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奶牛跛行检测:基于图像的姿势处理和行为与性能感应的单预测因子与多变量分析。

Lameness detection in dairy cattle: single predictor v. multivariate analysis of image-based posture processing and behaviour and performance sensing.

机构信息

1M3-BIORES: Measure, Model & Manage Bioresponses,KU Leuven,Kasteelpark Arenberg 30,bus 2456,BE-3001 Leuven,Belgium.

2Wageningen UR Livestock Research,PO Box 338,NL-6700AH Wageningen,The Netherlands.

出版信息

Animal. 2016 Sep;10(9):1525-32. doi: 10.1017/S1751731115001457. Epub 2015 Aug 3.

Abstract

The objective of this study was to evaluate if a multi-sensor system (milk, activity, body posture) was a better classifier for lameness than the single-sensor-based detection models. Between September 2013 and August 2014, 3629 cow observations were collected on a commercial dairy farm in Belgium. Human locomotion scoring was used as reference for the model development and evaluation. Cow behaviour and performance was measured with existing sensors that were already present at the farm. A prototype of three-dimensional-based video recording system was used to quantify automatically the back posture of a cow. For the single predictor comparisons, a receiver operating characteristics curve was made. For the multivariate detection models, logistic regression and generalized linear mixed models (GLMM) were developed. The best lameness classification model was obtained by the multi-sensor analysis (area under the receiver operating characteristics curve (AUC)=0.757±0.029), containing a combination of milk and milking variables, activity and gait and posture variables from videos. Second, the multivariate video-based system (AUC=0.732±0.011) performed better than the multivariate milk sensors (AUC=0.604±0.026) and the multivariate behaviour sensors (AUC=0.633±0.018). The video-based system performed better than the combined behaviour and performance-based detection model (AUC=0.669±0.028), indicating that it is worthwhile to consider a video-based lameness detection system, regardless the presence of other existing sensors in the farm. The results suggest that Θ2, the feature variable for the back curvature around the hip joints, with an AUC of 0.719 is the best single predictor variable for lameness detection based on locomotion scoring. In general, this study showed that the video-based back posture monitoring system is outperforming the behaviour and performance sensing techniques for locomotion scoring-based lameness detection. A GLMM with seven specific variables (walking speed, back posture measurement, daytime activity, milk yield, lactation stage, milk peak flow rate and milk peak conductivity) is the best combination of variables for lameness classification. The accuracy on four-level lameness classification was 60.3%. The accuracy improved to 79.8% for binary lameness classification. The binary GLMM obtained a sensitivity of 68.5% and a specificity of 87.6%, which both exceed the sensitivity (52.1%±4.7%) and specificity (83.2%±2.3%) of the multi-sensor logistic regression model. This shows that the repeated measures analysis in the GLMM, taking into account the individual history of the animal, outperforms the classification when thresholds based on herd level (a statistical population) are used.

摘要

本研究旨在评估多传感器系统(牛奶、活动、身体姿势)是否比基于单传感器的检测模型更能准确地检测跛行。2013 年 9 月至 2014 年 8 月,在比利时的一个商业奶牛场收集了 3629 头奶牛的观察数据。人类运动评分被用作模型开发和评估的参考。奶牛的行为和表现通过已经在农场使用的现有传感器进行测量。一个基于三维视频录制系统的原型被用于自动量化奶牛的后躯姿势。对于单预测因子比较,绘制了接收者操作特性曲线。对于多变量检测模型,开发了逻辑回归和广义线性混合模型(GLMM)。通过多传感器分析获得了最佳跛行分类模型(接收者操作特性曲线下的面积(AUC)=0.757±0.029),其中包含牛奶和挤奶变量、活动和步态以及视频中的姿势变量的组合。其次,基于视频的多变量系统(AUC=0.732±0.011)的性能优于基于多变量牛奶传感器(AUC=0.604±0.026)和基于多变量行为传感器(AUC=0.633±0.018)。基于视频的系统优于基于组合行为和性能的检测模型(AUC=0.669±0.028),这表明无论农场是否存在其他现有传感器,都值得考虑基于视频的跛行检测系统。结果表明,Θ2(髋关节周围背部曲率的特征变量)的 AUC 为 0.719,是基于运动评分的跛行检测的最佳单预测变量。总体而言,本研究表明基于视频的后躯姿势监测系统优于行为和性能传感技术,更适用于基于运动评分的跛行检测。具有七个特定变量(行走速度、后躯姿势测量、日间活动、产奶量、泌乳阶段、牛奶峰值流速和牛奶峰值电导率)的 GLMM 是跛行分类的最佳变量组合。对四级跛行的分类准确率为 60.3%。二进制跛行分类的准确率提高到 79.8%。二进制 GLMM 的敏感性为 68.5%,特异性为 87.6%,均高于多传感器逻辑回归模型的敏感性(52.1%±4.7%)和特异性(83.2%±2.3%)。这表明 GLMM 中的重复测量分析,考虑到动物的个体历史,优于基于畜群水平(统计群体)的阈值分类。

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