Umar Abdullahi Bello, Uzairu Adamu, Shallangwa Gideon Adamu, Uba Sani
Department of Chemistry, Faculty of Physical Sciences, Ahmad Bello University, Zaria, P.M.B.1045 Kaduna State, Nigeria.
Heliyon. 2020 Mar 27;6(3):e03640. doi: 10.1016/j.heliyon.2020.e03640. eCollection 2020 Mar.
A dataset of seventy-two (72) cytotoxic compounds of the National Cancer Institute (NCI) was studied by QSAR and docking approaches to gain deeper insights into ligands selectivity on SK-MEL-2 cell line. The QSAR model was built using fifty (50) molecules and the best-generated model based on multiple linear regression showed, respectively good quality of fits ( (0.864), (0.845), Q (0.799) and (0.706)). The model's predictive ability was determined by a test set of twenty-two (22) compounds. Compounds 30 and 41 were selected as templates for in silico design because they had high pGI activity and are in the model's applicability domain. The obtained information from the model was explored to design novel molecules by introducing various modifications. Moreover, the designed compounds with better-predicted activity (pGI) values were selected and docked on the active site of the protein (PDB-CODE: 3OG7) which is responsible for melanoma cancer to elucidate their binding mode. AN2 (-12.1kcalmol) and AC4 (-12.4kcalmol) showed a better binding score for the target when compared with (vemurafenib, -11.3kcalmol) the known inhibitor of the target (V600E-BRAF). These findings may be very helpful in early anti-cancer drug development.
采用定量构效关系(QSAR)和对接方法,对美国国立癌症研究所(NCI)的72种细胞毒性化合物数据集进行了研究,以更深入地了解配体对SK-MEL-2细胞系的选择性。使用50个分子构建了QSAR模型,基于多元线性回归生成的最佳模型分别显示出良好的拟合质量(R²为0.864、R²adj为0.845、Q²为0.799、RMSE为0.706)。通过22种化合物的测试集确定了该模型的预测能力。化合物30和41因其具有高pGI活性且在模型的适用范围内,被选作计算机辅助设计的模板。通过引入各种修饰,利用该模型获得的信息来设计新分子。此外,选择预测活性(pGI)值更好的设计化合物,并将其对接在负责黑色素瘤癌症的蛋白质(PDB编码:3OG7)的活性位点上,以阐明它们的结合模式。与已知的靶点(V600E-BRAF)抑制剂维莫非尼(-11.3 kcal/mol)相比,AN2(-12.1 kcal/mol)和AC4(-12.4 kcal/mol)对靶点显示出更好的结合分数。这些发现可能对早期抗癌药物开发非常有帮助。