Key Laboratory for Artificial Intelligence and Cognitive Neuroscience of Language, Xi'an International Studies University, Xi'an 710121, China.
Department of Neurosurgery, Xijing Hosptial, Air Force Medical University, Xi'an 710032, China.
J Zhejiang Univ Sci B. 2023 May 15;24(5):458-462. doi: 10.1631/jzus.B2200393.
The difference between sleep and wakefulness is critical for human health. Sleep takes up one third of our lives and remains one of the most mysterious conditions; it plays an important role in memory consolidation and health restoration. Distinct neural behaviors take place under awake and asleep conditions, according to neuroimaging studies. While disordered transitions between wakefulness and sleep accompany brain disease, further investigation of their specific characteristics is required. In this study, the difference is objectively quantified by means of network controllability. We propose a new pipeline using a public intracranial stereo-electroencephalography (stereo-EEG) dataset to unravel differences in the two conditions in terms of system neuroscience. Because intracranial stereo-EEG records neural oscillations covering large-scale cerebral areas, it offers the highest temporal resolution for recording neural behaviors. After EEG preprocessing, the EEG signals are band-passed into sub-slow (0.1-1 Hz), delta (1-4 Hz), theta (4-8 Hz), alpha (8-13 Hz), beta (13-30 Hz), and gamma (30-45 Hz) band oscillations. Then, dynamic functional connectivity is extracted from time-windowed EEG neural oscillations through phase-locking value (PLV) and non-overlapping sliding time windows. Next, average and modal network controllability are implemented on these time-varying brain networks. Based on this preliminary study, it appears that significant differences exist in the dorsolateral frontal-parietal network (FPN), salience network (SN), and default-mode network (DMN). The combination of network controllability and dynamic functional networks offers new insight for characterizing distinctions between awake and asleep stages in the brain. In other words, network controllability captures the underlying brain dynamics under both awake and asleep conditions.
睡眠和觉醒之间的区别对人类健康至关重要。睡眠占据了我们生命的三分之一,仍然是最神秘的状态之一;它在记忆巩固和健康恢复中起着重要作用。根据神经影像学研究,在清醒和睡眠状态下会出现不同的神经行为。虽然清醒和睡眠之间的紊乱转换伴随着脑部疾病,但需要进一步研究其特定特征。在这项研究中,通过网络可控性来客观地量化这种差异。我们提出了一种使用公共颅内立体脑电图(stereo-EEG)数据集的新方法,从系统神经科学的角度揭示了这两种状态的差异。由于颅内立体 EEG 记录了覆盖大脑大范围的神经振荡,因此它为记录神经行为提供了最高的时间分辨率。在 EEG 预处理之后,EEG 信号被带通滤波到亚慢(0.1-1 Hz)、δ(1-4 Hz)、θ(4-8 Hz)、α(8-13 Hz)、β(13-30 Hz)和γ(30-45 Hz)波段振荡。然后,通过锁相值(PLV)和非重叠滑动时间窗口从时窗 EEG 神经振荡中提取动态功能连接。接下来,在这些时变脑网络上实现平均和模态网络可控性。基于这项初步研究,似乎在背外侧额顶网络(FPN)、突显网络(SN)和默认模式网络(DMN)之间存在显著差异。网络可控性和动态功能网络的结合为刻画大脑清醒和睡眠阶段之间的区别提供了新的视角。换句话说,网络可控性捕捉了清醒和睡眠状态下大脑的潜在动力学。