在多网络分辨率的生物物理现实和现象学全脑模型中出现的时空动力学的鲁棒性。

IF 3
Frontiers in network physiology Pub Date : 2025-08-08 eCollection Date: 2025-01-01 DOI:10.3389/fnetp.2025.1589566
Cristiana Dimulescu, Ronja Strömsdörfer, Agnes Flöel, Klaus Obermayer
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引用次数: 0

摘要

人脑是一个复杂的动力系统,它表现出广泛的宏观和中观神经活动模式,其机制起源仍然知之甚少。全脑建模使我们能够探索导致观察到的模式的候选机制。然而,模型类型的选择和网络的空间分辨率如何影响模拟结果还没有完全确定,因此,从这些结果中得出的结论在多大程度上受到建模人工制品的限制仍然不清楚。在这里,我们比较了生物物理上真实的全脑活动线性-非线性级联模型与现象学Wilson-Cowan模型的动态,该模型使用基于Schaefer分割方案的三个结构连接体,具有100、200和500个节点。两种神经质量模型都实现了相同的机制假设,具体解决了兴奋、抑制和影响兴奋性群体的缓慢适应电流之间的相互作用。我们详细量化了新出现的动态状态,并研究了不同模型变体之间的一致结果。然后,我们将这两种模型类型应用于慢振荡的特定现象,这是深度睡眠期间普遍存在的大脑节律。我们在探索短期和远程连接以及前后结构连接梯度对这些振荡关键特性的影响的具体机制假设时,研究了模型预测的一致性。总体而言,我们的结果表明,粗粒度动态对模型类型和网络分辨率的变化都具有鲁棒性。然而,在某些情况下,模型预测不能一般化。因此,在解释模型结果时必须小心。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the robustness of the emergent spatiotemporal dynamics in biophysically realistic and phenomenological whole-brain models at multiple network resolutions.

The human brain is a complex dynamical system which displays a wide range of macroscopic and mesoscopic patterns of neural activity, whose mechanistic origin remains poorly understood. Whole-brain modelling allows us to explore candidate mechanisms causing the observed patterns. However, it is not fully established how the choice of model type and the networks' spatial resolution influence the simulation results, hence, it remains unclear, to which extent conclusions drawn from these results are limited by modelling artefacts. Here, we compare the dynamics of a biophysically realistic, linear-nonlinear cascade model of whole-brain activity with a phenomenological Wilson-Cowan model using three structural connectomes based on the Schaefer parcellation scheme with 100, 200, and 500 nodes. Both neural mass models implement the same mechanistic hypotheses, which specifically address the interaction between excitation, inhibition, and a slow adaptation current which affects the excitatory populations. We quantify the emerging dynamical states in detail and investigate how consistent results are across the different model variants. Then we apply both model types to the specific phenomenon of slow oscillations, which are a prevalent brain rhythm during deep sleep. We investigate the consistency of model predictions when exploring specific mechanistic hypotheses about the effects of both short- and long-range connections and of the antero-posterior structural connectivity gradient on key properties of these oscillations. Overall, our results demonstrate that the coarse-grained dynamics is robust to changes in both model type and network resolution. In some cases, however, model predictions do not generalize. Thus, some care must be taken when interpreting model results.

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