9
Complex Brain Networks: A
Graph-Theoretical Analysis
Kayhan Erciyes
Maltepe University, İstanbul, Türkiye
Complex brain networks are large consisting of many functional nodes and
many more connections between them. A complex brain network may be
modeled by a graph enabling many results obtained in this field of mathe-
matics to be applied to the analysis of these networks. The nodes in a graph
representing a brain network denote regions of the brain and edges show the
structural or functional connections between these regions. In this review, we
first describe how to construct various brain networks from data obtained by
neuroimaging methods. We then review the analysis processes of graphs rep-
resenting brain networks and focus on three main areas of research in brain
networks: module detection to find clusters in brain networks, motif search
to detect frequent repeating subgraphs and network alignment to evaluate
similarities between two or more brain networks. We also provide a review of
brain network alterations in various neurological disorders.
9.1
Introduction
Analysis of the brain has been an active research area due to three main ad-
vancements in the last decades: advancement in neuroimaging technologies,
development of high-performance computers and development of software, al-
gorithms and methods to analyze data obtained from various neuroimaging
processes [1] which may be visualized as a graph with nodes and edges con-
necting the nodes.
Complex networks are large, consisting of thousands of nodes and tens of
thousands of edges between these nodes. These networks range from biological
networks to the Internet and to social networks. Analysis of these seemingly
DOI: 10.1201/9781003461906-9
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