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Objective assessment of dietary patterns by use of metabolic phenotyping: a randomised, controlled, crossover trial

BACKGROUND: Accurate monitoring of changes in dietary patterns in response to food policy implementation is challenging. Metabolic profiling allows simultaneous measurement of hundreds of metabolites in urine, the concentrations of which can be affected by food intake. We hypothesised that metabolic...

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Autores principales: Garcia-Perez, Isabel, Posma, Joram M, Gibson, Rachel, Chambers, Edward S, Hansen, Tue H, Vestergaard, Henrik, Hansen, Torben, Beckmann, Manfred, Pedersen, Oluf, Elliott, Paul, Stamler, Jeremiah, Nicholson, Jeremy K, Draper, John, Mathers, John C, Holmes, Elaine, Frost, Gary
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Lancet, Diabetes & Endocrinology 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5357736/
https://www.ncbi.nlm.nih.gov/pubmed/28089709
http://dx.doi.org/10.1016/S2213-8587(16)30419-3
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author Garcia-Perez, Isabel
Posma, Joram M
Gibson, Rachel
Chambers, Edward S
Hansen, Tue H
Vestergaard, Henrik
Hansen, Torben
Beckmann, Manfred
Pedersen, Oluf
Elliott, Paul
Stamler, Jeremiah
Nicholson, Jeremy K
Draper, John
Mathers, John C
Holmes, Elaine
Frost, Gary
author_facet Garcia-Perez, Isabel
Posma, Joram M
Gibson, Rachel
Chambers, Edward S
Hansen, Tue H
Vestergaard, Henrik
Hansen, Torben
Beckmann, Manfred
Pedersen, Oluf
Elliott, Paul
Stamler, Jeremiah
Nicholson, Jeremy K
Draper, John
Mathers, John C
Holmes, Elaine
Frost, Gary
author_sort Garcia-Perez, Isabel
collection PubMed
description BACKGROUND: Accurate monitoring of changes in dietary patterns in response to food policy implementation is challenging. Metabolic profiling allows simultaneous measurement of hundreds of metabolites in urine, the concentrations of which can be affected by food intake. We hypothesised that metabolic profiles of urine samples developed under controlled feeding conditions reflect dietary intake and can be used to model and classify dietary patterns of free-living populations. METHODS: In this randomised, controlled, crossover trial, we recruited healthy volunteers (aged 21–65 years, BMI 20–35 kg/m(2)) from a database of a clinical research unit in the UK. We developed four dietary interventions with a stepwise variance in concordance with the WHO healthy eating guidelines that aim to prevent non-communicable diseases (increase fruits, vegetables, whole grains, and dietary fibre; decrease fats, sugars, and salt). Participants attended four inpatient stays (72 h each, separated by at least 5 days), during which they were given one dietary intervention. The order of diets was randomly assigned across study visits. Randomisation was done by an independent investigator, with the use of opaque, sealed, sequentially numbered envelopes that each contained one of the four dietary interventions in a random order. Participants and investigators were not masked from the dietary intervention, but investigators analysing the data were masked from the randomisation order. During each inpatient period, urine was collected daily over three timed periods: morning (0900–1300 h), afternoon (1300–1800 h), and evening and overnight (1800–0900 h); 24 h urine samples were obtained by pooling these samples. Urine samples were assessed by proton nuclear magnetic resonance ((1)H-NMR) spectroscopy, and diet-discriminatory metabolites were identified. We developed urinary metabolite models for each diet and identified the associated metabolic profiles, and then validated the models using data and samples from the INTERMAP UK cohort (n=225) and a healthy-eating Danish cohort (n=66). This study is registered with ISRCTN, number ISRCTN43087333. FINDINGS: Between Aug 13, 2013, and May 18, 2014, we contacted 300 people with a letter of invitation. 78 responded, of whom 26 were eligible and invited to attend a health screening. Of 20 eligible participants who were randomised, 19 completed all four 72 h study stays between Oct 2, 2013, and July 29, 2014, and consumed all the food provided. Analysis of (1)H-NMR spectroscopy data indicated that urinary metabolic profiles of the four diets were distinct. Significant stepwise differences in metabolite concentrations were seen between diets with the lowest and highest metabolic risks. Application of the derived metabolite models to the validation datasets confirmed the association between urinary metabolic and dietary profiles in the INTERMAP UK cohort (p<0·0001) and the Danish cohort (p<0·0001). INTERPRETATION: Urinary metabolite models developed in a highly controlled environment can classify groups of free-living people into consumers of diets associated with lower or higher non-communicable disease risk on the basis of multivariate metabolite patterns. This approach enables objective monitoring of dietary patterns in population settings and enhances the validity of dietary reporting. FUNDING: UK National Institute for Health Research and UK Medical Research Council.
