Wang Qinghua, Wang Zhe, Tian Sheng, Wang Lingling, Tang Rongfan, Yu Yang, Ge Jingxuan, Hou Tingjun, Hao Haiping, Sun Huiyong
Department of Medicinal Chemistry, China Pharmaceutical University, Nanjing 210009, Jiangsu, P. R. China.
Innovation Institute for Artificial Intelligence in Medicine of Zhejiang University, College of Pharmaceutical Sciences, Zhejiang University, Hangzhou 310058, Zhejiang, P. R. China.
J Chem Inf Model. 2022 Sep 12;62(17):3993-4007. doi: 10.1021/acs.jcim.2c00851. Epub 2022 Aug 30.
The mechanism of transcriptional activation/repression of the nuclear receptors (NRs) involves two main conformations of the NR protein, namely, the active (agonistic) and inactive (antagonistic) conformations. Binding of agonists or antagonists to the ligand-binding pocket (LBP) of NRs can regulate the downstream signaling pathways with different physiological effects. However, it is still hard to determine the molecular type of a LBP-bound ligand because both the agonists and antagonists bind to the same position of the protein. Therefore, it is necessary to develop precise and efficient methods to facilitate the discrimination of agonists and antagonists targeting the LBP of NRs. Here, combining structural and energetic analyses with machine-learning (ML) algorithms, we constructed a series of structure-based ML models to determine the molecular category of the LBP-bound ligands. We show that the proposed models work robustly and with high accuracy (ACC > 0.9) for determining the category of molecules derived from docking-based and crystallized poses. Furthermore, the models are also capable of determining the molecular category of ligands with dual opposite functions on different NRs (i.e., working as an agonist in one NR target, whereas functioning as an antagonist in another) with reasonable accuracy. The proposed method is expected to facilitate the determination of the molecular properties of ligands targeting the LBP of NRs with structural interpretation.
核受体(NRs)转录激活/抑制的机制涉及NR蛋白的两种主要构象,即活性(激动剂)构象和非活性(拮抗剂)构象。激动剂或拮抗剂与NRs的配体结合口袋(LBP)结合可调节具有不同生理效应的下游信号通路。然而,由于激动剂和拮抗剂都结合在蛋白质的同一位置,因此仍然难以确定LBP结合配体的分子类型。因此,有必要开发精确有效的方法,以促进针对NRs的LBP的激动剂和拮抗剂的区分。在这里,我们将结构和能量分析与机器学习(ML)算法相结合,构建了一系列基于结构的ML模型,以确定LBP结合配体的分子类别。我们表明,所提出的模型在确定基于对接和结晶构象的分子类别方面表现稳健且准确率高(ACC>0.9)。此外,这些模型还能够以合理的准确率确定在不同NRs上具有双重相反功能的配体的分子类别(即在一个NR靶点中作为激动剂起作用,而在另一个靶点中作为拮抗剂起作用)。所提出的方法有望通过结构解释促进对靶向NRs的LBP的配体的分子性质的确定。