Literature DB >> 19403824

How multiple conductances determine electrophysiological properties in a multicompartment model.

Adam L Taylor1, Jean-Marc Goaillard, Eve Marder.   

Abstract

Most neurons have large numbers of voltage- and time-dependent currents that contribute to their electrical firing patterns. Because these currents are nonlinear, it can be difficult to determine the role each current plays in determining how a neuron fires. The lateral pyloric (LP) neuron of the stomatogastric ganglion of decapod crustaceans has been studied extensively biophysically. We constructed approximately 600,000 versions of a four-compartment model of the LP neuron and distributed 11 different currents into the compartments. From these, we selected approximately 1300 models that match well the electrophysiological properties of the biological neuron. Interestingly, correlations that were seen in the expression of channel mRNA in biological studies were not found across the approximately 1300 admissible LP neuron models, suggesting that the electrical phenotype does not require these correlations. We used cubic fits of the function from maximal conductances to a series of electrophysiological properties to ask which conductances predominantly influence input conductance, resting membrane potential, resting spike rate, phasing of activity in response to rhythmic inhibition, and several other properties. In all cases, multiple conductances contribute to the measured property, and the combinations of currents that strongly influence each property differ. These methods can be used to understand how multiple currents in any candidate neuron interact to determine the cell's electrophysiological behavior.

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Year:  2009        PMID: 19403824      PMCID: PMC2821064          DOI: 10.1523/JNEUROSCI.4438-08.2009

Source DB:  PubMed          Journal:  J Neurosci        ISSN: 0270-6474            Impact factor:   6.167


  56 in total

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Review 5.  Differential expression and targeting of K+ channel genes in the lobster pyloric central pattern generator.

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8.  Mechanisms underlying pattern generation in lobster stomatogastric ganglion as determined by selective inactivation of identified neurons. III. Synaptic connections of electrically coupled pyloric neurons.

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9.  Channel density distributions explain spiking variability in the globus pallidus: a combined physiology and computer simulation database approach.

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  112 in total

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5.  Computational approaches to neuronal network analysis.

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8.  Differential effects of conductances on the phase resetting curve of a bursting neuronal oscillator.

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Review 9.  Dendritic vulnerability in neurodegenerative disease: insights from analyses of cortical pyramidal neurons in transgenic mouse models.

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10.  Correlations in ion channel expression emerge from homeostatic tuning rules.

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