Literature DB >> 25465566

Short communication: Use of genomic and metabolic information as well as milk performance records for prediction of subclinical ketosis risk via artificial neural networks.

A Ehret1, D Hochstuhl2, N Krattenmacher3, J Tetens3, M S Klein4, W Gronwald4, G Thaller3.   

Abstract

Subclinical ketosis is one of the most prevalent metabolic disorders in high-producing dairy cows during early lactation. This renders its early detection and prevention important for both economical and animal-welfare reasons. Construction of reliable predictive models is challenging, because traits like ketosis are commonly affected by multiple factors. In this context, machine learning methods offer great advantages because of their universal learning ability and flexibility in integrating various sorts of data. Here, an artificial-neural-network approach was applied to investigate the utility of metabolic, genetic, and milk performance data for the prediction of milk levels of β-hydroxybutyrate within and across consecutive weeks postpartum. Data were collected from 218 dairy cows during their first 5wk in milk. All animals were genotyped with a 50,000 SNP panel, and weekly information on the concentrations of the milk metabolites glycerophosphocholine and phosphocholine as well as milk composition data (milk yield, fat and protein percentage) was available. The concentration of β-hydroxybutyric acid in milk was used as target variable in all prediction models. Average correlations between observed and predicted target values up to 0.643 could be obtained, if milk metabolite and routine milk recording data were combined for prediction at the same day within weeks. Predictive performance of metabolic as well as milk performance-based models was higher than that of models based on genetic information.
Copyright © 2015 American Dairy Science Association. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  artificial neural network; ketosis; milk metabolite; prediction

Mesh:

Substances:

Year:  2014        PMID: 25465566     DOI: 10.3168/jds.2014-8602

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


  5 in total

1.  Integrating diverse data sources to predict disease risk in dairy cattle-a machine learning approach.

Authors:  Jana Lasser; Caspar Matzhold; Christa Egger-Danner; Birgit Fuerst-Waltl; Franz Steininger; Thomas Wittek; Peter Klimek
Journal:  J Anim Sci       Date:  2021-11-01       Impact factor: 3.338

2.  Genome-Enabled Prediction Methods Based on Machine Learning.

Authors:  Edgar L Reinoso-Peláez; Daniel Gianola; Oscar González-Recio
Journal:  Methods Mol Biol       Date:  2022

3.  Screening for ketosis using multiple logistic regression based on milk yield and composition.

Authors:  Mitsunori Kayano; Tomoko Kataoka
Journal:  J Vet Med Sci       Date:  2015-06-14       Impact factor: 1.267

Review 4.  A review of deep learning applications for genomic selection.

Authors:  Osval Antonio Montesinos-López; Abelardo Montesinos-López; Paulino Pérez-Rodríguez; José Alberto Barrón-López; Johannes W R Martini; Silvia Berenice Fajardo-Flores; Laura S Gaytan-Lugo; Pedro C Santana-Mancilla; José Crossa
Journal:  BMC Genomics       Date:  2021-01-06       Impact factor: 3.969

Review 5.  Applications of Omics Technology for Livestock Selection and Improvement.

Authors:  Dibyendu Chakraborty; Neelesh Sharma; Savleen Kour; Simrinder Singh Sodhi; Mukesh Kumar Gupta; Sung Jin Lee; Young Ok Son
Journal:  Front Genet       Date:  2022-06-02       Impact factor: 4.772

  5 in total

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