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aCSM: noise-free graph-based signatures to large-scale receptor-based ligand prediction.

机译:aCSM:无噪声的基于图的签名,用于基于受体的大规模配体预测。

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Motivation: Receptor-ligand interactions are a central phenomenon in most biological systems. They are characterized by molecular recognition, a complex process mainly driven by physicochemical and structural properties of both receptor and ligand. Understanding and predicting these interactions are major steps towards protein ligand prediction, target identification, lead discovery and drug design. Results: We propose a novel graph-based-binding pocket signature called aCSM, which proved to be efficient and effective in handling large-scale protein ligand prediction tasks. We compare our results with those described in the literature and demonstrate that our algorithm overcomes the competitor's techniques. Finally, we predict novel ligands for proteins from Trypanosoma cruzi, the parasite responsible for Chagas disease, and validate them in silico via a docking protocol, showing the applicability of the method in suggesting ligands for pockets in a real-world scenario.Digital Object Identifier http://dx.doi.org/10.1093/bioinformatics/btt058
机译:动机:受体-配体相互作用是大多数生物系统中的中心现象。它们的特征是分子识别,这是一个复杂的过程,主要由受体和配体的物理化学和结构特性驱动。了解和预测这些相互作用是蛋白质配体预测,靶标识别,先导发现和药物设计的主要步骤。结果:我们提出了一种新的基于图的结合口袋签名,称为aCSM,它被证明在处理大规模蛋白质配体预测任务中是有效的。我们将我们的结果与文献中描述的结果进行比较,并证明我们的算法克服了竞争对手的技术。最后,我们预测了锥虫锥虫(Trypanosoma cruzi)(负责查加斯病)的寄生虫的蛋白质的新配体,并通过对接规程在计算机上对其进行了验证,表明了该方法在实际场景中建议用于口袋的配体的适用性。 http://dx.doi.org/10.1093/bioinformatics/btt058

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