Advanced machine-learning techniques in drug discovery

被引:82
作者
Elbadawi, Moe [1 ]
Gaisford, Simon [1 ,2 ]
Basit, Abdul W. [1 ,2 ]
机构
[1] UCL, UCL Sch Pharm, Dept Pharmaceut, 29-39 Brunswick Sq, London WC1N 1AX, England
[2] FabRx Ltd, 3 Romney Rd, Ashford TN24 0RW, Kent, England
基金
英国工程与自然科学研究理事会;
关键词
NEURAL-NETWORKS; MOLECULAR-PROPERTIES; KERNEL PCA; PREDICTION; MODEL; FRAMEWORK; SYSTEMS; DESIGN;
D O I
10.1016/j.drudis.2020.12.003
中图分类号
R9 [药学];
学科分类号
1007 ;
摘要
The popularity of machine learning (ML) across drug discovery continues to grow, yielding impressive results. As their use increases, so do their limitations become apparent. Such limitations include their need for big data, sparsity in data, and their lack of interpretability. It has also become apparent that the techniques are not truly autonomous, requiring retraining even post deployment. In this review, we detail the use of advanced techniques to circumvent these challenges, with examples drawn from drug discovery and allied disciplines. In addition, we present emerging techniques and their potential role in drug discovery. The techniques presented herein are anticipated to expand the applicability of ML in drug discovery. The popularity of machine learning (ML) across drug discovery continues to grow, yielding impressive results. As their use increases, so do their limitations become apparent. Such limitations include their need for big data, sparsity in data, and their lack of interpretability. It has also become apparent that the techniques are not truly autonomous, requiring retraining even post deployment. In this review, we detail the use of advanced techniques to circumvent these challenges, with examples drawn from drug discovery and allied disciplines. In addition, we present emerging techniques and their potential role in drug discovery. The techniques presented herein are anticipated to expand the applicability of ML in drug discovery.
引用
收藏
页码:769 / 777
页数:9
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