化学
虚拟筛选
公制(单位)
极限(数学)
分子
药物发现
财产(哲学)
计算机科学
小分子
化学空间
化学数据库
计算生物学
组合化学
合成数据
机器学习
质量(理念)
人工智能
药物靶点
数据挖掘
生成模型
生成语法
理论计算机科学
训练集
分子构象
生化工程
纳米技术
作者
Bo Yang,Chijian Xiang,Tongtong Li,Yunong Xu,Jianing Li
标识
DOI:10.1021/acs.jmedchem.5c01706
摘要
Structure-based drug design (SBDD) plays a crucial role in preclinical discovery. Recently, structure-based generative algorithms have been developed to streamline the SBDD process, by generating novel, drug-like molecule designs based on the binding pocket structure of target protein. However, there is no effective metric to evaluate the chemical plausibility of molecules designed by these algorithms, which can limit further applications. In this study, we introduce two new metrics for assessing the chemical plausibility of generated molecules and show that these algorithms can generate chemically implausible structures with certain property distributions that differ from those of known drug-like molecules. We further compare results with high-throughput virtual screening hits for three targets: c-SRC kinase, Smoothened receptor, and dopamine D1 receptor. These metrics and analysis methods described here offer valuable tools for assessing the chemical plausibility and drug-likeness of generated molecules, ultimately enhancing the use of structure-based generation in drug discovery.
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