同步(交流)
脑磁图
异步通信
计算机科学
人脑
Kuramoto模型
联轴节(管道)
相位同步
节点(物理)
动力学(音乐)
网络动力学
复杂系统
复杂网络
神经科学
临界性
相(物质)
同步网络
大脑活动与冥想
级联
人工智能
统计物理学
生物神经网络
过渡(遗传学)
信息处理
复杂动力学
系统动力学
水准点(测量)
网络模型
订单(交换)
相变
局部场电位
振幅
适应性
作者
Vladislav Myrov,Alina Suleimanova,Samanta Knapič,Paula Partanen,Maria Vesterinen,Wenya Liu,Satu Palva,J. Matias Palva
标识
DOI:10.1073/pnas.2505768123
摘要
The brain operates at the critical transition between order and disorder which supports optimal information processing. Whole-brain computational modeling is a powerful tool for uncovering the system-level mechanisms behind large-scale brain activity in both healthy and pathological states. However, most previous approaches have focused on either functional connectivity or criticality, making it difficult to capture both aspects simultaneously. Here, we introduce a method based on a Hierarchical Kuramoto model that incorporates two levels of hierarchy. In our model, each node contains a large number of coupled oscillators, which allows us to examine both local synchronization and long-distance interactions between brain regions. The model produces critical-like dynamics marked by emergent long-range temporal correlations (LRTCs) and both interareal phase synchronization and amplitude cross-correlations (CC) during the transition from asynchronous to synchronous states. Notably, structure-function coupling shows distinct patterns: correlations with structural connectivity peak at criticality for LRTCs and CC, but decay for local and interareal phase synchronization. Comparisons with human resting-state magnetoencephalography (MEG) data reveal that the model's behavior most closely resembles MEG phase synchronization and multipeak power spectra on the subcritical side of an extended critical regime, supporting the hypothesis that the human brain operates in this state.
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