Publication | Closed Access
Substructure Mining Using Elaborate Chemical Representation
84
Citations
33
References
2006
Year
EngineeringStructural Pattern RecognitionPattern DiscoveryChemistryChemical BiologyMining MethodsData ScienceData MiningElaborate Chemical RepresentationSubstructure MiningBiochemistryKnowledge DiscoveryBioinformaticsDiscovery TechniqueGraph TheoryNatural SciencesComputational BiologyStructure DiscoveryStructure MiningSubstructure Mining AlgorithmsDrug Discovery
Substructure mining algorithms are important drug discovery tools since they can find substructures that affect physicochemical and biological properties. Current methods, however, only consider a part of all chemical information that is present within a data set of compounds. Therefore, the overall aim of our study was to enable more exhaustive data mining by designing methods that detect all substructures of any size, shape, and level of chemical detail. A means of chemical representation was developed that uses atomic hierarchies, thus enabling substructure mining to consider general and/or highly specific features. As a proof-of-concept, the efficient, multipurpose graph mining system Gaston learned substructures of any size and shape from a mutagenicity data set that was represented in this manner. From these substructures, we extracted a set of only six nonredundant, discriminative substructures that represent relevant biochemical knowledge. Our results demonstrate the individual and synergistic importance of elaborate chemical representation and mining for nonlinear substructures. We conclude that the combination of elaborate chemical representation and Gaston provides an excellent method for 2D substructure mining as this recipe systematically explores all substructures in different levels of chemical detail.
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