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Controlling morpho-electrophysiological variability of neurons with detailed biophysical models

Alexis Arnaudon, Maria Reva, Mickaël Zbili, Henry Markram, Werner Van Geit, Lida Kanari

2023iScience15 citationsDOIOpen Access PDF

Abstract

Variability, which is known to be a universal feature among biological units such as neuronal cells, holds significant importance, as, for example, it enables a robust encoding of a high volume of information in neuronal circuits and prevents hypersynchronizations. While most computational studies on electrophysiological variability in neuronal circuits were done with single-compartment neuron models, we instead focus on the variability of detailed biophysical models of neuron multi-compartmental morphologies. We leverage a Markov chain Monte Carlo method to generate populations of electrical models reproducing the variability of experimental recordings while being compatible with a set of morphologies to faithfully represent specifi morpho-electrical type. We demonstrate our approach on layer 5 pyramidal cells and study the morpho-electrical variability and in particular, find that morphological variability alone is insufficient to reproduce electrical variability. Overall, this approach provides a strong statistical basis to create detailed models of neurons with controlled variability.

Topics & Concepts

Computer scienceLeverage (statistics)ElectrophysiologyBiological systemNeuroscienceMorphoArtificial intelligenceBiologyNanotechnologyMaterials scienceNeural dynamics and brain functionCell Image Analysis TechniquesNeuroscience and Neural Engineering
Controlling morpho-electrophysiological variability of neurons with detailed biophysical models | Litcius