Abstract
Data-driven health monitoring based on milk yield has shown potential to identify health-perturbing events during the transition period. As a proof of principle, we explored the association between the cow's residual milk yield, that is, the difference between the actual and expected milk yield, and the behavioral parameters of cows during the transition period, as measured by a neck and leg activity sensor. Cows from 8 Dutch commercial dairy farms were equipped with accelerometer sensors to study their time budgets, including eating, rumination, lying, and standing times. Daily sensor data of 2,689 lactations were used from 21 d prepartum until 21 d postpartum. The expected milk yield in the current transition period was predicted using a previously developed artificial intelligence model using low-frequency test day data from the previous lactation. The expected milk yields were subtracted from the actual productions to calculate the milk yield residuals in the transition period (MRT). Three milk residual categories (low, medium, high) were subsequently defined, and behavioral differences between the categories were studied. Postpartum eating times for cows in the high MRT category were consistently higher compared with the low MRT category, with differences ranging from 11.08 min (95% CI: 0.31-21.85 min) to 19.89 min (95% CI: 9.62-30.16min) per day. Rumination time in the 21 d after calving was lower in the category with the most negative milk yield residuals (low MRT) compared with both the other categories, with differences up to 36.12 min (95% CI: 24.63-47.62 min), while standing times after calving were highest in the low MRT category. Longer lying times were observed in the low MRT category on d 1 postpartum and at the end of the observation period (d 18-20). No significant differences were observed in eating, rumination, and standing times across the different MRT categories during the prepartum period. For lying times, significant effects were identified between the different MRT categories on certain days, with cows in the high MRT category exhibiting the longest lying times, with differences ranging between 19.13 min (95% CI: 0.47-37.80 min) and 24.82 min (95% CI: 7.32-42.32 min) compared with the low category. Cows with more negative milk yield residuals during the first 21 d after calving exhibited postpartum behavioral patterns associated with a compromised transition. Results of the present study suggest the potential application of MRT as a metabolic indicator for transitioning cows, which could support the development of new health monitoring tools.
| Original language | English |
|---|---|
| Pages (from-to) | 8859-8876 |
| Number of pages | 18 |
| Journal | Journal of Dairy Science |
| Volume | 108 |
| Issue number | 8 |
| Early online date | 15 Jul 2025 |
| DOIs | |
| Publication status | Published - Aug 2025 |
Bibliographical note
Publisher Copyright:© 2025 American Dairy Science Association
Funding
This study was partly funded by VLAIO (Vlaamse Agentschap Innoveren & Ondernemen, Brussels, Belgium) as part of the LA-trajectory ‘Veerkracht,' project HBC.2017.0830. We gratefully thank all the participating farmers for their cooperation, and we thank Nedap Livestock Management (Groenlo, the Netherlands) for providing behavioral sensor data. The authors affirm that the manuscript is an honest, accurate, and transparent account of the study and reported according to the guidelines of the Strengthening the Reporting of Observational Studies in Epidemiology (STROBE). No important aspects of the study have been omitted, and any discrepancies from the study as planned have been explained. All authors read and approved the final manuscript. The use of neck and leg sensors in commercial dairy herds is not considered an animal experiment under the Dutch law; thus, no formal ethical approval was needed ( Hut et al., 2021 , 2022 ). The authors have not stated any conflicts of interest.
| Funders | Funder number |
|---|---|
| Vlaamse Agentschap Innoveren & Ondernemen | HBC.2017.0830 |
Keywords
- behavioral analysis
- dairy cattle
- data-driven health monitoring
- milk yield residuals
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