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Learning Molecular Representations for Medicinal Chemistry Miniperspective
被引:128
|作者:
Chuang, Kangway, V
[1
]
Gunsalus, Laura M.
[1
]
Keiser, Michael J.
[1
]
机构:
[1] Univ Calif San Francisco, Kavli Inst Fundamental Neurosci, Dept Bioengn & Therapeut Sci,Bakar Computat Hlth, Inst Neurodegenerat Dis,Dept Pharmaceut Chem, San Francisco, CA 94143 USA
关键词:
DEEP NEURAL-NETWORKS;
DRUG DISCOVERY;
ORGANIC-CHEMISTRY;
MACHINE;
QSAR;
DESIGN;
CLASSIFICATION;
PREDICTION;
SMILES;
DESCRIPTORS;
D O I:
10.1021/acs.jmedchem.0c00385
中图分类号:
R914 [药物化学];
学科分类号:
100701 ;
摘要:
The accurate modeling and prediction of small molecule properties and bioactivities depend on the critical choice of molecular representation. Decades of informatics-driven research have relied on expert-designed molecular descriptors to establish quantitative structure-activity and structure-property relationships for drug discovery. Now, advances in deep learning make it possible to efficiently and compactly learn molecular representations directly from data. In this review, we discuss how active research in molecular deep learning can address limitations of current descriptors and fingerprints while creating new opportunities in cheminformatics and virtual screening. We provide a concise overview of the role of representations in cheminformatics, key concepts in deep learning, and argue that learning representations provides a way forward to improve the predictive modeling of small molecule bioactivities and properties.
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页码:8705 / 8722
页数:18
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