| Literature DB >> 30054833 |
Feisheng Zhong1,2, Jing Xing1,2, Xutong Li1,2, Xiaohong Liu1,3, Zunyun Fu1,2, Zhaoping Xiong1,3, Dong Lu1,2, Xiaolong Wu1,2, Jihui Zhao1,2, Xiaoqin Tan1,2, Fei Li1,4, Xiaomin Luo1, Zhaojun Li5, Kaixian Chen1,3, Mingyue Zheng6, Hualiang Jiang7,8.
Abstract
Thanks to the fast improvement of the computing power and the rapid development of the computational chemistry and biology, the computer-aided drug design techniques have been successfully applied in almost every stage of the drug discovery and development pipeline to speed up the process of research and reduce the cost and risk related to preclinical and clinical trials. Owing to the development of machine learning theory and the accumulation of pharmacological data, the artificial intelligence (AI) technology, as a powerful data mining tool, has cut a figure in various fields of the drug design, such as virtual screening, activity scoring, quantitative structure-activity relationship (QSAR) analysis, de novo drug design, and in silico evaluation of absorption, distribution, metabolism, excretion and toxicity (ADME/T) properties. Although it is still challenging to provide a physical explanation of the AI-based models, it indeed has been acting as a great power to help manipulating the drug discovery through the versatile frameworks. Recently, due to the strong generalization ability and powerful feature extraction capability, deep learning methods have been employed in predicting the molecular properties as well as generating the desired molecules, which will further promote the application of AI technologies in the field of drug design.Entities:
Keywords: ADME/T; QSAR; artificial intelligence; deep learning; drug design
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Year: 2018 PMID: 30054833 DOI: 10.1007/s11427-018-9342-2
Source DB: PubMed Journal: Sci China Life Sci ISSN: 1674-7305 Impact factor: 6.038