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开发一种新的药物 3D 结构表示方法,并增强基于 TSR 的方法以探测药物与靶标相互作用。

Development of a novel representation of drug 3D structures and enhancement of the TSR-based method for probing drug and target interactions.

机构信息

Department of Chemistry, University of Louisiana at Lafayette, P.O. Box 44370, Lafayette, LA 70504, USA.

National Center for Advancing Translational Sciences, 9800 Medical Center Drive, Rockville, MD 20850, USA.

出版信息

Comput Biol Chem. 2024 Oct;112:108117. doi: 10.1016/j.compbiolchem.2024.108117. Epub 2024 Jun 4.

Abstract

Understanding the mechanisms underlying interactions between drugs and target proteins is critical for drug discovery. In our earlier studies, we introduced the Triangular Spatial Relationship (TSR)-based algorithm, which enables the representation of a protein's 3D structure as a vector of integers (TSR keys). These TSR keys correspond to substructures of the 3D structure of a protein and are computed based on the triangles constructed by all possible triples of C atoms within the protein. In this study, we report on a new TSR-based algorithm for probing drug and target interactions. Specifically, we have extended the previous algorithm in three novel directions: TSR keys for representing the 3D structure of a drug or a ligand, cross TSR keys between drugs and their targets and intra-residual TSR keys for phosphorylated amino acids. The outcomes illustrate the key contributions as follows: (i) The TSR-based method, which uses the TSR keys as features, is unique in its capability to interpret hierarchical relationships of drugs as well as drug - target complexes using common and specific TSR keys. (ii) The method can distinguish not only the binding sites from the rest of the protein structures, but also the binding sites of primary targets from those of off-targets. (iii) The method has the potential to correlate the 3D structures of drugs with their functions. (iv) Representation of 3D structures by TSR keys has its unique advantage in terms of ease of making searching for similar substructures across structure datasets easier. In summary, this study presents a novel computational methodology, with significant advantages, for providing insights into the mechanism underlying drug and target interactions.

摘要

理解药物与靶蛋白相互作用的机制对于药物发现至关重要。在我们之前的研究中,引入了基于三角空间关系(TSR)的算法,该算法可以将蛋白质的 3D 结构表示为整数向量(TSR 键)。这些 TSR 键对应于蛋白质 3D 结构的子结构,是根据蛋白质内所有可能的三原子组构建的三角形计算得出的。在这项研究中,我们报告了一种新的基于 TSR 的探测药物和靶标相互作用的算法。具体来说,我们在三个新方向上扩展了之前的算法:用于表示药物或配体 3D 结构的 TSR 键、药物与其靶标之间的交叉 TSR 键以及磷酸化氨基酸的内残基 TSR 键。结果说明了以下关键贡献:(i)基于 TSR 的方法,使用 TSR 键作为特征,独特之处在于能够使用通用和特定的 TSR 键解释药物以及药物-靶复合物的层次关系。(ii)该方法不仅可以区分结合位点与蛋白质结构的其余部分,还可以区分主要靶标与非靶标结合位点。(iii)该方法有可能将药物的 3D 结构与其功能相关联。(iv)TSR 键对 3D 结构的表示在跨结构数据集更容易搜索相似子结构方面具有独特的优势。总之,本研究提出了一种新颖的计算方法,具有显著优势,可深入了解药物与靶标相互作用的机制。

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