Blain-Moraes Stefanie, Tarnal Vijay, Vanini Giancarlo, Bel-Behar Tarik, Janke Ellen, Picton Paul, Golmirzaie Goodarz, Palanca Ben J A, Avidan Michael S, Kelz Max B, Mashour George A
School of Physical and Occupational Therapy, Faculty of Medicine, McGill University.
Center for Consciousness Science, University of Michigan Medical SchoolAnn Arbor, MI, United States.
Front Hum Neurosci. 2017 Jun 28;11:328. doi: 10.3389/fnhum.2017.00328. eCollection 2017.
Recent studies have investigated local oscillations, long-range connectivity, and global network patterns to identify neural changes associated with anesthetic-induced unconsciousness. These studies typically employ anesthetic protocols that either just cross the threshold of unconsciousness, or induce deep unconsciousness for a brief period of time-neither of which models general anesthesia for major surgery. To study neural patterns of unconsciousness and recovery in a clinically-relevant context, we used a realistic anesthetic regimen to induce and maintain unconsciousness in eight healthy participants for 3 h. High-density electroencephalogram (EEG) was acquired throughout and for another 3 h after emergence. Seven epochs of 5-min eyes-closed resting states were extracted from the data at baseline as well as 30, 60, 90, 120, 150, and 180-min post-emergence. Additionally, 5-min epochs were extracted during induction, unconsciousness, and immediately prior to recovery of consciousness, for a total of 10 analysis epochs. The EEG data in each epoch were analyzed using source-localized spectral analysis, phase-lag index, and graph theoretical techniques. Posterior alpha power was significantly depressed during unconsciousness, and gradually approached baseline levels over the 3 h recovery period. Phase-lag index did not distinguish between states of consciousness or stages of recovery. Network efficiency was significantly depressed and network clustering coefficient was significantly increased during unconsciousness; these graph theoretical measures returned to baseline during the 3 h recovery period. Posterior alpha power may be a potential biomarker for normal recovery of functional brain networks after general anesthesia.
最近的研究调查了局部振荡、长程连接和全局网络模式,以确定与麻醉诱导的无意识状态相关的神经变化。这些研究通常采用的麻醉方案要么刚好跨越无意识阈值,要么在短时间内诱导深度无意识——这两种方案都无法模拟大手术的全身麻醉。为了在临床相关背景下研究无意识和恢复的神经模式,我们使用了一种逼真的麻醉方案,在8名健康参与者中诱导并维持无意识状态3小时。在整个过程中以及苏醒后另外3小时采集高密度脑电图(EEG)。从基线数据以及苏醒后30、60、90、120、150和180分钟的数据中提取7个5分钟闭眼静息状态的时段。此外,在诱导、无意识状态以及意识恢复前即刻提取5分钟的时段,总共10个分析时段。使用源定位频谱分析、相位滞后指数和图论技术分析每个时段的EEG数据。无意识状态期间后阿尔法功率显著降低,并在3小时的恢复期逐渐接近基线水平。相位滞后指数无法区分意识状态或恢复阶段。无意识状态期间网络效率显著降低,网络聚类系数显著增加;这些图论指标在3小时的恢复期恢复到基线水平。后阿尔法功率可能是全身麻醉后功能性脑网络正常恢复的潜在生物标志物。