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Monitoring of Body Condition in Dairy Cows to Assess Disease Risk at the Individual and Herd Level.

Ramiro RearteSantiago Nicolas LorentiGerman DominguezRodolfo Luzbel de la SotaIsabel Maria Lacau-MengidoMauricio Javier Giuliodori
Published in: Animals : an open access journal from MDPI (2023)
A retrospective longitudinal study assessing the explanatory and predictive capacity of body condition score (BCS) in dairy cows on disease risk at the individual and herd level was carried out. Data from two commercial grazing herds from the Argentinean Pampa were gathered (Herd A = 2100 and herd B = 2600 milking cows per year) for 4 years. Logistic models were used to assess the association of BCS indicators with the odds for anestrus at the cow and herd level. Population attributable fraction (AF P ) was estimated to assess the anestrus rate due to BCS indicators. We found that anestrus risk decreased in cows calving with BCS ≥ 3 and losing ≤ 0.5 (OR: 0.07-0.41), and that anestrus rate decreased in cohorts with a high frequency of cows with proper BCS (OR: 0.22-0.45). Despite aggregated data having a good explanatory power, their predictive capacity for anestrus rate at the herd level is poor (AUC: 0.574-0.679). The AF P varied along the study in both herds and tended to decrease every time the anestrous rate peaked. We conclude that threshold-based models with BCS indicators as predictors are useful to understand disease risk (e.g., anestrus), but conversely, they are useless to predict such multicausal disease events at the herd level.
Keyphrases
  • dairy cows
  • high frequency
  • atrial fibrillation
  • electronic health record
  • transcranial magnetic stimulation
  • deep learning