Sasaki Yosuke, Iki Yoshihiro, Anan Tomoaki, Hayashi Jun, Uematsu Mizuho
Department of Agriculture, School of Agriculture, Meiji University, Kawasaki 214-8571, Japan.
Center for Animal Disease Control, University of Miyazaki, Miyazaki 889-2192, Japan.
Animals (Basel). 2023 Jan 29;13(3):469. doi: 10.3390/ani13030469.
The objective in the present study was to assess the ventral tail base surface temperature (ST) for the early detection of Japanese Black calves with fever. This study collected data from a backgrounding operation in Miyazaki, Japan, that included 153 calves aged 3-4 months. A wearable wireless ST sensor was attached to the surface of the ventral tail base of each calf at its introduction to the farm. The ventral tail base ST was measured every 10 min for one month. The present study conducted an experiment to detect calves with fever using the estimated residual ST (rST), calculated as the estimated rST minus the mean estimated rST for the same time on the previous 3 days, which was obtained using machine learning algorithms. Fever was defined as an increase of ≥1.0 °C for the estimated rST of a calf for 4 consecutive hours. The machine learning algorithm that applied was a random forest, and 15 features were included. The variable importance scores that represented the most important predictors for the detection of calves with fever were the minimum and maximum values during the last 3 h and the difference between the current value and 24- and 48-h minimum. For this prediction model, accuracy, precision, and sensitivity were 98.8%, 72.1%, and 88.1%, respectively. The present study indicated that the early detection of calves with fever can be predicted by monitoring the ventral tail base ST using a wearable wireless sensor.
本研究的目的是评估日本黑牛犊腹侧尾基部表面温度(ST),以便早期检测出发热的犊牛。本研究收集了日本宫崎县一个育肥场的数据,该育肥场有153头3至4月龄的犊牛。在每头犊牛引入农场时,将一个可穿戴无线ST传感器附着在其腹侧尾基部表面。连续一个月,每10分钟测量一次腹侧尾基部ST。本研究进行了一项实验,使用估计残余ST(rST)检测发热犊牛,rST通过机器学习算法计算得出,即估计的rST减去前3天同一时间的平均估计rST。发热定义为犊牛的估计rST连续4小时升高≥1.0℃。所应用的机器学习算法是随机森林,共纳入15个特征。代表检测发热犊牛最重要预测指标的变量重要性得分是过去3小时内的最小值和最大值,以及当前值与24小时和48小时最小值之间的差值。对于该预测模型,准确率、精确率和灵敏度分别为98.8%、72.1%和88.1%。本研究表明,通过使用可穿戴无线传感器监测腹侧尾基部ST,可以预测发热犊牛的早期检测情况。