2008
DOI: 10.1002/cmdc.200700312
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SyGMa: Combining Expert Knowledge and Empirical Scoring in the Prediction of Metabolites

Abstract: Predictions of potential metabolites based on chemical structure are becoming increasingly important in drug discovery to guide medicinal chemistry efforts that address metabolic issues and to support experimental metabolite screening and identification. Herein we present a novel rule-based method, SyGMa (Systematic Generation of potential Metabolites), to predict the potential metabolites of a given parent structure. A set of reaction rules covering a broad range of phase 1 and phase 2 metabolism has been der… Show more

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Cited by 117 publications
(110 citation statements)
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“…The development of MS based strategies enabling the identification of drug metabolites is regularly reported [22,23]. The implementation of algorithms pre and post acquisition to predict metabolites [24], to filter mass defects [25], neutral losses and isotope patterns [26] significantly enhances the rate of success in metabolite identification. By combining the advantages of on-line screening and high resolution mass spectrometry (HR-MS/MS) for first line structure identification, multidimensional data is obtained, and a quick selection can be made based on affinity and the modification introduced by e.g.…”
Section: Introductionmentioning
confidence: 99%
“…The development of MS based strategies enabling the identification of drug metabolites is regularly reported [22,23]. The implementation of algorithms pre and post acquisition to predict metabolites [24], to filter mass defects [25], neutral losses and isotope patterns [26] significantly enhances the rate of success in metabolite identification. By combining the advantages of on-line screening and high resolution mass spectrometry (HR-MS/MS) for first line structure identification, multidimensional data is obtained, and a quick selection can be made based on affinity and the modification introduced by e.g.…”
Section: Introductionmentioning
confidence: 99%
“…The main difference is the way such priorities are assigned. For example, the priority in META (Klopman et al , 1997Talafous et al 1994) is an integer between 1 and 9 that was optimized using a genetic algorithm; METEOR (Button et al 2003) has absolute and relative reasoning implemented; SyGMa (Ridder & Wagener, 2008) calculates a prior probability from a commercial metabolism database as the priority of each type of reaction. As expert systems typically assign the same priority to reactions of the same type without considering the influence of different substrates, additional calculations are often needed to reduce false positives.…”
Section: Metabolite Predictionmentioning
confidence: 99%
“…Large molecules with a molecular mass above 600 Da., which are less likely to be absorbed directly from the intestinal tract [ 29 ], were removed from the resulting library. To account for human metabolism after uptake, a number of phase 2 biotransformations [ 30 ] were applied, resulting in a total set of almost 5,000 compounds. Figure 6.2 illustrates the in silico generation metabolites for (epi)gallocatechin gallate.…”
Section: Examplesmentioning
confidence: 99%