Critical brain hypothesis

In neuroscience, the critical brain hypothesis states that certain biological neuronal networks work near phase transitions.[1][2][3][4] Experimental recordings from large groups of neurons have shown bursts of activity, so-called neuronal avalanches, with sizes that follow a power law distribution. These results, and subsequent replication on a number of settings, led to the hypothesis that the collective dynamics of large neuronal networks in the brain operates close to the critical point of a phase transition.[5] According to this hypothesis, the activity of the brain would be continuously transitioning between two phases, one in which activity will rapidly reduce and die, and another where activity will build up and amplify over time.[5] In criticality, the brain capacity for information processing is enhanced,[5][6][7][8] so subcritical, critical and slightly supercritical branching process of thoughts could describe how human and animal minds function.[1]

History

Discussion on the brain's criticality have been done since 1950, with the paper on the imitation game for a Turing test.[9] In 1995, Herz and Hopfield noted that self-organized criticality (SOC) models for earthquakes were mathematically equivalent to networks of integrate-and-fire neurons, and speculated that perhaps SOC would occur in the brain.[10] Simultaneously Stassinopoulos and Bak proposed a simple neural network model working at criticality[11] which was expanded latter by Chialvo and Bak.[12] In 2003, the hypothesis found experimental support by Beggs and Plenz.[13] The critical brain hypothesis is not a consensus among the scientific community.[5]

gollark: ++magic py bot.get_channel(412764872816852994).fetch_message(785111865402720256).content
gollark: ++magic py bot.get_guild(346530916832903169).fetch_message(785111865402720256).content
gollark: LyricLy, you are NOT AT ALL based, your pH is 2.
gollark: > but I can use as many words as I want from said vocabularyOh, then sure, no information limits there.
gollark: > I can express any concept in merely 5 wordsThis is not true unless words are arbitrarily long. Pigeonhole principle you utterly.

References

  1. Ludmila Brochini, Ariadne de Andrade Costa, Miguel Abadi, Antônio C. Roque, Jorge Stolfi, Osame Kinouchi. Phase transitions and self-organized criticality in networks of stochastic spiking neurons. Available at arXiv:1606.06391
  2. Chialvo, D. R. (2010). "Emergent complex neural dynamics". Nature Physics. 6: 744–750. arXiv:1010.2530. Bibcode:2010NatPh...6..744C. doi:10.1038/nphys1803.
  3. Hesse, J. & Gross, T. Self-organized criticality as a fundamental property of neural systems. Criticality as a signature of healthy neural systems: multi-scale experimental and computational studies (2015)
  4. Chialvo, D. R.; Bak, P. (1999-06-01). "Learning from mistakes". Neuroscience. 90 (4): 1137–1148. arXiv:adap-org/9707006. doi:10.1016/S0306-4522(98)00472-2. PMID 10338284.
  5. Beggs, John M., Timme, Nicholas. Being critical of criticality in the brain. Frontiers in Physiology, 07, June 2012
  6. Kinouchi, O.; Copelli, M. (2006). "Optimal dynamical range of excitable networks at criticality". Nature Physics. 2: 348–351. arXiv:q-bio/0601037. doi:10.1038/nphys289.
  7. Beggs, J. M. The criticality hypothesis: how local cortical networks might optimize information processing. Philosophical Transactions of the Royal Society of London A: Mathematical, Physical and Engineering Sciences 366, 329–343 (2008).
  8. Shew, W. L.; Yang, H.; Petermann, T.; Roy, R.; Plenz, D. (2009). "Neuronal avalanches imply maximum dynamic range in cortical networks at criticality". The Journal of Neuroscience. 29: 15595–15600. doi:10.1523/jneurosci.3864-09.2009.
  9. Turing, A. M. (1950). "Computing machinery and intelligence". Mind. 59: 433–460. doi:10.1093/mind/lix.236.433.
  10. Herz, A. V.; Hopfield, J. J. (1995). "Earthquake cycles and neural reverberations: collective oscillations in systems with pulse-coupled threshold elements". Physical Review Letters. 75: 1222. doi:10.1103/physrevlett.75.1222.
  11. Stassinopoulos, Dimitris; Bak, Per (1995-05-01). "Democratic reinforcement: A principle for brain function". Physical Review E. 51 (5): 5033–5039. Bibcode:1995PhRvE..51.5033S. doi:10.1103/PhysRevE.51.5033.
  12. Chialvo, D.R.; Bak, P. (1999). "Learning from mistakes". Neuroscience. 90 (4): 1137–1148. arXiv:adap-org/9707006. doi:10.1016/s0306-4522(98)00472-2. PMID 10338284.
  13. Beggs, J. M.; Plenz, D. (2003). "Neuronal avalanches in neocortical circuits". The Journal of Neuroscience. 23: 11167–11177. doi:10.1523/jneurosci.23-35-11167.2003. PMC 6741045. PMID 14657176.
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