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Multiple Semi-flexible 3D Superposition of Drug-sized Molecules

Please always quote using this URN: urn:nbn:de:0297-zib-8278
  • In this paper we describe a new algorithm for multiple semi-flexible superpositioning of drug-sized molecules. The algorithm identifies structural similarities of two or more molecules. When comparing a set of molecules on the basis of their three-dimensional structures, one is faced with two main problems. (1) Molecular structures are not fixed but flexible, i.e., a molecule adopts different forms. To address this problem, we consider a set of conformers per molecule. As conformers we use representatives of conformational ensembles, generated by the program ZIBMol. (2) The degree of similarity may vary considerably among the molecules. This problem is addressed by searching for similar substructures present in arbitrary subsets of the given set of molecules. The algorithm requires to preselect a reference molecule. All molecules are compared to this reference molecule. For this pairwise comparison we use a two-step approach. Clique detection on the correspondence graph of the molecular structures is used to generate start transformations, which are then iteratively improved to compute large common substructures. The results of the pairwise comparisons are efficiently merged using binary matching trees. All common substructures that were found, whether they are common to all or only a few molecules, are ranked according to different criteria, such as number of molecules containing the substructure, size of substructure, and geometric fit. For evaluating the geometric fit, we extend a known scoring function by introducing weights which allow to favor potential pharmacophore points. Despite considering the full atomic information for identifying multiple structural similarities, our algorithm is quite fast. Thus it is well suited as an interactive tool for the exploration of structural similarities of drug-sized molecules.

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Metadaten
Author:Daniel BaumORCiD
Document Type:ZIB-Report
Tag:clique detection; iterative closest point; matching tree; multiple superposition; pharmaceutical drug design; semi-flexible alignment
MSC-Classification:68-XX COMPUTER SCIENCE (For papers involving machine computations and programs in a specific mathematical area, see Section -04 in that area) / 68Wxx Algorithms (For numerical algorithms, see 65-XX; for combinatorics and graph theory, see 05C85, 68Rxx) / 68W25 Approximation algorithms
92-XX BIOLOGY AND OTHER NATURAL SCIENCES / 92-08 Computational methods
CCS-Classification:J. Computer Applications / J.3 LIFE AND MEDICAL SCIENCES
I. Computing Methodologies / I.5 PATTERN RECOGNITION / I.5.3 Clustering
Date of first Publication:2004/12/22
Series (Serial Number):ZIB-Report (04-52)
ZIB-Reportnumber:04-52
Published in:Appeared in: Computational Life Sciences. First Int. Symp., CompLife 2005, Konstanz, Germany, Proc. Springer 2005. LNCS Subseries Lect. Notes in Bioinformatics, 3695, pp. 198-207
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