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利用多元累积和控制图从行为模式估算奶牛疾病风险概率,以识别奶牛健康挑战。

Estimating risk probabilities for sickness from behavioural patterns to identify health challenges in dairy cows with multivariate cumulative sum control charts.

机构信息

Institute of Animal Breeding and Husbandry, Christian-Albrechts-University, Olshausenstraße 40, D-24098 Kiel, Germany.

Institute of Animal Breeding and Husbandry, Christian-Albrechts-University, Olshausenstraße 40, D-24098 Kiel, Germany.

出版信息

Animal. 2022 Aug;16(8):100601. doi: 10.1016/j.animal.2022.100601. Epub 2022 Jul 28.

Abstract

Dairy cattle housing is characterised by increasing herd sizes and the need for assisting technical tools to monitor the cows' health. This study investigated the combination of logistic regression models with multivariate cumulative sum (MCUSUM) control charts in healthmonitoring of dairy cattle. Sensor information of 618 cows with 791 lactations (138 438 cow days), nine behavioural variables were included as parts of the behavioural patterns: physical activity ("neck activity", "leg activity", "walking duration"), resting ("lying duration", "standing duration", "transitions from lying to standing") and feeding ("feeding duration", "rumination duration", "inactivity duration") behaviour. For each of these behavioural patterns, a logistic regression model with the health status (sick vs not sick) as a dependent variable was designed after a variable selection (herd level) based on the herd dataset with 618 cows (618 lactations; 115 547 cow days), which included the variables of each behaviour pattern and the stage of lactation nested in the number of lactations as explanatory variables. The explanatory variables were added stepwise to the model, with the final model being selected with respect to the lowest values of Akaike's and Bayes' information criteria. Each model was then applied to a dataset with 173 cows (22 891 cow days) at cow level, resulting in individual daily risk probabilities for getting sick. Thus, risk probabilities of each behavioural pattern were estimated and included in the MCUSUM control charts to identify cows at risk of disease. The performance of the MCUSUM control charts was cross-validated to identify the best fitting reference value k and the threshold value h. Alerts given within 5 days prior to diagnosis were counted as detected sicknesses. The performance resulted in a block sensitivity of 70.9-81.4%, specificity of 87.9-94.2% and a false-positive rate of 5.8-12.1%. The performance was confirmed while testing the entire algorithm resulting in a mean area under the receiver operating characteristics curve of 0.89. Calculating precision and the F-score resulted in a precision of 49.0-60.9% (training: 48.8-63.5%) and an F-score of 61.1-65.7% in testing (training: 61.0-67.0%). The precision-recall curve (PRC) was derived from precision and recall with an area under the PRC of 0.70 in training and testing. In summary, the present study was able to develop an algorithm showing good classification potential for the online monitoring of sickness behaviour.

摘要

奶牛养殖环境的特点是畜群规模不断扩大,需要借助技术工具来监测奶牛的健康状况。本研究将逻辑回归模型与多元累积和(MCUSUM)控制图相结合,应用于奶牛健康监测。该研究纳入了 618 头奶牛的 791 个泌乳期(138438 个奶牛日)的传感器信息,其中包括 9 个行为变量,分别为:身体活动(“颈部活动”、“腿部活动”、“行走持续时间”)、休息(“躺卧持续时间”、“站立持续时间”、“从躺卧到站立的转换”)和进食(“进食持续时间”、“反刍持续时间”、“静止持续时间”)行为。对于这些行为模式中的每一种,我们在 herd 数据集(618 头奶牛;618 个泌乳期;115547 个奶牛日)中基于 herd 级别进行变量选择(变量选择)后,设计了一个逻辑回归模型,将健康状况(患病与未患病)作为因变量。将每个行为模式的变量和嵌套在泌乳期数量中的泌乳期阶段作为解释变量添加到模型中。逐步向模型中添加解释变量,最终选择基于最低 Akaike 信息准则和贝叶斯信息准则值的模型。然后,将每个模型应用于奶牛级别数据集(173 头奶牛,22891 个奶牛日),从而得出奶牛患病的个体每日风险概率。因此,估计了每个行为模式的风险概率,并将其包含在 MCUSUM 控制图中,以识别患病风险的奶牛。交叉验证 MCUSUM 控制图的性能,以确定最佳拟合参考值 k 和阈值 h。在诊断前 5 天内发出的警报被视为已检测到的疾病。性能结果表明,块敏感性为 70.9-81.4%,特异性为 87.9-94.2%,假阳性率为 5.8-12.1%。在测试整个算法时,验证了该性能,结果得出接收者操作特征曲线下的平均面积为 0.89。计算精度和 F 分数得出的精度为 49.0-60.9%(训练:48.8-63.5%),测试中的 F 分数为 61.1-65.7%(训练:61.0-67.0%)。从精度和召回率得出了精度-召回率曲线(PRC),训练和测试的 PRC 下面积分别为 0.70。综上所述,本研究成功开发了一种算法,用于在线监测疾病行为,具有良好的分类潜力。

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