蛋白质结合位点比较的多重几何排列高效构建

T. Fober, G. Klebe, E. Hüllermeier
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引用次数: 1

摘要

我们从一种蛋白质结构比较的方法出发,其中关于这种结构的几何和物理化学性质的信息以标记点云的形式表示,即三维欧几里得空间中的一组标记点。然后通过计算最优空间叠加来比较两个点云。这种方法最近在文献中被介绍,并被证明可以产生非常好的相似性分数。然而,它并没有在两个或多个蛋白质结构的基本单位之间建立一对一对应的意义上的对齐。从生物学的角度来看,这种排列非常有趣,因为它们提供了关于进化、遗传和分子成分之间相互对应的重要信息。因此,在本文中,我们开发了一种基于标记点云叠加计算蛋白质结构成对或多重排列的方法。
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Efficient Construction of Multiple Geometrical Alignments for the Comparison of Protein Binding Sites
We proceed from a method for protein structure comparison in which information about the geometry and physico-chemical properties of such structures are represented in the form of labeled point clouds, that is, a set of labeled points in three-dimensional Euclidean space. Two point clouds are then compared by computing an optimal spatial superposition. This approach has recently been introduced in the literature and was shown to produce very good similarity scores. It does not, however, establish an alignment in the sense of a one-to-one correspondence between the basic units of two or more protein structures. From a biological point of view, alignments of this kind are of great interest, as they offer important information about evolution, heredity, and the mutual correspondence between molecular constituents. In this paper, we therefore developed a method for computing pairwise or multiple alignments of protein structures on the basis of labeled point cloud superpositions.
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