Vohryzek Jakub, Deco Gustavo, Cessac Bruno, Kringelbach Morten L, Cabral Joana
Department of Psychiatry, University of Oxford, Oxford, United Kingdom.
Center for Music in the Brain, Department of Clinical Medicine, Aarhus University, Aarhus, Denmark.
Front Syst Neurosci. 2020 Apr 17;14:20. doi: 10.3389/fnsys.2020.00020. eCollection 2020.
Functionally relevant network patterns form transiently in brain activity during rest, where a given subset of brain areas exhibits temporally synchronized BOLD signals. To adequately assess the biophysical mechanisms governing intrinsic brain activity, a detailed characterization of the dynamical features of functional networks is needed from the experimental side to constrain theoretical models. In this work, we use an open-source fMRI dataset from 100 healthy participants from the Human Connectome Project and analyze whole-brain activity using Leading Eigenvector Dynamics Analysis (LEiDA), which serves to characterize brain activity at each time point by its whole-brain BOLD phase-locking pattern. Clustering these BOLD phase-locking patterns into a set of k states, we demonstrate that the cluster centroids closely overlap with reference functional subsystems. Borrowing tools from dynamical systems theory, we characterize spontaneous brain activity in the form of trajectories within the state space, calculating the Fractional Occupancy and the Dwell Times of each state, as well as the Transition Probabilities between states. Finally, we demonstrate that within-subject reliability is maximized when including the high frequency components of the BOLD signal (>0.1 Hz), indicating the existence of individual fingerprints in dynamical patterns evolving at least as fast as the temporal resolution of acquisition (here = 0.72 s). Our results reinforce the mechanistic scenario that resting-state networks are the expression of erratic excursions from a baseline synchronous steady state into weakly-stable partially-synchronized states - which we term ghost attractors. To better understand the rules governing the transitions between ghost attractors, we use methods from dynamical systems theory, giving insights into high-order mechanisms underlying brain function.
功能相关的网络模式在静息状态下的大脑活动中短暂形成,此时大脑区域的特定子集表现出时间同步的血氧水平依赖(BOLD)信号。为了充分评估控制大脑内在活动的生物物理机制,需要从实验方面对功能网络的动态特征进行详细表征,以约束理论模型。在这项工作中,我们使用了来自人类连接组计划的100名健康参与者的开源功能磁共振成像(fMRI)数据集,并使用主导特征向量动力学分析(LEiDA)来分析全脑活动,该分析通过全脑BOLD锁相模式来表征每个时间点的大脑活动。将这些BOLD锁相模式聚类为一组k个状态,我们证明聚类中心与参考功能子系统紧密重叠。借鉴动力系统理论的工具,我们以状态空间内的轨迹形式表征自发脑活动,计算每个状态的分数占有率和停留时间,以及状态之间的转移概率。最后,我们证明当包括BOLD信号的高频成分(>0.1 Hz)时,个体内可靠性最大化,这表明在至少与采集时间分辨率(此处为0.72 s)一样快的动态模式中存在个体指纹。我们的结果强化了这样一种机制场景,即静息态网络是从基线同步稳态到弱稳定部分同步状态的不稳定偏移的表现——我们称之为幽灵吸引子。为了更好地理解控制幽灵吸引子之间转换的规则,我们使用动力系统理论的方法,深入了解大脑功能背后的高阶机制。