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使用朴素贝叶斯网络为临床乳腺炎的致病病原体提供概率分布。

Providing probability distributions for the causal pathogen of clinical mastitis using naive Bayesian networks.

作者信息

Steeneveld W, van der Gaag L C, Barkema H W, Hogeveen H

机构信息

Department of Farm Animal Health, Faculty of Veterinary Medicine, Utrecht University, PO Box 80151, 3508 TD Utrecht, the Netherlands.

出版信息

J Dairy Sci. 2009 Jun;92(6):2598-609. doi: 10.3168/jds.2008-1694.

Abstract

Clinical mastitis (CM) can be caused by a wide variety of pathogens and farmers must start treatment before the actual causal pathogen is known. By providing a probability distribution for the causal pathogen, naive Bayesian networks (NBN) can serve as a management tool for farmers to decide which treatment to use. The advantage of providing a probability distribution for the causal pathogen, rather than only providing the most likely causal pathogen, is that the uncertainty involved is visible and a more informed treatment decision can be made. The objective of this study was to illustrate provision of probability distributions for the gram status and for the causal pathogen for CM cases. For constructing the NBN, data were used from 274 Dutch dairy herds in which the occurrence of CM was recorded over an 18-mo period. The data set contained information on 3,833 CM cases. Two-thirds of the data set was used for the construction process and one-third was retained for validation. One NBN was constructed with the CM cases classified according to their gram status, and another was built with the CM cases classified into streptococci, Staphylococcus aureus, or Escherichia coli. Information usually available at a dairy farm was included in both NBN (parity, month in lactation, season of the year, quarter position, SCC and CM history, being sick or not, and color and texture of the milk). Accuracy was calculated to obtain insight in the quality of the constructed NBN. The accuracy of classifying CM cases into gram-positive or gram-negative pathogens was 73%, while the accuracy of classifying CM cases into streptococci, Staph. aureus, or E. coli was 52%. Because only CM cases with a high probability for a single causal pathogen will be considered for pathogen-specific treatment, accuracies based on only classifying CM cases above a particular probability threshold were determined. For instance, for CM cases in which either gram-negative or gram-positive had a probability >0.90, classification according to the gram status reached an accuracy of 97%. We found that the greater the probability for a particular pathogen was for a CM case, the more accurate was the classification of this case as being caused by this pathogen. The probability distributions provided by the NBN and the associated accuracies for varying classification thresholds provide the farmer with considerable insight about the most likely causal pathogen for a CM case and the uncertainty involved.

摘要

临床型乳腺炎(CM)可由多种病原体引起,养殖户必须在确定实际致病病原体之前就开始治疗。通过提供致病病原体的概率分布,朴素贝叶斯网络(NBN)可作为养殖户决定使用何种治疗方法的管理工具。为致病病原体提供概率分布,而非仅提供最可能的致病病原体,其优势在于所涉及的不确定性是可见的,从而可以做出更明智的治疗决策。本研究的目的是说明为CM病例的革兰氏菌状态和致病病原体提供概率分布的情况。为构建NBN,使用了来自274个荷兰奶牛场的数据,这些奶牛场在18个月期间记录了CM的发生情况。该数据集包含3833例CM病例的信息。数据集的三分之二用于构建过程,三分之一保留用于验证。构建了一个NBN,其中CM病例根据其革兰氏菌状态进行分类,另一个则是将CM病例分为链球菌、金黄色葡萄球菌或大肠杆菌进行构建。两个NBN都纳入了奶牛场通常可获得的信息(胎次、泌乳月份、年份季节、乳腺象限、体细胞计数和CM病史、是否患病以及牛奶的颜色和质地)。计算准确率以了解所构建NBN的质量。将CM病例分类为革兰氏阳性或革兰氏阴性病原体的准确率为73%,而将CM病例分类为链球菌、金黄色葡萄球菌或大肠杆菌的准确率为52%。由于只有单一致病病原体概率较高的CM病例才会考虑进行针对病原体的治疗,因此确定了仅基于将CM病例分类到特定概率阈值以上的准确率。例如,对于革兰氏阴性或革兰氏阳性概率>0.90的CM病例,根据革兰氏菌状态进行分类的准确率达到了97%。我们发现,对于CM病例,特定病原体的概率越高,将该病例分类为由该病原体引起的准确性就越高。NBN提供的概率分布以及不同分类阈值的相关准确率,为养殖户提供了关于CM病例最可能的致病病原体以及所涉及的不确定性的相当多的见解。

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