Sakamoto Naoaki, Kobayashi Koji, Yamamoto Teruko, Masuko Sakura, Yamamoto Masahito, Murata Takahisa
Department of Animal Radiology, Graduate School of Agricultural and Life Sciences, The University of Tokyo, Tokyo, Japan.
Autonomous Systems Engineering Laboratory, Graduate School of Information Science and Technology, Hokkaido University, Sapporo, Japan.
Front Behav Neurosci. 2022 Feb 2;16:797860. doi: 10.3389/fnbeh.2022.797860. eCollection 2022.
Grooming is a common behavior for animals to care for their fur, maintain hygiene, and regulate body temperature. Since various factors, including stressors and genetic mutations, affect grooming quantitatively and qualitatively, the assessment of grooming is important to understand the status of experimental animals. However, current grooming detection methods are time-consuming, laborious, and require specialized equipment. In addition, they generally cannot discriminate grooming microstructures such as face washing and body licking. In this study, we aimed to develop an automated grooming detection method that can distinguish facial grooming from body grooming by image analysis using artificial intelligence. Mouse behavior was recorded using a standard hand camera. We carefully observed videos and labeled each time point as facial grooming, body grooming, and not grooming. We constructed a three-dimensional convolutional neural network (3D-CNN) and trained it using the labeled images. Since the output of the trained 3D-CNN included unlikely short grooming bouts and interruptions, we set posterior filters to remove them. The performance of the trained 3D-CNN and filters was evaluated using a first-look dataset that was not used for training. The sensitivity of facial and body grooming detection reached 81.3% and 91.9%, respectively. The positive predictive rates of facial and body grooming detection were 83.5% and 88.5%, respectively. The number of grooming bouts predicted by our method was highly correlated with human observations (face: = 0.93, body: = 0.98). These results highlight that our method has sufficient ability to distinguish facial grooming and body grooming in mice.
梳理毛发是动物护理皮毛、保持卫生和调节体温的常见行为。由于包括应激源和基因突变在内的各种因素会在数量和质量上影响梳理毛发行为,因此对梳理毛发行为的评估对于了解实验动物的状态很重要。然而,当前的梳理毛发检测方法既耗时又费力,还需要专门的设备。此外,它们通常无法区分诸如洗脸和舔身体等梳理毛发的微观结构。在本研究中,我们旨在开发一种自动化的梳理毛发检测方法,该方法可以通过使用人工智能的图像分析来区分面部梳理和身体梳理。使用标准的手持相机记录小鼠的行为。我们仔细观察视频,并将每个时间点标记为面部梳理、身体梳理和非梳理。我们构建了一个三维卷积神经网络(3D-CNN),并使用标记的图像对其进行训练。由于训练后的3D-CNN的输出包括不太可能的短暂梳理发作和中断,我们设置了后置滤波器来去除它们。使用未用于训练的初看数据集评估训练后的3D-CNN和滤波器的性能。面部和身体梳理检测的灵敏度分别达到81.3%和91.9%。面部和身体梳理检测的阳性预测率分别为83.5%和88.5%。我们的方法预测的梳理发作次数与人类观察结果高度相关(面部: = 0.93,身体: = 0.98)。这些结果表明,我们的方法具有足够的能力来区分小鼠的面部梳理和身体梳理。