Jin Huaqing, Abdelnour Farras, Verma Parul, Sipes Benjamin S, Nagarajan Srikantan S, Raj Ashish
Department of Radiology and Biomedical Imaging, University of California San Francisco, San Francisco, CA, United States.
Imaging Neurosci (Camb). 2024 Oct 10;2. doi: 10.1162/imag_a_00307. eCollection 2024.
Understanding the relationship between structural connectivity (SC) and functional connectivity (FC) of the human brain is an important goal of neuroscience. Highly detailed mathematical models of neural masses exist that can simulate the interactions between functional activity and structural wiring. These models are often complex and require intensive computation. Most importantly, they do not provide a direct or intuitive interpretation of this structure-function relationship. In this study, we employ the emerging concepts of spectral graph theory to obtain this mapping in terms of graph harmonics, which are eigenvectors of the structural graph's Laplacian matrix. In order to imbue these harmonics with biophysical underpinnings, we leverage recent advances in parsimonious spectral graph modeling (SGM) of brain activity. Here, we show that such a model can indeed be cast in terms of graph harmonics, and can provide a closed-form prediction of FC in an arbitrary frequency band. The model requires only three global, spatially invariant parameters, yet is capable of generating rich FC patterns in different frequency bands. Only a few harmonics are sufficient to reproduce realistic FC patterns. We applied the method to predict FC obtained from pairwise magnitude coherence of source-reconstructed resting-state magnetoencephalography (MEG) recordings of 36 healthy subjects. To enable efficient model inference, we adopted a deep neural network-based Bayesian procedure called simulation-based inference. Using this tool, we were able to speedily infer not only the single most likely model parameters, but also their full posterior distributions. We also implemented several other benchmark methods relating SC to FC, including graph diffusion and coupled neural mass models. The present method was shown to give the best performance overall. Notably, we discovered that a single biophysical parameterization is capable of fitting FCs from all relevant frequency bands simultaneously, an aspect that did not receive adequate attention in prior computational studies.
理解人类大脑的结构连通性(SC)与功能连通性(FC)之间的关系是神经科学的一个重要目标。目前存在高度详细的神经团数学模型,能够模拟功能活动与结构布线之间的相互作用。这些模型通常很复杂,需要大量计算。最重要的是,它们没有对这种结构 - 功能关系提供直接或直观的解释。在本研究中,我们采用谱图理论的新兴概念,根据图谐波来获得这种映射,图谐波是结构图的拉普拉斯矩阵的特征向量。为了赋予这些谐波生物物理基础,我们利用了脑活动简约谱图建模(SGM)的最新进展。在此,我们表明这样一个模型确实可以根据图谐波来构建,并且能够对任意频段的FC提供封闭形式的预测。该模型仅需要三个全局的、空间不变的参数,但能够在不同频段生成丰富的FC模式。仅少数谐波就足以重现逼真的FC模式。我们应用该方法预测了36名健康受试者源重建静息态脑磁图(MEG)记录的成对幅值相干性所获得的FC。为了实现高效的模型推断,我们采用了一种基于深度神经网络的贝叶斯程序,称为基于模拟的推断。使用这个工具,我们不仅能够快速推断出最可能的单个模型参数,还能推断出它们的完整后验分布。我们还实施了其他几种将SC与FC相关联的基准方法,包括图扩散和耦合神经团模型。结果表明,本方法总体表现最佳。值得注意的是,我们发现单一的生物物理参数化能够同时拟合所有相关频段的FC,这一点在先前的计算研究中未得到充分关注。