Zhang Ya-Kun, Tong Jian-Bo, Sun Yue, Li Jia-Le, Hou Qi
College of Chemistry and Chemical Engineering, Shaanxi University of Science and Technology, Xi'an, People's Republic of China.
Shaanxi Key Laboratory of Chemical Additives for Industry, Xi'an, People's Republic of China.
J Recept Signal Transduct Res. 2025 Jun;45(3):189-202. doi: 10.1080/10799893.2025.2503386. Epub 2025 May 11.
To address the challenges of target specificity and drug resistance in Anaplastic lymphoma kinase (ALK) inhibition, this study conducted a virtual screening of the BindingDB database, yielding 711 potential ALK inhibitors. Four QSAR models were established using structural clustering and machine learning to elucidate structure-activity relationships. Through substituent fragment optimization, 72 highly active compounds were designed, among which four promising candidates were identified based on ADMET predictions, retrosynthetic analyses and molecular docking analyses. Molecular dynamics simulations and binding free energy calculations further characterized their binding mechanisms. These findings provide a theoretical framework for the rational design of next-generation ALK inhibitors.
为应对间变性淋巴瘤激酶(ALK)抑制中靶点特异性和耐药性的挑战,本研究对BindingDB数据库进行了虚拟筛选,得到711种潜在的ALK抑制剂。利用结构聚类和机器学习建立了四个定量构效关系(QSAR)模型,以阐明构效关系。通过取代基片段优化,设计了72种高活性化合物,其中基于ADMET预测、逆合成分析和分子对接分析确定了四种有前景的候选化合物。分子动力学模拟和结合自由能计算进一步表征了它们的结合机制。这些发现为下一代ALK抑制剂的合理设计提供了理论框架。