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research article

Evaluating automated parameter constraining procedures of neuron models by experimental and surrogate data

Druckmann, Shaul
•
Berger, Thomas K
•
Hill, Sean  
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2008
Biological cybernetics

Neuron models, in particular conductance-based compartmental models, often have numerous parameters that cannot be directly determined experimentally and must be constrained by an optimization procedure. A common practice in evaluating the utility of such procedures is using a previously developed model to generate surrogate data (e.g., traces of spikes following step current pulses) and then challenging the algorithm to recover the original parameters (e.g., the value of maximal ion channel conductances) that were used to generate the data. In this fashion, the success or failure of the model fitting procedure to find the original parameters can be easily determined. Here we show that some model fitting procedures that provide an excellent fit in the case of such model-to-model comparisons provide ill-balanced results when applied to experimental data. The main reason is that surrogate and experimental data test different aspects of the algorithm's function. When considering model-generated surrogate data, the algorithm is required to locate a perfect solution that is known to exist. In contrast, when considering experimental target data, there is no guarantee that a perfect solution is part of the search space. In this case, the optimization procedure must rank all imperfect approximations and ultimately select the best approximation. This aspect is not tested at all when considering surrogate data since at least one perfect solution is known to exist (the original parameters) making all approximations unnecessary. Furthermore, we demonstrate that distance functions based on extracting a set of features from the target data (such as time-to-first-spike, spike width, spike frequency, etc.)--rather than using the original data (e.g., the whole spike trace) as the target for fitting-are capable of finding imperfect solutions that are good approximations of the experimental data.

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Type
research article
DOI
10.1007/s00422-008-0269-2
Web of Science ID

WOS:000260938100011

PubMed ID

19011925

Author(s)
Druckmann, Shaul
Berger, Thomas K
Hill, Sean  
Schürmann, Felix  
Markram, Henry  
Segev, Idan
Date Issued

2008

Published in
Biological cybernetics
Volume

99

Issue

4-5

Start page

371

End page

9

Subjects

Models

•

Neurological

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LNMC  
GR-FSCH  
BBP-GR-HILL  
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Available on Infoscience
January 28, 2013
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/88282
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