Yang Shilun, Li Simeng, Chang Junlei
Center for Protein and Cell-based Drugs, Institute of Biomedicine and Biotechnology, Shenzhen Institute of Advanced Technology, Chinese Academy of Sciences Xueyuan Blvd 1068 Shenzhen 518055 Guangdong China
University of Chinese Academy of Sciences Beijing 100049 China.
RSC Adv. 2022 May 4;12(21):13500-13510. doi: 10.1039/d2ra01057g. eCollection 2022 Apr 28.
Adipocyte fatty acid-binding protein (A-FABP, also called FABP4, aP2) is an adipokine identified as a critical regulator of metabolic function due to its dual functions of fatty acid transport and pro-inflammation. Because of the high therapeutic potential of A-FABP inhibition for the treatment of metabolic diseases and related vascular complications, numerous inhibitors have been developed against A-FABP. However, none of these inhibitors have been approved for use in patients due to severe side effects. Here, we used a virtual screening (VS) strategy to identify potential inhibitors of A-FABP in the latest FDA-approved drug library (∼2600 compounds), aiming to explore the existing drugs with proven safety profiles. We firstly combined ligand-based machine learning and structure-based molecular docking to develop a screening pipeline for identifying A-FABP inhibitors. The screening of FDA-approved drugs identified four compounds (Cobimetinib, Larotrectinib, Pantoprazole, and Vildagliptin) with the highest scores, whose inhibitory effects on A-FABP were further assessed in cellular assays. Among the selected compounds, Cobimetinib significantly inhibited the activation of the JNK/c-Jun signaling pathway by A-FABP in mouse macrophages without causing obvious cytotoxicity. In summary, we present an integrated VS pipeline for A-FABP inhibitor screening, and identified Cobimetinib as a novel A-FABP inhibitor that may be repurposed for the treatment of metabolic diseases and associated vascular complications.
脂肪细胞脂肪酸结合蛋白(A-FABP,也称为FABP4、aP2)是一种脂肪因子,因其在脂肪酸转运和促炎方面的双重功能,被确定为代谢功能的关键调节因子。由于抑制A-FABP在治疗代谢性疾病及相关血管并发症方面具有很高的治疗潜力,人们已开发出多种针对A-FABP的抑制剂。然而,由于严重的副作用,这些抑制剂均未被批准用于患者。在此,我们采用虚拟筛选(VS)策略,在最新的FDA批准药物库(约2600种化合物)中识别A-FABP的潜在抑制剂,旨在探索具有已证实安全性的现有药物。我们首先结合基于配体的机器学习和基于结构的分子对接,开发了一种用于识别A-FABP抑制剂的筛选流程。对FDA批准药物的筛选确定了四种得分最高的化合物(考比替尼、拉罗替尼、泮托拉唑和维格列汀),并在细胞试验中进一步评估了它们对A-FABP的抑制作用。在所选化合物中,考比替尼在小鼠巨噬细胞中显著抑制A-FABP对JNK/c-Jun信号通路的激活,且未引起明显的细胞毒性。总之,我们提出了一种用于A-FABP抑制剂筛选的综合VS流程,并确定考比替尼为一种新型A-FABP抑制剂,可重新用于治疗代谢性疾病及相关血管并发症。