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SAnDReS 2.0: Development of machine‐learning models to explore the scoring function space.

Authors :
Azevedo, Walter Filgueira Jr
Quiroga, Rodrigo
Villarreal, Marcos Ariel
Silveira, Nelson José Freitas
Bitencourt‐Ferreira, Gabriela
Silva, Amauri Duarte
Veit‐Acosta, Martina
Oliveira, Patricia Rufino
Tutone, Marco
Biziukova, Nadezhda
Poroikov, Vladimir
Tarasova, Olga
Baud, Stéphaine
Source :
Journal of Computational Chemistry. Jun2024, p1. 14p. 7 Illustrations, 3 Charts.
Publication Year :
2024

Abstract

Classical scoring functions may exhibit low accuracy in determining ligand binding affinity for proteins. The availability of both protein–ligand structures and affinity data make it possible to develop machine‐learning models focused on specific protein systems with superior predictive performance. Here, we report a new methodology named SAnDReS that combines AutoDock Vina 1.2 with 54 regression methods available in Scikit‐Learn to calculate binding affinity based on protein–ligand structures. This approach allows exploration of the scoring function space. SAnDReS generates machine‐learning models based on crystal, docked, and AlphaFold‐generated structures. As a proof of concept, we examine the performance of SAnDReS‐generated models in three case studies. For all three cases, our models outperformed classical scoring functions. Also, SAnDReS‐generated models showed predictive performance close to or better than other machine‐learning models such as KDEEP, CSM‐lig, and ΔVinaRF20. SAnDReS 2.0 is available to download at https://github.com/azevedolab/sandres. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01928651
Database :
Academic Search Index
Journal :
Journal of Computational Chemistry
Publication Type :
Academic Journal
Accession number :
177960276
Full Text :
https://doi.org/10.1002/jcc.27449