| Literature DB >> 32528151 |
Sarah E Berry1, Ana M Valdes2,3, Nicola Segata4, Paul W Franks5,6,7, Tim D Spector8, David A Drew9, Francesco Asnicar4, Mohsen Mazidi5, Jonathan Wolf10, Joan Capdevila10, George Hadjigeorgiou10, Richard Davies10, Haya Al Khatib1,10, Christopher Bonnett10, Sajaysurya Ganesh10, Elco Bakker10, Deborah Hart5, Massimo Mangino5, Jordi Merino11,12,13,14, Inbar Linenberg10, Patrick Wyatt10, Jose M Ordovas15,16, Christopher D Gardner17, Linda M Delahanty18, Andrew T Chan9.
Abstract
Metabolic responses to food influence risk of cardiometabolic disease, but large-scale high-resolution studies are lacking. We recruited n = 1,002 twins and unrelated healthy adults in the United Kingdom to the PREDICT 1 study and assessed postprandial metabolic responses in a clinical setting and at home. We observed large inter-individual variability (as measured by the population coefficient of variation (s.d./mean, %)) in postprandial responses of blood triglyceride (103%), glucose (68%) and insulin (59%) following identical meals. Person-specific factors, such as gut microbiome, had a greater influence (7.1% of variance) than did meal macronutrients (3.6%) for postprandial lipemia, but not for postprandial glycemia (6.0% and 15.4%, respectively); genetic variants had a modest impact on predictions (9.5% for glucose, 0.8% for triglyceride, 0.2% for C-peptide). Findings were independently validated in a US cohort (n = 100 people). We developed a machine-learning model that predicted both triglyceride (r = 0.47) and glycemic (r = 0.77) responses to food intake. These findings may be informative for developing personalized diet strategies. The ClinicalTrials.gov registration identifier is NCT03479866.Entities:
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Year: 2020 PMID: 32528151 PMCID: PMC8265154 DOI: 10.1038/s41591-020-0934-0
Source DB: PubMed Journal: Nat Med ISSN: 1078-8956 Impact factor: 53.440