Peer-reviewed veterinary case report
Method for short-term prediction of milk yield at the quarter level to improve udder health monitoring.
- Journal:
- Journal of dairy science
- Year:
- 2018
- Authors:
- Adriaens, Ines et al.
- Affiliation:
- Department of Biosystems
Plain-English summary
This research focuses on understanding how udder health issues can lead to milk loss in dairy cows, particularly looking at how different quarters of the udder can be affected. The researchers created a new method to predict how much milk each quarter could produce under normal conditions, using data from 504 lactations collected by an automated milking system. Their model can accurately forecast milk yield for individual quarters up to 50 days in advance, with a small margin of error. They demonstrated this method by calculating milk losses during cases of clinical mastitis (an infection in the udder). Overall, the treatment worked well, providing valuable insights into milk production and losses related to udder health.
Abstract
Udder health problems are often associated with milk losses. These losses are different between quarters, as infected quarters are affected both by systemic and pathogen-specific local effects, whereas noninfected quarters are only subject to systemic effects. To gain insight in these losses and the milk yield dynamics during disease, it is essential to have a reliable reference for quarter-level milk yield in an unperturbed state, mimicking its potential yield. We developed a novel methodology to predict this quarter milk yield per milking session, using an historical data set of 504 lactations collected on a test farm by an automated milking system from DeLaval (Tumba, Sweden). Using a linear mixed model framework in which covariates associated with the linearized Wood model and the milking interval are included, we were able to describe quarter-level yield per milking session with a proportional error below 10%. Applying this model enables us to predict the milk yield of individual quarters 1 to 50 d ahead with a mean prediction error ranging between 8 and 20%, depending on the amount of historical data available to estimate the random effect covariates for the predicted lactation. The developed methodology was illustrated using 2 examples for which quarter-level milk losses are calculated during clinical mastitis. These showed that the quarter-level mixed model allows us to gain insight in quarter lactation dynamics and enables to calculate milk losses in different situations.
Find similar cases for your pet
PetCaseFinder finds other peer-reviewed reports of pets with the same symptoms, plus a plain-English summary of what was tried across them.
Search related cases →Original publication: https://pubmed.ncbi.nlm.nih.gov/30197139/