Literature DB >> 21243419

The use of automated parameter searches to improve ion channel kinetics for neural modeling.

Eric B Hendrickson1, Jeremy R Edgerton, Dieter Jaeger.   

Abstract

The voltage and time dependence of ion channels can be regulated, notably by phosphorylation, interaction with phospholipids, and binding to auxiliary subunits. Many parameter variation studies have set conductance densities free while leaving kinetic channel properties fixed as the experimental constraints on the latter are usually better than on the former. Because individual cells can tightly regulate their ion channel properties, we suggest that kinetic parameters may be profitably set free during model optimization in order to both improve matches to data and refine kinetic parameters. To this end, we analyzed the parameter optimization of reduced models of three electrophysiologically characterized and morphologically reconstructed globus pallidus neurons. We performed two automated searches with different types of free parameters. First, conductance density parameters were set free. Even the best resulting models exhibited unavoidable problems which were due to limitations in our channel kinetics. We next set channel kinetics free for the optimized density matches and obtained significantly improved model performance. Some kinetic parameters consistently shifted to similar new values in multiple runs across three models, suggesting the possibility for tailored improvements to channel models. These results suggest that optimized channel kinetics can improve model matches to experimental voltage traces, particularly for channels characterized under different experimental conditions than recorded data to be matched by a model. The resulting shifts in channel kinetics from the original template provide valuable guidance for future experimental efforts to determine the detailed kinetics of channel isoforms and possible modulated states in particular types of neurons.

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Year:  2011        PMID: 21243419     DOI: 10.1007/s10827-010-0312-x

Source DB:  PubMed          Journal:  J Comput Neurosci        ISSN: 0929-5313            Impact factor:   1.621


  36 in total

1.  Direct measurement of specific membrane capacitance in neurons.

Authors:  L J Gentet; G J Stuart; J D Clements
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2.  Graded regulation of the Kv2.1 potassium channel by variable phosphorylation.

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Review 4.  Automated neuron model optimization techniques: a review.

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Journal:  J Neurosci       Date:  1998-05-15       Impact factor: 6.167

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Review 8.  Protein kinase C: structure, function, and regulation.

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

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  13 in total

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4.  A self-organizing state-space-model approach for parameter estimation in hodgkin-huxley-type models of single neurons.

Authors:  Dimitrios V Vavoulis; Volko A Straub; John A D Aston; Jianfeng Feng
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5.  Using Strahler's analysis to reduce up to 200-fold the run time of realistic neuron models.

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6.  Automatic Construction of Predictive Neuron Models through Large Scale Assimilation of Electrophysiological Data.

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7.  Fast and accurate low-dimensional reduction of biophysically detailed neuron models.

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8.  Rapid genetic algorithm optimization of a mouse computational model: benefits for anthropomorphization of neonatal mouse cardiomyocytes.

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9.  An efficient automated parameter tuning framework for spiking neural networks.

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Journal:  Front Neurosci       Date:  2014-02-04       Impact factor: 4.677

10.  A flexible, interactive software tool for fitting the parameters of neuronal models.

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