Infinite Switch Simulated Tempering in Force (FISST)
Michael J. Hartmann, Yuvraj Singh, Eric Vanden-Eijnden, Glen, M. Hocky

TL;DR
The paper introduces FISST, an efficient enhanced sampling method that allows simultaneous simulation of molecular systems under a range of forces, improving sampling efficiency for force-dependent biological processes.
Contribution
It derives and implements a novel Infinite Switch Simulated Tempering in Force method that enables retroactive averaging over a force range in molecular simulations.
Findings
Accurately samples molecular systems at all forces within a range.
Demonstrates improved sampling efficiency over traditional methods.
Implemented in the PLUMED library for broad accessibility.
Abstract
Many proteins in cells are capable of sensing and responding to piconewton scale forces, a regime in which conformational changes are small but significant for biological processes. In order to efficiently and effectively sample the response of these proteins to small forces, enhanced sampling techniques will be required. In this work, we derive, implement, and evaluate an efficient method to simultaneously sample the result of applying any constant pulling force within a specified range to a molecular system of interest. We start from Simulated Tempering in Force, whereby force is applied as a linear bias on a collective variable to the system's Hamiltonian, and the coefficient is taken as a continuous auxiliary degree of freedom. We derive a formula for an average collective-variable-dependent force, which depends on a set of weights, learned on-the-fly throughout a simulation, that…
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