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Title: | Nutrimetabolomics fingerprinting to identify biomarkers of bread exposure in a free-living population from the PREDIMED study cohort |
Author: | Garcia Aloy, Mar Llorach, Rafael Urpí Sardà, Mireia Tulipani, Sara Salas Salvadó, Jordi Martínez-González, Miguel Ángel, 1957- Corella Piquer, Dolores Fitó Colomer, Montserrat Estruch Riba, Ramon Serra Majem, Lluís Andrés Lacueva, Ma. Cristina |
Keywords: | Metabòlits Nutrició Marcadors bioquímics Pa Consum d'aliments Cromatografia de líquids d'alta resolució Espectrometria de masses Metabolites Nutrition Biochemical markers Bread Food consumption High performance liquid chromatography Mass spectrometry |
Issue Date: | 28-Jun-2014 |
Publisher: | Springer Science + Business Media |
Abstract: | Bread is one of the most widely consumed foods. Its impact on human health is currently of special interest for researchers. We aimed to identify biomarkers of bread consumption by applying a nutrimetabolomic approach to a free-living population. An untargeted HPLC <br>q-TOF-MS and multivariate analysis was applied to human urine from 155 subjects stratified by habitual bread consumption in three groups: non-consumers of bread (n = 56), white-bread consumers (n = 48) and whole-grain bread consumers (n = 51). The most differential metabolites (variable importance for projection ≥1.5) included compounds originating from cereal plant phytochemicals such as benzoxazinoids and alkylresorcinol metabolites, and compounds produced by gut microbiota (such as enterolactones, hydroxybenzoic and dihydroferulic acid metabolites). Pyrraline, riboflavin, 3-indolecarboxylic acid glucuronide, 2,8-dihydroxyquinoline glucuronide and N-α-acetylcitrulline were also tentatively identified. In order to combine multiple metabolites in a model to predict bread consumption, a stepwise logistic regression analysis was used. Receiver operating curves were constructed to evaluate the global performance of individual metabolites and their combination. The area under the curve values [AUC (95 % CI)] of combined models ranged from 77.8 % (69.1 <br>86.4 %) to 93.7 % (89.4 <br>98.1 %), whereas the AUC for the metabolites included in the models had weak values when they were evaluated individually: from 58.1 % (46.6 <br>69.7 %) to 78.4 % (69.8 <br>87.1 %). Our study showed that a daily bread intake significantly impacted on the urinary metabolome, despite being examined under uncontrolled free-living conditions. We further concluded that a combination of several biomarkers of exposure is better than a single biomarker for the predictive ability of discriminative analysis. |
Note: | Versió postprint del document publicat a: http://dx.doi.org/10.1007/s11306-014-0682-6 |
It is part of: | Metabolomics, 2015, vol. 11, num. 1, p. 155-165 |
URI: | https://hdl.handle.net/2445/63238 |
Related resource: | http://dx.doi.org/10.1007/s11306-014-0682-6 |
ISSN: | 1573-3882 |
Appears in Collections: | Articles publicats en revistes (Nutrició, Ciències de l'Alimentació i Gastronomia) Articles publicats en revistes (Medicina) |
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