Symbolic dynamics of joint brain states during dyadic coordination

Italo Ivo Lima Dias Pinto, Zhibin Zhou, Javier O. Garcia, Ramesh Srinivasan
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Abstract

We propose a novel approach to investigate the brain mechanisms that support coordination of behavior between individuals. Brain states in single individuals defined by the patterns of functional connectivity between brain regions are used to create joint symbolic representations of the evolution of brain states in two or more individuals performing a task together. These symbolic dynamics can be analyzed to reveal aspects of the dynamics of joint brain states that are related to coordination or other interactive behaviors. We apply this approach to simultaneous electroencephalographic (EEG) data from pairs of subjects engaged in two different modes of finger-tapping coordination tasks (synchronization and syncopation) under different interaction conditions (Uncoupled, Leader-Follower, and Mutual) to explore the neural mechanisms of multi-person motor coordination. Our results reveal that the dyads exhibit mostly the same joint symbols in different interaction conditions - the most important differences are reflected in the symbolic dynamics. Recurrence analysis shows that interaction influences the dwell time in specific joint symbols and the structure of joint symbol sequences (motif length). In synchronization, increasing feedback promotes stability with longer dwell times and motif length. In syncopation, Leader-Follower interactions enhance stability (increase dwell time and motif length), but Mutual feedback dramatically reduces stability. Network analysis reveals distinct topological changes with task and feedback. In synchronization, stronger coupling stabilizes a few states restricting the pattern of flow between states, preserving a core-periphery structure of the joint brain states. In syncopation, a more distributed flow amongst a larger set of joint brain states reduces the dominance of core joint brain states.
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双人协调过程中大脑联合状态的符号动力学
我们提出了一种研究支持个体间行为协调的大脑机制的新方法。根据脑区之间的功能连接模式定义的单个个体的大脑状态被用来创建两个或更多个体共同完成一项任务时大脑状态演变的联合符号表示。我们将这种方法应用于同时脑电图(EEG)数据,这些数据来自在不同交互条件(非耦合、领导者-追随者和相互)下参与两种不同模式手指敲击协调任务(同步和切分)的两对受试者,以探索多人运动协调的神经机制。我们的研究结果表明,在不同的交互条件下,二人组表现出几乎相同的联合符号--最重要的差异反映在符号动态上。递归分析表明,互动影响了特定关节符号的停留时间和关节符号序列的结构(图案长度)。在不同步中,反馈的增加会促进停留时间和动机长度的稳定。在切分音中,"领导者-跟随者 "的互动会增强稳定性(增加停留时间和图案长度),但 "相互反馈 "会显著降低稳定性。网络分析揭示了任务和反馈带来的不同拓扑变化。在同步状态下,更强的耦合会稳定少数状态,限制状态间的流动模式,从而保持大脑联合状态的核心-外围结构。在同步状态下,更多的联合脑状态之间的流动分布更广,从而降低了核心联合脑状态的主导地位。
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