Molecular computation in neurons: a modeling perspective

Bhalla, Upinder S (2014) Molecular computation in neurons: a modeling perspective Current Opinion in Neurobiology, 25 . pp. 31-37. ISSN 0959-4388

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Official URL: http://doi.org/10.1016/j.conb.2013.11.006

Related URL: http://dx.doi.org/10.1016/j.conb.2013.11.006

Abstract

Neurons perform far more computations than the conventional framework of summation and propagation of electrical signals from dendrite to soma to axon. There is an enormous and largely hidden layer of molecular computation, and many aspects of neuronal plasticity have been modeled in chemical terms. Memorable events impinge on a neuron as special input patterns, and the neuron has to decide if it should ‘remember’ this event. This pattern-decoding decision is mediated by kinase cascades and signaling networks over millisecond to hour-long timescales. The process of cellular memory itself is rooted in molecular changes that give rise to life-long, stable physiological changes. Modeling studies show how cascades of synaptic molecular switches can achieve this, despite stochasticity and molecular turnover. Such biochemically detailed models form a valuable conceptual framework to assimilate the complexities of chemical signaling in neuronal computation.

Item Type:Article
Source:Copyright of this article belongs to Elsevier Science.
ID Code:133449
Deposited On:28 Dec 2022 10:58
Last Modified:28 Dec 2022 10:58

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