A Method for Estimating Dynamic Functional Network Connectivity Gradients (dFNGs) From ICA Captures Smooth Inter-Network Modulation

IF 3.5 2区 医学 Q1 NEUROIMAGING
Najme Soleimani, Armin Iraji, Theo G. M. van Erp, Aysenil Belger, Vince D. Calhoun
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引用次数: 0

Abstract

Dynamic functional network connectivity (dFNC) analysis is a widely used approach for studying brain function and offering insight into how brain networks evolve over time. Typically, dFNC studies utilize fixed spatial maps and evaluate transient changes in coupling among time courses estimated from independent component analysis (ICA). This manuscript presents a complementary approach that relaxes this assumption by spatially reordering the components dynamically at each time point to optimize for a smooth gradient in the FNC (i.e., a smooth gradient among ICA connectivity values). Several methods are presented to summarize dynamic FNC gradients (dFNGs) over time, starting with static FNC gradients (sFNGs), then exploring the reordering properties as well as the dynamics of the gradients themselves. We then apply this approach to a dataset of schizophrenia (SZ) patients and healthy controls (HCs). Functional dysconnectivity between different brain regions has been reported in SZ, yet the neural mechanisms behind it remain elusive. Using resting-state fMRI and ICA on a dataset consisting of 151 SZ patients and 160 age and gender-matched HCs, we extracted 53 intrinsic connectivity networks (ICNs) for each subject using a fully automated spatially constrained ICA approach. We develop several summaries of our functional network connectivity gradient analysis, both in a static sense, computed as the Pearson correlation coefficient between full time series, and a dynamic sense, computed using a sliding window approach followed by reordering based on the computed gradient, and evaluate group differences. Static connectivity analysis revealed significantly stronger connectivity between subcortical (SC), auditory (AUD), and visual (VIS) networks in patients, as well as hypoconnectivity in the sensorimotor (SM) network relative to controls. sFNG analysis highlighted distinctive clustering patterns in patients and HCs along cognitive control (CC)/default mode network (DMN), as well as SC/AUD/SM/cerebellar (CB) and VIS gradients. Furthermore, we observed significant differences in the sFNGs between groups in SC and CB domains. dFNG analysis suggested that SZ patients spend significantly more time in a SC/CB state based on the first gradient, while HCs favor the SM/DMN state. For the second gradient, however, patients exhibited significantly higher activity in CB domains, contrasting with HCs' DMN engagement. The gradient synchrony analysis conveyed more shifts between SM/SC networks and transmodal CC/DMN networks in patients. In addition, the dFNG coupling revealed distinct connectivity patterns between SC, SM, and CB domains in SZ patients compared to HCs. To recap, our results advance our understanding of brain network modulation by examining smooth connectivity trajectories. This provides a more complete spatiotemporal summary of the data, contributing to the growing body of current literature regarding the functional dysconnectivity in SZ patients. By employing dFNG, we highlight a new perspective to capture large-scale fluctuations across the brain while maintaining the convenience of brain networks and low-dimensional summary measures.

Abstract Image

基于ICA的动态功能网络连通性梯度估计方法
动态功能网络连接(dFNC)分析是一种广泛使用的研究大脑功能的方法,可以深入了解大脑网络如何随着时间的推移而演变。通常,dFNC研究利用固定的空间图,并评估由独立分量分析(ICA)估计的时间过程之间耦合的瞬态变化。本文提出了一种补充方法,通过在每个时间点动态地对组件进行空间重新排序来优化FNC中的平滑梯度(即ICA连接值之间的平滑梯度),从而放宽了这一假设。提出了几种方法来总结动态FNC梯度(dfng)随时间的变化,从静态FNC梯度(sfng)开始,然后探索梯度本身的重排序特性以及动态。然后,我们将这种方法应用于精神分裂症(SZ)患者和健康对照(hc)的数据集。在SZ中已经报道了不同脑区之间的功能连接障碍,但其背后的神经机制尚不清楚。使用静息状态fMRI和ICA对151例SZ患者和160例年龄和性别匹配的hc组成的数据集进行分析,我们使用全自动空间约束ICA方法为每个受试者提取了53个内在连接网络(ICNs)。我们开发了几个功能网络连通性梯度分析的总结,无论是在静态意义上,作为全时间序列之间的Pearson相关系数计算,还是在动态意义上,使用滑动窗口方法计算,然后根据计算的梯度重新排序,并评估组差异。静态连通性分析显示,患者皮层下(SC)、听觉(AUD)和视觉(VIS)网络之间的连通性显著增强,而感觉运动(SM)网络的连通性相对于对照组较低。sFNG分析强调了患者和hc沿着认知控制(CC)/默认模式网络(DMN)以及SC/AUD/SM/小脑(CB)和VIS梯度的独特聚类模式。此外,我们观察到SC和CB结构域的sfng在两组之间存在显著差异。dFNG分析表明,基于第一个梯度,SZ患者处于SC/CB状态的时间明显更长,而hc倾向于SM/DMN状态。然而,对于第二个梯度,与hc的DMN参与相比,患者在CB域表现出明显更高的活性。梯度同步分析显示患者SM/SC网络和跨模式CC/DMN网络之间的变化更多。此外,与hc相比,dFNG耦合揭示了SZ患者SC、SM和CB结构域之间不同的连接模式。综上所述,我们的结果通过检查平滑连接轨迹推进了我们对大脑网络调制的理解。这为数据提供了一个更完整的时空总结,有助于增加当前关于SZ患者功能连接障碍的文献。通过使用dFNG,我们强调了一个新的视角来捕捉整个大脑的大规模波动,同时保持大脑网络和低维总结测量的便利性。
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来源期刊
Human Brain Mapping
Human Brain Mapping 医学-核医学
CiteScore
8.30
自引率
6.20%
发文量
401
审稿时长
3-6 weeks
期刊介绍: Human Brain Mapping publishes peer-reviewed basic, clinical, technical, and theoretical research in the interdisciplinary and rapidly expanding field of human brain mapping. The journal features research derived from non-invasive brain imaging modalities used to explore the spatial and temporal organization of the neural systems supporting human behavior. Imaging modalities of interest include positron emission tomography, event-related potentials, electro-and magnetoencephalography, magnetic resonance imaging, and single-photon emission tomography. Brain mapping research in both normal and clinical populations is encouraged. Article formats include Research Articles, Review Articles, Clinical Case Studies, and Technique, as well as Technological Developments, Theoretical Articles, and Synthetic Reviews. Technical advances, such as novel brain imaging methods, analyses for detecting or localizing neural activity, synergistic uses of multiple imaging modalities, and strategies for the design of behavioral paradigms and neural-systems modeling are of particular interest. The journal endorses the propagation of methodological standards and encourages database development in the field of human brain mapping.
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