Banjare Laxmi, Singh Yogesh, Verma Sant Kumar, Singh Atul Kumar, Kumar Pradeep, Kumar Shashank, Jain Akhlesh Kumar, Thareja Suresh
School of Pharmaceutical Sciences, Guru Ghasidas Central University, Bilaspur, Chhattisgarh, India.
Department of Pharmaceutical Sciences and Natural Products, School of Pharmaceutical Sciences Central, University of Punjab, Bathinda, Punjab, India.
J Biomol Struct Dyn. 2023 Mar;41(4):1322-1341. doi: 10.1080/07391102.2021.2019122. Epub 2021 Dec 29.
Aromatase, a cytochrome P450 enzyme, is responsible for the conversion of androgens to estrogens, which fuel the multiplication of cancerous cells. Inhibition of estrogen biosynthesis by aromatase inhibitors (AIs) is one of the highly advanced therapeutic approach available for the treatment of estrogen-positive breast cancer. Biphenyl moiety aids lipophilicity to the conjugated scaffold and enhances the accessibility of the ligand to the target. The present study is focused on the investigation of, the mode of binding of biphenyl with aromatase, prediction of ligand-target binding affinities, and pharmacophoric features essential for favorable for aromatase inhibition. A multifaceted 3D-QSAR (SOMFA, Field and Gaussian) along with molecular docking, molecular dynamic simulations and pharmacophore mapping were performed on a series of biphenyl bearing molecules (1-33) with a wide range of aromatase inhibitory activity (0.15-920 nM). Among the generated 3D-QSAR models, the Force field-based 3D-QSAR model ( = 0.9151) was best as compared to SOMFA and Gaussian Field (=0.7706, 0.9074, respectively). However, all the generated 3D-QSAR models were statistically fit, robust enough, and reliable to explain the variation in biological activity in relation to pharmacophoric features of dataset molecules. A four-point pharmacophoric features with three acceptor sites (A), one aromatic ring (R) features, AAAR_1, were obtained with the site and survival score values 0.890 and 4.613, respectively. The generated 3D-QSAR plots in the study insight into the structure-activity relationship of dataset molecules, which may help in the designing of potent biphenyl derivatives as newer inhibitors of aromatase.Communicated by Ramaswamy H. Sarma.
芳香化酶是一种细胞色素P450酶,负责将雄激素转化为雌激素,而雌激素会促进癌细胞的增殖。芳香化酶抑制剂(AIs)抑制雌激素生物合成是治疗雌激素受体阳性乳腺癌的一种高度先进的治疗方法。联苯部分赋予共轭支架亲脂性,并增强配体与靶点的可及性。本研究聚焦于对联苯与芳香化酶的结合模式、配体-靶点结合亲和力的预测以及对芳香化酶抑制有利的药效团特征的研究。对一系列具有广泛芳香化酶抑制活性(0.15 - 920 nM)的联苯类分子(1 - 33)进行了多方面的3D-QSAR(SOMFA、场和高斯)以及分子对接、分子动力学模拟和药效团映射。在生成的3D-QSAR模型中,基于力场的3D-QSAR模型( = 0.9151)比SOMFA和高斯场模型(分别为0.7706、0.9074)更好。然而,所有生成的3D-QSAR模型在统计学上都是拟合的、足够稳健且可靠的,能够解释与数据集中分子的药效团特征相关的生物活性变化。获得了一个具有三个受体位点(A)、一个芳香环(R)特征的四点药效团特征AAAR_1,其位点和存活分数值分别为0.890和4.613。本研究中生成的3D-QSAR图深入了解了数据集中分子的构效关系,这可能有助于设计出作为新型芳香化酶抑制剂的强效联苯衍生物。由Ramaswamy H. Sarma传达。