Publication | Closed Access
Efficient and enhanced sampling of drug‐like chemical space for virtual screening and molecular design using modern machine learning methods
21
Citations
59
References
2022
Year
Drug TargetEngineeringMachine LearningHit IdentificationMolecular DesignModern Machine LearningData ScienceDrug DesignComputational BiochemistryDrug‐like Chemical SpaceVirtual ScreeningDe Novo Drug DesignStructure-based Drug DesignComputational ModelingMolecular Property PredictionPharmacologyTarget PredictionBiomolecular EngineeringMolecular PropertyComputational BiologyRational Drug DesignSystems BiologyMedicineDrug DiscoveryDrug Analysis
Abstract Drug design involves the process of identifying and designing novel molecules that have desirable properties and bind well to a given target receptor. Typically, such molecules are identified by screening large chemical libraries for desirable physicochemical properties and binding strength with the target protein. This traditional approach, however, has severe limitations as exhaustively screening every molecule in known chemical libraries is computationally infeasible. Furthermore, currently available molecular libraries are only a minuscule part of the entire set of possible drug‐like molecular structures (drug‐like chemical space). In this review, we discuss how the former limitation is addressed by modeling virtual screening as a search space problem and how these endeavors utilize machine learning to reduce the number of required computational experiments to identify top candidates. We follow that up by discussing generative methods that attempt to approximate the entire drug‐like chemical space providing us a path to explore beyond the known drug‐like chemical space. We place special emphasis on generative models that learn the marginal distributions conditioned on specific properties or receptor structures for efficient sampling of molecules. Through this review, we aim to highlight modern machine learning based methods that try to efficiently enhance our sampling capability beyond conventional screening methods which, in turn, would benefit drug design significantly. Therefore, we also encourage further methods of development that work on such important aspects of drug design. This article is categorized under: Data Science > Chemoinformatics Data Science > Artificial Intelligence/Machine Learning Data Science > Computer Algorithms and Programming
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