Literature DB >> 31477295

Prediction of metabolic status of dairy cows in early lactation with on-farm cow data and machine learning algorithms.

Wei Xu1, Ariette T M van Knegsel2, Jacques J M Vervoort3, Rupert M Bruckmaier4, Renny J van Hoeij2, Bas Kemp2, Edoardo Saccenti5.   

Abstract

Metabolic status of dairy cows in early lactation can be evaluated using the concentrations of plasma β-hydroxybutyrate (BHB), free fatty acids (FFA), glucose, insulin, and insulin-like growth factor 1 (IGF-1). These plasma metabolites and metabolic hormones, however, are difficult to measure on farm. Instead, easily obtained on-farm cow data, such as milk production traits, have the potential to predict metabolic status. Here we aimed (1) to investigate whether metabolic status of individual cows in early lactation could be clustered based on their plasma values and (2) to evaluate machine learning algorithms to predict metabolic status using on-farm cow data. Through lactation wk 1 to 7, plasma metabolites and metabolic hormones of 334 cows were measured weekly and used to cluster each cow into 1 of 3 clusters per week. The cluster with the greatest plasma BHB and FFA and the lowest plasma glucose, insulin, and IGF-1 was defined as poor metabolic status; the cluster with the lowest plasma BHB and FFA and the greatest plasma glucose, insulin, and IGF-1 was defined as good metabolic status; and the intermediate cluster was defined as average metabolic status. Most dairy cows were classified as having average or good metabolic status, and a limited number of cows had poor metabolic status (10-50 cows per lactation week). On-farm cow data, including dry period length, parity, milk production traits, and body weight, were used to predict good or average metabolic status with 8 machine learning algorithms. Random Forest (error rate ranging from 12.4 to 22.6%) and Support Vector Machine (SVM; error rate ranging from 12.4 to 20.9%) were the top 2 best-performing algorithms to predict metabolic status using on-farm cow data. Random Forest had a higher sensitivity (range: 67.8-82.9% during wk 1 to 7) and negative predictive value (range: 89.5-93.8%) but lower specificity (range: 76.7-88.5%) and positive predictive value (range: 58.1-78.4%) than SVM. In Random Forest, milk yield, fat yield, protein percentage, and lactose yield had important roles in prediction, but their rank of importance differed across lactation weeks. In conclusion, dairy cows could be clustered for metabolic status based on plasma metabolites and metabolic hormones. Moreover, on-farm cow data can predict cows in good or average metabolic status, with Random Forest and SVM performing best of all algorithms.
Copyright © 2019 American Dairy Science Association. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Random Forest; cattle; cluster analysis; energy metabolism

Year:  2019        PMID: 31477295     DOI: 10.3168/jds.2018-15791

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.  The Early Prediction of Common Disorders in Dairy Cows Monitored by Automatic Systems with Machine Learning Algorithms.

Authors:  Xiaojing Zhou; Chuang Xu; Hao Wang; Wei Xu; Zixuan Zhao; Mengxing Chen; Bin Jia; Baoyin Huang
Journal:  Animals (Basel)       Date:  2022-05-12       Impact factor: 3.231

3.  Prediction of Calving to Conception Interval Length Using Algorithmic Analysis of Endometrial mRNA Expression in Bovine.

Authors:  Dawid Tobolski; Karolina Łukasik; Agnieszka Bacławska; Dariusz Jan Skarżyński; Miel Hostens; Wojciech Barański
Journal:  Animals (Basel)       Date:  2021-01-19       Impact factor: 2.752

Review 4.  Over 20 Years of Machine Learning Applications on Dairy Farms: A Comprehensive Mapping Study.

Authors:  Philip Shine; Michael D Murphy
Journal:  Sensors (Basel)       Date:  2021-12-22       Impact factor: 3.576

5.  Comparing the whole genome methylation landscape of dairy calf blood cells revealed intergenerational inheritance of the maternal metabolism.

Authors:  Ying Zhang; Catherine Chaput; Eric Fournier; Julien Prunier; Marc-André Sirard
Journal:  Epigenetics       Date:  2021-07-24       Impact factor: 4.861

  5 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.