2006
DOI: 10.1103/physrevlett.97.118102
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Does the1/fFrequency Scaling of Brain Signals Reflect Self-Organized Critical States?

Abstract: Many complex systems display self-organized critical states characterized by 1/f frequency scaling of power spectra. Global variables such as the electroencephalogram, scale as 1/f, which could be the sign of self-organized critical states in neuronal activity. By analyzing simultaneous recordings of global and neuronal activities, we confirm the 1/f scaling of global variables for selected frequency bands, but show that neuronal activity is not consistent with critical states. We propose a model of 1/f scalin… Show more

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Cited by 372 publications
(388 citation statements)
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“…This result is in agreement with observations from neuronal dynamics in cat association cortex ( Fig. 2C; Bedard et al, 2006). This provides evidence that the experimental observations of Poisson dynamics (exponential ISI distributions) and absence of avalanche dynamics, are all consistent with self-generated irregular states in cortical networks.…”
Section: Discussionsupporting
confidence: 92%
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“…This result is in agreement with observations from neuronal dynamics in cat association cortex ( Fig. 2C; Bedard et al, 2006). This provides evidence that the experimental observations of Poisson dynamics (exponential ISI distributions) and absence of avalanche dynamics, are all consistent with self-generated irregular states in cortical networks.…”
Section: Discussionsupporting
confidence: 92%
“…7, right). These data show that the apparent Poisson statistics and absence of avalanche dynamics observed in cat association cortex (Bedard et al, 2006) is also found in network models.…”
Section: Comparison Of Models To Experimental Datasupporting
confidence: 61%
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“…Consequently, for most combinations of parameters the number of firing neurons is an almost constant but noisy time series. This is in correspondence with the behaviour of the real brain: it is a commonplace in neuroscience that electroencephalograms (EEG) are noisy signals with a spectrum 1/f which has been associated with self-organized criticality [47] although, in the case of the brain, that explanation has been dismissed [48]. On the other hand, in some clinical cases, a regular synchronous oscillation appears.…”
Section: The Phase Diagrammentioning
confidence: 99%