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spelling pubmed-53577362017-03-28 Objective assessment of dietary patterns by use of metabolic phenotyping: a randomised, controlled, crossover trial Garcia-Perez, Isabel Posma, Joram M Gibson, Rachel Chambers, Edward S Hansen, Tue H Vestergaard, Henrik Hansen, Torben Beckmann, Manfred Pedersen, Oluf Elliott, Paul Stamler, Jeremiah Nicholson, Jeremy K Draper, John Mathers, John C Holmes, Elaine Frost, Gary Lancet Diabetes Endocrinol Articles BACKGROUND: Accurate monitoring of changes in dietary patterns in response to food policy implementation is challenging. Metabolic profiling allows simultaneous measurement of hundreds of metabolites in urine, the concentrations of which can be affected by food intake. We hypothesised that metabolic profiles of urine samples developed under controlled feeding conditions reflect dietary intake and can be used to model and classify dietary patterns of free-living populations. METHODS: In this randomised, controlled, crossover trial, we recruited healthy volunteers (aged 21–65 years, BMI 20–35 kg/m(2)) from a database of a clinical research unit in the UK. We developed four dietary interventions with a stepwise variance in concordance with the WHO healthy eating guidelines that aim to prevent non-communicable diseases (increase fruits, vegetables, whole grains, and dietary fibre; decrease fats, sugars, and salt). Participants attended four inpatient stays (72 h each, separated by at least 5 days), during which they were given one dietary intervention. The order of diets was randomly assigned across study visits. Randomisation was done by an independent investigator, with the use of opaque, sealed, sequentially numbered envelopes that each contained one of the four dietary interventions in a random order. Participants and investigators were not masked from the dietary intervention, but investigators analysing the data were masked from the randomisation order. During each inpatient period, urine was collected daily over three timed periods: morning (0900–1300 h), afternoon (1300–1800 h), and evening and overnight (1800–0900 h); 24 h urine samples were obtained by pooling these samples. Urine samples were assessed by proton nuclear magnetic resonance ((1)H-NMR) spectroscopy, and diet-discriminatory metabolites were identified. We developed urinary metabolite models for each diet and identified the associated metabolic profiles, and then validated the models using data and samples from the INTERMAP UK cohort (n=225) and a healthy-eating Danish cohort (n=66). This study is registered with ISRCTN, number ISRCTN43087333. FINDINGS: Between Aug 13, 2013, and May 18, 2014, we contacted 300 people with a letter of invitation. 78 responded, of whom 26 were eligible and invited to attend a health screening. Of 20 eligible participants who were randomised, 19 completed all four 72 h study stays between Oct 2, 2013, and July 29, 2014, and consumed all the food provided. Analysis of (1)H-NMR spectroscopy data indicated that urinary metabolic profiles of the four diets were distinct. Significant stepwise differences in metabolite concentrations were seen between diets with the lowest and highest metabolic risks. Application of the derived metabolite models to the validation datasets confirmed the association between urinary metabolic and dietary profiles in the INTERMAP UK cohort (p<0·0001) and the Danish cohort (p<0·0001). INTERPRETATION: Urinary metabolite models developed in a highly controlled environment can classify groups of free-living people into consumers of diets associated with lower or higher non-communicable disease risk on the basis of multivariate metabolite patterns. This approach enables objective monitoring of dietary patterns in population settings and enhances the validity of dietary reporting. FUNDING: UK National Institute for Health Research and UK Medical Research Council. The Lancet, Diabetes & Endocrinology 2017-03 /pmc/articles/PMC5357736/ /pubmed/28089709 http://dx.doi.org/10.1016/S2213-8587(16)30419-3 Text en © 2017 The Author(s). Published by Elsevier Ltd. This is an Open Access Article under the CC BY license http://creativecommons.org/licenses/by/4.0/ This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Articles
Garcia-Perez, Isabel
Posma, Joram M
Gibson, Rachel
Chambers, Edward S
Hansen, Tue H
Vestergaard, Henrik
Hansen, Torben
Beckmann, Manfred
Pedersen, Oluf
Elliott, Paul
Stamler, Jeremiah
Nicholson, Jeremy K
Draper, John
Mathers, John C
Holmes, Elaine
Frost, Gary
Objective assessment of dietary patterns by use of metabolic phenotyping: a randomised, controlled, crossover trial
title Objective assessment of dietary patterns by use of metabolic phenotyping: a randomised, controlled, crossover trial
title_full Objective assessment of dietary patterns by use of metabolic phenotyping: a randomised, controlled, crossover trial
title_fullStr Objective assessment of dietary patterns by use of metabolic phenotyping: a randomised, controlled, crossover trial
title_full_unstemmed Objective assessment of dietary patterns by use of metabolic phenotyping: a randomised, controlled, crossover trial
title_short Objective assessment of dietary patterns by use of metabolic phenotyping: a randomised, controlled, crossover trial
title_sort objective assessment of dietary patterns by use of metabolic phenotyping: a randomised, controlled, crossover trial
topic Articles
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5357736/
https://www.ncbi.nlm.nih.gov/pubmed/28089709
http://dx.doi.org/10.1016/S2213-8587(16)30419-3
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