4.7 Article

Neuronal Avalanches Imply Maximum Dynamic Range in Cortical Networks at Criticality

Journal

JOURNAL OF NEUROSCIENCE
Volume 29, Issue 49, Pages 15595-15600

Publisher

SOC NEUROSCIENCE
DOI: 10.1523/JNEUROSCI.3864-09.2009

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Funding

  1. Department of Defense Multidisciplinary University Research Initiative [ONR N000140710734]
  2. Swiss National Science Foundation [PBEL2-110211]

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Spontaneous neuronal activity is a ubiquitous feature of cortex. Its spatiotemporal organization reflects past input and modulates future network output. Here we study whether a particular type of spontaneous activity is generated by a network that is optimized for input processing. Neuronal avalanches are a type of spontaneous activity observed in superficial cortical layers in vitro and in vivo with statistical properties expected from a network operating at criticality. Theory predicts that criticality and, therefore, neuronal avalanches are optimal for input processing, but until now, this has not been tested in experiments. Here, we use cortex slice cultures grown on planar microelectrode arrays to demonstrate that cortical networks that generate neuronal avalanches benefit from a maximized dynamic range, i.e., the ability to respond to the greatest range of stimuli. By changing the ratio of excitation and inhibition in the cultures, we derive a network tuning curve for stimulus processing as a function of distance from criticality in agreement with predictions from our simulations. Our findings suggest that in the cortex, (1) balanced excitation and inhibition establishes criticality, which maximizes the range of inputs that can be processed, and (2) spontaneous activity and input processing are unified in the context of critical phenomena.

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