Combining machine-learning and molecular-modeling methods for drug-target affinity predictions

被引:5
|
作者
Perez-Lopez, Carles [1 ]
Molina, Alexis [2 ]
Lozoya, Estrella [3 ]
Segarra, Victor [3 ]
Municoy, Marti [1 ,2 ]
Guallar, Victor [1 ,4 ]
机构
[1] Barcelona Supercomp Ctr BSC, Life Sci Dept, Barcelona, Spain
[2] Nostrum Biodiscovery NBD, Barcelona, Spain
[3] Almirall SA, Data Sci Dept, Barcelona, Spain
[4] ICREA, Barcelona, Spain
关键词
binding affinity; drug discovery; kinases; machine learning; molecular modeling; LIGAND BINDING-AFFINITY; NEURAL-NETWORK; ACCURATE PREDICTION; SCORING FUNCTION; PROTEIN; DOCKING; SIMULATIONS; OPTIMIZATION; NNSCORE; CHARGE;
D O I
10.1002/wcms.1653
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Machine learning (ML) techniques offer a novel and exciting approach in the drug discovery field. One might even argue that their current expansion may push traditional MM modeling techniques to a secondary role in modeling methods. In this review article, we advocate that a combination of both techniques could be the most efficient implementation in the coming years. Focusing on drug-target affinity predictions, we first review pure ML approaches. Then, we introduced recent developments in mixing ML and MM methods in a single combined manner. Finally, we show the detailed implementation of a real industrial prospective study where nanomolar hits, on a kinase target, were obtained by combination of state of the art Monte Carlo MM simulations (PELE) with a ML ranking function.This article is categorized under:Structure and Mechanism > Computational Biochemistry and BiophysicsData Science > Artificial Intelligence/Machine LearningMolecular and Statistical Mechanics > Molecular Mechanics
引用
收藏
页数:13
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