Saturating Receiver and Receptor Competition in Synaptic DMC: Deterministic and Statistical Signal Models
Sebastian Lotter, Maximilian Sch\"afer, Johannes Zeitler, Robert, Schober

TL;DR
This paper develops deterministic and statistical models for synaptic molecular communication, accounting for receptor saturation and competition effects, which are crucial for accurate system behavior prediction and synthetic MC design.
Contribution
It introduces a novel eigenfunction-based deterministic model and a hypergeometric statistical model for receptor saturation and competition in synaptic MC.
Findings
Receptor saturation reduces peak received signal and speeds NT clearance.
The statistical model captures how competition influences signal variance.
Models are validated with particle-based simulations.
Abstract
Synaptic communication is based on a biological Molecular Communication (MC) system which may serve as a blueprint for the design of synthetic MC systems. However, the physical modeling of synaptic MC is complicated by the possible saturation of the molecular receiver caused by the competition of neurotransmitters (NTs) for postsynaptic receptors. Receiver saturation renders the system behavior nonlinear in the number of released NTs and is commonly neglected in existing analytical models. Furthermore, due to the ligands' competition for receptors (and vice versa), the individual binding events at the molecular receiver are in general statistically dependent and the binomial model for the statistics of the received signal does not apply. In this work, we propose a novel deterministic model for receptor saturation in terms of a state-space description based on an eigenfunction expansion…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
