Pharmaceutical Chemistry Division, University Institute of Pharmaceutical Sciences (UIPS) and Centre of Advanced Study in Pharmaceutical Sciences (UGC-CAS), Panjab University, Chandigarh, 160 014, India.
Mol Divers. 2012 Nov;16(4):803-23. doi: 10.1007/s11030-012-9394-x. Epub 2012 Sep 21.
The reversible inhibition of acetylcholinesterase (AChE) has become a promising target for the treatment of Alzheimer's disease (AD) which is mainly associated with low in vivo levels of acetylcholine (ACh). The availability of AChE crystal structures with and without a ligand triggered the effort to find a structure-based design of acetylcholinesterase inhibitors (AChEIs) for AD. The major problem observed with the structure-based design was the feeble robustness of the scoring functions toward the correlation of docking scores with inhibitory potencies of known ligands. This prompted us to develop new prediction models using the stepwise regression analysis based on consensus of different docking and their scoring methods (GOLD, LigandFit, and GLIDE). In the present investigation, a dataset of 91 molecules belonging to 9 different structural classes of heterocyclic compounds with an activity range of 0.008 to 281,000 nM was considered for docking studies and development of AChE-specific 3D-QSAR models. The model (M1) developed using consensus of docking scores of scoring functions viz. Glide score, Gold score, Chem score, ASP score, PMF score, and DOCK score was found to be the best (R(2) = 0.938, Q(2) = 0.925, R(pred)(2) = 0.919, R(2)m((overall)) = 0.936) compared to other consensus models. Docking studies revealed that the molecules with proper alignment in the active site gorge and the ability to interact with all the crucial amino acid residues, in particular by forming π-π stacking interactions with Trp84 at the catalytic anionic site (CAS) and Trp279 at peripheral anionic site (PAS), showed augmented potencies with consequent improvement in patient cognition and reduced the formation of senile plaques associated with AD. Further, the descriptors that signify the association of the ligands with the receptor as well as ADME properties of the ligands were also analyzed by means of the set of ligands that have been pre-positioned with respect to a receptor after docking analysis and considered as independent variables to generate a linear model (M3 and M4) using a stepwise multiple linear regression method to get additional insight into the physicochemical requirements for effective binding of ligands with AChE as well as for prediction of AChE inhibition. The developed AChE-specific prediction models (M1-M4) satisfactorily reflect the structure-activity relationship of the existing AChEIs and have all the potential to facilitate the process of design and development of new potent AChEIs.
乙酰胆碱酯酶(AChE)的可逆抑制作用已成为治疗阿尔茨海默病(AD)的一个有希望的靶点,AD 主要与体内乙酰胆碱(ACh)水平降低有关。具有和不具有配体的 AChE 晶体结构的可用性引发了寻找基于结构的乙酰胆碱酯酶抑制剂(AChEIs)设计用于 AD 的努力。基于结构的设计的主要问题是评分函数对对接分数与已知配体抑制效力之间相关性的稳健性较差。这促使我们使用基于不同对接及其评分方法(GOLD、LigandFit 和 GLIDE)共识的逐步回归分析来开发新的预测模型。在本研究中,使用活性范围为 0.008 至 281,000 nM 的 9 种不同杂环化合物结构类别的 91 种分子的数据集进行对接研究和开发 AChE 特异性 3D-QSAR 模型。使用 Glide 评分、Gold 评分、Chem 评分、ASP 评分、PMF 评分和 DOCK 评分的评分函数对接评分共识开发的模型(M1)被发现是最好的(R²=0.938,Q²=0.925,Rpred²=0.919,R²m(overall)=0.936)与其他共识模型相比。对接研究表明,在活性位点峡谷中具有适当排列的分子以及与所有关键氨基酸残基相互作用的能力,特别是通过与催化阴离子部位(CAS)的色氨酸 84 和外周阴离子部位(PAS)的色氨酸 279 形成π-π堆积相互作用,显示出增强的效力,从而改善患者认知能力,并减少与 AD 相关的老年斑的形成。此外,还通过对接分析预先定位在受体上的配体集来分析与受体结合以及配体 ADME 性质相关的描述符,并使用逐步多元线性回归方法将其作为自变量生成线性模型(M3 和 M4),以深入了解与 AChE 有效结合以及预测 AChE 抑制相关的配体的理化要求。开发的 AChE 特异性预测模型(M1-M4)令人满意地反映了现有 AChEIs 的构效关系,并且都有可能促进新型有效 AChEIs 的设计和开发。