Abstract
Network neuroscience is a thriving and rapidly expanding field. Empirical data on brain networks, from molecular to behavioral scales, are ever increasing in size
and complexity. These developments lead to a strong
demand for appropriate tools and methods that model
and analyze brain network data, such as those provided
by graph theory. This brief review surveys some of the
most commonly used and neurobiologically insightful
graph measures and techniques. Among these, the detection of network communities or modules, and the
identification of central network elements that facilitate communication and signal transfer, are particularly salient. A number of emerging trends are the growing use of generative models, dynamic (time-varying)
and multilayer networks, as well as the application of
algebraic topology. Overall, graph theory methods are
centrally important to understanding the architecture,
development, and evolution of brain networks.
Subject
Biological Psychiatry,Psychiatry and Mental health
Cited by
353 articles.
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