Human postprandial responses to food and potential for precision nutrition.
Adolescent
Adult
Aged
Blood Glucose
/ metabolism
C-Peptide
/ metabolism
Dietary Carbohydrates
Dietary Fats
Dietary Fiber
Dietary Proteins
Female
Gastrointestinal Microbiome
Genetic Variation
Glucose Tolerance Test
Healthy Volunteers
Humans
Individuality
Insulin
/ metabolism
Machine Learning
Male
Middle Aged
Nutrients
Polymorphism, Single Nucleotide
Postprandial Period
Precision Medicine
Triglycerides
/ metabolism
Young Adult
Journal
Nature medicine
ISSN: 1546-170X
Titre abrégé: Nat Med
Pays: United States
ID NLM: 9502015
Informations de publication
Date de publication:
06 2020
06 2020
Historique:
received:
28
10
2019
accepted:
11
05
2020
pubmed:
13
6
2020
medline:
9
9
2020
entrez:
13
6
2020
Statut:
ppublish
Résumé
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.
Identifiants
pubmed: 32528151
doi: 10.1038/s41591-020-0934-0
pii: 10.1038/s41591-020-0934-0
pmc: PMC8265154
mid: NIHMS1712232
doi:
Substances chimiques
Blood Glucose
0
C-Peptide
0
Dietary Carbohydrates
0
Dietary Fats
0
Dietary Fiber
0
Dietary Proteins
0
Insulin
0
Triglycerides
0
Banques de données
ClinicalTrials.gov
['NCT03479866']
Types de publication
Journal Article
Research Support, N.I.H., Extramural
Research Support, Non-U.S. Gov't
Langues
eng
Sous-ensembles de citation
IM
Pagination
964-973Subventions
Organisme : Medical Research Council
ID : MR/N01183X/1
Pays : United Kingdom
Organisme : British Heart Foundation
ID : SP/14/8/31352
Pays : United Kingdom
Organisme : NCATS NIH HHS
ID : UL1 TR002541
Pays : United States
Organisme : Department of Health
Pays : United Kingdom
Organisme : Medical Research Council
ID : MR/M016560/1
Pays : United Kingdom
Organisme : Biotechnology and Biological Sciences Research Council
ID : BB/NO12739/1
Pays : United Kingdom
Organisme : NCI NIH HHS
ID : R01 CA230551
Pays : United States
Organisme : Wellcome Trust
Pays : United Kingdom
Organisme : Wellcome Trust
ID : 212904/Z/18/Z
Pays : United Kingdom
Organisme : NCI NIH HHS
ID : U01 CA230551
Pays : United States
Commentaires et corrections
Type : CommentIn
Type : CommentIn
Type : ErratumIn
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