Computing and stability in cortical networks
- PMID: 15165395
- DOI: 10.1162/089976604323057434
Computing and stability in cortical networks
Abstract
Cortical neurons are predominantly excitatory and highly interconnected. In spite of this, the cortex is remarkably stable: normal brains do not exhibit the kind of runaway excitation one might expect of such a system. How does the cortex maintain stability in the face of this massive excitatory feedback? More importantly, how does it do so during computations, which necessarily involve elevated firing rates? Here we address these questions in the context of attractor networks-networks that exhibit multiple stable states, or memories. We find that such networks can be stabilized at the relatively low firing rates observed in vivo if two conditions are met: (1) the background state, where all neurons are firing at low rates, is inhibition dominated, and (2) the fraction of neurons involved in a memory is above some threshold, so that there is sufficient coupling between the memory neurons and the background. This allows "dynamical stabilization" of the attractors, meaning feedback from the pool of background neurons stabilizes what would otherwise be an unstable state. We suggest that dynamical stabilization may be a strategy used for a broad range of computations, not just those involving attractors.
Similar articles
-
Mean-driven and fluctuation-driven persistent activity in recurrent networks.Neural Comput. 2007 Jan;19(1):1-46. doi: 10.1162/neco.2007.19.1.1. Neural Comput. 2007. PMID: 17134316
-
Cortical network modeling: analytical methods for firing rates and some properties of networks of LIF neurons.J Physiol Paris. 2006 Jul-Sep;100(1-3):88-99. doi: 10.1016/j.jphysparis.2006.09.001. Epub 2006 Oct 24. J Physiol Paris. 2006. PMID: 17064883
-
The high-conductance state of cortical networks.Neural Comput. 2008 Jan;20(1):1-43. doi: 10.1162/neco.2008.20.1.1. Neural Comput. 2008. PMID: 18044999
-
Implications of synaptic biophysics for recurrent network dynamics and active memory.Neural Netw. 2009 Oct;22(8):1189-200. doi: 10.1016/j.neunet.2009.07.016. Epub 2009 Jul 21. Neural Netw. 2009. PMID: 19647396 Review.
-
Beyond bistability: biophysics and temporal dynamics of working memory.Neuroscience. 2006 Apr 28;139(1):119-33. doi: 10.1016/j.neuroscience.2005.06.094. Epub 2005 Dec 2. Neuroscience. 2006. PMID: 16326020 Review.
Cited by
-
Associative memory model with long-tail-distributed Hebbian synaptic connections.Front Comput Neurosci. 2013 Feb 7;6:102. doi: 10.3389/fncom.2012.00102. eCollection 2012. Front Comput Neurosci. 2013. PMID: 23403536 Free PMC article.
-
Optimal hierarchical modular topologies for producing limited sustained activation of neural networks.Front Neuroinform. 2010 May 14;4:8. doi: 10.3389/fninf.2010.00008. eCollection 2010. Front Neuroinform. 2010. PMID: 20514144 Free PMC article.
-
Ketamine-Induced Changes in the Signal and Noise of Rule Representation in Working Memory by Lateral Prefrontal Neurons.J Neurosci. 2015 Aug 19;35(33):11612-22. doi: 10.1523/JNEUROSCI.1839-15.2015. J Neurosci. 2015. PMID: 26290238 Free PMC article.
-
Progress and challenges for understanding the function of cortical microcircuits in auditory processing.Nat Commun. 2017 Dec 18;8(1):2165. doi: 10.1038/s41467-017-01755-2. Nat Commun. 2017. PMID: 29255268 Free PMC article. Review.
-
Network instability dynamics drive a transient bursting period in the developing hippocampus in vivo.Elife. 2022 Dec 19;11:e82756. doi: 10.7554/eLife.82756. Elife. 2022. PMID: 36534089 Free PMC article.
Publication types
MeSH terms
Grants and funding
LinkOut - more resources
Full Text Sources
Miscellaneous

