的动力学表现出在少数几个离散网络之间的转变,每个网络在数十到数百毫秒内保持稳定。这些功能微状态被认为是自发意识的构建块。脑电图(EEG)是一种用于成像微状态的有用工具,EEG 微状态分析有可能深入了解认知障碍(如阿尔茨海默病(AD))背后的大脑动力学变化。由于 EEG 是非侵入性的且相对便宜,因此 EEG 微状态有可能成为用于辅助 AD 早期诊断的有用临床工具。在这项研究中,从两个独立的 AD 疑似患者和认知健康对照组以及具有四年临床随访的轻度认知障碍(MCI)患者队列中收集了 EEG。由于顶叶失活,AD 患者的额顶叶工作记忆/注意力网络相关的微状态发生了改变。使用一种新的复杂性度量方法,我们发现 AD 患者的微状态转换更慢且更不复杂。当与 EEG 频谱测量相结合时,微状态复杂性可以以 >80%的敏感性和特异性来分类 AD,这在一个独立的队列中进行了测试,并在 11 名参与者的小型初步测试队列中可以预测从 MCI 到 AD 的进展。因此,EEG 微状态有可能成为 AD 的一种非侵入性功能生物标志物。