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Geometric Scaling Law in Real Neuronal Networks

Xin-Ya Zhang, Jack Murdoch Moore, Xiaolei Ru, Gang Yan

2024Physical Review Letters18 citationsDOI

Abstract

We investigate the synapse-resolution connectomes of fruit flies across different developmental stages, revealing a consistent scaling law in neuronal connection probability relative to spatial distance. This power-law behavior significantly differs from the exponential distance rule previously observed in coarse-grained brain networks. We demonstrate that the geometric scaling law carries functional significance, aligning with the maximum entropy of information communication and the functional criticality balancing integration and segregation. Perturbing either the empirical probability model's parameters or its type results in the loss of these advantageous properties. Furthermore, we derive an explicit quantitative predictor for neuronal connectivity, incorporating only interneuronal distance and neurons' in and out degrees. Our findings establish a direct link between brain geometry and topology, shedding lights on the understanding of how the brain operates optimally within its confined space.

Topics & Concepts

Scaling lawScalingStatistical physicsPhysicsComputer scienceTheoretical physicsLawGeometryMathematicsPolitical scienceNeural dynamics and brain functionProtein Structure and Dynamicsstochastic dynamics and bifurcation
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