Geometric filtering of pairwise atomic interactions applied to the design of efficient statistical potentials

Distance-dependent, pairwise, statistical potentials are based on the concept that the packing observed in known protein structures can be used as a reference for comparing different 3D models for a protein. Here, packing refers to the set of all pairs of atoms in the molecule. Among all methods dev...

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Bibliographic Details
Published inComputer aided geometric design Vol. 23; no. 6; pp. 531 - 544
Main Authors Zomorodian, Afra, Guibas, Leonidas, Koehl, Patrice
Format Journal Article
LanguageEnglish
Published Elsevier B.V 01.08.2006
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Summary:Distance-dependent, pairwise, statistical potentials are based on the concept that the packing observed in known protein structures can be used as a reference for comparing different 3D models for a protein. Here, packing refers to the set of all pairs of atoms in the molecule. Among all methods developed to assess three-dimensional models, statistical potentials are subject both to praise for their power of discrimination, and to criticism for the weaknesses of their theoretical foundations. Classical derivations of pairwise potentials assume statistical independence of all pairs of atoms. This assumption, however, is not valid in general. We show that we can filter the list of all interactions in a protein to generate a much smaller subset of pairs that retains most of the structural information contained in proteins. The filter is based on a geometric method called alpha shapes that captures the packing in a conformation. Statistical scoring functions derived from such subsets perform as well as scoring functions derived from the set of all pairwise interactions.
Bibliography:ObjectType-Article-2
SourceType-Scholarly Journals-1
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content type line 23
ISSN:0167-8396
1879-2332
DOI:10.1016/j.cagd.2006.03.002