Literature DB >> 16562978

Scaffold hopping using clique detection applied to reduced graphs.

Edward J Barker1, David Buttar, David A Cosgrove, Eleanor J Gardiner, Paula Kitts, Peter Willett, Valerie J Gillet.   

Abstract

Similarity-based methods for virtual screening are widely used. However, conventional searching using 2D chemical fingerprints or 2D graphs may retrieve only compounds which are structurally very similar to the original target molecule. Of particular current interest then is scaffold hopping, that is, the ability to identify molecules that belong to different chemical series but which could form the same interactions with a receptor. Reduced graphs provide summary representations of chemical structures and, therefore, offer the potential to retrieve compounds that are similar in terms of their gross features rather than at the atom-bond level. Using only a fingerprint representation of such graphs, we have previously shown that actives retrieved were more diverse than those found using Daylight fingerprints. Maximum common substructures give an intuitively reasonable view of the similarity between two molecules. However, their calculation using graph-matching techniques is too time-consuming for use in practical similarity searching in larger data sets. In this work, we exploit the low cardinality of the reduced graph in graph-based similarity searching. We reinterpret the reduced graph as a fully connected graph using the bond-distance information of the original graph. We describe searches, using both the maximum common induced subgraph and maximum common edge subgraph formulations, on the fully connected reduced graphs and compare the results with those obtained using both conventional chemical and reduced graph fingerprints. We show that graph matching using fully connected reduced graphs is an effective retrieval method and that the actives retrieved are likely to be topologically different from those retrieved using conventional 2D methods.

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Year:  2006        PMID: 16562978     DOI: 10.1021/ci050347r

Source DB:  PubMed          Journal:  J Chem Inf Model        ISSN: 1549-9596            Impact factor:   4.956


  12 in total

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4.  Analysis of drug-endogenous human metabolite similarities in terms of their maximum common substructures.

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8.  Ligand-Based Virtual Screening Based on the Graph Edit Distance.

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9.  Similarity-Based Virtual Screen Using Enhanced Siamese Deep Learning Methods.

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Journal:  ACS Omega       Date:  2022-02-03

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