Predicting absolute protein folding stability using generative models

Author:

Cagiada MatteoORCID,Ovchinnikov SergeyORCID,Lindorff-Larsen KrestenORCID

Abstract

AbstractWhile there has been substantial progress in our ability to predict changes in protein stability due to amino acid substitutions, progress has been slow in methods to predict the absolute stability of a protein. Here we show how a generative model for protein sequence can be leveraged to predict absolute protein stability. We benchmark our predictions across a broad set of proteins and find a mean error of 1.5 kcal/mol and a correlation coefficient of 0.7 for the absolute stability across a range of small–medium sized proteins up to ca. 150 amino acid residues. We analyse current limitations and future directions including how such model may be useful for predicting conformational free energies. Our approach is simple to use and freely available via an online implementation.

Publisher

Cold Spring Harbor Laboratory

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