Simple, Fast and Accurate Implementation of the Diffusion Approximation Algorithm for Stochastic Ion Channels with Multiple States
Patricio Orio, Daniel Soudry

TL;DR
This paper introduces a simple, fast, and accurate diffusion approximation algorithm for stochastic ion channels with multiple states, improving simulation efficiency while maintaining accuracy compared to Markov Chain models.
Contribution
The authors derived a generic SDE formulation for diffusion approximation applicable to any ion channel kinetic scheme, enabling efficient and accurate simulations.
Findings
The new DA method matches MC results in voltage and current clamp simulations.
The DA algorithm significantly outperforms MC in computational efficiency.
The derived SDE is simple, interpretable, and easily implementable.
Abstract
The phenomena that emerge from the interaction of the stochastic opening and closing of ion channels (channel noise) with the non-linear neural dynamics are essential to our understanding of the operation of the nervous system. The effects that channel noise can have on neural dynamics are generally studied using numerical simulations of stochastic models. Algorithms based on discrete Markov Chains (MC) seem to be the most reliable and trustworthy, but even optimized algorithms come with a non-negligible computational cost. Diffusion Approximation (DA) methods use Stochastic Differential Equations (SDE) to approximate the behavior of a number of MCs, considerably speeding up simulation times. However, model comparisons have suggested that DA methods did not lead to the same results as in MC modeling in terms of channel noise statistics and effects on excitability. Recently, it was shown…
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