Mastitis Detection from Milk Mid-Infrared (MIR) Spectroscopy in Dairy Cows

Mid-infrared (MIR) spectroscopy is the method of choice for the standard milk recording system, to determine milk components including fat, protein, lactose and urea. Since milk composition is related to health and metabolic status of a cow, MIR spectra could be potentially used for disease detectio...

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Main Authors: Lisa Rienesl, Negar Khayatzadeh, Astrid Köck, Laura Dale, Andreas Werner, Clément Grelet, Nicolas Gengler, Franz-Josef Auer, Christa Egger-Danner, Xavier Massart, Johann Sölkner
Format: Article
Language:English
Published: Mendel University Press 2019-01-01
Series:Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis
Subjects:
PLS
Online Access:https://acta.mendelu.cz/67/5/1221/
id doaj-b72f201715524e769f43d2bceaa3c623
record_format Article
collection DOAJ
language English
format Article
sources DOAJ
author Lisa Rienesl
Negar Khayatzadeh
Astrid Köck
Laura Dale
Andreas Werner
Clément Grelet
Nicolas Gengler
Franz-Josef Auer
Christa Egger-Danner
Xavier Massart
Johann Sölkner
spellingShingle Lisa Rienesl
Negar Khayatzadeh
Astrid Köck
Laura Dale
Andreas Werner
Clément Grelet
Nicolas Gengler
Franz-Josef Auer
Christa Egger-Danner
Xavier Massart
Johann Sölkner
Mastitis Detection from Milk Mid-Infrared (MIR) Spectroscopy in Dairy Cows
Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis
MIR spectroscopy
dairy cow
milk
mastitis
somatic cell count
PLS
author_facet Lisa Rienesl
Negar Khayatzadeh
Astrid Köck
Laura Dale
Andreas Werner
Clément Grelet
Nicolas Gengler
Franz-Josef Auer
Christa Egger-Danner
Xavier Massart
Johann Sölkner
author_sort Lisa Rienesl
title Mastitis Detection from Milk Mid-Infrared (MIR) Spectroscopy in Dairy Cows
title_short Mastitis Detection from Milk Mid-Infrared (MIR) Spectroscopy in Dairy Cows
title_full Mastitis Detection from Milk Mid-Infrared (MIR) Spectroscopy in Dairy Cows
title_fullStr Mastitis Detection from Milk Mid-Infrared (MIR) Spectroscopy in Dairy Cows
title_full_unstemmed Mastitis Detection from Milk Mid-Infrared (MIR) Spectroscopy in Dairy Cows
title_sort mastitis detection from milk mid-infrared (mir) spectroscopy in dairy cows
publisher Mendel University Press
series Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis
issn 1211-8516
2464-8310
publishDate 2019-01-01
description Mid-infrared (MIR) spectroscopy is the method of choice for the standard milk recording system, to determine milk components including fat, protein, lactose and urea. Since milk composition is related to health and metabolic status of a cow, MIR spectra could be potentially used for disease detection. In dairy production, mastitis is one of the most prevalent diseases. The aim of this study was to develop a calibration equation to predict mastitis events from routinely recorded MIR spectra data. A further aim was to evaluate the use of test day somatic cell score (SCS) as covariate on the accuracy of the prediction model. The data for this study is from the Austrian milk recording system and its health monitoring system (GMON). Test day data including MIR spectra data was merged with diagnosis data of Fleckvieh, Brown Swiss and Holstein Friesian cows. As prediction variables, MIR absorbance data after first derivatives and selection of wavenumbers, corrected for days in milk, were used. The data set contained roughly 600,000 records and was split into calibration and validation sets by farm. Calibration sets were made to be balanced (as many healthy as mastitis cases), while the validation set was kept large and realistic. Prediction was done with Partial Least Squares Discriminant Analysis, key indicators of model fit were sensitivity and specificity. Results were extracted for association between spectra and diagnosis with different time windows (days between diagnosis and test days) in validation. The comparison of different sets of predictor variables (MIR, SCS, MIR + SCS) showed an advantage in prediction for MIR + SCS. For this prediction model, specificity was 0.79 and sensitivity was 0.68 in time window -7 to +7 days (calibration and validation). Corresponding values for MIR were 0.71 and 0.61, for SCS they were 0.81 and 0.62. In general, prediction of mastitis performed better with a shorter distance between test day and mastitis event, yet even for time windows of -21 to +21 days, prediction accuracies were still reasonable, with sensitivities ranging from 0.50 to 0.57 and specificities remaining unchanged (0.71 to 0.85). Additional research to further improve prediction equation, and studies on genetic correlations among clinical mastitis, SCS and MIR predicted mastitis are planned.
