posted on 2014-05-20, 00:00authored byLars Ridder, Justin
J. J. van der Hooft, Stefan Verhoeven, Ric C. H. de Vos, Jacques Vervoort, Raoul J. Bino
The colonic breakdown and human biotransformation
of small molecules
present in food can give rise to a large variety of potentially bioactive
metabolites in the human body. However, the absence of reference data
for many of these components limits their identification in complex
biological samples, such as plasma and urine. We present an in silico workflow for automatic chemical annotation of
metabolite profiling data from liquid chromatography coupled with
multistage accurate mass spectrometry (LC−MSn), which we used to systematically screen for the presence
of tea-derived metabolites in human urine samples after green tea
consumption. Reaction rules for intestinal degradation and human biotransformation
were systematically applied to chemical structures of 75 green tea
components, resulting in a virtual library of 27 245 potential
metabolites. All matching precursor ions in the urine LC–MSn data sets, as well as the corresponding
fragment ions, were automatically annotated by in silico generated (sub)structures. The results were evaluated based on 74
previously identified urinary metabolites and lead to the putative
identification of 26 additional green tea-derived metabolites. A total
of 77% of all annotated metabolites were not present in the Pubchem
database, demonstrating the benefit of in silico metabolite
prediction for the automatic annotation of yet unknown metabolites
in LC–MSn data from nutritional
metabolite profiling experiments.