小檗碱
数量结构-活动关系
化学
试验装置
训练集
分子描述符
草药
计算生物学
传统医学
立体化学
机器学习
计算机科学
生物化学
人工智能
医学
生物
作者
Pan Yu,Dong‐Dong Li,Junjun Ni,Linguo Zhao,Gang Ding,Zhenzhong Wang,Wei Xiao
摘要
Berberine (BBR), isolated from a Chinese herb, is identified as a new cholesterol‐lowering small molecule, and hundreds of berberine derivatives have been obtained for optimization of their hypolipidemic activities in recent years. However, so far there is no available quantitative structure–activity relationship (QSAR) model used for the development of novel BBR analogues with hypolipidemic activities, mainly due to lack of lipid‐lowering molecular mechanisms and target identification of BBR. In this paper, the tactics using ligand efficiency indice instead of pIC 50 as the activity could be adopted for the development of BBR QSAR models. A series of 59 BBR derivatives with hypolipidemic activities have been studied and split randomly into three sets of training and test sets. Statistical quality of most building models shows obviously robust. Best calculated model that employs LLE indice as the activity (Model 6 ) has the following statistical parameters: for training set R 2 = .984, Q 2 = 0.981, RMSE = 0.1160, and for test set R 2 = .989, RMSE = 0.0067. This model would be used for the development of novel BBR analogues with lipid‐lowering activities as a hit discovery tool.
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