药效团
虚拟筛选
李宾斯基五定律
对接(动物)
生物信息学
化学
整合酶
立体化学
计算生物学
整合酶抑制剂
氢键
组合化学
人类免疫缺陷病毒(HIV)
分子
DNA
生物化学
生物
有机化学
基因
病毒载量
护理部
免疫学
医学
抗逆转录病毒疗法
作者
Karnati Konda Reddy,Sanjeev Kumar Singh,Sunil Kumar Tripathi,Chandrabose Selvaraj
标识
DOI:10.1080/1062936x.2013.772919
摘要
HIV-1 integrase (IN) is a retroviral enzyme that catalyses integration of the reverse-transcribed viral DNA into the host genome, which is necessary for efficient viral replication. In this study, we have performed an in silico virtual screening for the identification of potential HIV-1 IN strand transfer (ST) inhibitors. Pharmacophore modelling and atom-based 3D-QSAR studies were carried out for a series of compounds belonging to 3-Hydroxypyrimidine-2,4-diones. Based on the ligand-based pharmacophore model, we obtained a five-point pharmacophore with two hydrogen bond acceptors (A), one hydrogen bond donor (D), one hydrophobic group (H) and one aromatic ring (R) as pharmacophoric features. The pharmacophore hypothesis AADHR was used as a 3D query in a sequential virtual screening study to filter small molecule databases Maybridge, ChemBridge and Asinex. Hits matching with pharmacophore hypothesis AADHR were retrieved and passed progressively through Lipinski's rule of five filtering, molecular docking and hierarchical clustering. The five compounds with best hits with novel and diverse chemotypes were subjected to QM/MM docking, which showed improved docking accuracy. We further performed molecular dynamics simulation and found three compounds that form stable interactions with key residues. These compounds could be used as a leads for further drug development and rational design of HIV-1 IN inhibitors.
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