A novel multiple objective optimization framework for constraining conductance-based neuron models by experimental data

We present a novel framework for automatically constraining parameters of compartmental models of neurons, given a large set of experimentally measured responses of these neurons. In experiments, intrinsic noise gives rise to a large variability (e.g., in firing pattern) in the voltage responses to...

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Main Authors: Shaul Druckmann, Yoav Banitt, Albert A Gidon, Felix Schürmann, Henry Markram, Idan Segev
Format: Article
Language:English
Published: Frontiers Media S.A. 2007-10-01
Series:Frontiers in Neuroscience
Subjects:
Online Access:http://journal.frontiersin.org/Journal/10.3389/neuro.01.1.1.001.2007/full
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spelling doaj-f65915a81c6e438a848fad941e5318242020-11-24T23:07:23ZengFrontiers Media S.A.Frontiers in Neuroscience1662-453X2007-10-01110.3389/neuro.01.1.1.001.200756A novel multiple objective optimization framework for constraining conductance-based neuron models by experimental dataShaul Druckmann0Yoav Banitt1Albert A Gidon2Felix Schürmann3Henry Markram4Idan Segev5Interdisciplinary Center for Neural Computation and Institute of Life Sciences, Hebrew University of JerusalemInstitute of Life Sciences, Hebrew University of JerusalemInstitute of Life Sciences, Hebrew University of JerusalemBrain Mind Institute, Ecole Polytechnique Fédérale de Lausanne (EPFL)Brain Mind Institute, Ecole Polytechnique Fédérale de Lausanne (EPFL)Interdisciplinary Center for Neural Computation and Institute of Life Sciences, Hebrew University of JerusalemWe present a novel framework for automatically constraining parameters of compartmental models of neurons, given a large set of experimentally measured responses of these neurons. In experiments, intrinsic noise gives rise to a large variability (e.g., in firing pattern) in the voltage responses to repetitions of the exact same input. Thus, the common approach of fitting models by attempting to perfectly replicate, point by point, a single chosen trace out of the spectrum of variable responses does not seem to do justice to the data. In addition, finding a single error function that faithfully characterizes the distance between two spiking traces is not a trivial pursuit. To address these issues, one can adopt a multiple objective optimization approach that allows the use of several error functions jointly.When more than one error function is available, the comparison between experimental voltage traces and model response can be performed on the basis of individual features of interest (e.g., spike rate, spike width). Each feature can be compared between model and experimental mean, in units of its experimental variability, thereby incorporating into the fitting this variability. We demonstrate the success of this approach, when used in conjunction with genetic algorithm optimization, in generating an excellent fit between model behavior and the firing pattern of two distinct electrical classes of cortical interneurons, accommodating and fast-spiking. We argue that the multiple, diverse models generated by this method could serve as the building blocks for the realistic simulation of large neuronal networks.http://journal.frontiersin.org/Journal/10.3389/neuro.01.1.1.001.2007/fullmulti-objective optimizationnoisy neuronscompartmental modelcortical interneuronsfiring pattern
collection DOAJ
language English
format Article
sources DOAJ
author Shaul Druckmann
Yoav Banitt
Albert A Gidon
Felix Schürmann
Henry Markram
Idan Segev
spellingShingle Shaul Druckmann
Yoav Banitt
Albert A Gidon
Felix Schürmann
Henry Markram
Idan Segev
A novel multiple objective optimization framework for constraining conductance-based neuron models by experimental data
Frontiers in Neuroscience
multi-objective optimization
noisy neurons
compartmental model
cortical interneurons
firing pattern
author_facet Shaul Druckmann
Yoav Banitt
Albert A Gidon
Felix Schürmann
Henry Markram
Idan Segev
author_sort Shaul Druckmann
title A novel multiple objective optimization framework for constraining conductance-based neuron models by experimental data
title_short A novel multiple objective optimization framework for constraining conductance-based neuron models by experimental data
title_full A novel multiple objective optimization framework for constraining conductance-based neuron models by experimental data
title_fullStr A novel multiple objective optimization framework for constraining conductance-based neuron models by experimental data
title_full_unstemmed A novel multiple objective optimization framework for constraining conductance-based neuron models by experimental data
title_sort novel multiple objective optimization framework for constraining conductance-based neuron models by experimental data
publisher Frontiers Media S.A.
series Frontiers in Neuroscience
issn 1662-453X
publishDate 2007-10-01
description We present a novel framework for automatically constraining parameters of compartmental models of neurons, given a large set of experimentally measured responses of these neurons. In experiments, intrinsic noise gives rise to a large variability (e.g., in firing pattern) in the voltage responses to repetitions of the exact same input. Thus, the common approach of fitting models by attempting to perfectly replicate, point by point, a single chosen trace out of the spectrum of variable responses does not seem to do justice to the data. In addition, finding a single error function that faithfully characterizes the distance between two spiking traces is not a trivial pursuit. To address these issues, one can adopt a multiple objective optimization approach that allows the use of several error functions jointly.When more than one error function is available, the comparison between experimental voltage traces and model response can be performed on the basis of individual features of interest (e.g., spike rate, spike width). Each feature can be compared between model and experimental mean, in units of its experimental variability, thereby incorporating into the fitting this variability. We demonstrate the success of this approach, when used in conjunction with genetic algorithm optimization, in generating an excellent fit between model behavior and the firing pattern of two distinct electrical classes of cortical interneurons, accommodating and fast-spiking. We argue that the multiple, diverse models generated by this method could serve as the building blocks for the realistic simulation of large neuronal networks.
topic multi-objective optimization
noisy neurons
compartmental model
cortical interneurons
firing pattern
url http://journal.frontiersin.org/Journal/10.3389/neuro.01.1.1.001.2007/full
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