Authors
Laura V Randall, Dong-Hyun Kim, Salah MA Abdelrazig, Nicola J Bollard, Heather Hemingway-Arnold, Robert M Hyde, Jake S Thompson, Martin J Green
Publication date
2023/10/1
Journal
Journal of Dairy Science
Volume
106
Issue
10
Pages
7033-7042
Publisher
Elsevier
Description
Lameness in dairy cattle is a highly prevalent condition that impacts on the health and welfare of dairy cows. Prompt detection and implementation of effective treatment is important for managing lameness. However, major limitations are associated with visual assessment of lameness, which is the most commonly used method to detect lameness. The aims of this study were to investigate the use of metabolomics and machine learning to develop novel methods to detect lameness. Untargeted metabolomics using liquid chromatography-mass spectrometry (LC-MS) alongside machine learning models and a stability selection method were utilized to evaluate the predictive accuracy of differences in the metabolomics profile of first-lactation dairy cows before (during the transition period) and at the time of lameness (based on visual assessment using the 0–3 scale of the Agriculture and Horticulture Development Board …
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