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      Long-Range Temporal Correlations and Scaling Behavior in Human Brain Oscillations

      The Journal of Neuroscience
      Society for Neuroscience
      scaling behavior, self-organized criticality, correlations, complexity, large-scale dynamics, spontaneous oscillations, temporal properties

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          Abstract

          The human brain spontaneously generates neural oscillations with a large variability in frequency, amplitude, duration, and recurrence. Little, however, is known about the long-term spatiotemporal structure of the complex patterns of ongoing activity. A central unresolved issue is whether fluctuations in oscillatory activity reflect a memory of the dynamics of the system for more than a few seconds.

          We investigated the temporal correlations of network oscillations in the normal human brain at time scales ranging from a few seconds to several minutes. Ongoing activity during eyes-open and eyes-closed conditions was recorded with simultaneous magnetoencephalography and electroencephalography. Here we show that amplitude fluctuations of 10 and 20 Hz oscillations are correlated over thousands of oscillation cycles. Our analyses also indicated that these amplitude fluctuations obey power-law scaling behavior. The scaling exponents were highly invariant across subjects. We propose that the large variability, the long-range correlations, and the power-law scaling behavior of spontaneous oscillations find a unifying explanation within the theory of self-organized criticality, which offers a general mechanism for the emergence of correlations and complex dynamics in stochastic multiunit systems. The demonstrated scaling laws pose novel quantitative constraints on computational models of network oscillations. We argue that critical-state dynamics of spontaneous oscillations may lend neural networks capable of quick reorganization during processing demands.

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          Author and article information

          Journal
          J Neurosci
          J. Neurosci
          jneuro
          jneurosci
          J. Neurosci
          The Journal of Neuroscience
          Society for Neuroscience
          0270-6474
          1529-2401
          15 February 2001
          : 21
          : 4
          : 1370-1377
          Affiliations
          [ 1 ]BioMag Laboratory, Medical Engineering Centre, Helsinki University Central Hospital, Helsinki, Fin-00029 Finland, and
          [ 2 ]Division of Animal Physiology, Department of Biosciences, University of Helsinki, Fin-00014 Finland
          Article
          PMC6762238 PMC6762238 6762238 4969
          10.1523/JNEUROSCI.21-04-01370.2001
          6762238
          11160408
          fc694b1f-24c9-4e5b-9559-b26f88d0349c
          Copyright © 2001 Society for Neuroscience
          History
          : 2 October 2000
          : 22 November 2000
          : 27 November 2000
          Categories
          ARTICLE
          Behavioral/Systems
          Custom metadata
          5.00

          scaling behavior,self-organized criticality,correlations,complexity,large-scale dynamics,spontaneous oscillations,temporal properties

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