Danielle S Bassett1, Edward T Bullmore. 1. Department of Psychiatry, Behavioral and Clinical Neurosciences Institute, Addenbrooke's Hospital, Cambridge, UK.
Abstract
PURPOSE OF REVIEW: Recent developments in the statistical physics of complex networks have been translated to neuroimaging data in an effort to enhance our understanding of human brain structural and functional networks. This review focuses on studies using graph theoretical measures applied to structural MRI, diffusion MRI, functional MRI, electroencephalography, and magnetoencephalography data. RECENT FINDINGS: Complex network properties have been identified with some consistency in all modalities of neuroimaging data and over a range of spatial and time scales. Conserved properties include small worldness, high efficiency of information transfer for low wiring cost, modularity, and the existence of network hubs. Structural and functional network metrics have been found to be heritable and to change with normal aging. Clinical studies, principally in Alzheimer's disease and schizophrenia, have identified abnormalities of network configuration in patients. Future work will likely involve efforts to synthesize structural and functional networks in integrated models and to explore the interdependence of network configuration and cognitive performance. SUMMARY: Graph theoretical analysis of neuroimaging data is growing rapidly and could potentially provide a relatively simple but powerful quantitative framework to describe and compare whole human brain structural and functional networks under diverse experimental and clinical conditions.
PURPOSE OF REVIEW: Recent developments in the statistical physics of complex networks have been translated to neuroimaging data in an effort to enhance our understanding of human brain structural and functional networks. This review focuses on studies using graph theoretical measures applied to structural MRI, diffusion MRI, functional MRI, electroencephalography, and magnetoencephalography data. RECENT FINDINGS: Complex network properties have been identified with some consistency in all modalities of neuroimaging data and over a range of spatial and time scales. Conserved properties include small worldness, high efficiency of information transfer for low wiring cost, modularity, and the existence of network hubs. Structural and functional network metrics have been found to be heritable and to change with normal aging. Clinical studies, principally in Alzheimer's disease and schizophrenia, have identified abnormalities of network configuration in patients. Future work will likely involve efforts to synthesize structural and functional networks in integrated models and to explore the interdependence of network configuration and cognitive performance. SUMMARY: Graph theoretical analysis of neuroimaging data is growing rapidly and could potentially provide a relatively simple but powerful quantitative framework to describe and compare whole human brain structural and functional networks under diverse experimental and clinical conditions.
Authors: Mikail Rubinov; Stuart A Knock; Cornelis J Stam; Sifis Micheloyannis; Anthony W F Harris; Leanne M Williams; Michael Breakspear Journal: Hum Brain Mapp Date: 2009-02 Impact factor: 5.038
Authors: Randy L Buckner; Jorge Sepulcre; Tanveer Talukdar; Fenna M Krienen; Hesheng Liu; Trey Hedden; Jessica R Andrews-Hanna; Reisa A Sperling; Keith A Johnson Journal: J Neurosci Date: 2009-02-11 Impact factor: 6.167
Authors: C J Honey; O Sporns; L Cammoun; X Gigandet; J P Thiran; R Meuli; P Hagmann Journal: Proc Natl Acad Sci U S A Date: 2009-02-02 Impact factor: 11.205
Authors: Luca Ferrarini; Ilya M Veer; Evelinda Baerends; Marie-José van Tol; Remco J Renken; Nic J A van der Wee; Dirk J Veltman; André Aleman; Frans G Zitman; Brenda W J H Penninx; Mark A van Buchem; Johan H C Reiber; Serge A R B Rombouts; Julien Milles Journal: Hum Brain Mapp Date: 2009-07 Impact factor: 5.038
Authors: Gaolang Gong; Yong He; Luis Concha; Catherine Lebel; Donald W Gross; Alan C Evans; Christian Beaulieu Journal: Cereb Cortex Date: 2008-06-20 Impact factor: 5.357
Authors: Michael Vourkas; Sifis Micheloyannis; Panagiotis G Simos; Roozbeh Rezaie; Jack M Fletcher; Paul T Cirino; Andrew C Papanicolaou Journal: Neurosci Lett Date: 2010-11-10 Impact factor: 3.046
Authors: Marinka M G Koenis; Rachel M Brouwer; Martijn P van den Heuvel; René C W Mandl; Inge L C van Soelen; René S Kahn; Dorret I Boomsma; Hilleke E Hulshoff Pol Journal: Hum Brain Mapp Date: 2015-09-14 Impact factor: 5.038
Authors: H Isaac Chen; Dennis Jgamadze; James Lim; Kobina Mensah-Brown; John A Wolf; Jason A Mills; Douglas H Smith Journal: Tissue Eng Part A Date: 2019-03-29 Impact factor: 3.845