Guangdong Provincial Key Laboratory of Fermentation and Enzyme Engineering, Joint International Research Laboratory of Synthetic Biology and Medicine, Guangdong Provincial Engineering and Technology Research Center of Biopharmaceuticals, School of Biology and Biological Engineering, South China University of Technology, Guangzhou 510006, China.
State Key Laboratory of Functions and Applications of Medicinal Plants & College of Pharmacy, Guizhou Provincial Engineering Technology Research Center for Chemical Drug R&D, Guizhou Medical University, Guiyang 550004, China.
Bioorg Med Chem. 2022 Oct 15;72:116994. doi: 10.1016/j.bmc.2022.116994. Epub 2022 Sep 5.
Cyclin-dependent kinase 9 (CDK9) plays a vital role in controlling cell transcription and has been an attractive target for cancer treatment. Herein, ten predictive models derived from 1330 unique molecules against CDK9 were constructed based on molecular fingerprints and graphs using two conventional machine learning and four deep learning methods. The evaluation results showed that FP-GNN deep learning architecture performed best for CDK9 inhibitors prediction with the highest BA and F1 values of 0.681 and 0.912 for testing set. We then performed virtual screening to identify new CDK9 inhibitors by incorporating the optimal established predictive model and molecular docking. Five compounds were identified to show broad anticancer activity against various cancer cell lines through bioassays. For example, C9 exhibited antiproliferative activities against HeLa, MOLM-13 and MDA-MB-231 with IC values of 2.53, 3.92 and 11.65 μM. Kinase inhibition assay results demonstrated that these compounds displayed submicromolar (214 ∼ 504 nM) inhibitory activities against CDK9. Further cellular mechanism evaluation revealed that C9 suppressed the activity of CDK9 and interfered with the expression of Mcl-1 and cleaved PARP in MOLM-13 cells, resulting in the induction of cellular apoptosis. In addition, C9 displayed a good stability in rat liver microsomes, artificial gastrointestinal fluid and plasm. An online platform (called DEEPCDK9Pred) was developed based on the FP-GNN models to predict or design new CDK9 inhibitors. Collectively, our findings demonstrated that FP-GNN algorithm can achieve accurate prediction of CDK9 inhibitors and the subsequent discovery of C9 as a new potential CDK9 inhibitor deserves further structural modification for the treatment of leukemia.
周期蛋白依赖性激酶 9(CDK9)在控制细胞转录中起着至关重要的作用,一直是癌症治疗的一个有吸引力的靶点。在此,基于分子指纹图谱和图,使用两种传统机器学习方法和四种深度学习方法,构建了 1330 个独特分子针对 CDK9 的 10 个预测模型。评估结果表明,FP-GNN 深度学习架构在 CDK9 抑制剂预测方面表现最佳,其测试集的 BA 和 F1 值最高,分别为 0.681 和 0.912。然后,我们通过纳入最佳建立的预测模型和分子对接,进行虚拟筛选以识别新的 CDK9 抑制剂。通过生物测定,鉴定了五种化合物对各种癌细胞系具有广泛的抗癌活性。例如,C9 对 HeLa、MOLM-13 和 MDA-MB-231 的增殖活性具有抑制作用,IC 值分别为 2.53、3.92 和 11.65μM。激酶抑制试验结果表明,这些化合物对 CDK9 表现出亚微摩尔(214∼504nM)抑制活性。进一步的细胞机制评估表明,C9 抑制 CDK9 的活性并干扰 MOLM-13 细胞中 Mcl-1 的表达和 PARP 的切割,导致细胞凋亡的诱导。此外,C9 在大鼠肝微粒体、人工胃肠液和血浆中表现出良好的稳定性。基于 FP-GNN 模型开发了一个在线平台(称为 DEEPCDK9Pred),用于预测或设计新的 CDK9 抑制剂。总之,我们的研究结果表明,FP-GNN 算法可以实现 CDK9 抑制剂的准确预测,随后发现 C9 作为一种新的潜在 CDK9 抑制剂,值得进一步结构修饰以治疗白血病。