Institute of Science and Technology for Brain-Inspired Intelligence, Fudan University, Shanghai, China.
Department of Psychology and Behavioral Sciences, Zhejiang University, Zhejiang, China.
PLoS Biol. 2022 Mar 17;20(3):e3001560. doi: 10.1371/journal.pbio.3001560. eCollection 2022 Mar.
Hemispheric lateralization constitutes a core architectural principle of human brain organization underlying cognition, often argued to represent a stable, trait-like feature. However, emerging evidence underlines the inherently dynamic nature of brain networks, in which time-resolved alterations in functional lateralization remain uncharted. Integrating dynamic network approaches with the concept of hemispheric laterality, we map the spatiotemporal architecture of whole-brain lateralization in a large sample of high-quality resting-state fMRI data (N = 991, Human Connectome Project). We reveal distinct laterality dynamics across lower-order sensorimotor systems and higher-order associative networks. Specifically, we expose 2 aspects of the laterality dynamics: laterality fluctuations (LF), defined as the standard deviation of laterality time series, and laterality reversal (LR), referring to the number of zero crossings in laterality time series. These 2 measures are associated with moderate and extreme changes in laterality over time, respectively. While LF depict positive association with language function and cognitive flexibility, LR shows a negative association with the same cognitive abilities. These opposing interactions indicate a dynamic balance between intra and interhemispheric communication, i.e., segregation and integration of information across hemispheres. Furthermore, in their time-resolved laterality index, the default mode and language networks correlate negatively with visual/sensorimotor and attention networks, which are linked to better cognitive abilities. Finally, the laterality dynamics are associated with functional connectivity changes of higher-order brain networks and correlate with regional metabolism and structural connectivity. Our results provide insights into the adaptive nature of the lateralized brain and new perspectives for future studies of human cognition, genetics, and brain disorders.
大脑半球偏侧性构成了人类大脑认知组织的核心结构原则,通常被认为是一种稳定的、特质性的特征。然而,新出现的证据强调了大脑网络固有的动态性质,其中功能偏侧性的时间分辨变化仍然未知。我们将动态网络方法与偏侧性概念相结合,在大量高质量静息态 fMRI 数据(N = 991,人类连接组计划)中绘制了全脑偏侧化的时空结构。我们揭示了较低阶感觉运动系统和较高阶联想网络之间的明显偏侧性动态。具体来说,我们揭示了偏侧性动态的 2 个方面:偏侧性波动(LF),定义为偏侧性时间序列的标准差,以及偏侧性反转(LR),指的是偏侧性时间序列中的零交叉数。这两个指标分别与偏侧性随时间的中度和极端变化相关。虽然 LF 与语言功能和认知灵活性呈正相关,LR 与相同的认知能力呈负相关。这些相反的相互作用表明,大脑半球内和半球间的信息交流存在动态平衡,即信息的分离和整合。此外,在其时间分辨的偏侧性指数中,默认模式和语言网络与视觉/感觉运动和注意力网络呈负相关,这些网络与更好的认知能力相关。最后,偏侧性动态与高级大脑网络的功能连接变化相关,并与区域代谢和结构连接相关。我们的研究结果为研究大脑的适应性提供了新的视角,并为未来的人类认知、遗传学和大脑疾病研究提供了新的视角。