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Background: Analysis of time-resolved postprandial metabolomics data can improve the understanding of metabolic mechanisms, potentially revealing biomarkers for early diagnosis of metabolic diseases and advancing precision nutrition and medicine. Postprandial metabolomics measurements at several time points from multiple subjects can be arranged as a subjects by metabolites by time points array. Traditional analysis methods are limited in terms of revealing subject groups, related metabolites, and temporal patterns simultaneously from such three-way data.
Results: We introduce an unsupervised multiway analysis approach based on the CANDECOMP/PARAFAC (CP) model for improved analysis of postprandial metabolomics data guided by a simulation study. Because of the lack of ground truth in real data, we generate simulated data using a comprehensive human metabolic model. This allows us to assess the performance of CP models in terms of revealing subject groups and underlying metabolic processes. We study three analysis approaches: analysis of fasting-state data using principal component analysis, T0-corrected data (i.e., data corrected by subtracting fasting-state data) using a CP model and full-dynamic (i.e., full postprandial) data using CP. Through extensive simulations, we demonstrate that CP models capture meaningful and stable patterns from simulated meal challenge data, revealing underlying mechanisms and differences between diseased versus healthy groups.
Conclusions: Our experiments show that it is crucial to analyze both fasting-state and T0-corrected data for understanding metabolic differences among subject groups. Depending on the nature of the subject group structure, the best group separation may be achieved by CP models of T0-corrected or full-dynamic data. This study introduces an improved analysis approach for postprandial metabolomics data while also shedding light on the debate about correcting baseline values in longitudinal data analysis.
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http://dx.doi.org/10.1186/s12859-024-05686-w | DOI Listing |
J Anim Sci
August 2025
Department of Agriculture and Life Sciences, Lincoln University, Lincoln, Christchurch, New Zealand.
Emerging evidence suggests that the metabolites present in biochemically diverse herbages cascade across trophic levels, influencing both the meat quality of grazing cattle and human metabolomic profiles. This study compared the metabolomic profiles of Angus cattle finished on three distinct pasture systems: a standard perennial ryegrass and white clover sward (PRG), a complex multispecies mixture (CMS; n = 22 species), and adjacent monoculture strips (AMS) comprising ryegrass, chicory, plantain, lucerne, and red clover in equal areas. The resulting tenderloins were processed into (250 g) beef patties and assessed in a double-blind, randomized, cross-over clinical trial involving 23 human participants (ANZCTR registration: ACTRN12624001081505).
View Article and Find Full Text PDFAnal Chim Acta
October 2025
Department of Medical Biochemistry, Division of Laboratory Medicine, Oslo University Hospital, Oslo, Norway; Core Facility for Global Metabolomics and Lipidomics, Faculty of Medicine, University of Oslo, Oslo, Norway.
Background: Lipidomics can provide critical insight into metabolic changes in health and disease, but faces challenges in sensitivity, lipid coverage, and annotation accuracy. To address these limitations, we optimized a liquid chromatography-mass spectrometry (LC-MS) method combining scheduled data-dependent acquisition (SDDA) and C30 column-based separations, aimed at improving global lipidomics for clinical diagnostics.
Results: Compared to conventional DDA and Intelligent Data Acquisition (AcquireX), SDDA demonstrated a 2-fold increase in number of lipids annotated, with a 2-fold higher annotation confidence (Grade A and B) of those lipids compared to DDA.
Nat Metab
August 2025
Division of Diabetes, Endocrinology and Metabolism, Baylor College of Medicine, Houston, TX, USA.
N-acetylaspartate (NAA), the brain's second most abundant metabolite, provides essential substrates for myelination through its hydrolysis. However, the physiological roles of NAA in other tissues remain unknown. Here, we show that aspartoacylase (ASPA) expression in white adipose tissue (WAT) governs blood NAA levels for postprandial body temperature regulation.
View Article and Find Full Text PDFWorld J Diabetes
July 2025
Department of Endocrinology, The First Affiliated Hospital of Anhui University of Chinese Medicine, Hefei 230031, Anhui Province, China.
Background: Prediabetes mellitus (PDM) is receiving increasing attention as a precursor to type 2 diabetes mellitus. Lifestyle and traditional Chinese medicine (TCM) interventions are effective for PDM prevention and treatment. Therefore, we conducted a preliminary investigation and an exploratory randomised controlled trial to assess the effects of a combined lifestyle and TCM intervention on PDM indicators.
View Article and Find Full Text PDFMol Nutr Food Res
July 2025
Department of Food Science and Experimental Nutrition, School of Pharmaceutical Sciences, University of São Paulo, São Paulo, Brazil.
The postprandial period is an opportunity window to assess metabolic phenotype, and its study is gaining popularity due to the wealth of information that can be uncovered when a dietary challenge is associated with the application of metabolomics approaches. Bile acids (BA) were recently identified as signaling molecules that display major changes in circulating levels following food intake. In this regard, a gap of information remains linking BA postprandial kinetics with their possible metabolic effects.
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