Electrostatic determinants of voltage sensitivity in ion channels: Simulations of sliding-helix mechanisms
Alexander Peyser, Wolfgang Nonner

TL;DR
This study uses electrostatic simulations to analyze the sliding-helix model of voltage sensors in ion channels, revealing how electrostatic factors influence voltage sensitivity and charge displacement.
Contribution
It provides a detailed electrostatic analysis of the sliding-helix voltage sensor model, exploring how various physical parameters affect its stability and function.
Findings
Sliding helix voltage sensor has inherent electrostatic stability.
Maximal charge displacement is limited by geometry and dielectric properties.
Energy landscape variations significantly impact charge redistribution and voltage sensitivity.
Abstract
Electrical signaling via voltage-gated ion channels depends upon the function of the voltage sensor (VS), identified with the S1-S4 domain of voltage-gated K channels. Here we investigate some physical aspects of the sliding-helix model of the VS using simulations based on VS charges, linear dielectrics and whole-body motion. Model electrostatics in voltage-clamped boundary conditions are solved using a boundary element method. The statistical mechanical consequences of the electrostatic configurational energy are computed to gain insight into the sliding-helix mechanism and to predict experimentally measured ensemble properties such as gating charge displaced by an applied voltage. Those consequences and ensemble properties are investigated for variations of: S4 configuration ({\alpha}- and 3(10)-helical), intrinsic counter-charges, protein polarizability, geometry of the gating canal,…
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Taxonomy
TopicsIon channel regulation and function · Electrochemical Analysis and Applications · Neuroscience and Neural Engineering
