Institute of Computer Science of the Czech Academy of Sciences, Prague, Czech Republic.
Department of Computing and Control Engineering, University of Chemistry and Technology, Prague, Czech Republic.
Hum Brain Mapp. 2023 Dec 1;44(17):5795-5809. doi: 10.1002/hbm.26477. Epub 2023 Sep 9.
Recognition memory is the ability to recognize previously encountered objects. Even this relatively simple, yet extremely fast, ability requires the coordinated activity of large-scale brain networks. However, little is known about the sub-second dynamics of these networks. The majority of current studies into large-scale network dynamics is primarily based on imaging techniques suffering from either poor temporal or spatial resolution. We investigated the dynamics of large-scale functional brain networks underlying recognition memory at the millisecond scale. Specifically, we analyzed dynamic effective connectivity from intracranial electroencephalography while epileptic subjects (n = 18) performed a fast visual recognition memory task. Our data-driven investigation using Granger causality and the analysis of communities with the Louvain algorithm spotlighted a dynamic interplay of two large-scale networks associated with successful recognition. The first network involved the right visual ventral stream and bilateral frontal regions. It was characterized by early, predominantly bottom-up information flow peaking at 115 ms. It was followed by the involvement of another network with predominantly top-down connectivity peaking at 220 ms, mainly in the left anterior hemisphere. The transition between these two networks was associated with changes in network topology, evolving from a more segregated to a more integrated state. These results highlight that distinct large-scale brain networks involved in visual recognition memory unfold early and quickly, within the first 300 ms after stimulus onset. Our study extends the current understanding of the rapid network changes during rapid cognitive processes.
再认记忆是指识别先前遇到过的物体的能力。即使是这种相对简单但非常迅速的能力,也需要大规模脑网络的协调活动。然而,人们对这些网络的亚秒级动力学知之甚少。目前,大多数关于大规模网络动力学的研究主要基于成像技术,这些技术要么时间分辨率差,要么空间分辨率差。我们在毫秒级的范围内研究了识别记忆所涉及的大规模功能大脑网络的动力学。具体来说,我们分析了癫痫患者(n=18)在执行快速视觉识别记忆任务时的颅内脑电图的动态有效连通性。我们使用格兰杰因果关系进行的数据驱动研究以及使用 Louvain 算法分析社区,突显了与成功识别相关的两个大规模网络之间的动态相互作用。第一个网络涉及右侧视觉腹侧流和双侧额叶区域。它的特点是早期、主要是自上而下的信息流,在 115ms 时达到峰值。随后,另一个主要是自上而下的连通性的网络参与进来,在 220ms 时达到峰值,主要在左前半球。这两个网络之间的转换与网络拓扑结构的变化有关,从更离散的状态演变为更集成的状态。这些结果表明,参与视觉识别记忆的不同大规模脑网络在刺激出现后的最初 300ms 内迅速展开。我们的研究扩展了对快速认知过程中快速网络变化的现有理解。