English

Partial mean-field model for neurotransmission dynamics

Biological Physics 2023-07-06 v1 Probability

Abstract

This article addresses reaction networks in which spatial and stochastic effects are of crucial importance. For such systems, particle-based models allow us to describe all microscopic details with high accuracy. However, they suffer from computational inefficiency if particle numbers and density get too large. Alternative coarse-grained-resolution models reduce computational effort tremendously, e.g., by replacing the particle distribution by a continuous concentration field governed by reaction-diffusion PDEs. We demonstrate how models on the different resolution levels can be combined into hybrid models that seamlessly combine the best of both worlds, describing molecular species with large copy numbers by macroscopic equations with spatial resolution while keeping the stochastic-spatial particle-based resolution level for the species with low copy numbers. To this end, we introduce a simple particle-based model for the binding dynamics of ions and vesicles at the heart of the neurotransmission process. Within this framework, we derive a novel hybrid model and present results from numerical experiments which demonstrate that the hybrid model allows for an accurate approximation of the full particle-based model in realistic scenarios.

Keywords

Cite

@article{arxiv.2307.01737,
  title  = {Partial mean-field model for neurotransmission dynamics},
  author = {Alberto Montefusco and Luzie Helfmann and Toluwani Okunola and Stefanie Winkelmann and Christof Schütte},
  journal= {arXiv preprint arXiv:2307.01737},
  year   = {2023}
}

Comments

16 pages + 2 pages appendix, 5 figures. Submitted to Mathematical Biosciences

R2 v1 2026-06-28T11:21:54.377Z