Prediction of protein composition of individual cow milk using mid-infrared spectroscopy

This study investigated the application of mid-infrared spectroscopy for the prediction of protein composition in individual milk samples (n=1,336) of Simmental cows. Protein fractions were quantified by RP-HPLC and MIR data were recorded over the spectral range from 4,000 to 900 cm-1. Models were d...

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Main Authors: Paolo Carnier, Guido Di Martino, Alessio Cecchinato, Valentina Bonfatti, Massimo De Marchi
Format: Article
Language:English
Published: Taylor & Francis Group 2010-01-01
Series:Italian Journal of Animal Science
Subjects:
Online Access:http://www.aspajournal.it/index.php/ijas/article/view/462
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spelling doaj-84913b629db34c51b6097d949099ecef2020-11-24T21:43:32ZengTaylor & Francis GroupItalian Journal of Animal Science1594-40771828-051X2010-01-0182s39940110.4081/ijas.2009.s2.399Prediction of protein composition of individual cow milk using mid-infrared spectroscopyPaolo CarnierGuido Di MartinoAlessio CecchinatoValentina BonfattiMassimo De MarchiThis study investigated the application of mid-infrared spectroscopy for the prediction of protein composition in individual milk samples (n=1,336) of Simmental cows. Protein fractions were quantified by RP-HPLC and MIR data were recorded over the spectral range from 4,000 to 900 cm-1. Models were developed by partial least squares regression using untreated spectra. The most successful predictions were for protein, casein, αS1-casein, whey protein, and β-lactoglobulin contents. The models could discriminate between high and low values of protein composition (R2=0.50 to 0.58). The root mean square errors of cross-validation were 3.11g/l for protein (range 39.91g/l), 2.76g/l for casein (range 35.16g/l), 1.07 g/l for αS1-casein (range 12.82g/l), 0.51 g/l for whey protein (range 4.97g/l), and 0.43 for β-lactoglobulin (range 4.37). Application of MIR spectroscopy is possible for the routinely assessment of protein, casein, αS1-casein, whey protein, and β-lactoglobulin and its implementation might be in future a tool for improving protein composition of bovine milk through breeding programs.http://www.aspajournal.it/index.php/ijas/article/view/462Milk, Protein composition, Mid-infrared spectroscopy, Chemometrics
collection DOAJ
language English
format Article
sources DOAJ
author Paolo Carnier
Guido Di Martino
Alessio Cecchinato
Valentina Bonfatti
Massimo De Marchi
spellingShingle Paolo Carnier
Guido Di Martino
Alessio Cecchinato
Valentina Bonfatti
Massimo De Marchi
Prediction of protein composition of individual cow milk using mid-infrared spectroscopy
Italian Journal of Animal Science
Milk, Protein composition, Mid-infrared spectroscopy, Chemometrics
author_facet Paolo Carnier
Guido Di Martino
Alessio Cecchinato
Valentina Bonfatti
Massimo De Marchi
author_sort Paolo Carnier
title Prediction of protein composition of individual cow milk using mid-infrared spectroscopy
title_short Prediction of protein composition of individual cow milk using mid-infrared spectroscopy
title_full Prediction of protein composition of individual cow milk using mid-infrared spectroscopy
title_fullStr Prediction of protein composition of individual cow milk using mid-infrared spectroscopy
title_full_unstemmed Prediction of protein composition of individual cow milk using mid-infrared spectroscopy
title_sort prediction of protein composition of individual cow milk using mid-infrared spectroscopy
publisher Taylor & Francis Group
series Italian Journal of Animal Science
issn 1594-4077
1828-051X
publishDate 2010-01-01
description This study investigated the application of mid-infrared spectroscopy for the prediction of protein composition in individual milk samples (n=1,336) of Simmental cows. Protein fractions were quantified by RP-HPLC and MIR data were recorded over the spectral range from 4,000 to 900 cm-1. Models were developed by partial least squares regression using untreated spectra. The most successful predictions were for protein, casein, αS1-casein, whey protein, and β-lactoglobulin contents. The models could discriminate between high and low values of protein composition (R2=0.50 to 0.58). The root mean square errors of cross-validation were 3.11g/l for protein (range 39.91g/l), 2.76g/l for casein (range 35.16g/l), 1.07 g/l for αS1-casein (range 12.82g/l), 0.51 g/l for whey protein (range 4.97g/l), and 0.43 for β-lactoglobulin (range 4.37). Application of MIR spectroscopy is possible for the routinely assessment of protein, casein, αS1-casein, whey protein, and β-lactoglobulin and its implementation might be in future a tool for improving protein composition of bovine milk through breeding programs.
topic Milk, Protein composition, Mid-infrared spectroscopy, Chemometrics
url http://www.aspajournal.it/index.php/ijas/article/view/462
work_keys_str_mv AT paolocarnier predictionofproteincompositionofindividualcowmilkusingmidinfraredspectroscopy
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AT alessiocecchinato predictionofproteincompositionofindividualcowmilkusingmidinfraredspectroscopy
AT valentinabonfatti predictionofproteincompositionofindividualcowmilkusingmidinfraredspectroscopy
AT massimodemarchi predictionofproteincompositionofindividualcowmilkusingmidinfraredspectroscopy
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