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Zero-shot protein stability prediction by inverse folding models: a free energy interpretation

5 June 2025
J. Frellsen
Maher M. Kassem
Tone Bengtsen
Lars Olsen
Kresten Lindorff-Larsen
Jesper Ferkinghoff-Borg
Wouter Boomsma
ArXiv (abs)PDFHTMLGithub (1700★)
6 Figures
3 Tables
Appendix:20 Pages
Abstract

Inverse folding models have proven to be highly effective zero-shot predictors of protein stability. Despite this success, the link between the amino acid preferences of an inverse folding model and the free-energy considerations underlying thermodynamic stability remains incompletely understood. A better understanding would be of interest not only from a theoretical perspective, but also potentially provide the basis for stronger zero-shot stability prediction. In this paper, we take steps to clarify the free-energy foundations of inverse folding models. Our derivation reveals the standard practice of likelihood ratios as a simplistic approximation and suggests several paths towards better estimates of the relative stability. We empirically assess these approaches and demonstrate that considerable gains in zero-shot performance can be achieved with fairly simple means.

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