Method for short-term prediction of milk yield at the quarter level to improve udder health monitoring

J Dairy Sci. 2018 Nov;101(11):10327-10336. doi: 10.3168/jds.2018-14696. Epub 2018 Sep 7.

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.

Keywords: dairy cow; linear mixed model; milk loss; udder health.

MeSH terms

  • Animals
  • Cattle / physiology*
  • Dairying
  • Farms
  • Female
  • Lactation
  • Linear Models
  • Mammary Glands, Animal / physiology
  • Mastitis, Bovine / metabolism*
  • Milk / metabolism*
  • Records
  • Reference Standards
  • Veterinary Medicine