Using an automated tail movement sensor device to predict calving time in dairy cows

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Abstract

This study aimed to evaluate the effectiveness of an automated tail movement sensor device (Moocall; Bluebell, Dublin, Ireland) to predict time of calving in dairy cows. At a commercial dairy farm in southern Ontario, Moocall (MC) devices were attached with the device's strap, and an additional elastic wrap, to the tail of cows approximately 3 d before their expected calving date. The MC has 2 types of alarm, a high activity alarm in the previous hour (1HA), and a high activity alarm in the previous 2 h (2HA); these alarms were sent and registered to the MC software. The calving and close-up pens were video monitored to determine the exact time of the onset of stage II of calving (amniotic sac visible at the vulva) and the end of stage II of calving (total expulsion of the calf). A total of 49 cows were enrolled, but we excluded 13 animals from the analysis as they had 3 or more MC drops from the tail (n = 6), a swollen tail (n = 3), or the MC device was lost (n = 4); this left 36 cows. In total, the device dropped off 21 (42%) cows. The average number of alarms (1HA and 2HA) per cow before stage II of calving was 2.7 ± 2.3 (± standard error). The first alarm after fitting the device on the tail was used to determine the device's sensitivity and specificity. Depending on the interval before the onset of parturition (i.e., 2, 4, 8, 12 h) in which the alarm was triggered, sensitivity varied from 5% to 72% and specificity from 50% to 93%. The false positive rate varied between 6% and 50% depending on the interval from the alarm to the onset of parturition. The high false positive and device drop rates (despite the addition of the elastic wrap) may compromise the applicability of this sensor device in a commercial setting.

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使用自动尾部运动传感器设备预测奶牛产犊时间。
本研究旨在评估自动尾部运动传感器装置(Moocall;Bluebell,爱尔兰都柏林)预测奶牛产犊时间的有效性。在安大略省南部的一个商业奶牛场,在奶牛预计产犊日期前约 3 天,将 Moocall(MC)装置用装置的带子和附加的松紧带固定在奶牛的尾巴上。MC 有两种类型的警报,一种是前一小时内的高活动警报(1HA),另一种是前两小时内的高活动警报(2HA);这些警报被发送并登记到 MC 软件中。通过视频监控产犊栏和近亲栏,确定产犊第二阶段开始(外阴部可见羊膜囊)和产犊第二阶段结束(犊牛完全排出)的确切时间。共有 49 头奶牛报名参加,但我们从分析中剔除了 13 头奶牛,因为它们有 3 次或更多次从尾部掉落 MC 装置(6 头)、尾部肿胀(3 头)或 MC 装置丢失(4 头);因此还剩下 36 头奶牛。总共有 21 头奶牛(42%)的装置掉落。每头奶牛在产犊第二阶段前的平均报警次数(1HA 和 2HA)为 2.7 ± 2.3(± 标准误差)。尾部安装装置后的第一次警报用于确定装置的灵敏度和特异性。根据分娩开始前触发警报的时间间隔(即 2、4、8、12 小时),灵敏度从 5% 到 72% 不等,特异性从 50% 到 93% 不等。假阳性率介于 6% 和 50% 之间,具体取决于从警报发出到分娩开始的时间间隔。高误报率和设备掉落率(尽管增加了弹性包裹)可能会影响该传感器设备在商业环境中的适用性。
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JDS communications
JDS communications Animal Science and Zoology
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