Superposition and alignment of labeled point clouds.

IEEE/ACM Trans. Comput. Biology Bioinform.(2011)

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摘要
Geometric objects are often represented approximately in terms of a finite set of points in three-dimensional euclidean space. In this paper, we extend this representation to what we call labeled point clouds. A labeled point cloud is a finite set of points, where each point is not only associated with a position in three-dimensional space, but also with a discrete class label that represents a specific property. This type of model is especially suitable for modeling biomolecules such as proteins and protein binding sites, where a label may represent an atom type or a physico-chemical property. Proceeding from this representation, we address the question of how to compare two labeled points clouds in terms of their similarity. Using fuzzy modeling techniques, we develop a suitable similarity measure as well as an efficient evolutionary algorithm to compute it. Moreover, we consider the problem of establishing an alignment of the structures in the sense of a one-to-one correspondence between their basic constituents. From a biological point of view, alignments of this kind are of great interest, since mutually corresponding molecular constituents offer important information about evolution and heredity, and can also serve as a means to explain a degree of similarity. In this paper, we therefore develop a method for computing pairwise or multiple alignments of labeled point clouds. To this end, we proceed from an optimal superposition of the corresponding point clouds and construct an alignment which is as much as possible in agreement with the neighborhood structure established by this superposition. We apply our methods to the structural analysis of protein binding sites.
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关键词
suitable similarity measure,atom type,point cloud,corresponding point cloud,biological point,protein binding site,discrete class label,labeled point clouds,points cloud,finite set,corresponding molecular constituent,computational biology,computational geometry,structure analysis,sequence alignment,data structure,multiple alignment,data structures,binding sites,biochemistry,structural bioinformatics,bioinformatics,evolutionary algorithm,fuzzy logic,similarity,graphs,euclidean space,point clouds,protein binding,molecular biophysics,proteins,evolutionary algorithms,algorithms,optimization,fuzzy set theory,three dimensional,evolutionary computation
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