Miriana Di Stefano, Salvatore Galati, Lisa Piazza, Francesca Gado, Carlotta Granchi, Marco Macchia, Antonio Giordano, Tiziano Tuccinardi, Giulio Poli
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引用次数: 0
摘要
我们介绍了一种名为 "西瓜"(Watermelon)的新计算方法,该方法专为开发基于受体结构的药效模型而设计。该方法利用分子片段作为探针,对蛋白质靶点结合位点内配体相互作用的潜在热点进行采样。通过采用对接和分子动力学(MD)模拟,确定这些探针在结合位点不同区域内形成的最重要的相互作用。这些相互作用随后被转化为药理特征,为潜在配体划定关键锚定位点。该方法的可靠性通过单酰基甘油脂肪酶(MAGL)酶进行了实验验证。生成的药理模型捕捉了在各种 X 射线共晶体结构中观察到的配体-MAGL 相互作用特征,并结合共识对接和 MD 模拟,用于筛选市售化合物数据库。这次筛选成功鉴定了两种具有微摩尔效力的新型 MAGL 抑制剂,从而证实了西瓜方法的可靠性。
Watermelon: setup and validation of an in silico fragment-based approach.
We present a new computational approach, named Watermelon, designed for the development of pharmacophore models based on receptor structures. The methodology involves the sampling of potential hotspots for ligand interactions within a protein target's binding site, utilising molecular fragments as probes. By employing docking and molecular dynamics (MD) simulations, the most significant interactions formed by these probes within distinct regions of the binding site are identified. These interactions are subsequently transformed into pharmacophore features that delineates key anchoring sites for potential ligands. The reliability of the approach was experimentally validated using the monoacylglycerol lipase (MAGL) enzyme. The generated pharmacophore model captured features representing ligand-MAGL interactions observed in various X-ray co-crystal structures and was employed to screen a database of commercially available compounds, in combination with consensus docking and MD simulations. The screening successfully identified two new MAGL inhibitors with micromolar potency, thus confirming the reliability of the Watermelon approach.
期刊介绍:
Journal of Enzyme Inhibition and Medicinal Chemistry publishes open access research on enzyme inhibitors, inhibitory processes, and agonist/antagonist receptor interactions in the development of medicinal and anti-cancer agents.
Journal of Enzyme Inhibition and Medicinal Chemistry aims to provide an international and interdisciplinary platform for the latest findings in enzyme inhibition research.
The journal’s focus includes current developments in:
Enzymology;
Cell biology;
Chemical biology;
Microbiology;
Physiology;
Pharmacology leading to drug design;
Molecular recognition processes;
Distribution and metabolism of biologically active compounds.