1Department of Biosystems,M3-BIORES: Measure, Model and Manage Bioresponses,KU Leuven,Kasteelpark Arenberg 30,Bus 2456,BE-3001 Heverlee,Belgium.
2Institute of Agricultural Engineering,Agricultural Research Organization (ARO),The Volcani Center,PO Box 6, IL-50250 Bet Dagan,Israel.
Animal. 2016 Sep;10(9):1493-500. doi: 10.1017/S1751731116000744. Epub 2016 May 25.
Early detection of post-calving health problems is critical for dairy operations. Separating sick cows from the herd is important, especially in robotic-milking dairy farms, where searching for a sick cow can disturb the other cows' routine. The objectives of this study were to develop and apply a behaviour- and performance-based health-detection model to post-calving cows in a robotic-milking dairy farm, with the aim of detecting sick cows based on available commercial sensors. The study was conducted in an Israeli robotic-milking dairy farm with 250 Israeli-Holstein cows. All cows were equipped with rumination- and neck-activity sensors. Milk yield, visits to the milking robot and BW were recorded in the milking robot. A decision-tree model was developed on a calibration data set (historical data of the 10 months before the study) and was validated on the new data set. The decision model generated a probability of being sick for each cow. The model was applied once a week just before the veterinarian performed the weekly routine post-calving health check. The veterinarian's diagnosis served as a binary reference for the model (healthy-sick). The overall accuracy of the model was 78%, with a specificity of 87% and a sensitivity of 69%, suggesting its practical value.
产后健康问题的早期检测对奶牛场至关重要。将患病奶牛与牛群分开非常重要,特别是在机器人挤奶的奶牛场,因为寻找患病奶牛会干扰其他奶牛的日常活动。本研究的目的是开发并应用一种基于行为和表现的健康检测模型,对机器人挤奶奶牛场的产后奶牛进行检测,旨在利用现有的商业传感器检测患病奶牛。该研究在以色列的一个机器人挤奶奶牛场进行,该奶牛场有 250 头以色列荷斯坦奶牛。所有奶牛均配备了反刍和颈部活动传感器。在机器人挤奶设备中记录了产奶量、挤奶机器人的访问次数和 BW。决策树模型在校准数据集(研究前 10 个月的历史数据)上进行开发,并在新数据集上进行验证。决策模型为每头奶牛生成患病的概率。该模型每周应用一次,就在兽医进行每周例行产后健康检查之前。兽医的诊断作为模型的二进制参考(健康-患病)。模型的整体准确率为 78%,特异性为 87%,敏感性为 69%,表明其具有实际价值。