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Statistical strategies for relating metabolomics and proteomics data: a real case study in nutrition research area
Authors:Thomas Moyon  Fabien Le Marec  El Mostafa Qannari  Evelyne Vigneau  Aurélie Le Plain  Frédérique Courant  Jean-Philippe Antignac  Patricia Parnet  Marie-Cécile Alexandre-Gouabau
Affiliation:1. UMR1280, Physiologie des Adaptations Nutritionnelles, INRA, and University of Nantes, CHU H?tel-Dieu, Place Alexis Ricordeau, HNB1, 44093, Nantes Cedex 1, France
2. Sensometrics and Chemometrics, College of Veterinary Medicine, Food Science and Engineering Nantes Atlantic, ONIRIS, Site de la G??raudi??re, BP 82225, 44322, Nantes Cedex 3, France
3. Laboratoire d??Etude des R??sidus et Contaminants dans les Aliments (LABERCA), USC INRA 1329, College of Veterinary Medicine, Food Science and Engineering Nantes Atlantic, ONIRIS, Site de la Chantrerie, Route de Gachet, BP 50707, 44307, Nantes Cedex 3, France
Abstract:The current investigations were carried out in the context of a nutritional case study aiming at assessing the postnatal impact of maternal dietary protein restriction during pregnancy and lactation on rat offspring plasma metabolome and hypothalamic proteome. Although data generated by different ??Omics?? technologies are usually considered and analyzed separately, their interrelation may offer a valuable opportunity for assessing the emerging ??integrated biology?? concept. The overall strategy of analysis first investigated data pretreatment and variable selection for each dataset. Then, three multivariate analyses were applied to investigate the links between the abundance of metabolites and the expression of proteins collected on the same samples. Unfold principal component analysis and regularized canonical correlation analysis did not take into account the presence of groups of individuals related to the intervention study. On the contrary, the predictive MultiBlock Partial Least Squares method used this information. Regularized canonical correlation analysis appeared as a relevant approach to investigate of the relationships between the two datasets. However, in order to highlight the molecular compounds, proteins and metabolites, associated in interacting or common metabolic pathways for the experimental groups, MultiBlock partial least squares was the most appropriate method in the present nutritional case study.
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