Fractal geometry predicts dynamic differences in structural and functional connectomes.

IF 3.2 2区 数学 Q1 MATHEMATICS, APPLIED
Chaos Pub Date : 2025-09-01 DOI:10.1063/5.0283805
Anca Rădulescu, Eva Kaslik, Alexandru Fikl, Johan Nakuci, Sarah Muldoon, Michael Anderson
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Abstract

Understanding the intricate architecture of brain networks and its connection to brain function is essential for deciphering the underlying principles of cognition and disease. While traditional graph-theoretical measures have been widely used to characterize these networks, they often fail to fully capture the emergent properties of large-scale neural dynamics. Here, we introduce an alternative approach to quantify brain networks that is rooted in complex dynamics, fractal geometry, and asymptotic analysis. We apply these concepts to brain connectomes and demonstrate how quadratic iterations and geometric properties of Mandelbrot-like sets can provide novel insights into structural and functional network dynamics. Our findings reveal fundamental distinctions between structural (positive) and functional (signed) connectomes, such as the shift of cusp orientation and the variability in equi-M set geometry. Notably, structural connectomes exhibit more robust, predictable features, while functional connectomes show increased variability for non-trivial tasks. We further demonstrate that traditional graph-theoretical measures, when applied separately to the positive and negative sub-networks of functional connectomes, fail to fully capture their dynamic complexity. Instead, size and shape-based invariants of the equi-M set effectively differentiate between rest and emotional task states, which highlights their potential as superior markers of emergent network dynamics. These results suggest that incorporating fractal-based methods into network neuroscience provides a powerful tool for understanding how information flows in natural systems beyond static connectivity measures, while maintaining simplicity.

分形几何预测结构和功能连接体的动态差异。
了解大脑网络的复杂结构及其与大脑功能的联系,对于破译认知和疾病的基本原理至关重要。虽然传统的图理论测量被广泛用于表征这些网络,但它们往往无法完全捕捉大规模神经动力学的涌现特性。在这里,我们介绍了一种基于复杂动力学、分形几何和渐近分析的替代方法来量化大脑网络。我们将这些概念应用于大脑连接体,并展示了二次迭代和mandelbrot样集的几何特性如何为结构和功能网络动力学提供新的见解。我们的研究结果揭示了结构(正)和功能(符号)连接体之间的根本区别,例如尖端方向的移动和等m集合几何的可变性。值得注意的是,结构连接体表现出更稳健、可预测的特征,而功能连接体在非琐碎任务中表现出更大的可变性。我们进一步证明,当分别应用于功能连接体的正子网络和负子网络时,传统的图理论度量不能完全捕获它们的动态复杂性。相反,相等- m集的基于大小和形状的不变量有效地区分了休息和情绪任务状态,这突出了它们作为紧急网络动态的优越标记的潜力。这些结果表明,将基于分形的方法结合到网络神经科学中,可以在保持简单性的同时,为理解自然系统中超越静态连接措施的信息流动提供强大的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Chaos
Chaos 物理-物理:数学物理
CiteScore
5.20
自引率
13.80%
发文量
448
审稿时长
2.3 months
期刊介绍: Chaos: An Interdisciplinary Journal of Nonlinear Science is a peer-reviewed journal devoted to increasing the understanding of nonlinear phenomena and describing the manifestations in a manner comprehensible to researchers from a broad spectrum of disciplines.
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