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强效抑制剂精准靶向 MMP-13 的 S1' 环,这是骨关节炎的关键靶点。

Potent inhibitors precise to S1' loop of MMP-13, a crucial target for osteoarthritis.

机构信息

Department of Bioinformatics, SRM University, SRM Nagar, Kattankulathur, Kancheepuram District, Chennai 603203, India.

出版信息

J Mol Graph Model. 2013 Jul;44:297-310. doi: 10.1016/j.jmgm.2013.06.005. Epub 2013 Jul 4.

DOI:10.1016/j.jmgm.2013.06.005
PMID:23938376
Abstract

Matrix metalloproteinase-13 (MMP-13) is the primary MMP involved in cartilage degradation through its particular ability to cleave type-II collagen. This protein is expressed by chondrocytes and synovial cells in human osteoarthritis and rheumatoid arthritis; hence, it is an attractive target for the treatment of arthritic diseases. Currently available inhibitors lack specificity for metalloproteinase because of a common Zn binding site in MMPs; thus, there is a need to identify selective MMP-13 inhibitors for osteoarthritis therapy. Because selectivity is the major concern, both ligand-based and protein-based pharmacophore methodologies were used to identity potent and selective MMP-13 inhibitors. Different hypotheses were validated, and the best hypothesis was used to screen Zinc (natural and chemical) databases to seek novel scaffolds as MMP-13 inhibitors. The identified hits were validated using different strategies, such as Glide Standard precision, extra precision, E-model energies and receiver operating curve (ROC). In addition, potent inhibitors were selected based on two criteria: a similar binding mode as that of the active site PB3 crystal ligand and crucial amino acid interactions that are catalytically important for the function of MMP-13. The candidate potent inhibitors ZINC 02535232, ZINC 08399795, ZINC 12419118 and ZINC 00624580 nearly reproduced the H-bond interactions formed in the crystal structure of 1XUC with reasonable RMSD values exhibiting a novel interaction pattern that was not previously observed in MMP-13 inhibitors. The identified potent hits with diverse chemical scaffolds may be useful in designing new MMP-13 inhibitors.

摘要

基质金属蛋白酶-13(MMP-13)通过其特异性切割 II 型胶原的能力,是参与软骨降解的主要 MMP。这种蛋白在人类骨关节炎和类风湿关节炎的软骨细胞和滑膜细胞中表达;因此,它是治疗关节炎疾病的有吸引力的靶标。目前可用的抑制剂由于 MMP 中共同的 Zn 结合位点而缺乏对金属蛋白酶的特异性;因此,需要鉴定用于骨关节炎治疗的选择性 MMP-13 抑制剂。由于选择性是主要关注点,因此使用基于配体和基于蛋白质的药效团方法来鉴定有效的选择性 MMP-13 抑制剂。验证了不同的假设,并使用最佳假设筛选锌(天然和化学)数据库,以寻找作为 MMP-13 抑制剂的新型支架。使用不同的策略验证鉴定的命中,例如 Glide Standard precision、extra precision、E-model energies 和 receiver operating curve (ROC)。此外,根据两个标准选择有效的抑制剂:与活性位点 PB3 晶体配体相似的结合模式以及对 MMP-13 功能至关重要的关键氨基酸相互作用。候选有效抑制剂 ZINC 02535232、ZINC 08399795、ZINC 12419118 和 ZINC 00624580几乎再现了 1XUC 晶体结构中形成的氢键相互作用,其合理的 RMSD 值表现出以前在 MMP-13 抑制剂中未观察到的新相互作用模式。具有多种化学支架的鉴定有效命中可能有助于设计新的 MMP-13 抑制剂。

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