SAnDReS 2.0: Development of machine-learning models to explore the scoring function space.
Walter Filgueira de AzevedoRodrigo QuirogaMarcos Ariel VillarrealNelson José Freitas da SilveiraGabriela Bitencourt-FerreiraAmauri Duarte da SilvaMartina Veit-AcostaPatricia Rufino OliveiraMarco TutoneNadezhda BiziukovaVladimir PoroikovOlga TarasovaStéphaine BaudPublished in: Journal of computational chemistry (2024)
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 K DEEP , CSM-lig, and Δ Vina RF 20 . SAnDReS 2.0 is available to download at https://github.com/azevedolab/sandres.