about
A peaklet-based generic strategy for the untargeted analysis of comprehensive two-dimensional gas chromatography mass spectrometry data sets.Methylation of catechins and procyanidins by rat and human catechol-O-methyltransferase: metabolite profiling and molecular modeling studies.Metabolite patterns predicting sex and age in participants of the Karlsruhe Metabolomics and Nutrition (KarMeN) study.Untargeted NMR Spectroscopic Analysis of the Metabolic Variety of New Apple Cultivars.On the applicability of comprehensive two-dimensional gas chromatography combined with a fast-scanning quadrupole mass spectrometer for untargeted large-scale metabolomics.The complex human urinary sugar profile: determinants revealed in the cross-sectional KarMeN studyThe influence of a chronic L-carnitine administration on the plasma metabolome of male Fischer 344 ratsMetabolite profiles evaluated, according to sex, do not predict resting energy expenditure and lean body mass in healthy non-obese subjectsExploring the Diversity of Sugar Compounds in Healthy, Prediabetic, and Diabetic VolunteersNutrimetabolomics: An Integrative Action for Metabolomic Analyses in Human Nutritional StudiesMetabolite profiling of onion landraces and the cold storage effectRobust Markers of Coffee Consumption Identified Among the Volatile Organic Compounds in Human UrineThe Putative Caloric Restriction Mimetic Resveratrol has Moderate Impact on Insulin Sensitivity, Body Composition, and the Metabolome in MiceDiscovery and Validation of Banana Intake Biomarkers Using Untargeted Metabolomics in Human Intervention and Cross-sectional StudiesDiscovery of Intake Biomarkers of Lentils, Chickpeas and White Beans by Untargeted LC-MS Metabolomics in Serum and Urine
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description
researcher ORCID ID = 0000-0002-1015-8667
@en
wetenschapper
@nl
name
Christoph H Weinert
@ast
Christoph H Weinert
@en
Christoph H Weinert
@nl
type
label
Christoph H Weinert
@ast
Christoph H Weinert
@en
Christoph H Weinert
@nl
prefLabel
Christoph H Weinert
@ast
Christoph H Weinert
@en
Christoph H Weinert
@nl
P31
P496
0000-0002-1015-8667