餐后
血糖性
餐食
医学
甘油三酯
人口
队列
生理学
胰岛素
内分泌学
内科学
环境卫生
胆固醇
作者
Sarah Berry,Ana M. Valdes,David A. Drew,Francesco Asnicar,Mohsen Mazidi,Jonathan Wolf,Joan Capdevila Pujol,George Hadjigeorgiou,Richard Davies,Haya Al Khatib,Christopher Bonnett,Sajaysurya Ganesh,Elco Bakker,Deborah Hart,Massimo Mangino,Jordi Merino,Inbar Linenberg,Patrick Wyatt,José M. Ordovás,Christopher D. Gardner
出处
期刊:Nature Medicine
[Nature Portfolio]
日期:2020-06-01
卷期号:26 (6): 964-973
被引量:620
标识
DOI:10.1038/s41591-020-0934-0
摘要
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.
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