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AI-Predicted Protein Deformation Encodes Energy Landscape Perturbation

Author(s)
McBride, John M.Tlusty, Tsvi
Issued Date
2024-08
DOI
10.1103/PhysRevLett.133.098401
URI
https://scholarworks.unist.ac.kr/handle/201301/83796
Citation
PHYSICAL REVIEW LETTERS, v.133, no.9, pp.098401
Abstract
AI algorithms have proven to be excellent predictors of protein structure, but whether and how much these algorithms can capture the underlying physics remains an open question. Here, we aim to test this question using the Alphafold2 (AF) algorithm: We use AF to predict the subtle structural deformation induced by single mutations, quantified by strain, and compare with experimental datasets of corresponding perturbations in folding free energy OOG. G . Unexpectedly, we find that physical strain alone-without any additional data or computation-correlates almost as well with OOG G as state-of-the-art energy-based and machine-learning predictors. This indicates that the AF-predicted structures alone encode fine details about the energy landscape. In particular, the structures encode significant information on stability, enough to estimate (de-)stabilizing effects of mutations, thus paving the way for the development of novel, structure-based stability predictors for protein design and evolution.
Publisher
AMER PHYSICAL SOC
ISSN
0031-9007
Keyword
STABILITYENERGETICSHYDROPHOBIC INTERIOR

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