Bostami Biozid, Lewis Noah, Agcaoglu Oktay, Turner Jessica A, van Erp Theo, Ford Judith M, Fouladivanda Mahshid, Calhoun Vince, Iraji Armin
School of Electrical and Computer Engineering, Georgia Institute of Technology, Atlanta, Georgia, USA.
Tri-Institutional Center for Translational Research in Neuroimaging and Data Science (TReNDS), Georgia State, Georgia Tech, and Emory, Atlanta, Georgia, USA.
Hum Brain Mapp. 2025 Feb 1;46(2):e70131. doi: 10.1002/hbm.70131.
Spontaneous neural activity coherently relays information across the brain. Several efforts have been made to understand how spontaneous neural activity evolves at the macro-scale level as measured by resting-state functional magnetic resonance imaging (rsfMRI). Previous studies observe the global patterns and flow of information in rsfMRI using methods such as sliding window or temporal lags. However, to our knowledge, no studies have examined spatial propagation patterns evolving with time across multiple overlapping 4D networks. Here, we propose a novel approach to study how dynamic states of the brain networks spatially propagate and evaluate whether these propagating states contain information relevant to mental illness. We implement a lagged windowed correlation approach to capture voxel-wise network-specific spatial propagation patterns in dynamic states. Results show systematic spatial state changes over time, which we confirmed are replicable across multiple scan sessions using human connectome project data. We observe networks varying in propagation speed; for example, the default mode network (DMN) propagates slowly and remains positively correlated with blood oxygenation level-dependent (BOLD) signal for 6-8 s, whereas the visual network propagates much quicker. We also show that summaries of network-specific propagative patterns are linked to schizophrenia. More specifically, we find significant group differences in multiple dynamic parameters between patients with schizophrenia and controls within four large-scale networks: default mode, temporal lobe, subcortical, and visual network. Individuals with schizophrenia spend more time in certain propagating states. In summary, this study introduces a promising general approach to exploring the spatial propagation in dynamic states of brain networks and their associated complexity and reveals novel insights into the neurobiology of schizophrenia.
自发神经活动在大脑中连贯地传递信息。人们已经做出了多项努力来理解自发神经活动在静息态功能磁共振成像(rsfMRI)所测量的宏观尺度水平上是如何演变的。先前的研究使用滑动窗口或时间滞后等方法观察rsfMRI中的全局信息模式和流动。然而,据我们所知,尚无研究考察多个重叠的4D网络中随时间演变的空间传播模式。在此,我们提出一种新颖的方法来研究大脑网络的动态状态如何在空间上传播,并评估这些传播状态是否包含与精神疾病相关的信息。我们实施一种滞后窗口相关方法来捕捉动态状态下体素级网络特定的空间传播模式。结果显示随时间有系统的空间状态变化,我们使用人类连接组计划数据证实这些变化在多个扫描会话中是可重复的。我们观察到不同网络的传播速度不同;例如,默认模式网络(DMN)传播缓慢,并且与血氧水平依赖(BOLD)信号保持正相关6 - 8秒,而视觉网络传播得更快。我们还表明,网络特定传播模式的总结与精神分裂症有关。更具体地说,我们发现在四个大规模网络(默认模式、颞叶、皮层下和视觉网络)中,精神分裂症患者与对照组在多个动态参数上存在显著的组间差异。精神分裂症患者在某些传播状态下花费更多时间。总之,本研究引入了一种有前景的通用方法来探索大脑网络动态状态下的空间传播及其相关的复杂性,并揭示了对精神分裂症神经生物学的新见解。