Padova Neuroscience Center (PNC), University of Padova, Padova, Italy.
Department of Developmental and Social Psychology, University of Padova, Padova, Italy.
Psychophysiology. 2021 May;58(5):e13786. doi: 10.1111/psyp.13786. Epub 2021 Feb 7.
Face perception arises from a collective activation of brain regions in the occipital, parietal and temporal cortices. Despite the wide acknowledgment that these regions act in an intertwined network, the network behavior itself is poorly understood. Here we present a study in which time-varying connectivity estimated from EEG activity elicited by facial expressions presentation was characterized using graph-theoretical measures of node centrality and global network topology. Results revealed that face perception results from a dynamic reshaping of the network architecture, characterized by the emergence of hubs located in the occipital and temporal regions of the scalp. The importance of these nodes can be observed from the early stages of visual processing and reaches a climax in the same time-window in which the face-sensitive N170 is observed. Furthermore, using Granger causality, we found that the time-evolving centrality of these nodes is associated with ERP amplitude, providing a direct link between the network state and local neural response. Additionally, investigating global network topology by means of small-worldness and modularity, we found that face processing requires a functional network with a strong small-world organization that maximizes integration, at the cost of segregated subdivisions. Interestingly, we found that this architecture is not static, but instead, it is implemented by the network from stimulus onset to ~200 ms. Altogether, this study reveals the event-related changes underlying face processing at the network level, suggesting that a distributed processing mechanism operates through dynamically weighting the contribution of the cortical regions involved.
面部感知源于枕叶、顶叶和颞叶皮质中大脑区域的集体激活。尽管人们广泛承认这些区域以交织的网络形式运作,但网络行为本身仍知之甚少。在这里,我们进行了一项研究,使用基于脑电活动估计的时变连接来描述面部表情呈现所诱发的网络拓扑结构,采用节点中心性和全局网络拓扑的图论度量方法。结果表明,面部感知是网络结构动态重塑的结果,其特征是位于头皮枕叶和颞叶区域的枢纽的出现。这些节点的重要性可以从视觉处理的早期阶段观察到,并在观察到面部敏感的 N170 的相同时间窗口内达到高峰。此外,通过格兰杰因果关系,我们发现这些节点的时变中心性与 ERP 幅度相关,为网络状态和局部神经反应之间提供了直接联系。此外,通过小世界和模块性来研究全局网络拓扑,我们发现面部处理需要一个具有强小世界组织的功能网络,以最大化整合,代价是分割的细分。有趣的是,我们发现这种结构不是静态的,而是网络从刺激开始到~200ms 时实现的。总的来说,这项研究揭示了面部处理在网络层面上的事件相关变化,表明分布式处理机制通过动态加权涉及的皮质区域的贡献来运作。