Structure and function in artificial, zebrafish and human neural networks

Network science provides a set of tools for the characterization of the structure and functional behavior of complex systems. Yet a major problem is to quantify how the structural domain is related to the dynamical one. In other words, how the diversity of dynamical states of a system can be predict...

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Veröffentlicht in:Physics of life reviews 2023-07, Vol.45, p.74-111
Hauptverfasser: Ji, Peng, Wang, Yufan, Peron, Thomas, Li, Chunhe, Nagler, Jan, Du, Jiulin
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container_title Physics of life reviews
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creator Ji, Peng
Wang, Yufan
Peron, Thomas
Li, Chunhe
Nagler, Jan
Du, Jiulin
description Network science provides a set of tools for the characterization of the structure and functional behavior of complex systems. Yet a major problem is to quantify how the structural domain is related to the dynamical one. In other words, how the diversity of dynamical states of a system can be predicted from the static network structure? Or the reverse problem: starting from a set of signals derived from experimental recordings, how can one discover the network connections or the causal relations behind the observed dynamics? Despite the advances achieved over the last two decades, many challenges remain concerning the study of the structure-dynamics interplay of complex systems. In neuroscience, progress is typically constrained by the low spatio-temporal resolution of experiments and by the lack of a universal inferring framework for empirical systems. To address these issues, applications of network science and artificial intelligence to neural data have been rapidly growing. In this article, we review important recent applications of methods from those fields to the study of the interplay between structure and functional dynamics of human and zebrafish brain. We cover the selection of topological features for the characterization of brain networks, inference of functional connections, dynamical modeling, and close with applications to both the human and zebrafish brain. This review is intended to neuroscientists who want to become acquainted with techniques from network science, as well as to researchers from the latter field who are interested in exploring novel application scenarios in neuroscience.
doi_str_mv 10.1016/j.plrev.2023.04.004
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subjects Animals
Artificial Intelligence
Brain
Brain Mapping - methods
Brain networks
Humans
Network reconstruction
Network science
Neural Networks, Computer
Zebrafish
Zebrafish brain
title Structure and function in artificial, zebrafish and human neural networks
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