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      Fractional differentiation by neocortical pyramidal neurons

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          Abstract

          Neural systems adapt to changes in stimulus statistics. However, it is not known how stimuli with complex temporal dynamics drive the dynamics of adaptation and the resulting firing rate. For single neurons, it has often been assumed that adaptation has a single time scale. Here, we show that single rat neocortical pyramidal neurons adapt with a time scale that depends on the time scale of changes in stimulus statistics. This multiple time scale adaptation is consistent with fractional order differentiation, such that the neuron’s firing rate is a fractional derivative of slowly varying stimulus parameters. Biophysically, even though neuronal fractional differentiation effectively yields adaptation with many time scales, we find that its implementation requires only a few, properly balanced known adaptive mechanisms. Fractional differentiation provides single neurons with a fundamental and general computation that can contribute to efficient information processing, stimulus anticipation, and frequency independent phase shifts of oscillatory neuronal firing.

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          Most cited references50

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          Efficiency and ambiguity in an adaptive neural code.

          We examine the dynamics of a neural code in the context of stimuli whose statistical properties are themselves evolving dynamically. Adaptation to these statistics occurs over a wide range of timescales-from tens of milliseconds to minutes. Rapid components of adaptation serve to optimize the information that action potentials carry about rapid stimulus variations within the local statistical ensemble, while changes in the rate and statistics of action-potential firing encode information about the ensemble itself, thus resolving potential ambiguities. The speed with which information is optimized and ambiguities are resolved approaches the physical limit imposed by statistical sampling and noise.
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            Reliability of spike timing in neocortical neurons.

            It is not known whether the variability of neural activity in the cerebral cortex carries information or reflects noisy underlying mechanisms. In an examination of the reliability of spike generation using recordings from neurons in rat neocortical slices, the precision of spike timing was found to depend on stimulus transients. Constant stimuli led to imprecise spike trains, whereas stimuli with fluctuations resembling synaptic activity produced spike trains with timing reproducible to less than 1 millisecond. These data suggest a low intrinsic noise level in spike generation, which could allow cortical neurons to accurately transform synaptic input into spike sequences, supporting a possible role for spike timing in the processing of cortical information by the neocortex.
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              Cascade models of synaptically stored memories.

              Storing memories of ongoing, everyday experiences requires a high degree of plasticity, but retaining these memories demands protection against changes induced by further activity and experience. Models in which memories are stored through switch-like transitions in synaptic efficacy are good at storing but bad at retaining memories if these transitions are likely, and they are poor at storage but good at retention if they are unlikely. We construct and study a model in which each synapse has a cascade of states with different levels of plasticity, connected by metaplastic transitions. This cascade model combines high levels of memory storage with long retention times and significantly outperforms alternative models. As a result, we suggest that memory storage requires synapses with multiple states exhibiting dynamics over a wide range of timescales, and we suggest experimental tests of this hypothesis.
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                Author and article information

                Journal
                9809671
                21092
                Nat Neurosci
                Nature neuroscience
                1097-6256
                1546-1726
                30 September 2008
                19 October 2008
                November 2008
                1 May 2009
                : 11
                : 11
                : 1335-1342
                Affiliations
                [1 ] Department of Physiology and Biophysics, Box 357290, University of Washington, Seattle, WA 98195, USA
                [2 ] Veterans Affairs Puget Sound Health Care System, Department of Neurology, 1660 South Columbian Way, Seattle, WA 98108, USA
                Author notes
                Corresponding author: Adrienne Fairhall, Department of Physiology and Biophysics, Box 357290, University of Washington, Seattle, WA 98195, USA, fairhall@ 123456u.washington.edu , phone: 206-616-4148, fax: 206-685-0619
                Article
                nihpa70104
                10.1038/nn.2212
                2596753
                18931665
                a965410d-76fe-4943-a2cc-fe01d2166218
                History
                Funding
                Funded by: National Institute of Neurological Disorders and Stroke : NINDS
                Award ID: F30 NS055650-01A2 ||NS
                Categories
                Article

                Neurosciences
                Neurosciences

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