M3-BIORES, Division Animal and Human Health Engineering, Department of Biosystems, KU Leuven, Kasteelpark Arenberg 30, 3001 Heverlee, Vlaams-Brabant, Belgium.
BioRICS nv, Technologielaan 3, 3001 Leuven, Vlaams-Brabant, Belgium.
Animal. 2020 Feb;14(2):409-417. doi: 10.1017/S1751731119001642. Epub 2019 Jul 29.
Lameness is an important economic problem in the dairy sector, resulting in production loss and reduced welfare of dairy cows. Given the modern-day expansion of dairy herds, a tool to automatically detect lameness in real-time can therefore create added value for the farmer. The challenge in developing camera-based tools is that one system has to work for all the animals on the farm despite each animal having its own individual lameness response. Individualising these systems based on animal-level historical data is a way to achieve accurate monitoring on farm scale. The goal of this study is to optimise a lameness monitoring algorithm based on back posture values derived from a camera for individual cows by tuning the deviation thresholds and the quantity of the historical data being used. Back posture values from a sample of 209 Holstein Friesian cows in a large herd of over 2000 cows were collected during 15 months on a commercial dairy farm in Sweden. A historical data set of back posture values was generated for each cow to calculate an individual healthy reference per cow. For a gold standard reference, manual scoring of lameness based on the Sprecher scale was carried out weekly by a single skilled observer during the final 6 weeks of data collection. Using an individual threshold, deviations from the healthy reference were identified with a specificity of 82.3%, a sensitivity of 79%, an accuracy of 82%, and a precision of 36.1% when the length of the healthy reference window was not limited. When the length of the healthy reference window was varied between 30 and 250 days, it was observed that algorithm performance was maximised with a reference window of 200 days. This paper presents a high-performing lameness detection system and demonstrates the importance of the historical window length for healthy reference calculation in order to ensure the use of meaningful historical data in deviation detection algorithms.
跛行是奶牛养殖业中的一个重要经济问题,会导致奶牛生产损失和福利下降。鉴于现代奶牛养殖规模的扩大,一种能够实时自动检测跛行的工具可以为农民创造附加值。开发基于摄像头的工具的挑战在于,尽管每只动物都有自己独特的跛行反应,但一个系统必须适用于农场中的所有动物。基于动物水平的历史数据对这些系统进行个性化设置是在农场规模上实现准确监测的一种方法。本研究的目的是通过调整偏差阈值和使用的历史数据量,优化基于摄像头的背部姿势值的跛行监测算法,以适用于个体奶牛。在瑞典的一个大型奶牛场中,对超过 2000 头奶牛的 209 头荷斯坦弗里生奶牛进行了为期 15 个月的样本采集,收集了背部姿势值。为每头奶牛生成了一个基于背部姿势值的历史数据集,以计算每头牛的个体健康参考值。为了获得金标准参考,在数据收集的最后 6 周,由一名熟练观察员每周根据 Sprecher 量表对跛行进行手动评分。使用个体阈值,当健康参考窗口的长度不受限时,从健康参考值的偏差被识别出特异性为 82.3%,敏感性为 79%,准确性为 82%,精确性为 36.1%。当健康参考窗口的长度在 30 到 250 天之间变化时,观察到当参考窗口为 200 天时,算法性能达到最佳。本文提出了一种高性能的跛行检测系统,并演示了健康参考计算中历史窗口长度的重要性,以确保在偏差检测算法中使用有意义的历史数据。