C. A. Santana, F. Cerqueira, C. H. Silveira, A. V. Fassio, R. Minardi, S. Silveira
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引用次数: 5
摘要
蛋白质和配体之间的相互作用与许多生物过程有关。在过去的几年里,这种相互作用获得了更多的关注,因为理解蛋白质-配体分子识别是配体预测、靶标识别和药物设计等的重要一步。本文介绍了GReMLIN (Graph Mining strategy to infer protein-Ligand INteraction patterns),这是一种基于频繁子图挖掘的策略,用于在一组相关蛋白质中搜索保守的蛋白质-配体相互作用,能够感知与蛋白质-配体相互作用相关的结构安排。与实验确定的相互作用相比,我们的芯片策略能够找到CDK2的许多相关结合位点残基/原子和蓖麻毒素的活性位点残基/原子。
GReMLIN: A Graph Mining Strategy to Infer Protein-Ligand Interaction Patterns
Interactions between proteins and ligands are relevant in many biological processes. In the last years, such interactions have gained even more attention as the comprehension of protein-ligand molecular recognition is an important step to ligand prediction, target identificantion, and drug design, among others. This article presents GReMLIN (Graph Mining strategy to infer protein-Ligand INteraction patterns), a strategy to search for conserved protein-ligand interactions in a set of related proteins, based on frequent subgraph mining, that is able to perceive structural arrangements relevant for protein-ligand interaction. When compared to experimentally determined interactions, our in silico strategy was able to find many of relevant binding site residues/atoms for CDK2 and active site residues/atoms for Ricin.