Rajkondawar P G, Liu M, Dyer R M, Neerchal N K, Tasch U, Lefcourt A M, Erez B, Varner M A
Bou-Matic, LLC, Madison, WI 53708, USA.
J Dairy Sci. 2006 Nov;89(11):4267-75. doi: 10.3168/jds.S0022-0302(06)72473-0.
Bovine lameness results in pain and suffering in cattle and economic loss for producers. A system for automatically detecting lame cows was developed recently that measures vertical force components attributable to individual limbs. These measurements can be used to calculate a number of limb movement variables. The objective of this investigation was to explore whether gait scores, lesion scores, or combined gait and lesion scores were more effectively captured by a set of 5 limb movement variables. A set of 700 hind limb examinations was used to create gait-based, lesion-based, and combined (gait- and lesion-based) models. Logistic regression models were constructed using 1, 2, or 3 d of measurements. Resulting models were tested on cows not used in modeling. The accuracy of lesion-score models was superior to that of gait-score models; lesion-based models generated greater values of areas under the receiving operating characteristic curves (range 0.75 to 0.84) and lower mean-squared errors (0.13 to 0.16) compared with corresponding values for the gait-based models (0.63 to 0.73 and 0.26 to 0.31 for receiving operating characteristic and mean-squared errors, respectively). These results indicate that further model development and investigation could generate automated and objective methods of lameness detection in dairy cattle.
牛跛行会给牛带来疼痛和痛苦,给养殖户造成经济损失。最近开发了一种自动检测跛足奶牛的系统,该系统可测量单个肢体的垂直力分量。这些测量结果可用于计算一些肢体运动变量。本研究的目的是探讨一组5个肢体运动变量能否更有效地捕捉步态评分、病变评分或步态与病变综合评分。使用一组700次后肢检查来创建基于步态、基于病变以及综合(基于步态和病变)的模型。使用1、2或3天的测量数据构建逻辑回归模型。将所得模型在未用于建模的奶牛身上进行测试。病变评分模型的准确性优于步态评分模型;与基于步态的模型相应值(接受者操作特征曲线下面积为0.63至0.73,均方误差为0.26至0.31)相比,基于病变的模型在接受者操作特征曲线下面积产生更大的值(范围为0.75至0.84),均方误差更低(0.13至0.16)。这些结果表明,进一步的模型开发和研究可能会产生用于检测奶牛跛足的自动化和客观方法。