Predicting protein stability changes upon single-point mutations is crucial in computational biology, with applications in drug design, enzyme engineering, and understanding disease mechanisms. While deep-learning approaches have emerged, many remain inaccessible for routine use. In contrast, potential-like methods, including deep-learning-based ones, are faster, user-friendly, and effective in estimating stability changes. However, most of them approximate Gibbs free-energy differences without accounting for the free-energy changes of the unfolded state, violating mass balance and potentially reducing accuracy. Here, we show that incorporating mass balance as a first approximation of the unfolded state significantly improves potential-like methods. While many machine-learning models implicitly or explicitly use mass balance, our findings suggest that a more accurate unfolded-state representation could further enhance stability change predictions.

Mass balance approximation of unfolding boosts potential-based protein stability predictions

Rossi, Ivan;Barducci, Guido;Sanavia, Tiziana
;
Fariselli, Piero
2025-01-01

Abstract

Predicting protein stability changes upon single-point mutations is crucial in computational biology, with applications in drug design, enzyme engineering, and understanding disease mechanisms. While deep-learning approaches have emerged, many remain inaccessible for routine use. In contrast, potential-like methods, including deep-learning-based ones, are faster, user-friendly, and effective in estimating stability changes. However, most of them approximate Gibbs free-energy differences without accounting for the free-energy changes of the unfolded state, violating mass balance and potentially reducing accuracy. Here, we show that incorporating mass balance as a first approximation of the unfolded state significantly improves potential-like methods. While many machine-learning models implicitly or explicitly use mass balance, our findings suggest that a more accurate unfolded-state representation could further enhance stability change predictions.
2025
34
5
1
8
https://onlinelibrary.wiley.com/doi/10.1002/pro.70134
Gibbs free energy; deep learning models; mass‐balance correction; potential‐like methods; protein stability prediction; single‐point mutations
Rossi, Ivan; Barducci, Guido; Sanavia, Tiziana; Turina, Paola; Capriotti, Emidio; Fariselli, Piero
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2318/2075194
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