Zhou Rui, Liu Ziqian, Wu Tongtong, Pan Xianwei, Li Tongtong, Miao Kaiting, Li Yuru, Hu Xiaohui, Wu Haigang, Hemmings Andrew M, Jiang Beier, Zhang Zhenzhen, Liu Ning
International Research Centre for Food and Health, College of Food Science and Technology, Shanghai Ocean University, Shanghai, 201306, China.
School of Life Sciences, Henan University, Kaifeng, Henan Province, 475000, China.
Cell Commun Signal. 2024 Dec 5;22(1):585. doi: 10.1186/s12964-024-01954-7.
Epidermal growth factor receptor (EGFR) T790M mutation often occurs during long durational erlotinib treatment of non-small cell lung cancer (NSCLC) patients, leading to drug resistance and disease progression. Identification of new selective EGFR-T790M inhibitors has proven challenging through traditional screening platforms. With great advances in computer algorithms, machine learning improved the screening rates of molecules at full chemical spaces, and these molecules will present higher biological activity and targeting efficiency.
An integrated machine learning approach, integrated by Bayesian inference, was employed to screen a commercial dataset of 70,413 molecules, identifying candidates that selectively and efficiently bind with EGFR harboring T790M mutation. In vitro cellular assays and molecular dynamic simulations was used for validation. EGFR knockout cell line was generated for cross-validation. In vivo xenograft moues model was constructed to investigate the antitumor efficacy of CDDO-Me.
Our virtual screening and subsequent in vitro testing successfully identified CDDO-Me, an oleanolic acid derivative with anti-inflammatory activity, as a potent inhibitor of NSCLC cancer cells harboring the EGFR-T790M mutation. Cellular thermal shift assay and molecular dynamic simulation validated the selective binding of CDDO-Me to T790M-mutant EGFR. Further experimental results revealed that CDDO-Me induced cellular apoptosis and caused cell cycle arrest through inhibiting the PI3K-Akt-mTOR axis by directly targeting EGFR protein, cross-validated by sgEGFR silencing in H1975 cells. Additionally, CDDO-Me could dose-depended suppress the tumor growth in a H1975 xenograft mouse model.
CDDO-Me induced apoptosis and caused cell cycle arrest by inhibiting the PI3K-Akt-mTOR pathway, directly targeting the EGFR protein. In vivo studies in a H1975 xenograft mouse model demonstrated dose-dependent suppression of tumor growth. Our work highlights the application of machine learning-aided drug screening and provides a promising lead compound to conquer the drug resistance of NSCLC.
表皮生长因子受体(EGFR)T790M突变常在非小细胞肺癌(NSCLC)患者长期使用厄洛替尼治疗期间发生,导致耐药和疾病进展。通过传统筛选平台鉴定新型选择性EGFR-T790M抑制剂已被证明具有挑战性。随着计算机算法的巨大进步,机器学习提高了在完整化学空间中分子的筛选率,并且这些分子将呈现更高的生物活性和靶向效率。
采用一种由贝叶斯推理整合的综合机器学习方法,对一个包含70413个分子的商业数据集进行筛选,识别与携带T790M突变的EGFR选择性且高效结合的候选物。体外细胞试验和分子动力学模拟用于验证。构建EGFR敲除细胞系进行交叉验证。构建体内异种移植小鼠模型以研究CDDO-Me的抗肿瘤疗效。
我们的虚拟筛选及后续体外测试成功鉴定出CDDO-Me,一种具有抗炎活性的齐墩果酸衍生物,作为携带EGFR-T790M突变的NSCLC癌细胞的有效抑制剂。细胞热位移试验和分子动力学模拟验证了CDDO-Me与T790M突变型EGFR的选择性结合。进一步的实验结果表明,CDDO-Me通过直接靶向EGFR蛋白抑制PI3K-Akt-mTOR轴,诱导细胞凋亡并导致细胞周期停滞,这在H1975细胞中通过sgEGFR沉默得到交叉验证。此外,CDDO-Me可剂量依赖性地抑制H1975异种移植小鼠模型中的肿瘤生长。
CDDO-Me通过抑制PI3K-Akt-mTOR途径诱导凋亡并导致细胞周期停滞,直接靶向EGFR蛋白。在H1975异种移植小鼠模型中的体内研究表明其对肿瘤生长具有剂量依赖性抑制作用。我们的工作突出了机器学习辅助药物筛选的应用,并为克服NSCLC的耐药性提供了一种有前景的先导化合物。