Modular and hierarchically modular organization of brain networks

Brain networks are increasingly understood as one of a large class of information processing systems that share important organizational principles in common, including the property of a modular community structure. A module is topologically defined as a subset of highly inter-connected nodes which...

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Main Authors: David eMeunier, Renaud eLambiotte, Edward T Bullmore
Format: Article
Language:English
Published: Frontiers Media S.A. 2010-12-01
Series:Frontiers in Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/fnins.2010.00200/full
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spelling doaj-d844d363ef394e7280d4ddf2be5e60242020-11-24T23:02:50ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2010-12-01410.3389/fnins.2010.002007572Modular and hierarchically modular organization of brain networksDavid eMeunier0Renaud eLambiotte1Edward T Bullmore2University of CambridgeImperial CollegeUniversity of CambridgeBrain networks are increasingly understood as one of a large class of information processing systems that share important organizational principles in common, including the property of a modular community structure. A module is topologically defined as a subset of highly inter-connected nodes which are relatively sparsely connected to nodes in other modules. In brain networks, topological modules are often made up of anatomically neighbouring and/or functionally related cortical regions, and inter-modular connections tend to be relatively long distance. Moreover, brain networks and many other complex systems demonstrate the property of hierarchical modularity, or modularity on several topological scales: within each module there will be a set of sub-modules, and within each sub-module a set of sub-sub-modules, etc. There are several general advantages to modular and hierarchically modular network organization, including greater robustness, adaptivity and evolvability of network function. In this context, we review some of the mathematical concepts available for quantitative analysis of (hierarchical) modularity in brain networks and we summarise some of the recent work investigating modularity of structural and functional brain networks derived from analysis of human neuroimaging data.http://journal.frontiersin.org/Journal/10.3389/fnins.2010.00200/fullfractalCortexgraphnear-decomposabilitypartition
collection DOAJ
language English
format Article
sources DOAJ
author David eMeunier
Renaud eLambiotte
Edward T Bullmore
spellingShingle David eMeunier
Renaud eLambiotte
Edward T Bullmore
Modular and hierarchically modular organization of brain networks
Frontiers in Neuroscience
fractal
Cortex
graph
near-decomposability
partition
author_facet David eMeunier
Renaud eLambiotte
Edward T Bullmore
author_sort David eMeunier
title Modular and hierarchically modular organization of brain networks
title_short Modular and hierarchically modular organization of brain networks
title_full Modular and hierarchically modular organization of brain networks
title_fullStr Modular and hierarchically modular organization of brain networks
title_full_unstemmed Modular and hierarchically modular organization of brain networks
title_sort modular and hierarchically modular organization of brain networks
publisher Frontiers Media S.A.
series Frontiers in Neuroscience
issn 1662-453X
publishDate 2010-12-01
description Brain networks are increasingly understood as one of a large class of information processing systems that share important organizational principles in common, including the property of a modular community structure. A module is topologically defined as a subset of highly inter-connected nodes which are relatively sparsely connected to nodes in other modules. In brain networks, topological modules are often made up of anatomically neighbouring and/or functionally related cortical regions, and inter-modular connections tend to be relatively long distance. Moreover, brain networks and many other complex systems demonstrate the property of hierarchical modularity, or modularity on several topological scales: within each module there will be a set of sub-modules, and within each sub-module a set of sub-sub-modules, etc. There are several general advantages to modular and hierarchically modular network organization, including greater robustness, adaptivity and evolvability of network function. In this context, we review some of the mathematical concepts available for quantitative analysis of (hierarchical) modularity in brain networks and we summarise some of the recent work investigating modularity of structural and functional brain networks derived from analysis of human neuroimaging data.
topic fractal
Cortex
graph
near-decomposability
partition
url http://journal.frontiersin.org/Journal/10.3389/fnins.2010.00200/full
work_keys_str_mv AT davidemeunier modularandhierarchicallymodularorganizationofbrainnetworks
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AT edwardtbullmore modularandhierarchicallymodularorganizationofbrainnetworks
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