After nearly two decades of research in the field of computational methods based on machine learning and knowledge-based potentials for ΔG and ΔΔG prediction upon variations, we now realize that all the approaches are poorly performing when tested on specific cases and that there is large space for improvement. Why this is so? Is it wrong the underlying assumption that experimental protein thermodynamics in solution reflects the thermodynamics of a single protein? Both machine learning and knowledge-based computational methods are rigorous and we know the solid theory behind. We are now in a critical situation, which suggests that predictions of protein instability upon variation should be considered with care. In the following, we will show how to cope with the problem of understanding which protein positions may be of interest for biotechnological and biomedical purposes. By applying a consensus procedure, we indicate possible strategies for the result interpretation.

Casadio, R., Savojardo, C., Fariselli, P., Capriotti, E., Martelli, P.L. (2022). Turning Failures into Applications: The Problem of Protein ΔΔG Prediction. Berlino : Springer [10.1007/978-1-0716-2095-3_6].

Turning Failures into Applications: The Problem of Protein ΔΔG Prediction

Casadio, Rita;Savojardo, Castrense;Fariselli, Piero;Capriotti, Emidio;Martelli, Pier Luigi
2022

Abstract

After nearly two decades of research in the field of computational methods based on machine learning and knowledge-based potentials for ΔG and ΔΔG prediction upon variations, we now realize that all the approaches are poorly performing when tested on specific cases and that there is large space for improvement. Why this is so? Is it wrong the underlying assumption that experimental protein thermodynamics in solution reflects the thermodynamics of a single protein? Both machine learning and knowledge-based computational methods are rigorous and we know the solid theory behind. We are now in a critical situation, which suggests that predictions of protein instability upon variation should be considered with care. In the following, we will show how to cope with the problem of understanding which protein positions may be of interest for biotechnological and biomedical purposes. By applying a consensus procedure, we indicate possible strategies for the result interpretation.
2022
2449
169
185
Casadio, R., Savojardo, C., Fariselli, P., Capriotti, E., Martelli, P.L. (2022). Turning Failures into Applications: The Problem of Protein ΔΔG Prediction. Berlino : Springer [10.1007/978-1-0716-2095-3_6].
Casadio, Rita; Savojardo, Castrense; Fariselli, Piero; Capriotti, Emidio; Martelli, Pier Luigi
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/903188
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