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Prediction of sub-cavity binding preferences using an adaptive physicochemical structure representation

机译:使用适应性理化结构表示预测亚腔结合偏好

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Motivation: The ability to predict binding profiles for an arbitrary protein can significantly improve the areas of drug discovery, lead optimization and protein function prediction. At present, there are no successful algorithms capable of predicting binding profiles for novel proteins. Existing methods typically rely on manually curated templates or entire active site comparison. Consequently, they perform best when analyzing proteins sharing significant structural similarity with known proteins (i.e. proteins resulting from divergent evolution). These methods fall short when used to characterize the binding pro. le of a novel active site or one for which a template is not available. In contrast to previous approaches, our method characterizes the binding preferences of sub-cavities within the active site by exploiting a large set of known protein ligand complexes. The uniqueness of our approach lies not only in the consideration of sub-cavities, but also in the more complete structural representation of these sub-cavities, their parametrization and the method by which they are compared. By only requiring local structural similarity, we are able to leverage previously unused structural information and perform binding inference for proteins that do not share significant structural similarity with known systems.Results: Our algorithm demonstrates the ability to accurately cluster similar sub-cavities and to predict binding patterns across a diverse set of protein-ligand complexes. When applied to two high-pro. le drug targets, our algorithm successfully generates a binding pro. le that is consistent with known inhibitors. The results suggest that our algorithm should be useful in structure-based drug discovery and lead optimization.
机译:动机:预测任意蛋白质结合谱的能力可以显着改善药物发现,前导优化和蛋白质功能预测的领域。目前,还没有成功的算法能够预测新型蛋白质的结合谱。现有方法通常依赖于手动策划的模板或整个活动站点比较。因此,它们在分析与已知蛋白质具有显着结构相似性的蛋白质(即由不同进化产生的蛋白质)时表现最佳。当用于表征结合亲时,这些方法不足。一个新的活动站点或没有可用模板的站点。与以前的方法相比,我们的方法通过利用大量已知的蛋白质配体复合物来表征活性位点内子腔的结合偏好。我们方法的独特性不仅在于考虑子腔,而且还在于这些子腔的更完整的结构表示,它们的参数化以及比较它们的方法。通过仅要求局部结构相似性,我们便能够利用先前未使用的结构信息,并对与已知系统不具有显着结构相似性的蛋白质进行结合推断。各种蛋白质-配体复合物的结合模式。应用于两个高亲时。以药物为目标,我们的算法成功生成了一个绑定亲。与已知抑制剂一致。结果表明,我们的算法在基于结构的药物发现和前导优化中应该有用。

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