Literature DB >> 23100586

Phenotypic prediction based on metabolomic data for growing pigs from three main European breeds.

F Rohart1, A Paris, B Laurent, C Canlet, J Molina, M J Mercat, T Tribout, N Muller, N Iannuccelli, N Villa-Vialaneix, L Liaubet, D Milan, M San Cristobal.   

Abstract

Predicting phenotypes is a statistical and biotechnical challenge, both in medicine (predicting an illness) and animal breeding (predicting the carcass economical value on a young living animal). High-throughput fine phenotyping is possible using metabolomics, which describes the global metabolic status of an individual, and is the closest to the terminal phenotype. The purpose of this work was to quantify the prediction power of metabolomic profiles for commonly used production phenotypes from a single blood sample from growing pigs. Several statistical approaches were investigated and compared on the basis of cross validation: raw data vs. signal preprocessing (wavelet transformation), with a single-feature selection method. The best results in terms of prediction accuracy were obtained when data were preprocessed using wavelet transformations on the Daubechies basis. The phenotypes related to meat quality were not well predicted because the blood sample was taken some time before slaughter, and slaughter is known to have a strong influence on these traits. By contrast, phenotypes of potential economic interest (e.g., lean meat percentage and ADFI) were well predicted (R(2) = 0.7; P < 0.0001) using metabolomic data.

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Year:  2012        PMID: 23100586     DOI: 10.2527/jas.2012-5338

Source DB:  PubMed          Journal:  J Anim Sci        ISSN: 0021-8812            Impact factor:   3.159


  11 in total

1.  NMR-based metabolomics highlights differences in plasma metabolites in pigs exhibiting diet-induced differences in adiposity.

Authors:  Maëva Jégou; Florence Gondret; Julie Lalande-Martin; Illa Tea; Elisabeth Baéza; Isabelle Louveau
Journal:  Eur J Nutr       Date:  2015-05-22       Impact factor: 5.614

2.  Metabolomic signatures in elite cyclists: differential characterization of a seeming normal endocrine status regarding three serum hormones.

Authors:  Boris Labrador; François-Xavier Lejeune; Alain Paris; Cécile Canlet; Jérôme Molina; Michel Guinot; Armand Mégret; Michel Rieu; Jean-Christophe Thalabard; Yves Le Bouc
Journal:  Metabolomics       Date:  2021-07-06       Impact factor: 4.290

3.  Prediction of complex phenotypes using the Drosophila melanogaster metabolome.

Authors:  Palle Duun Rohde; Torsten Nygaard Kristensen; Pernille Sarup; Joaquin Muñoz; Anders Malmendal
Journal:  Heredity (Edinb)       Date:  2021-01-28       Impact factor: 3.821

4.  Integrative Analysis of Metabolomic, Proteomic and Genomic Data to Reveal Functional Pathways and Candidate Genes for Drip Loss in Pigs.

Authors:  Julia Welzenbach; Christiane Neuhoff; Hanna Heidt; Mehmet Ulas Cinar; Christian Looft; Karl Schellander; Ernst Tholen; Christine Große-Brinkhaus
Journal:  Int J Mol Sci       Date:  2016-08-30       Impact factor: 5.923

5.  Different Statistical Approaches to Investigate Porcine Muscle Metabolome Profiles to Highlight New Biomarkers for Pork Quality Assessment.

Authors:  Julia Welzenbach; Christiane Neuhoff; Christian Looft; Karl Schellander; Ernst Tholen; Christine Große-Brinkhaus
Journal:  PLoS One       Date:  2016-02-26       Impact factor: 3.240

6.  Disease surveillance based on Internet-based linear models: an Australian case study of previously unmodeled infection diseases.

Authors:  Florian Rohart; Gabriel J Milinovich; Simon M R Avril; Kim-Anh Lê Cao; Shilu Tong; Wenbiao Hu
Journal:  Sci Rep       Date:  2016-12-20       Impact factor: 4.379

7.  Effect of feed restriction and refeeding on performance and metabolism of European and Caribbean growing pigs in a tropical climate.

Authors:  Nausicaa Poullet; Jean-Christophe Bambou; Thomas Loyau; Christine Trefeu; Dalila Feuillet; David Beramice; Bruno Bocage; David Renaudeau; Jean-Luc Gourdine
Journal:  Sci Rep       Date:  2019-03-19       Impact factor: 4.379

8.  Investigation of muscle transcriptomes using gradient boosting machine learning identifies molecular predictors of feed efficiency in growing pigs.

Authors:  Farouk Messad; Isabelle Louveau; Basile Koffi; Hélène Gilbert; Florence Gondret
Journal:  BMC Genomics       Date:  2019-08-17       Impact factor: 3.969

Review 9.  Multi-omic data integration and analysis using systems genomics approaches: methods and applications in animal production, health and welfare.

Authors:  Prashanth Suravajhala; Lisette J A Kogelman; Haja N Kadarmideen
Journal:  Genet Sel Evol       Date:  2016-04-29       Impact factor: 4.297

10.  Exploring transcriptomic diversity in muscle revealed that cellular signaling pathways mainly differentiate five Western porcine breeds.

Authors:  Magali SanCristobal; Florian Rohart; Christine Lascor; Marcel Bouffaud; Lidwine Trouilh; Pascal G P Martin; Yannick Lippi; Thierry Tribout; Thomas Faraut; Marie-José Mercat; Denis Milan; Laurence Liaubet
Journal:  BMC Genomics       Date:  2015-12-12       Impact factor: 3.969

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