Hager Brandon M, Yang Albert C, Gutsell Jennifer N
Department of Psychology, Brandeis University, Waltham, MA, United States.
Division of Interdisciplinary Medicine and Biotechnology, Beth Israel Deaconess Medical Center, Harvard Medical School, Boston, MA, United States.
Front Neurosci. 2018 Oct 30;12:758. doi: 10.3389/fnins.2018.00758. eCollection 2018.
EEG mu-desynchronization is an index of motor resonance (MR) and is used to study social interaction deficiencies, but finding differences in mu-desynchronization does not reveal how nonlinear brain dynamics are affected during MR. The current study explores how nonlinear brain dynamics change during MR. We hypothesized that the complexity of the mu frequency band (8-13 Hz) changes during MR, and that this change would be frequency specific. Additionally, we sought to determine whether complexity at baseline and changes in complexity during action observation would predict MR and changes in network dynamics. EEG was recorded from healthy participants ( = 45) during rest and during an action observation task. Baseline brain activity was measured followed by participants observing videos of hands squeezing stress balls. We used multiscale entropy (MSE) to quantify the complexity of the mu rhythm during MR. We then performed graph theory analysis to explore whether nonlinear dynamics during MR affect brain network topology. We found significant mu-desynchronization during the action observation task and that mu entropy was significantly increased during the task compared to rest, while gamma, beta, theta, and delta bands showed decreased entropy. Moreover, resting-state entropy was significantly predictive of the degree of mu desynchronization. We also observed a decrease in the clustering coefficient in the mu band only and a significant decrease in global alpha efficiency during action observation. MSE during action observation was strongly correlated with alpha network efficiency. The current findings suggest that the desynchronization of the mu wave during MR results in a local increase of mu entropy in sensorimotor areas, potentially reflecting a release from alpha inhibition. This release from inhibition may be mediated by the baseline MSE in the mu band. The dynamical complexity and network analysis of EEG may provide a useful addition for future studies of MR by incorporating measures of nonlinearity.
脑电图μ波去同步化是运动共振(MR)的一个指标,用于研究社会互动缺陷,但发现μ波去同步化的差异并不能揭示在运动共振期间非线性脑动力学是如何受到影响的。当前的研究探讨了在运动共振期间非线性脑动力学是如何变化的。我们假设,在运动共振期间,μ频段(8 - 13赫兹)的复杂性会发生变化,并且这种变化具有频率特异性。此外,我们试图确定基线时的复杂性以及在动作观察期间复杂性的变化是否能够预测运动共振和网络动力学的变化。在静息状态和动作观察任务期间,对45名健康参与者进行了脑电图记录。测量了基线脑活动,随后参与者观看手部挤压减压球的视频。我们使用多尺度熵(MSE)来量化运动共振期间μ节律的复杂性。然后,我们进行了图论分析,以探索运动共振期间的非线性动力学是否会影响脑网络拓扑结构。我们发现在动作观察任务期间存在显著的μ波去同步化,并且与静息状态相比,任务期间μ熵显著增加,而γ、β、θ和δ频段的熵则有所下降。此外,静息状态熵能够显著预测μ波去同步化的程度。我们还观察到,仅在μ频段聚类系数下降,并且在动作观察期间全局α效率显著降低。动作观察期间的多尺度熵与α网络效率密切相关。当前的研究结果表明,运动共振期间μ波的去同步化导致感觉运动区域μ熵局部增加,这可能反映了从α抑制中的释放。这种抑制的释放可能由μ频段的基线多尺度熵介导。脑电图的动态复杂性和网络分析通过纳入非线性测量,可能为未来运动共振的研究提供有益补充。