Title : ( Predicting blood beta-hydroxybutyric acid in dairy cow herds through machine learning-based feature selection: On-farm data basis )
Authors: Daniel Moodi , Abbas Ali Naserian , Amin Khezri , Mostafa Ghazizadeh-Ahsae , Omid Dayani , Vahid Bahrampour ,Abstract
Paper type: Original Research Predicting blood beta-hydroxybutyric acid in dairy cow herds through machine learning-based feature selection: On-farm data basis Daniel Moodi1, Amin Khezri1*, Abbas Ali Naserian2, Mostafa Ghazizadeh-Ahsae 3, Omid Dayani1, Vahid Bahrampour4 1Department of Animal Science, College of Agriculture, Shahid Bahonar University of Kerman, Iran 2Department of Animal Science, College of Agriculture, Ferdowsi University of Mashhad, Iran 3Department of Computer Engineering, Shahid Bahonar University of Kerman, Iran 4Department of Agricultural Engineering, National University of Skills. Tehran. Iran *Corresponding author, E-mail address: akhezri@uk.ac.ir aminkhezri@gmail.com Received: 18 Dec 2024, Received in revised form: 07 Jan 2025, Accepted: 03 Feb 2025, Published online: 05 Feb 2025, © The authors, 2025. ORCID Daniel Moodi 0009-0007-5634-8902 Amin Khezri 0000-0002-5371-9831 Abbas Ali Naserian 0000-0003-1179-6262 Mostafa Ghazizadeh-Ahsaee 0000-0002-3482-7642 Omid Dayani 0000-0002-7067-8242 Vahid Bahrampour 0000-0001-9500-9873 Abstract In dairy industry, high producing fresh dairy cows commonly experience adipose tissue mobilization to support their energy requirements. Precise prediction of blood beta-hydroxybutyric acid (BHBA) concentration could significantly enhance the cow health and welfare, therefore, this study aimed to identify the key factors influencing BHBA levels and develop predictive models based on nutritional and performance data in fresh dairy cows. In this trial, four years data from 325 fresh Holstein cows were collected and analyzed. Various machine learning algorithms, including decision trees, random forests, Lasso and ridge regression models, as well as boosting and bagging techniques, were employed to estimate BHBA levels and identify the influential factors. These algorithms were assessed using the coefficient of determination (R²). The random forest model demonstrated the lowest error, with a mean absolute error of 0.02, while the linear model exhibited the highest error, with a mean absolute error of 1.25. It was found that factors including milk production, previous lactation days in milk (DIM), sampling day, body weight change, BCS at parturition, and the amount and type of dietary fat, as well as overall diet quality were highly significant for estimating blood BHBA levels (P<0.05). Notably, the results indicated that cows with a BCS of 3 or lower, as well as those with a score of 3.75, are crucial categories for predicting BHBA. Additionally, the level and type of fatty acids in the diet, particularly lauric (C12:0), palmitic (C16:0), linolenic (C18:3), and oleic acids (C18:1), had significant influence on BHBA in fresh cows (P<0.05). These findings highlight the importance of integrating these critical factors into predictive models to enhance metabolic health monitoring and improve dairy herd management practices.
Keywords
, beta-hydroxybutyric acid, machine learning algorithms, dairy cows@article{paperid:1106606,
author = {دانیال مودی and Naserian, Abbas Ali and امین خصری and مصطفی قاضی زاده احسائی and امید دیانی and وحید بهرام پور},
title = {Predicting blood beta-hydroxybutyric acid in dairy cow herds through machine learning-based feature selection: On-farm data basis},
journal = {Journal of Livestock Science and Technologies},
year = {2025},
month = {February},
issn = {2322-3553},
keywords = {beta-hydroxybutyric acid; machine learning algorithms; dairy cows},
}
%0 Journal Article
%T Predicting blood beta-hydroxybutyric acid in dairy cow herds through machine learning-based feature selection: On-farm data basis
%A دانیال مودی
%A Naserian, Abbas Ali
%A امین خصری
%A مصطفی قاضی زاده احسائی
%A امید دیانی
%A وحید بهرام پور
%J Journal of Livestock Science and Technologies
%@ 2322-3553
%D 2025
