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  • compartmental model  (2)
  • chronic implant  (1)
  • 1
    ISSN: 1573-6873
    Schlagwort(e): olfaction ; olfactory bulb ; mitral/tufted cell ; stereo electrode ; multiday recording ; chronic implant ; awake behaving ; distributed representation
    Quelle: Springer Online Journal Archives 1860-2000
    Thema: Informatik , Medizin , Physik
    Notizen: Abstract Chronic single-unit recordings were obtained from the mitral celllayer of the olfactory bulbs of awake freely moving rats placed in anodorant stream. Over periods up to five days, 618 recordings from 186single neurons were obtained. Responses of individual neurons werefound to be quite variable over time, although this variability wasbelow chance and was not incremental. The responses of nearbyneurons were more similar than expected by chance but less similarthan individual neurons recorded at different times. However,responses of spatially well-separated neurons were more differentthan chance over short time periods. During rapid sniffing,single-unit responses became more variable, and the spatialorganization of responses became less apparent. These results suggestthat neuronal responses in the olfactory bulb are generally quitevariable over time, with this variability increasing during periodsof rapid sniffing. These results are interpreted in the context of adistributed, centrally modulated model of olfactoryprocessing.
    Materialart: Digitale Medien
    Bibliothek Standort Signatur Band/Heft/Jahr Verfügbarkeit
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  • 2
    Digitale Medien
    Digitale Medien
    Springer
    Journal of computational neuroscience 7 (1999), S. 149-171 
    ISSN: 1573-6873
    Schlagwort(e): parameter search ; compartmental model ; genetic algorithm ; simulated annealing
    Quelle: Springer Online Journal Archives 1860-2000
    Thema: Informatik , Medizin , Physik
    Notizen: Abstract One of the most difficult and time-consuming aspects of building compartmental models of single neurons is assigning values to free parameters to make models match experimental data. Automated parameter-search methods potentially represent a more rapid and less labor-intensive alternative to choosing parameters manually. Here we compare the performance of four different parameter-search methods on several single-neuron models. The methods compared are conjugate-gradient descent, genetic algorithms, simulated annealing, and stochastic search. Each method has been tested on five different neuronal models ranging from simple models with between 3 and 15 parameters to a realistic pyramidal cell model with 23 parameters. The results demonstrate that genetic algorithms and simulated annealing are generally the most effective methods. Simulated annealing was overwhelmingly the most effective method for simple models with small numbers of parameters, but the genetic algorithm method was equally effective for more complex models with larger numbers of parameters. The discussion considers possible explanations for these results and makes several specific recommendations for the use of parameter searches on neuronal models.
    Materialart: Digitale Medien
    Bibliothek Standort Signatur Band/Heft/Jahr Verfügbarkeit
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  • 3
    Digitale Medien
    Digitale Medien
    Springer
    Journal of computational neuroscience 5 (1998), S. 285-314 
    ISSN: 1573-6873
    Schlagwort(e): Bayesian ; compartmental model ; model comparison
    Quelle: Springer Online Journal Archives 1860-2000
    Thema: Informatik , Medizin , Physik
    Notizen: Abstract Computational modeling is being used increasingly in neuroscience. In deriving such models, inference issues such as model selection, model complexity, and model comparison must be addressed constantly. In this article we present briefly the Bayesian approach to inference. Under a simple set of commonsense axioms, there exists essentially a unique way of reasoning under uncertainty by assigning a degree of confidence to any hypothesis or model, given the available data and prior information. Such degrees of confidence must obey all the rules governing probabilities and can be updated accordingly as more data becomes available. While the Bayesian methodology can be applied to any type of model, as an example we outline its use for an important, and increasingly standard, class of models in computational neuroscience—compartmental models of single neurons. Inference issues are particularly relevant for these models: their parameter spaces are typically very large, neurophysiological and neuroanatomical data are still sparse, and probabilistic aspects are often ignored. As a tutorial, we demonstrate the Bayesian approach on a class of one-compartment models with varying numbers of conductances. We then apply Bayesian methods on a compartmental model of a real neuron to determine the optimal amount of noise to add to the model to give it a level of spike time variability comparable to that found in the real cell.
    Materialart: Digitale Medien
    Bibliothek Standort Signatur Band/Heft/Jahr Verfügbarkeit
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