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dc.contributor.authorCianferoni, Damiano-
dc.contributor.authorVizarraga, David-
dc.contributor.authorFernández-Escamilla, Ana Mª-
dc.contributor.authorFita, Ignacio-
dc.contributor.authorHamdani, Rahma-
dc.contributor.authorReche, Raul-
dc.contributor.authorDelgado, Javier-
dc.contributor.authorSerrano, Luis-
dc.contributor.otherDepartamentos de la UMH::Bioquímica y Biología Moleculares_ES
dc.date.accessioned2026-02-23T17:35:32Z-
dc.date.available2026-02-23T17:35:32Z-
dc.date.created2025-01-
dc.identifier.citationProtein Science, Vol. 34, Issue 8 (2025)es_ES
dc.identifier.issn1469-896X-
dc.identifier.issn0961-8368-
dc.identifier.urihttps://hdl.handle.net/11000/39409-
dc.description.abstractSince AlphaFold2’s rise, many deep learning methods for protein design have emerged. Here, we validate widely used and recognized tools, compare them with first-principle methods, and explore their combinations, focusing on their effectiveness in protein redesign and potential for therapeutic repurposing. We address two challenges: evaluating tools and combinations ability to detect the effects of multiple concurrent mutations in protein variants, and leveraging large-scale datasets to compare modelingfree methods, namely force fields, which handle point mutations well with limited backbone rearrangement, and inverse folding tools, which excel at native sequence recovery but may struggle with non-natural proteins. Debuting TriCombine, a tool that identifies residue triangles in input structures, matches them to a structural database, and scores mutants based on substitution frequencies, we shortlisted candidates, modeled them with FoldX, and generated 16 SH3 mutants carrying up to 9 concurrent substitutions. The dataset was expanded to include 36 mutants and 11 crystal structures (7 newly solved), along with a parallel set of multiple non-concurrent mutants from three additional proteins. For broader validation, we analyzed 160,000 four-site GB1 mutants and 163,555 (single and double) variants across 179 natural and de novo domains. We show that combining AIbased modeling tools with force field scoring functions yields the most reliable results. Inverse folding tools perform very well but lose accuracy on less-represented proteins. First-principle force fields like FoldX remain the most accurate for point mutations. All methods perform worse when applied to unsolved de novo models, underscoring the need for hybrid strategies in robust protein design.es_ES
dc.formatapplication/pdfes_ES
dc.format.extent17es_ES
dc.language.isoenges_ES
dc.publisherWileyes_ES
dc.rightsinfo:eu-repo/semantics/openAccesses_ES
dc.rightsAttribution-NonCommercial-NoDerivatives 4.0 Internacional*
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/*
dc.subjectartificial intelligencees_ES
dc.subjectcrystallographic structurees_ES
dc.subjectforce fieldes_ES
dc.subjectprotein designes_ES
dc.subject.otherCDU::5 - Ciencias puras y naturales::57 - Biología::577 - Bioquímica. Biología molecular. Biofísicaes_ES
dc.titleArtificial intelligence and first-principle methods in protein redesign: A marriage of convenience?es_ES
dc.typeinfo:eu-repo/semantics/articlees_ES
dc.relation.publisherversion10.1002/pro.70210es_ES
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Artículos - Bioquímica y Biología Molecular


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