Chadha Navriti, Silakari Om
Molecular Modeling Lab (MML), Department of Pharmaceutical Sciences and Drug Research, Punjabi University, Patiala, Punjab, 147002, India.
Mol Divers. 2016 Aug;20(3):747-61. doi: 10.1007/s11030-016-9676-9. Epub 2016 May 23.
Current clinical studies have revealed that diabetic complications are multifactorial disorders that target two or more pathways. The majority of drugs in clinical trial target aldose reductase and protein kinase C ([Formula: see text]), while recent studies disclosed a significant role played by poly (ADP-ribose) polymerase-1 (PARP-1). In light of this, the current study was aimed to identify novel dual inhibitors of [Formula: see text] and PARP-1 using a pharmaco-informatics methodology. Pharmacophore-based 3D QSAR models for these two targets were generated using HypoGen and used to screen three commercially available chemical databases to identify dual inhibitors of [Formula: see text] and PARP-1. Overall, 18 hits were obtained from the screening process; the hits were filtered based on their drug-like properties and predicted binding affinities (docking analysis). Important amino acid residues were predicted by developing a fingerprint of the active site using alanine-scanning mutagenesis and molecular dynamics. The stability of the complexes (18 hits with both proteins) and their final binding orientations were investigated using molecular dynamics simulations. Thus, novel hits have been predicted to have good binding affinities for [Formula: see text] and PARP-1 proteins, which could be further investigated for in vitro/in vivo activity.
目前的临床研究表明,糖尿病并发症是针对两条或更多途径的多因素疾病。临床试验中的大多数药物靶向醛糖还原酶和蛋白激酶C([公式:见原文]),而最近的研究揭示了聚(ADP-核糖)聚合酶-1(PARP-1)发挥的重要作用。有鉴于此,本研究旨在使用药物信息学方法鉴定新型的[公式:见原文]和PARP-1双重抑制剂。使用HypoGen生成了针对这两个靶点的基于药效团的3D QSAR模型,并用于筛选三个商业化学数据库,以鉴定[公式:见原文]和PARP-1的双重抑制剂。总体而言,从筛选过程中获得了18个命中物;根据其类药性质和预测的结合亲和力(对接分析)对命中物进行筛选。通过使用丙氨酸扫描诱变和分子动力学开发活性位点指纹来预测重要的氨基酸残基。使用分子动力学模拟研究了复合物(与两种蛋白质结合的18个命中物)的稳定性及其最终结合方向。因此,预测新型命中物对[公式:见原文]和PARP-1蛋白具有良好的结合亲和力,可进一步研究其体外/体内活性。