【2h】

Metastable Resting State Brain Dynamics

机译:亚稳态静息状态脑动力学

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摘要

Metastability refers to the fact that the state of a dynamical system spends a large amount of time in a restricted region of its available phase space before a transition takes place, bringing the system into another state from where it might recur into the previous one. beim Graben and Hutt () suggested to use the recurrence plot (RP) technique introduced by Eckmann et al. () for the segmentation of system's trajectories into metastable states using recurrence grammars. Here, we apply this recurrence structure analysis (RSA) for the first time to resting-state brain dynamics obtained from functional magnetic resonance imaging (fMRI). Brain regions are defined according to the brain hierarchical atlas (BHA) developed by Diez et al. (), and as a consequence, regions present high-connectivity in both structure (obtained from diffusion tensor imaging) and function (from the blood-level dependent-oxygenation—BOLD—signal). Remarkably, regions observed by Diez et al. were completely time-invariant. Here, in order to compare this static picture with the metastable systems dynamics obtained from the RSA segmentation, we determine the number of metastable states as a measure of complexity for all subjects and for region numbers varying from 3 to 100. We find RSA convergence toward an optimal segmentation of 40 metastable states for normalized BOLD signals, averaged over BHA modules. Next, we build a bistable dynamics at population level by pooling 30 subjects after Hausdorff clustering. In link with this finding, we reflect on the different modeling frameworks that can allow for such scenarios: heteroclinic dynamics, dynamics with riddled basins of attraction, multiple-timescale dynamics. Finally, we characterize the metastable states both functionally and structurally, using templates for resting state networks (RSNs) and the automated anatomical labeling (AAL) atlas, respectively.
机译:亚稳态是指这样一个事实,即动力学系统的状态在发生过渡之前会在其可用相空间的受限区域中花费大量时间,从而使系统进入另一种状态,从中可以重现到先前的状态。 beim Graben和Hutt()建议使用Eckmann等人介绍的递归图(RP)技术。 ()使用递归语法将系统轨迹分割为亚稳态。在这里,我们首次将这种递归结构分析(RSA)应用于从功能磁共振成像(fMRI)获得的静止状态大脑动力学。根据Diez等人开发的脑分层图谱(BHA)定义大脑区域。 (),因此,区域在结构(从扩散张量成像获得)和功能(从与血液水平有关的加氧-BOLD-信号)中均表现出高连通性。值得注意的是,Diez等人观察到的区域。完全是时不变的。在这里,为了将此静态图片与从RSA分割获得的亚稳系统动力学进行比较,我们确定了亚稳状态的数量,作为对所有对象以及从3到100的区域数进行复杂性度量的指标。我们发现RSA趋向于在BHA模块上平均的归一化BOLD信号的40种亚稳态最佳分割。接下来,我们通过在Hausdorff聚类之后合并30个对象来建立人口水平的双稳态动态。结合这一发现,我们反思了可以考虑这种情况的不同建模框架:异斜动力学,具有迷惑盆地的动力学,多时标动力学。最后,我们分别使用静止状态网络(RSNs)和自动解剖标记(AAL)图集的模板在功能和结构上表征亚稳态。

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