Network models in neuroscience
Danielle S. Bassett, Perry Zurn, Joshua I. Gold

TL;DR
This paper reviews the development and application of network science models in neuroscience, highlighting their role in understanding neural system architecture, dynamics, and functions across various scales.
Contribution
It provides a comprehensive overview of network models in neuroscience, including theoretical foundations, types, validation methods, and future research frontiers.
Findings
Network models relate neural architecture to function.
Models span from data-driven to first-principles approaches.
Validation often involves perturbation experiments.
Abstract
From interacting cellular components to networks of neurons and neural systems, interconnected units comprise a fundamental organizing principle of the nervous system. Understanding how their patterns of connections and interactions give rise to the many functions of the nervous system is a primary goal of neuroscience. Recently, this pursuit has begun to benefit from the development of new mathematical tools that can relate a system's architecture to its dynamics and function. These tools, which are known collectively as network science, have been used with increasing success to build models of neural systems across spatial scales and species. Here we discuss the nature of network models in neuroscience. We begin with a review of model theory from a philosophical perspective to inform our view of networks as models of complex systems in general, and of the brain in particular. We then…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Neural dynamics and brain function · Mental Health Research Topics
