Chen Ruiqi, Singh Matthew, Braver Todd S, Ching ShiNung
Division of Biology and Biomedical Sciences, Washington University in St. Louis, St. Louis, MO 63108.
Department of Electrical and Systems Engineering, Washington University in St. Louis, St. Louis, MO 63108.
bioRxiv. 2024 Jan 16:2024.01.15.575745. doi: 10.1101/2024.01.15.575745.
Analyses of functional connectivity (FC) in resting-state brain networks (RSNs) have generated many insights into cognition. However, the mechanistic underpinnings of FC and RSNs are still not well-understood. It remains debated whether resting state activity is best characterized as noise-driven fluctuations around a single stable state, or instead, as a nonlinear dynamical system with nontrivial attractors embedded in the RSNs. Here, we provide evidence for the latter, by constructing whole-brain dynamical systems models from individual resting-state fMRI (rfMRI) recordings, using the Mesoscale Individualized NeuroDynamic (MINDy) platform. The MINDy models consist of hundreds of neural masses representing brain parcels, connected by fully trainable, individualized weights. We found that our models manifested a diverse taxonomy of nontrivial attractor landscapes including multiple equilibria and limit cycles. However, when projected into anatomical space, these attractors mapped onto a limited set of canonical RSNs, including the default mode network (DMN) and frontoparietal control network (FPN), which were reliable at the individual level. Further, by creating convex combinations of models, bifurcations were induced that recapitulated the full spectrum of dynamics found via fitting. These findings suggest that the resting brain traverses a diverse set of dynamics, which generates several distinct but anatomically overlapping attractor landscapes. Treating rfMRI as a unimodal stationary process (i.e., conventional FC) may miss critical attractor properties and structure within the resting brain. Instead, these may be better captured through neural dynamical modeling and analytic approaches. The results provide new insights into the generative mechanisms and intrinsic spatiotemporal organization of brain networks.
对静息态脑网络(RSNs)中功能连接性(FC)的分析已经产生了许多关于认知的见解。然而,FC和RSNs的机制基础仍未得到很好的理解。静息态活动究竟最好被描述为围绕单一稳定状态的噪声驱动波动,还是相反,被描述为一个在RSNs中嵌入非平凡吸引子的非线性动力系统,这一点仍存在争议。在这里,我们通过使用中尺度个体化神经动力学(MINDy)平台,从个体静息态功能磁共振成像(rfMRI)记录构建全脑动力系统模型,为后者提供了证据。MINDy模型由数百个代表脑区的神经团组成,通过完全可训练的个体化权重连接。我们发现我们的模型表现出多种非平凡吸引子景观的分类,包括多个平衡点和极限环。然而,当投影到解剖空间时,这些吸引子映射到一组有限的典型RSNs上,包括默认模式网络(DMN)和额顶叶控制网络(FPN),它们在个体水平上是可靠的。此外,通过创建模型的凸组合,诱导出了分岔,这些分岔概括了通过拟合发现的完整动力学谱。这些发现表明,静息大脑遍历了多种动力学集合,这产生了几个不同但在解剖学上重叠的吸引子景观。将rfMRI视为单峰平稳过程(即传统的FC)可能会忽略静息大脑中的关键吸引子特性和结构。相反,通过神经动力学建模和分析方法可能能更好地捕捉这些特性和结构。这些结果为脑网络的生成机制和内在时空组织提供了新的见解。