VetSens, 53 Wellburn Park, Newcastle NE2 2JY, UK.
Department of Animal Behavior, Ecology, and Conservation, Canisius College, Buffalo, NY 14208, USA.
Sensors (Basel). 2018 Aug 13;18(8):2649. doi: 10.3390/s18082649.
The ability to objectively measure episodes of rest has clear application for assessing health and well-being. Accelerometers afford a sensitive platform for doing so and have demonstrated their use in many human-based trials and interventions. Current state of the art methods for predicting sleep from accelerometer signals are either based on posture or low movement. While both have proven to be sensitive in humans, the methods do not directly transfer well to dogs, possibly because dogs are commonly alert but physically inactive when recumbent. In this paper, we combine a previously validated low-movement algorithm developed for humans and a posture-based algorithm developed for dogs. The hybrid approach was tested on 12 healthy dogs of varying breeds and sizes in their homes. The approach predicted state of rest with a mean accuracy of 0.86 (SD = 0.08). Furthermore, when a dog was in a resting state, the method was able to distinguish between head up and head down posture with a mean accuracy of 0.90 (SD = 0.08). This approach can be applied in a variety of contexts to assess how factors, such as changes in housing conditions or medication, may influence a dog's resting patterns.
客观测量休息时间的能力在评估健康和幸福感方面具有明显的应用。加速度计为实现这一目标提供了一个敏感的平台,并在许多基于人类的试验和干预中证明了其用途。目前,从加速度计信号预测睡眠的最先进方法要么基于姿势,要么基于低运动。虽然这两种方法在人类中都被证明是敏感的,但这些方法并不能很好地直接应用于狗,可能是因为狗在躺着时通常是警觉的,但身体不活动。在本文中,我们结合了一种以前为人类开发的基于低运动的算法和一种为狗开发的基于姿势的算法。该混合方法在 12 只不同品种和大小的健康犬的家中进行了测试。该方法预测休息状态的平均准确率为 0.86(SD=0.08)。此外,当狗处于休息状态时,该方法能够以平均准确率 0.90(SD=0.08)区分抬头和低头姿势。该方法可应用于各种情况下,以评估诸如住房条件或药物变化等因素如何影响狗的休息模式。