Romero-Molina, Sandra; Ruiz-Blanco, Yasser B.; Mieres-Perez, Joel; Harms, Mirja; Münch, Jan; Ehrmann, Michael; Sanchez-Garcia, Elsa:
PPI-Affinity : A Web Tool for the Prediction and Optimization of Protein-Peptide and Protein-Protein Binding Affinity
In: Journal of Proteome Research, Vol. 21 (2022), No. 8, pp. 1829 - 1841
2022article/chapter in journalOA Green
BiologyScientific institutes » Center of Medical Biotechnology (ZMB) Faculty of Biology » Computational Biochemistry
Related: 2 publication(s)
Title in English:
PPI-Affinity : A Web Tool for the Prediction and Optimization of Protein-Peptide and Protein-Protein Binding Affinity
Author:
Romero-Molina, Sandra
;
Ruiz-Blanco, Yasser B.
;
Mieres-Perez, Joel
;
Harms, Mirja
;
Münch, Jan
;
Ehrmann, MichaelUDE
LSF ID
13331
ORCID
0000-0002-1927-260XORCID iD
Other
connected with university
;
Sanchez-Garcia, ElsaUDE
LSF ID
59527
ORCID
0000-0002-9211-5803ORCID iD
Other
connected with university
corresponding author
Year of publication:
2022
Open Access?:
OA Green
Web of Science ID
PubMed ID
Scopus ID
Language of text:
English
Keyword, Topic:
binding free energy ; dissociation constant ; machine learning ; mutation ; peptide design ; protein-protein interaction

Abstract in English:

Virtual screening of protein-protein and protein-peptide interactions is a challenging task that directly impacts the processes of hit identification and hit-to-lead optimization in drug design projects involving peptide-based pharmaceuticals. Although several screening tools designed to predict the binding affinity of protein-protein complexes have been proposed, methods specifically developed to predict protein-peptide binding affinity are comparatively scarce. Frequently, predictors trained to score the affinity of small molecules are used for peptides indistinctively, despite the larger complexity and heterogeneity of interactions rendered by peptide binders. To address this issue, we introduce PPI-Affinity, a tool that leverages support vector machine (SVM predictors of binding affinity to screen datasets of protein-protein and protein-peptide complexes, as well as to generate and rank mutants of a given structure. The performance of the SVM models was assessed on four benchmark datasets, which include protein-protein and protein-peptide binding affinity data. In addition, we evaluated our model on a set of mutants of EPI-X4, an endogenous peptide inhibitor of the chemokine receptor CXCR4, and on complexes of the serine proteases HTRA1 and HTRA3 with peptides.