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Effectiveness of graph-based and fingerprint-based similarity measures for virtual screening of 2D chemical structure databases
Authors:Raymond John W  Willett Peter
Institution:(1) Ann Arbor Laboratories, Pfizer Global Research and Development, 2800 Plymouth Road, Ann Arbor, Michigan, 48105, U.S.A;(2) Krebs Institute for Biomolecular Research and Department of Information Studies, University of Sheffield, Western Bank, Sheffield, S10 2TN, U.K
Abstract:This paper reports an evaluation of both graph-based and fingerprint-based measures of structural similarity, when used for virtual screening of sets of 2D molecules drawn from the MDDR and ID Alert databases. The graph-based measures employ a new maximum common edge subgraph isomorphism algorithm, called RASCAL, with several similarity coefficients described previously for quantifying the similarity between pairs of graphs. The effectiveness of these graph-based searches is compared with that resulting from similarity searches using BCI, Daylight and Unity 2D fingerprints. Our results suggest that graph-based approaches provide an effective complement to existing fingerprint-based approaches to virtual screening.
Keywords:fingerprint  graph matching  maximum common edge subgraph  maximum overlapping set  RASCAL  similarity coefficient  similarity searching  virtual screening
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