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  4. Synaptic Shot Noise and Conductance Fluctuations Affect the Membrane Voltage with Equal Significance
 
research article

Synaptic Shot Noise and Conductance Fluctuations Affect the Membrane Voltage with Equal Significance

Richardson, M. J. E.
•
Gerstner, W.  
2005
Neural Computation

The subthreshold membrane voltage of a neuron in active cortical tissue is a fluctuating quantity with a distribution that reflects the firing statistics of the presynaptic population. It was recently found that conductance-based synaptic drive can lead to distributions with a significant skew. Here it is demonstrated that the underlying shot noise caused by Poissonian spike arrival also skews the membrane distribution, but in the opposite sense. Using a perturbative method, the effects of shot noise on the distribution of synaptic conductances are analyzed and the consequent voltage distribution calculated. To first order in the perturbation theory, the voltage distribution is a Gaussian modulated by a prefactor that captures the skew. The Gaussian component is identical to distributions derived using current-based models with an effective membrane time constant: the well-known effective-time-constant approximation can therefore be identified as the leading-order solution to the full conductance-based model. The higher-order modulatory prefactor containing the skew comprises terms due to both shot noise and conductance fluctuations. The diffusion approximation misses these shot-noise effects implying that analytical approaches such as the Fokker-Planck equation or simulation with filtered white noise cannot be used to improve on the Gaussian approximation. It is further demonstrated that quantities used for fitting theory to experiment, such as the voltage mean and variance, are robust against these non-Gaussian effects. The effective-time-constant approximation is therefore relevant to experiment and provides a simple analytic base on which other pertinent biological details may be added.

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Type
research article
DOI
10.1162/0899766053429444
Web of Science ID

WOS:000228104200007

Author(s)
Richardson, M. J. E.
Gerstner, W.  
Date Issued

2005

Publisher

Massachusetts Institute of Technology Press

Published in
Neural Computation
Volume

17

Issue

4

Start page

923

End page

947

Note

article

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
LCN  
Available on Infoscience
December 12, 2006
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/237990
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