Bhattacharjee Arnab, Kar Supratik, Ojha Probir Kumar
Drug Discovery and Development Laboratory (DDD Lab), Department of Pharmaceutical Technology, Jadavpur University, Kolkata, 700032, India.
Chemometrics and Molecular Modeling Laboratory, Department of Chemistry and Physics, Kean University, 1000 Morris Avenue, Union, NJ, 07083, USA.
Mol Divers. 2024 Dec;28(6):4199-4220. doi: 10.1007/s11030-024-10811-1. Epub 2024 Mar 9.
Contemporary research has convincingly demonstrated that upregulation of G protein-coupled receptor 183 (GPR183), orchestrated by its endogenous agonist, 7α,25-dihydroxyxcholesterol (7α,25-OHC), leads to the development of cancer, diabetes, multiple sclerosis, infectious, and inflammatory diseases. A recent study unveiled the cryo-EM structure of 7α,25-OHC bound GPR183 complex, presenting an untapped opportunity for computational exploration of potential GPR183 inhibitors, which served as our inspiration for the current work. A predictive and validated two-dimensional QSAR model using genetic algorithm (GA) and multiple linear regression (MLR) on experimental GPR183 inhibition data was developed. QSAR study highlighted that structural features like dissimilar electronegative atoms, quaternary carbon atoms, and CHRX fragment (X: heteroatoms) influence positively, while the existence of oxygen atoms with a topological separation of 3, negatively affects GPR183 inhibitory activity. Post assessment of true external set prediction capability, the MLR model was deployed to screen 12,449 DrugBank compounds, followed by a screening pipeline involving molecular docking, druglikeness, ADMET, protein-ligand stability assessment using deep learning algorithm, molecular dynamics, and molecular mechanics. The current findings strongly evidenced DB05790 as a potential lead for prospective interference of oxysterol-mediated GPR183 overexpression, warranting further in vitro and in vivo validation.
当代研究已令人信服地证明,由其内源性激动剂7α,25-二羟基胆固醇(7α,25-OHC)精心编排的G蛋白偶联受体183(GPR183)上调会导致癌症、糖尿病、多发性硬化症、传染病和炎症性疾病的发生。最近的一项研究揭示了7α,25-OHC结合的GPR183复合物的冷冻电镜结构,为潜在的GPR183抑制剂的计算探索提供了一个尚未开发的机会,这为我们当前的工作提供了灵感。利用遗传算法(GA)和多元线性回归(MLR)对实验性GPR183抑制数据建立了一个预测性且经过验证的二维QSAR模型。QSAR研究强调,不同的电负性原子、季碳原子和CHRX片段(X:杂原子)等结构特征具有正向影响,而拓扑距离为3的氧原子的存在则对GPR183抑制活性有负面影响。在对真实外部集预测能力进行后评估后,使用MLR模型筛选了12449种DrugBank化合物,随后进行了一个筛选流程,包括分子对接、类药性、ADMET、使用深度学习算法的蛋白质-配体稳定性评估、分子动力学和分子力学。目前的研究结果有力地证明DB05790是潜在的可用于前瞻性干扰氧化甾醇介导的GPR183过表达的先导物,值得进一步进行体外和体内验证。