Duda Marlena, Faghiri Ashkan, Belger Aysenil, Bustillo Juan R, Ford Judith M, Mathalon Daniel H, Mueller Bryon A, Pearlson Godfrey D, Potkin Steven G, Preda Adrian, Sui Jing, Van Erp Theo G M, Calhoun Vince D
Tri-Institutional Center for Translational Research in Neuroimaging and Data Science (TReNDS), Georgia State University, Georgia Institute of Technology, Emory University, Atlanta, GA, USA.
Department of Psychiatry, University of North Carolina, Chapel Hill, NC, USA.
Neuroinformatics. 2025 Apr 26;23(2):31. doi: 10.1007/s12021-025-09728-3.
Schizophrenia (SZ) is a complex psychiatric disorder that is currently defined by symptomatic and behavioral, rather than biological, criteria. Neuroimaging is an appealing avenue for SZ biomarker development, as several neuroimaging-based studies have shown measurable group differences in brain structure, as well as functional brain alterations in both static and dynamic functional network connectivity (sFNC and dFNC, respectively), between SZ and controls. The recently proposed filter-banked connectivity (FBC) method extends the standard dFNC sliding-window approach to estimate FNC within an arbitrary number of distinct frequency bands. Initial FBC results found that individuals with SZ spend more time in a less structured, more disconnected low-frequency (i.e., static) FNC state than HC, as well as preferential SZ occupancy in high-frequency connectivity states, suggesting a frequency-specific component underpinning the functional dysconnectivity observed in SZ. Building on these findings, we sought to link such frequency-specific patterns of FNC to covarying data-driven structural brain networks in the context of SZ. Specifically, we employ a multi-set canonical correlation analysis + joint independent components analysis (mCCA + jICA) data fusion framework to study the connection between gray matter volume (GMV) maps and FBC states across the full connectivity frequency spectrum. Our multimodal analysis identified two joint sources that captured co-varying patterns of frequency-specific functional connectivity and alterations in GMV with significant group differences in loading parameters between the SZ group and HC. The first joint source linked frequency-modulated connections between the subcortical and sensorimotor networks and GMV alterations in the frontal and temporal lobes, while the second joint source identified a relationship between low-frequency cerebellar-sensorimotor connectivity and structural changes in both the cerebellum and motor cortex. Together, these results show a strong connection between cortico-subcortical functional connectivity at both high and low frequencies and alterations in cortical GMV that may be relevant to the pathogenesis and pathophysiology of SZ.
精神分裂症(SZ)是一种复杂的精神疾病,目前是根据症状和行为而非生物学标准来定义的。神经影像学是开发SZ生物标志物的一个有吸引力的途径,因为多项基于神经影像学的研究表明,SZ患者与对照组之间在脑结构上存在可测量的组间差异,以及在静态和动态功能网络连接性(分别为sFNC和dFNC)方面存在功能性脑改变。最近提出的滤波器组连接性(FBC)方法扩展了标准的dFNC滑动窗口方法,以估计任意数量不同频带内的FNC。最初的FBC结果发现,与健康对照(HC)相比,SZ患者在结构较松散、连接性较低的低频(即静态)FNC状态下停留的时间更长,并且在高频连接状态下SZ患者占据的比例更高,这表明在SZ中观察到的功能连接障碍存在频率特异性成分。基于这些发现,我们试图在SZ的背景下,将这种FNC的频率特异性模式与共同变化的数据驱动的结构性脑网络联系起来。具体而言,我们采用多集典型相关分析+联合独立成分分析(mCCA+jICA)数据融合框架,来研究全连接频率谱上灰质体积(GMV)图与FBC状态之间的联系。我们的多模态分析确定了两个联合源,它们捕获了频率特异性功能连接的共同变化模式以及GMV的改变,在SZ组和HC组之间的负荷参数上存在显著的组间差异。第一个联合源将皮质下和感觉运动网络之间的频率调制连接与额叶和颞叶的GMV改变联系起来,而第二个联合源确定了低频小脑-感觉运动连接与小脑和运动皮层的结构变化之间的关系。总之,这些结果表明,高频和低频的皮质-皮质下功能连接与皮质GMV改变之间存在紧密联系,这可能与SZ的发病机制和病理生理学相关。