Early detection of bovine respiratory disease in pre-weaned dairy calves using sensor based feeding, movement, and social behavioural data

Author:

Bushby Emily V.,Thomas Matthew,Vázquez-Diosdado Jorge A.,Occhiuto Francesca,Kaler Jasmeet

Abstract

AbstractPrevious research shows that feeding and activity behaviours in combination with machine learning algorithms has the potential to predict the onset of bovine respiratory disease (BRD). This study used 229 novel and previously researched feeding, movement, and social behavioural features with machine learning classification algorithms to predict BRD events in pre-weaned calves. Data for 172 group housed calves were collected using automatic milk feeding machines and ultrawideband location sensors. Health assessments were carried out twice weekly using a modified Wisconsin scoring system and calves were classified as sick if they had a Wisconsin score of five or above and/or a rectal temperature of 39.5 °C or higher. A gradient boosting machine classification algorithm produced moderate to high performance: accuracy (0.773), precision (0.776), sensitivity (0.625), specificity (0.872), and F1-score (0.689). The most important 30 features were 40% feeding, 50% movement, and 10% social behavioural features. Movement behaviours, specifically the distance walked per day, were most important for model prediction, whereas feeding and social features aided in the model’s prediction minimally. These results highlighting the predictive potential in this area but the need for further improvement before behavioural changes can be used to reliably predict the onset of BRD in pre-weaned calves.

Funder

Biotechnology and Biological Sciences Research Council

Publisher

Springer Science and Business Media LLC

Reference66 articles.

1. Dawkins, M. S. Animal welfare and efficient farming: Is conflict inevitable?. Anim. Prod. Sci. 57, 201–208. https://doi.org/10.1071/AN15383 (2017).

2. Agriculture and Horticulture Development Board. Better management of Bovine Respiratory Disease. https://projectblue.blob.core.windows.net/media/Default/Imported%20Publication%20Docs/Better-management-of-bovine-respiratory-disease-BRD-pneumonia.pdf (2023).

3. Johnson, K., Burn, C. C. & Wathes, D. C. Rates and risk factors for contagious disease and mortality in young dairy heifers. CAB Rev: Perspect. Agric. Vet. Sci. Nutr. Nat. Resour. 6, 1–10 (2011).

4. Blakebrough-Hall, C., McMeniman, J. P. & González, L. A. An evaluation of the economic effects of bovine respiratory disease on animal performance, carcass traits, and economic outcomes in feedlot cattle defined using four BRD diagnosis methods. J. Anim. Sci. 98, skaa005 (2020).

5. Taylor, J. D., Fulton, R. W., Lehenbauer, T. W., Step, D. L. & Confer, A. W. The epidemiology of bovine respiratory disease: What is the evidence for predisposing factors?. Can. Vet. J. 51, 1095 (2010).

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