College of Life Science, Northwest Normal University, Lanzhou, 730070, Gansu, People's Republic of China.
State Key Laboratory of Biotherapy and Cancer Center, West China Hospital, West China Medical School, Sichuan University, Chengdu, 610041, Sichuan, People's Republic of China.
Mol Divers. 2021 Aug;25(3):1481-1495. doi: 10.1007/s11030-021-10247-x. Epub 2021 Jun 23.
DGAT1 plays a crucial controlling role in triglyceride biosynthetic pathways, which makes it an attractive therapeutic target for obesity. Thus, development of DGAT1 inhibitors with novel chemical scaffolds is desired and important in the drug discovery. In this investigation, the multistep virtual screening methods, including machine learning methods and common feature pharmacophore model, were developed and used to identify novel DGAT1 inhibitors from BioDiversity database with 30,000 compounds. 531 compounds were predicted as DGAT1 inhibitors by combination of machine learning methods comprising of SVM, NB and RP models. Then, 12 agents were filtered from 531 compounds by using the common feature pharmacophore model. The 3D chemical structures of the 12 hits coordinated with surface charges and isosurface have been carefully analyzed by the established 3D-QSAR model. Finally, 8 compounds with desired properties were retained from the final hits and have been assigned to another research group to complete the follow-up compound synthesis and biologic evaluation.
DGAT1 在甘油三酯生物合成途径中起着至关重要的控制作用,使其成为肥胖症的有吸引力的治疗靶点。因此,开发具有新型化学结构骨架的 DGAT1 抑制剂在药物发现中是理想且重要的。在这项研究中,开发并使用了多步骤虚拟筛选方法,包括机器学习方法和常见特征药效团模型,从包含 30000 种化合物的生物多样性数据库中鉴定新型 DGAT1 抑制剂。通过组合 SVM、NB 和 RP 模型的机器学习方法,预测了 531 种化合物为 DGAT1 抑制剂。然后,使用常见特征药效团模型从 531 种化合物中筛选出 12 种药物。通过建立的 3D-QSAR 模型,对 12 个命中化合物的 3D 化学结构与表面电荷和等表面进行了仔细分析。最后,从最终命中物中保留了 8 种具有所需性质的化合物,并将其分配给另一个研究小组,以完成后续的化合物合成和生物学评价。