Guo Shu, Levy Orr, Dvir Hila, Kang Rui, Li Daqing, Havlin Shlomo, Axelrod Vadim
State Key Laboratory of Cognitive Neuroscience and Learning, Beijing Normal University, Beijing 100875, China.
Department of Physics, Bar-Ilan University, Ramat Gan 52900, Israel.
J Neurosci. 2025 Mar 19;45(12):e1570242025. doi: 10.1523/JNEUROSCI.1570-24.2025.
Time persistence is a fundamental property of many complex physical and biological systems; thus understanding the phenomenon in the brain is of high importance. Time persistence has been explored at the level of stand-alone neural time-series, but since the brain functions as an interconnected network, it is essential to examine time persistence at the network level. Changes in resting-state networks have been previously investigated using both dynamic (i.e., examining connectivity states) and static functional connectivity (i.e., test-retest reliability), but no systematic investigation of the time persistence as a network was conducted, particularly across different timescales (i.e., seconds, minutes, dozens of seconds, days) and different brain subnetworks. Additionally, individual differences in network time persistence have not been explored. Here, we devised a new framework to estimate network time persistence at both the link (i.e., connection) and node levels. In a comprehensive series analysis of three functional MRI resting-state datasets including both sexes, we established that (1) the resting-state functional brain network becomes gradually less similar to itself for the gaps up to 23 min within the run and even less similar for the gap between the days; (2) network time persistence varies across functional networks, while the sensory networks are more persistent than nonsensory networks; (3) participants show stable individual characteristic persistence, which has a genetic component; and (4) individual characteristic persistence could be linked to behavioral performance. Overall, our detailed characterization of network time persistence sheds light on the potential role of time persistence in brain functioning and cognition.
时间持续性是许多复杂物理和生物系统的一个基本属性;因此,了解大脑中的这一现象至关重要。时间持续性已在独立神经时间序列层面得到探索,但由于大脑作为一个相互连接的网络发挥作用,在网络层面研究时间持续性至关重要。静息态网络的变化此前已通过动态(即检查连接状态)和静态功能连接(即重测信度)进行研究,但尚未对作为一个网络的时间持续性进行系统研究,特别是在不同时间尺度(即秒、分钟、几十秒、天)和不同脑子网层面。此外,网络时间持续性的个体差异也未被探索。在此,我们设计了一个新框架来估计链路(即连接)和节点层面的网络时间持续性。在对包含男女两性的三个功能磁共振成像静息态数据集进行的全面系列分析中,我们确定:(1)静息态功能脑网络在扫描过程中长达23分钟的间隔内与自身的相似度逐渐降低,在不同天之间的间隔内相似度更低;(2)网络时间持续性在不同功能网络中有所不同,感觉网络比非感觉网络更具持续性;(3)参与者表现出稳定的个体特征持续性,且具有遗传成分;(4)个体特征持续性可能与行为表现相关。总体而言,我们对网络时间持续性的详细表征揭示了时间持续性在大脑功能和认知中的潜在作用。