Protein structure prediction with energy minimization and deep learning approaches

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http://hdl.handle.net/2183/37418
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Protein structure prediction with energy minimization and deep learning approachesDate
2023-12Citation
J. L.Filgueiras, D. Varela & J. Santos, "Protein structure prediction with energy minimization and deep learning approaches", Natural Computing, Vol. 22, Issue 4, pp. 659 - 670, Dec. 2023, doi: 10.1007/s11047-023-09943-4
Abstract
[Abstract]: In this paper we discuss the advantages and problems of two alternatives for ab initio protein structure prediction. On one hand, recent approaches based on deep learning, which have significantly improved prediction results for a wide variety of proteins, are discussed. On the other hand, methods based on protein conformational energy minimization and with different search strategies are analyzed. In this latter case, our methods based on a memetic combination between differential evolution and the fragment replacement technique are included, incorporating also the possibility of niching in the evolutionary search. Different proteins have been used to analyze the pros and cons in both approaches, proposing possibilities of integration of both alternatives.
Keywords
Crowding niching method
Deep learning
Differential evolution
Evolutionary computing niching methods
Protein structure prediction
Deep learning
Differential evolution
Evolutionary computing niching methods
Protein structure prediction
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Financiado para publicación en acceso aberto: CRUE-CSIC/Springer Nature
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Attribution 4.0 International License
ISSN
1567-7818