Rădulescu Anca, Mujica-Parodi Lilianne R
Department of Mathematics, University of Colorado, 395 UCB, Boulder, CO 80309-0395, USA.
Department of Biomedical Engineering, Stony Brook University, Stony Brook, NY 11794-5281, USA; Department of Radiology, A. A. Martinos Center for Biomedical Imaging, Massachusetts General Hospital, Charlestown, MA 02129, USA.
Neuroimage. 2014 Apr 15;90:436-48. doi: 10.1016/j.neuroimage.2013.12.001. Epub 2013 Dec 13.
Measures of complexity are sensitive in detecting disease, which has made them attractive candidates for diagnostic biomarkers; one complexity measure that has shown promise in fMRI is power spectrum scale invariance (PSSI). Even if scale-free features of neuroimaging turn out to be diagnostically useful, however, their underlying neurobiological basis is poorly understood. Using modeling and simulations of a schematic prefrontal-limbic meso-circuit, with excitatory and inhibitory networks of nodes, we present here a framework for how network density within a control system can affect the complexity of signal outputs. Our model demonstrates that scale-free behavior, similar to that observed in fMRI PSSI data, can be obtained for sufficiently large networks in a context as simple as a linear stochastic system of differential equations, although the scale-free range improves when introducing more realistic, nonlinear behavior in the system. PSSI values (reflective of complexity) vary as a function of both input type (excitatory, inhibitory) and input density (mean number of long-range connections, or strength), independent of their node-specific geometric distribution. Signals show pink noise (1/f) behavior when excitatory and inhibitory influences are balanced. As excitatory inputs are increased and decreased, signals shift towards white and brown noise, respectively. As inhibitory inputs are increased and decreased, signals shift towards brown and white noise, respectively. The results hold qualitatively at the hemodynamic scale, which we modeled by introducing a neurovascular component. Comparing hemodynamic simulation results to fMRI PSSI results from 96 individuals across a wide spectrum of anxiety-levels, we show how our model can generate concrete and testable hypotheses for understanding how connectivity affects regulation of meso-circuits in the brain.
复杂性度量在疾病检测中很敏感,这使其成为诊断生物标志物的有吸引力的候选者;一种在功能磁共振成像(fMRI)中显示出前景的复杂性度量是功率谱尺度不变性(PSSI)。然而,即使神经成像的无标度特征在诊断上被证明是有用的,其潜在的神经生物学基础仍知之甚少。通过对一个具有兴奋性和抑制性节点网络的前额叶-边缘中脑回路示意图进行建模和模拟,我们在此提出一个关于控制系统内网络密度如何影响信号输出复杂性的框架。我们的模型表明,在一个像线性随机微分方程系统这样简单的情境中,对于足够大的网络可以获得类似于在fMRI PSSI数据中观察到的无标度行为,尽管当在系统中引入更现实的非线性行为时,无标度范围会有所改善。PSSI值(反映复杂性)随输入类型(兴奋性、抑制性)和输入密度(远程连接的平均数量或强度)而变化,与它们节点特定的几何分布无关。当兴奋性和抑制性影响平衡时,信号呈现粉红噪声(1/f)行为。随着兴奋性输入的增加和减少,信号分别向白噪声和棕噪声转变。随着抑制性输入的增加和减少,信号分别向棕噪声和白噪声转变。这些结果在血液动力学尺度上定性成立,我们通过引入神经血管成分对其进行了建模。将血液动力学模拟结果与96名不同焦虑水平个体的fMRI PSSI结果进行比较,我们展示了我们的模型如何能够生成具体且可检验的假设,以理解连通性如何影响大脑中脑回路的调节。