Adaptive reconfiguration of fractal small-world human brain functional networks
- Danielle S. Bassett*,†,‡,
- Andreas Meyer-Lindenberg†,§,
- Sophie Achard*,
- Thomas Duke‡, and
- Edward Bullmore*,§
- *Brain Mapping Unit, Department of Psychiatry, University of Cambridge, Addenbrooke's Hospital, Cambridge CB2 2QQ, United Kingdom;
- †Unit for Systems Neuroscience in Psychiatry, Genes, Cognition, and Psychosis Program, National Institute of Mental Health, National Institutes of Health, Bethesda, MD 20892; and
- ‡Biological and Soft Systems, Department of Physics, Cavendish Laboratory, University of Cambridge, Cambridge CB3 0HE, United Kingdom
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Edited by Marcus E. Raichle, Washington University School of Medicine, St. Louis, MO, and approved October 23, 2006 (received for review July 20, 2006)
Abstract
Brain function depends on adaptive self-organization of large-scale neural assemblies, but little is known about quantitative network parameters governing these processes in humans. Here, we describe the topology and synchronizability of frequency-specific brain functional networks using wavelet decomposition of magnetoencephalographic time series, followed by construction and analysis of undirected graphs. Magnetoencephalographic data were acquired from 22 subjects, half of whom performed a finger-tapping task, whereas the other half were studied at rest. We found that brain functional networks were characterized by small-world properties at all six wavelet scales considered, corresponding approximately to classical δ (low and high), θ, α, β, and γ frequency bands. Global topological parameters (path length, clustering) were conserved across scales, most consistently in the frequency range 2–37 Hz, implying a scale-invariant or fractal small-world organization. Dynamical analysis showed that networks were located close to the threshold of order/disorder transition in all frequency bands. The highest-frequency γ network had greater synchronizability, greater clustering of connections, and shorter path length than networks in the scaling regime of (lower) frequencies. Behavioral state did not strongly influence global topology or synchronizability; however, motor task performance was associated with emergence of long-range connections in both β and γ networks. Long-range connectivity, e.g., between frontal and parietal cortex, at high frequencies during a motor task may facilitate sensorimotor binding. Human brain functional networks demonstrate a fractal small-world architecture that supports critical dynamics and task-related spatial reconfiguration while preserving global topological parameters.
Footnotes
- §To whom correspondence may be addressed. E-mail: andreasm{at}mail.nih.gov or etb23{at}cam.ac.uk
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Author contributions: D.S.B., A.M.-L., S.A., and E.B. designed research; D.S.B. performed research; A.M.-L., S.A., T.D., and E.B. contributed new reagents/analytic tools; D.S.B. analyzed data; and D.S.B., A.M.-L., and E.B. wrote the paper.
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The authors declare no conflict of interest.
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This article is a PNAS direct submission.
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See Commentary on page 19219.
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This article contains supporting information online at www.pnas.org/cgi/content/full/0606005103/DC1
- Abbreviation:
- MEG,
- magnetoencephalographic.
- © 2006 by The National Academy of Sciences of the USA