topic MIR spectroscopy
dairy cow
milk
mastitis
somatic cell count
PLS
url https://acta.mendelu.cz/67/5/1221/
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AT negarkhayatzadeh mastitisdetectionfrommilkmidinfraredmirspectroscopyindairycows
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AT nicolasgengler mastitisdetectionfrommilkmidinfraredmirspectroscopyindairycows
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spelling doaj-b72f201715524e769f43d2bceaa3c6232020-11-25T01:06:05ZengMendel University PressActa Universitatis Agriculturae et Silviculturae Mendelianae Brunensis1211-85162464-83102019-01-016751221122610.11118/actaun201967051221Mastitis Detection from Milk Mid-Infrared (MIR) Spectroscopy in Dairy CowsLisa Rienesl0Negar Khayatzadeh1Astrid Köck2Laura Dale3Andreas Werner4Clément Grelet5Nicolas Gengler6Franz-Josef Auer7Christa Egger-Danner8Xavier Massart9Johann Sölkner10University of Natural Resources and Life Sciences, Vienna (BOKU), Division of Livestock Sciences, Department of Sustainable Agricultural Systems, Gregor-Mendel-Strasse 33, A-1180 Vienna, AustriaUniversity of Natural Resources and Life Sciences, Vienna (BOKU), Division of Livestock Sciences, Department of Sustainable Agricultural Systems, Gregor-Mendel-Strasse 33, A-1180 Vienna, AustriaZuchtData EDV-Dienstleistungen GmbH, Dresdner Straße 89/19, A-1200 Vienna, AustriaLandesverband Baden-Württemberg für Leistungs- und Qualitätsprüfungen in der Tierzucht e.V. (LKV), Heinrich-Baumann Straße 1-3, 70190 Stuttgart, GermanyLandesverband Baden-Württemberg für Leistungs- und Qualitätsprüfungen in der Tierzucht e.V. (LKV), Heinrich-Baumann Straße 1-3, 70190 Stuttgart, GermanyCentre Wallon de Recherches Agronomiques (CRA-W), Chaussée de Namur 24, B-5030 Gembloux, BelgiumUniversité de Liège (ULg), Gembloux Agro-Bio Tech, Passage des Déportés 8, B-5030 Gembloux, BelgiumLKV Austria Gemeinnützige GmbH, Dresdner Straße 89/19, A-1200 Wien, AustriaZuchtData EDV-Dienstleistungen GmbH, Dresdner Straße 89/19, A-1200 Vienna, AustriaEuropean Milk Recording (EMR), Rue des Champs Elysées 4, 5590 Ciney, BelgiumUniversity of Natural Resources and Life Sciences, Vienna (BOKU), Division of Livestock Sciences, Department of Sustainable Agricultural Systems, Gregor-Mendel-Strasse 33, A-1180 Vienna, AustriaMid-infrared (MIR) spectroscopy is the method of choice for the standard milk recording system, to determine milk components including fat, protein, lactose and urea. Since milk composition is related to health and metabolic status of a cow, MIR spectra could be potentially used for disease detection. In dairy production, mastitis is one of the most prevalent diseases. The aim of this study was to develop a calibration equation to predict mastitis events from routinely recorded MIR spectra data. A further aim was to evaluate the use of test day somatic cell score (SCS) as covariate on the accuracy of the prediction model. The data for this study is from the Austrian milk recording system and its health monitoring system (GMON). Test day data including MIR spectra data was merged with diagnosis data of Fleckvieh, Brown Swiss and Holstein Friesian cows. As prediction variables, MIR absorbance data after first derivatives and selection of wavenumbers, corrected for days in milk, were used. The data set contained roughly 600,000 records and was split into calibration and validation sets by farm. Calibration sets were made to be balanced (as many healthy as mastitis cases), while the validation set was kept large and realistic. Prediction was done with Partial Least Squares Discriminant Analysis, key indicators of model fit were sensitivity and specificity. Results were extracted for association between spectra and diagnosis with different time windows (days between diagnosis and test days) in validation. The comparison of different sets of predictor variables (MIR, SCS, MIR + SCS) showed an advantage in prediction for MIR + SCS. For this prediction model, specificity was 0.79 and sensitivity was 0.68 in time window -7 to +7 days (calibration and validation). Corresponding values for MIR were 0.71 and 0.61, for SCS they were 0.81 and 0.62. In general, prediction of mastitis performed better with a shorter distance between test day and mastitis event, yet even for time windows of -21 to +21 days, prediction accuracies were still reasonable, with sensitivities ranging from 0.50 to 0.57 and specificities remaining unchanged (0.71 to 0.85). Additional research to further improve prediction equation, and studies on genetic correlations among clinical mastitis, SCS and MIR predicted mastitis are planned.https://acta.mendelu.cz/67/5/1221/MIR spectroscopydairy cowmilkmastitissomatic cell countPLS