Literature DB >> 28035736

Targeted metabolomics reveals differences in the extended postprandial plasma metabolome of healthy subjects after intake of whole-grain rye porridges versus refined wheat bread.

Lin Shi1,2, Carl Brunius1,2, Magnus Lindelöf1, Souad Abou Shameh1, Huaxing Wu1,2, Isabella Lee1, Rikard Landberg1,3,2, Ali A Moazzami4.   

Abstract

SCOPE: We previously found that whole-grain (WG) rye porridges suppressed appetite and improved glucose metabolism. This study aimed to investigate potential plasma metabolites that may be related to differences in those appetite and glucose responses. METHODS AND
RESULTS: Twenty-one health subjects consumed six isocaloric breakfasts in a randomized cross-over study. Plain WG rye porridges (40 and 55 g), rye porridge enriched with different inulin: gluten proportions (9:3 g; 6:6 g; 3:9 g), and a 55 g refined wheat bread (control) were served as part of complete breakfast, followed by a standardized lunch. NMR metabolomics assessed 36 plasma metabolites and short chain fatty acids were measured by GC-MS from baseline up to 8 h. Pre-lunch plasma essential amino acids reflected protein composition and post-lunch plasma short chain fatty acids varied with fiber content in breakfasts. No correlations were observed between measured metabolites and glucose, insulin, or appetite responses.
CONCLUSIONS: Differences in protein and fiber contents in breakfasts altered postprandial plasma amino acids and short chain fatty acids, respectively, but were unrelated to appetite and glucose responses. Further studies are warrant to identify the underlying mechanisms for the beneficial effects on appetite and second meal glucose responses after rye-based foods.
© 2016 WILEY-VCH Verlag GmbH & Co. KGaA, Weinheim.

Entities:  

Keywords:  Appetite; Dietary fiber; Metabolomics; Plant protein; Second meal effect; Whole-grain rye

Mesh:

Substances:

Year:  2017        PMID: 28035736     DOI: 10.1002/mnfr.201600924

Source DB:  PubMed          Journal:  Mol Nutr Food Res        ISSN: 1613-4125            Impact factor:   5.914


  7 in total

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Authors:  Hanna E Röhnisch; Cecilie Kyrø; Anja Olsen; Elin Thysell; Göran Hallmans; Ali A Moazzami
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  7 in total

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