Literature DB >> 33726672

Integrating genomic and infrared spectral data improves the prediction of milk protein composition in dairy cattle.

Toshimi Baba1, Sara Pegolo2, Lucio F M Mota3, Francisco Peñagaricano4, Giovanni Bittante3, Alessio Cecchinato3, Gota Morota5,6.   

Abstract

BACKGROUND: Over the past decade, Fourier transform infrared (FTIR) spectroscopy has been used to predict novel milk protein phenotypes. Genomic data might help predict these phenotypes when integrated with milk FTIR spectra. The objective of this study was to investigate prediction accuracy for milk protein phenotypes when heterogeneous on-farm, genomic, and pedigree data were integrated with the spectra. To this end, we used the records of 966 Italian Brown Swiss cows with milk FTIR spectra, on-farm information, medium-density genetic markers, and pedigree data. True and total whey protein, and five casein, and two whey protein traits were analyzed. Multiple kernel learning constructed from spectral and genomic (pedigree) relationship matrices and multilayer BayesB assigning separate priors for FTIR and markers were benchmarked against a baseline partial least squares (PLS) regression. Seven combinations of covariates were considered, and their predictive abilities were evaluated by repeated random sub-sampling and herd cross-validations (CV).
RESULTS: Addition of the on-farm effects such as herd, days in milk, and parity to spectral data improved predictions as compared to those obtained using the spectra alone. Integrating genomics and/or the top three markers with a large effect further enhanced the predictions. Pedigree data also improved prediction, but to a lesser extent than genomic data. Multiple kernel learning and multilayer BayesB increased predictive performance, whereas PLS did not. Overall, multilayer BayesB provided better predictions than multiple kernel learning, and lower prediction performance was observed in herd CV compared to repeated random sub-sampling CV.
CONCLUSIONS: Integration of genomic information with milk FTIR spectral can enhance milk protein trait predictions by 25% and 7% on average for repeated random sub-sampling and herd CV, respectively. Multiple kernel learning and multilayer BayesB outperformed PLS when used to integrate heterogeneous data for phenotypic predictions.

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Year:  2021        PMID: 33726672      PMCID: PMC7968271          DOI: 10.1186/s12711-021-00620-7

Source DB:  PubMed          Journal:  Genet Sel Evol        ISSN: 0999-193X            Impact factor:   4.297


  33 in total

1.  Prediction of total genetic value using genome-wide dense marker maps.

Authors:  T H Meuwissen; B J Hayes; M E Goddard
Journal:  Genetics       Date:  2001-04       Impact factor: 4.562

Review 2.  Invited review: Mid-infrared spectroscopy as phenotyping tool for milk traits.

Authors:  M De Marchi; V Toffanin; M Cassandro; M Penasa
Journal:  J Dairy Sci       Date:  2014-01-17       Impact factor: 4.034

3.  Classifying the fertility of dairy cows using milk mid-infrared spectroscopy.

Authors:  P N Ho; V Bonfatti; T D W Luke; J E Pryce
Journal:  J Dairy Sci       Date:  2019-09-05       Impact factor: 4.034

4.  Variations in milk protein fractions affect the efficiency of the cheese-making process.

Authors:  Claudio Cipolat-Gotet; Alessio Cecchinato; Massimo Malacarne; Giovanni Bittante; Andrea Summer
Journal:  J Dairy Sci       Date:  2018-08-16       Impact factor: 4.034

5.  Mid-infrared spectroscopy predictions as indicator traits in breeding programs for enhanced coagulation properties of milk.

Authors:  A Cecchinato; M De Marchi; L Gallo; G Bittante; P Carnier
Journal:  J Dairy Sci       Date:  2009-10       Impact factor: 4.034

6.  Validation of a new reversed-phase high-performance liquid chromatography method for separation and quantification of bovine milk protein genetic variants.

Authors:  Valentina Bonfatti; Luca Grigoletto; Alessio Cecchinato; Luigi Gallo; Paolo Carnier
Journal:  J Chromatogr A       Date:  2008-05-07       Impact factor: 4.759

7.  Energy profiling of dairy cows from routine milk mid-infrared analysis.

Authors:  S L Smith; S J Denholm; M P Coffey; E Wall
Journal:  J Dairy Sci       Date:  2019-10-03       Impact factor: 4.034

8.  Combined use of milk infrared spectra and genotypes can improve prediction of milk fat composition.

Authors:  Qiuyu Wang; Henk Bovenhuis
Journal:  J Dairy Sci       Date:  2019-12-25       Impact factor: 4.034

Review 9.  Kernel-based whole-genome prediction of complex traits: a review.

Authors:  Gota Morota; Daniel Gianola
Journal:  Front Genet       Date:  2014-10-16       Impact factor: 4.599

10.  Predicting male fertility in dairy cattle using markers with large effect and functional annotation data.

Authors:  Juan Pablo Nani; Fernanda M Rezende; Francisco Peñagaricano
Journal:  BMC Genomics       Date:  2019-04-02       Impact factor: 3.969

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  1 in total

1.  Use of Milk Infrared Spectral Data as Environmental Covariates in Genomic Prediction Models for Production Traits in Canadian Holstein.

Authors:  Francesco Tiezzi; Allison Fleming; Francesca Malchiodi
Journal:  Animals (Basel)       Date:  2022-05-06       Impact factor: 3.231

  1 in total

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