4.7 Review

Statistical models of complex brain networks: a maximum entropy approach

Journal

REPORTS ON PROGRESS IN PHYSICS
Volume 86, Issue 10, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1361-6633/ace6bc

Keywords

statistical modeling; complex systems; exponential random graph model; brain networks; inference; maximum entropy principle

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The brain is a highly complex system with intermingled connections that give rise to rich dynamics and high-level cognitive functions. Analyzing brain networks is challenging because their structure represents only one possible realization of a generative stochastic process. Maximum entropy models, such as exponential random graph models, provide an approach to identify the local connection mechanisms behind observed global network structure.
The brain is a highly complex system. Most of such complexity stems from the intermingled connections between its parts, which give rise to rich dynamics and to the emergence of high-level cognitive functions. Disentangling the underlying network structure is crucial to understand the brain functioning under both healthy and pathological conditions. Yet, analyzing brain networks is challenging, in part because their structure represents only one possible realization of a generative stochastic process which is in general unknown. Having a formal way to cope with such intrinsic variability is therefore central for the characterization of brain network properties. Addressing this issue entails the development of appropriate tools mostly adapted from network science and statistics. Here, we focus on a particular class of maximum entropy models for networks, i.e. exponential random graph models, as a parsimonious approach to identify the local connection mechanisms behind observed global network structure. Efforts are reviewed on the quest for basic organizational properties of human brain networks, as well as on the identification of predictive biomarkers of neurological diseases such as stroke. We conclude with a discussion on how emerging results and tools from statistical graph modeling, associated with forthcoming improvements in experimental data acquisition, could lead to a finer probabilistic description of complex systems in network neuroscience.

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