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利用决策树归纳法可以提高自动挤奶系统中传感器数据检测临床乳腺炎的能力。

Detection of clinical mastitis with sensor data from automatic milking systems is improved by using decision-tree induction.

机构信息

Department of Farm Animal Health, Faculty of Veterinary Medicine, Utrecht University, Utrecht, the Netherlands.

出版信息

J Dairy Sci. 2010 Aug;93(8):3616-27. doi: 10.3168/jds.2010-3228.

Abstract

The objective was to develop and validate a clinical mastitis (CM) detection model by means of decision-tree induction. For farmers milking with an automatic milking system (AMS), it is desirable that the detection model has a high level of sensitivity (Se), especially for more severe cases of CM, at a very high specificity (Sp). In addition, an alert for CM should be generated preferably at the quarter milking (QM) at which the CM infection is visible for the first time. Data were collected from 9 Dutch dairy herds milking automatically during a 2.5-yr period. Data included sensor data (electrical conductivity, color, and yield) at the QM level and visual observations of quarters with CM recorded by the farmers. Visual observations of quarters with CM were combined with sensor data of the most recent automatic milking recorded for that same quarter, within a 24-h time window before the visual assessment time. Sensor data of 3.5 million QM were collected, of which 348 QM were combined with a CM observation. Data were divided into a training set, including two-thirds of all data, and a test set. Cows in the training set were not included in the test set and vice versa. A decision-tree model was trained using only clear examples of healthy (n=24,717) or diseased (n=243) QM. The model was tested on 105 QM with CM and a random sample of 50,000 QM without CM. While keeping the Se at a level comparable to that of models currently used by AMS, the decision-tree model was able to decrease the number of false-positive alerts by more than 50%. At an Sp of 99%, 40% of the CM cases were detected. Sixty-four percent of the severe CM cases were detected and only 12.5% of the CM that were scored as watery milk. The Se increased considerably from 40% to 66.7% when the time window increased from less than 24h before the CM observation, to a time window from 24h before to 24h after the CM observation. Even at very wide time windows, however, it was impossible to reach an Se of 100%. This indicates the inability to detect all CM cases based on sensor data alone. Sensitivity levels varied largely when the decision tree was validated per herd. This trend was confirmed when decision trees were trained using data from 8 herds and tested on data from the ninth herd. This indicates that when using the decision tree as a generic CM detection model in practice, some herds will continue having difficulties in detecting CM using mastitis alert lists, whereas others will perform well.

摘要

目的是通过决策树归纳法开发和验证一种临床乳腺炎(CM)检测模型。对于使用自动化挤奶系统(AMS)挤奶的农民来说,理想的是检测模型具有较高的灵敏度(Se),尤其是对于更严重的 CM 病例,特异性(Sp)要非常高。此外,最好在首次发现 CM 感染的乳房挤奶(QM)时生成 CM 警报。数据来自 9 个荷兰奶牛场在 2.5 年期间自动挤奶。数据包括 QM 水平的传感器数据(电导率、颜色和产量)以及农民记录的 CM 乳房的视觉观察。在进行视觉评估之前的 24 小时时间窗口内,将 CM 乳房的视觉观察结果与同一乳房最近的自动挤奶记录的传感器数据相结合。共采集了 350 万 QM 的传感器数据,其中 348 个 QM 与 CM 观察结果相结合。数据分为训练集和测试集,其中三分之二的数据为训练集,三分之一的数据为测试集。训练集中的奶牛不包含在测试集中,反之亦然。仅使用健康(n=24,717)或患病(n=243)QM 的明确示例训练决策树模型。在 105 个有 CM 的 QM 和 50,000 个随机无 CM 的 QM 上测试模型。在保持与 AMS 当前使用的模型相当的 Se 水平的同时,决策树模型能够将假阳性警报数量减少 50%以上。在 Sp 为 99%的情况下,检测到 40%的 CM 病例。检测到 64%的严重 CM 病例,只有 12.5%的 CM 评分呈水样奶。当时间窗口从 CM 观察前不到 24 小时增加到 CM 观察前 24 小时到后 24 小时时,Se 从 40%大幅增加到 66.7%。然而,即使在非常宽的时间窗口内,也不可能达到 100%的 Se。这表明仅依靠传感器数据无法检测到所有 CM 病例。当根据每个牛群验证决策树时,灵敏度水平差异很大。当使用来自 8 个牛群的数据训练决策树并在第 9 个牛群的数据上进行测试时,证实了这一趋势。这表明,在实际中将决策树用作通用 CM 检测模型时,某些牛群在使用乳腺炎警报列表检测 CM 方面将继续遇到困难,而其他牛群则表现良好。

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