利用自动记录的活动、行为和生产数据预测产后爱尔兰奶牛的跛行。

IF 2.7 2区 农林科学 Q1 VETERINARY SCIENCES
G M Borghart, L E O'Grady, J R Somers
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引用次数: 9

摘要

背景:虽然视觉运动评分是廉价和简单的,但也是费时和主观的。自动化的跛行检测方法已经被开发出来,以取代视觉运动评分,并有助于早期和准确的检测。有几种类型的传感器可以测量活动、说谎行为或温度等特征。以往关于自动跛行检测的研究,结合在农场商业环境中的实际实施,无法达到高精度。我们的研究目的是利用遥感技术和其他动物记录相结合,开发一种奶牛跛行预测模型,该模型将传感器数据转化为易于解释的分类运动信息,供农民使用。在11个月的时间里,在爱尔兰的一个研究农场收集了164头荷斯泰因-弗里西亚奶牛的数据。颈部安装的加速度计用于收集行为指标,另外自动记录的数据包括产奶量和活重。手动记录运动评分数据,采用1 - 5的量表(1 =非跛行,5 =严重跛行)。然后用运动得分将奶牛标记为健全(运动得分1)或不健全(运动得分≥2)。使用梯度增强决策树机器学习算法构建了四个监督分类模型,以研究奶牛是否可以被分类为健全或不健全。可用于模型构建的数据包括行为指标、产奶量和动物特征。结果:利用各种数据源组合构建了所得模型。然后使用混淆矩阵、接收机-算子特征曲线和校准图比较模型的精度。根据准确度指标,获得最高性能的模型是结合所有可用数据的模型,曲线下面积为85%,灵敏度和特异性为78%。结论:这些结果表明,该模型在识别奶牛是健全的还是不健全的预测中,85%的预测是正确的,这表明使用颈部加速度计,结合生产和其他动物数据,有可能取代视觉运动评分作为奶牛跛行检测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of lameness using automatically recorded activity, behavior and production data in post-parturient Irish dairy cows.

Prediction of lameness using automatically recorded activity, behavior and production data in post-parturient Irish dairy cows.

Prediction of lameness using automatically recorded activity, behavior and production data in post-parturient Irish dairy cows.

Prediction of lameness using automatically recorded activity, behavior and production data in post-parturient Irish dairy cows.

Background: Although visual locomotion scoring is inexpensive and simplistic, it is also time consuming and subjective. Automated lameness detection methods have been developed to replace the visual locomotion scoring and aid in early and accurate detection. Several types of sensors are measuring traits such as activity, lying behavior or temperature. Previous studies on automatic lameness detection have been unable to achieve high accuracy in combination with practical implementation in a on farm commercial setting. The objective of our research was to develop a prediction model for lameness in dairy cattle using a combination of remote sensor technology and other animal records that will translate sensor data into easy to interpret classified locomotion information for the farmer. During an 11-month period, data from 164 Holstein-Friesian dairy cows were gathered, housed at an Irish research farm. A neck-mounted accelerometer was used to gather behavioral metrics, additional automatically recorded data consisted of milk production and live weight. Locomotion scoring data were manually recorded, using a one-to-five scale (1 = non-lame, 5 = severely lame). Locomotion scores where then used to label the cows as sound (locomotion score 1) or unsound (locomotion score ≥ 2). Four supervised classification models, using a gradient boosted decision tree machine learning algorithm, were constructed to investigate whether cows could be classified as sound or unsound. Data available for model building included behavioral metrics, milk production and animal characteristics.

Results: The resulting models were constructed using various combinations of the data sources. The accuracy of the models was then compared using confusion matrices, receiver-operator characteristic curves and calibration plots. The model which achieved the highest performance according to the accuracy measures, was the model combining all the available data, resulting in an area under the curve of 85% and a sensitivity and specificity of 78%.

Conclusion: These results show that 85% of this model's predictions were correct in identifying cows as sound or unsound, showing that the use of a neck-mounted accelerometer, in combination with production and other animal data, has potential to replace visual locomotion scoring as lameness detection method in dairy cows.

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来源期刊
Irish Veterinary Journal
Irish Veterinary Journal 农林科学-兽医学
CiteScore
4.80
自引率
3.40%
发文量
1
审稿时长
>36 weeks
期刊介绍: Irish Veterinary Journal is an open access journal with a vision to make a substantial contribution to the dissemination of evidence-based knowledge that will promote optimal health and welfare of both domestic and wild species of animals. Irish Veterinary Journal has a clinical research focus with an emphasis on the effective management of health in both individual and populations of animals. Published studies will be relevant to both the international veterinary profession and veterinary scientists. Papers relating to veterinary education, veterinary ethics, veterinary public health, or relevant studies in the area of social science (participatory research) are also within the scope of Irish Veterinary Journal.
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