Literature DB >> 21426953

Mid-infrared prediction of bovine milk fatty acids across multiple breeds, production systems, and countries.

H Soyeurt1, F Dehareng, N Gengler, S McParland, E Wall, D P Berry, M Coffey, P Dardenne.   

Abstract

Increasing consumer concern exists over the relationship between food composition and human health. Because of the known effects of fatty acids on human health, the development of a quick, inexpensive, and accurate method to directly quantify the fatty acid (FA) composition in milk would be valuable for milk processors to develop a payment system for milk pertinent to their customer requirements and for farmers to adapt their feeding systems and breeding strategies accordingly. The aim of this study was (1) to confirm the ability of mid-infrared spectrometry (MIR) to quantify individual FA content in milk by using an innovative procedure of sampling (i.e., samples were collected from cows belonging to different breeds, different countries, and in different production systems); (2) to compare 6 mathematical methods to develop robust calibration equations for predicting the contents of individual FA in milk; and (3) to test interest in using the FA equations developed in milk as basis to predict FA content in fat without corrections for the slope and the bias of the developed equations. In total, 517 samples selected based on their spectral variability in 3 countries (Belgium, Ireland, and United Kingdom) from various breeds, cows, and production systems were analyzed by gas chromatography (GC). The samples presenting the largest spectral variability were used to calibrate the prediction of FA by MIR. The remaining samples were used to externally validate the 28 FA equations developed. The 6 methods were (1) partial least squares regression (PLS); (2) PLS+repeatability file (REP); (3) first derivative of spectral data+PLS; (4) first derivative+REP+PLS; (5) second derivative of spectral data+PLS; and (6) second derivative+REP+PLS. Methods were compared on the basis of the cross-validation coefficient of determination (R2cv), the ratio of standard deviation of GC values to the standard error of cross-validation (RPD), and the validation coefficient of determination (R2v). The third and fourth methods had, on average, the highest R2cv, RPD, and R2v. The final equations were built using all GC and the best accuracy was observed for the infrared predictions of C4:0, C6:0, C8:0, C10:0, C12:0, C14:0, C16:0, C18:0, C18:1 trans, C18:1 cis-9, C18:1 cis, and for some groups of FA studied in milk (saturated, monounsaturated, unsaturated, short-chain, medium-chain, and long-chain FA). These equations showed R2cv greater than 0.95. With R2cv equal to 0.85, the MIR prediction of polyunsaturated FA could be used to screen the cow population. As previously published, infrared predictions of FA in fat are less accurate than those developed from FA content in milk (g/dL of milk) and no better results were obtained by using milk FA predictions if no corrections for bias and slope based on reference milk samples with known contents of FA were used. These results indicate the usefulness of equations with R2cv greater than 95% in milk payment systems and the usefulness of equations with R2cv greater than 75% for animal breeding purposes.
Copyright © 2011 American Dairy Science Association. Published by Elsevier Inc. All rights reserved.

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Year:  2011        PMID: 21426953     DOI: 10.3168/jds.2010-3408

Source DB:  PubMed          Journal:  J Dairy Sci        ISSN: 0022-0302            Impact factor:   4.034


  19 in total

1.  Bayesian regression models outperform partial least squares methods for predicting milk components and technological properties using infrared spectral data.

Authors:  A Ferragina; G de los Campos; A I Vazquez; A Cecchinato; G Bittante
Journal:  J Dairy Sci       Date:  2015-09-18       Impact factor: 4.034

2.  Predictions of Daily Milk and Fat Yields, Major Groups of Fatty Acids, and C18:1 cis-9 from Single Milking Data without a Milking Interval.

Authors:  Valérie M R Arnould; Romain Reding; Jeanne Bormann; Nicolas Gengler; Hélène Soyeurt
Journal:  Animals (Basel)       Date:  2015-07-31       Impact factor: 2.752

Review 3.  Invited review: overview of new traits and phenotyping strategies in dairy cattle with a focus on functional traits.

Authors:  C Egger-Danner; J B Cole; J E Pryce; N Gengler; B Heringstad; A Bradley; K F Stock
Journal:  Animal       Date:  2014-11-12       Impact factor: 3.240

4.  Genome-wide association mapping for milk fat composition and fine mapping of a QTL for de novo synthesis of milk fatty acids on bovine chromosome 13.

Authors:  Hanne Gro Olsen; Tim Martin Knutsen; Achim Kohler; Morten Svendsen; Lars Gidskehaug; Harald Grove; Torfinn Nome; Marte Sodeland; Kristil Kindem Sundsaasen; Matthew Peter Kent; Harald Martens; Sigbjørn Lien
Journal:  Genet Sel Evol       Date:  2017-02-13       Impact factor: 4.297

5.  Effect of Dry-Period Diet on the Performance and Metabolism of Dairy Cows in Early Lactation.

Authors:  Julien Soulat; Emilie Knapp; Nassim Moula; Jean-Luc Hornick; Céline Purnelle; Isabelle Dufrasne
Journal:  Animals (Basel)       Date:  2020-05-06       Impact factor: 2.752

6.  Comparison of the Potential Abilities of Three Spectroscopy Methods: Near-Infrared, Mid-Infrared, and Molecular Fluorescence, to Predict Carotenoid, Vitamin and Fatty Acid Contents in Cow Milk.

Authors:  Julien Soulat; Donato Andueza; Benoît Graulet; Christiane L Girard; Cyril Labonne; Abderrahmane Aït-Kaddour; Bruno Martin; Anne Ferlay
Journal:  Foods       Date:  2020-05-06

7.  Genome-wide association identifies methane production level relation to genetic control of digestive tract development in dairy cows.

Authors:  M Pszczola; T Strabel; S Mucha; E Sell-Kubiak
Journal:  Sci Rep       Date:  2018-10-11       Impact factor: 4.379

8.  Multiple Country Approach to Improve the Test-Day Prediction of Dairy Cows' Dry Matter Intake.

Authors:  Anthony Tedde; Clément Grelet; Phuong N Ho; Jennie E Pryce; Dagnachew Hailemariam; Zhiquan Wang; Graham Plastow; Nicolas Gengler; Eric Froidmont; Frédéric Dehareng; Carlo Bertozzi; Mark A Crowe; Hélène Soyeurt
Journal:  Animals (Basel)       Date:  2021-05-04       Impact factor: 2.752

9.  Fatty Acid Prediction in Bovine Milk by Attenuated Total Reflection Infrared Spectroscopy after Solvent-Free Lipid Separation.

Authors:  Christopher Karim Akhgar; Vanessa Nürnberger; Marlene Nadvornik; Margit Velik; Andreas Schwaighofer; Erwin Rosenberg; Bernhard Lendl
Journal:  Foods       Date:  2021-05-11

10.  Unravelling genetic variation underlying de novo-synthesis of bovine milk fatty acids.

Authors:  Tim Martin Knutsen; Hanne Gro Olsen; Valeria Tafintseva; Morten Svendsen; Achim Kohler; Matthew Peter Kent; Sigbjørn Lien
Journal:  Sci Rep       Date:  2018-02-01       Impact factor: 4.379

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