Nutrimetabolomics: An Integrative Action for Metabolomic Analyses in Human Nutritional Studies.

The life sciences are currently being transformed by an unprecedented wave of developments in molecular analysis, which include important advances in instrumental analysis as well as biocomputing. In light of the central role played by metabolism in nutrition, metabolomics is rapidly being established as a key analytical tool in human nutritional studies. Consequently, an increasing number of nutritionists integrate metabolomics into their study designs. Within this dynamic landscape, the potential of nutritional metabolomics (nutrimetabolomics) to be translated into a science, which can impact on health policies, still needs to be realized. A key element to reach this goal is the ability of the research community to join, to collectively make the best use of the potential offered by nutritional metabolomics. This article, therefore, provides a methodological description of nutritional metabolomics that reflects on the state-of-the-art techniques used in the laboratories of the Food Biomarker Alliance (funded by the European Joint Programming Initiative "A Healthy Diet for a Healthy Life" (JPI HDHL)) as well as points of reflections to harmonize this field. It is not intended to be exhaustive but rather to present a pragmatic guidance on metabolomic methodologies, providing readers with useful "tips and tricks" along the analytical workflow.

Pieter Giesbertz | Samantha Riccadonna | Estelle Pujos-Guillot | Carole Migné | Lynn Vanhaecke | Joachim Kopka | David Wishart | Raúl González-Domínguez | Stéphanie Durand | Franck Giacomoni | Fulvio Mattivi | Lorraine Brennan | Claudine Manach | Carl Brunius | Rafael Llorach | Gianfranco Picone | Pietro Franceschi | Bjoern Egert | Rosa Vázquez-Fresno | Marynka M Ulaszewska | Christoph H Weinert | Alessia Trimigno | Reto Portmann | Cristina Andres Lacueva | René Badertscher | Achim Bub | Francesco Capozzi | Marta Cialiè Rosso | Chiara E Cordero | Hannelore Daniel | Paola G Ferrario | Edith J M Feskens | Mar Garcia-Aloy | Kati Hanhineva | Lieselot Y Hemeryck | Sabine E Kulling | Linda H Münger | Beate Ott | Grégory Pimentel | Manuela J Rist | Caroline Rombouts | Josep Rubert | Thomas Skurk | Pedapati S C Sri Harsha | Lieven Van Meulebroek | Guy Vergères | E. Feskens | D. Wishart | S. Riccadonna | G. Picone | Alessia Trimigno | R. Portmann | F. Capozzi | P. Ferrario | L. Brennan | H. Daniel | F. Giacomoni | J. Kopka | B. Ott | C. Migné | C. Manach | S. Kulling | R. Llorach | T. Skurk | F. Mattivi | K. Hanhineva | J. Rubert | L. Vanhaecke | G. Vergères | R. Badertscher | E. Pujos-Guillot | A. Bub | C. Cordero | Grégory Pimentel | P. Franceschi | S. Durand | R. González-Domínguez | C. Brunius | L. Van Meulebroek | Lieselot Y. Hemeryck | C. Weinert | Manuela J. Rist | R. Vázquez-Fresno | M. Rist | Linda H Münger | C. Rombouts | P. Giesbertz | M. Ulaszewska | P. S. Sri Harsha | B. Egert | Marta Cialiè Rosso | M. Garcia‐Aloy | C. Andres Lacueva | L. Hemeryck | A. Trimigno | Cristina Andres Lacueva

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