A biophysical and statistical modeling paradigm for connecting neural physiology and function

Author:

Glasgow Nathan G.,Chen Yu,Korngreen Alon,Kass Robert E.ORCID,Urban Nathan N.

Abstract

AbstractTo understand single neuron computation, it is necessary to know how specific physiological parameters affect neural spiking patterns that emerge in response to specific stimuli. Here we present a computational pipeline combining biophysical and statistical models that provides a link between variation in functional ion channel expression and changes in single neuron stimulus encoding. More specifically, we create a mapping from biophysical model parameters to stimulus encoding statistical model parameters. Biophysical models provide mechanistic insight, whereas statistical models can identify associations between spiking patterns and the stimuli they encode. We used public biophysical models of two morphologically and functionally distinct projection neuron cell types: mitral cells (MCs) of the main olfactory bulb, and layer V cortical pyramidal cells (PCs). We first simulated sequences of action potentials according to certain stimuli while scaling individual ion channel conductances. We then fitted point process generalized linear models (PP-GLMs), and we constructed a mapping between the parameters in the two types of models. This framework lets us detect effects on stimulus encoding of changing an ion channel conductance. The computational pipeline combines models across scales and can be applied as a screen of channels, in any cell type of interest, to identify ways that channel properties influence single neuron computation.

Funder

United States-Israel Binational Science Foundation

National Science Foundation Collaborative Research in Computational Neuroscience

National Institute of Mental Health

National Institutes of Health

National Institute on Drug Abuse

Carnegie Mellon University

Publisher

Springer Science and Business Media LLC

Subject

Cellular and Molecular Neuroscience,Cognitive Neuroscience,Sensory Systems

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