Nielen M, Schukken Y H, Brand A, Haring S, Ferwerda-van Zonneveld R T
Utrecht University, Department of Herd Health and Reproduction, The Netherlands.
J Dairy Sci. 1995 May;78(5):1050-61. doi: 10.3168/jds.S0022-0302(95)76721-2.
Three techniques were compared for analysis of automatically collected data from the milking parlor. Mammary quarters showing signs of clinical mastitis were compared with randomly selected healthy quarters. Automatic data were analyzed from the milking on which the milkers observed clinical mastitis as well as data from the two prior milkings. Electrical conductivity of milk was not corrected for individual cows. Milking parlor data were preprocessed so that information on the electrical conductivity pattern during a milking was retained. Principal component analysis was used to verify whether variation in the data was caused by mastitis. Performance of logistic regression models for detection of clinical mastitis was compared with that of backpropagation neural networks. Variation in the quarter data was caused by mastitis. Automatic data from infected quarters did not always differ from data from healthy quarters, especially from the two prior milkings. The detection performance of the logistic regression model was similar to that of the neural networks. When both models were tested on the development data, sensitivity was approximately 75%, and specificity was approximately 90% at the milking of mastitis observation. Detection results were lower for the prior milkings. Therefore, not all incidences of clinical mastitis cases could be detected before clinical signs occurred.
对三种技术进行了比较,以分析从挤奶厅自动收集的数据。将出现临床乳腺炎迹象的乳腺象限与随机选择的健康象限进行比较。分析了挤奶工观察到临床乳腺炎时的挤奶自动数据以及前两次挤奶的数据。未对个体奶牛的牛奶电导率进行校正。对挤奶厅数据进行了预处理,以便保留挤奶期间电导率模式的信息。主成分分析用于验证数据中的变异是否由乳腺炎引起。将用于检测临床乳腺炎的逻辑回归模型的性能与反向传播神经网络的性能进行了比较。象限数据中的变异是由乳腺炎引起的。感染象限的自动数据并不总是与健康象限的数据不同,尤其是前两次挤奶的数据。逻辑回归模型的检测性能与神经网络的相似。当在开发数据上对两个模型进行测试时,在乳腺炎观察挤奶时,灵敏度约为75%,特异性约为90%。前几次挤奶的检测结果较低。因此,并非所有临床乳腺炎病例在临床症状出现之前都能被检测到。