El Rhabori Said, El Aissouq Abdellah, Daoui Ossama, Elkhattabi Souad, Chtita Samir, Khalil Fouad
Laboratory of Processes, Materials and Environment (LPME), Sidi Mohamed Ben Abdellah University, Faculty of Science and Technology - Fez, Morocco.
Laboratory of Engineering, Systems and Applications, National School of Applied Sciences, Sidi Mohamed Ben Abdellah-Fez University, Fez, Morocco.
Heliyon. 2024 Jan 24;10(3):e24551. doi: 10.1016/j.heliyon.2024.e24551. eCollection 2024 Feb 15.
Cervical cancer is a major health problem of women. Hormone therapy, via aromatase inhibition, has been proposed as a promising way of blocking estrogen production as well as treating the progression of estrogen-dependent cancer. To overcome the challenging complexities of costly drug design, in-silico strategy, integrating Structure-Based Drug Design (SBDD) and Ligand-Based Drug Design (LBDD), was applied to large representative databases of 39 quinazoline and thioquinazolinone compound derivatives. Quantum chemical and physicochemical descriptors have been investigated using density functional theory (DFT) and MM2 force fields, respectively, to develop 2D-QSAR models, while CoMSIA and CoMFA descriptors were used to build 3D-QSAR models. The robustness and predictive power of the reliable models were verified, via several validation methods, leading to the design of 6 new drug-candidates. Afterwards, 2 ligands were carefully selected using virtual screening methods, taking into account the applicability domain, synthetic accessibility, and Lipinski's criteria. Molecular docking and pharmacophore modelling studies were performed to examine potential interactions with aromatase (PDB ID: 3EQM). Finally, the ADMET properties were investigated in order to select potential drug-candidates against cervical cancer for experimental in vitro and in vivo testing.
宫颈癌是女性的一个主要健康问题。通过芳香酶抑制进行激素治疗,已被提议作为一种阻断雌激素生成以及治疗雌激素依赖性癌症进展的有前景的方法。为了克服成本高昂的药物设计所面临的复杂挑战,将整合基于结构的药物设计(SBDD)和基于配体的药物设计(LBDD)的计算机辅助策略应用于39种喹唑啉和硫代喹唑啉酮化合物衍生物的大型代表性数据库。分别使用密度泛函理论(DFT)和MM2力场研究了量子化学和物理化学描述符,以建立二维定量构效关系(2D-QSAR)模型,同时使用比较分子相似性指数分析(CoMSIA)和比较分子场分析(CoMFA)描述符建立三维定量构效关系(3D-QSAR)模型。通过几种验证方法验证了可靠模型的稳健性和预测能力,从而设计出6种新的候选药物。之后,考虑到适用范围、合成可及性和Lipinski规则,使用虚拟筛选方法精心挑选了2种配体。进行了分子对接和药效团建模研究,以检查与芳香酶(PDB ID:3EQM)的潜在相互作用。最后,研究了药物的吸收、分布、代谢、排泄及毒性(ADMET)性质,以便选择针对宫颈癌的潜在候选药物进行体外和体内实验测试。