Tri-Institutional Center for Translational Research in Neuroimaging and Data Science (TReNDS), Georgia State University, Georgia Institute of Technology, and Emory University, Atlanta, Georgia 30303, USA.
Barts and The London School of Medicine and Dentistry, Queen Mary University of London, Turner Street, London E1 2AD, United Kingdom.
Chaos. 2024 Oct 1;34(10). doi: 10.1063/5.0203926.
Much of the complexity and diversity found in nature is driven by nonlinear phenomena, and this holds true for the brain. Nonlinear dynamics theory has been successfully utilized in explaining brain functions from a biophysics standpoint, and the field of statistical physics continues to make substantial progress in understanding brain connectivity and function. This study delves into complex brain functional connectivity using biophysical nonlinear dynamics approaches. We aim to uncover hidden information in high-dimensional and nonlinear neural signals, with the hope of providing a useful tool for analyzing information transitions in functionally complex networks. By utilizing phase portraits and fuzzy recurrence plots, we investigated the latent information in the functional connectivity of complex brain networks. Our numerical experiments, which include synthetic linear dynamics neural time series and a biophysically realistic neural mass model, showed that phase portraits and fuzzy recurrence plots are highly sensitive to changes in neural dynamics and can also be used to predict functional connectivity based on structural connectivity. Furthermore, the results showed that phase trajectories of neuronal activity encode low-dimensional dynamics, and the geometric properties of the limit-cycle attractor formed by the phase portraits can be used to explain the neurodynamics. Additionally, our results showed that the phase portrait and fuzzy recurrence plots can be used as functional connectivity descriptors, and both metrics were able to capture and explain nonlinear dynamics behavior during specific cognitive tasks. In conclusion, our findings suggest that phase portraits and fuzzy recurrence plots could be highly effective as functional connectivity descriptors, providing valuable insights into nonlinear dynamics in the brain.
自然界中的许多复杂性和多样性是由非线性现象驱动的,大脑也是如此。非线性动力学理论已成功地用于从生物物理学的角度解释大脑功能,统计物理学领域在理解大脑连接和功能方面也在不断取得实质性进展。本研究采用生物物理非线性动力学方法研究复杂的大脑功能连接。我们旨在揭示高维非线性神经信号中的隐藏信息,希望为分析功能复杂网络中的信息转换提供有用的工具。通过利用相图和模糊递归图,我们研究了复杂大脑网络功能连接中的潜在信息。我们的数值实验包括合成线性动力学神经时间序列和生物物理上逼真的神经质量模型,结果表明相图和模糊递归图对神经动力学的变化非常敏感,并且可以用于基于结构连接预测功能连接。此外,结果表明神经元活动的相轨迹编码低维动力学,并且相图形成的极限环吸引子的几何性质可用于解释神经动力学。此外,我们的结果表明,相图和模糊递归图可用作功能连接描述符,这两种度量都能够捕获和解释特定认知任务期间的非线性动力学行为。总之,我们的研究结果表明,相图和模糊递归图可用作功能连接描述符,为大脑中的非线性动力学提供了有价值的见解。