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Structural representation of data structures

机译:数据结构的结构表示

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Study of the morphology of proteins, and their 3D structure, supports investigations of their functions and represents an initial step towards protein-based drug design. The goal of this paper is to define techniques, based on the geometrical and topological structure of protein surfaces, for the detection and analysis of sites of potential protein-protein and protein-ligand interactions. Two protein representation modalities based on the Concavity Tree (CT) and the Enriched Complex Extended Gaussian Image (EC-EGI) are considered. In particular, the concavity tree, in which the interface is usually extended and roughly planar, is considered to be better suited to protein-protein interaction studies. Instead, the EGI is more suited to protein-ligand interactions, in which the small ligand molecule usually has to fit into the protein cavity. In fact, the histogram of the orientations is better suited to representing a mainly convex object and its dual matching region (the cavity). Both these data structures are open, and can be easily integrated with biochemical features.
机译:对蛋白质形态及其3D结构的研究支持对其功能的研究,代表了朝着基于蛋白质的药物设计迈出的第一步。本文的目的是基于蛋白质表面的几何和拓扑结构,定义用于检测和分析潜在的蛋白质-蛋白质和蛋白质-配体相互作用位点的技术。考虑了基于凹度树(CT)和浓缩复合扩展高斯图像(EC-EGI)的两种蛋白质表示形式。特别是,通常在其中界面扩展且大致呈平面的凹树被认为更适合蛋白质-蛋白质相互作用研究。取而代之的是,EGI更适合于蛋白质-配体相互作用,在这种情况下,小的配体分子通常必须适合蛋白质腔。实际上,方向的直方图更适合于表示主要为凸形的对象及其对偶匹配区域(空腔)。这两个数据结构都是开放的,可以轻松地与生化特征集成。

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