Sakamoto Naoaki, Haraguchi Taiga, Kobayashi Koji, Miyazaki Yusuke, Murata Takahisa
Department of Animal Radiology, Graduate School of Agricultural and Life Sciences, The University of Tokyo, Tokyo, Japan.
Front Physiol. 2022 Jul 22;13:939281. doi: 10.3389/fphys.2022.939281. eCollection 2022.
The evaluation of scratching behavior is important in experimental animals because there is significant interest in elucidating mechanisms and developing medications for itching. The scratching behavior is classically quantified by human observation, but it is labor-intensive and has low throughput. We previously established an automated scratching detection method using a convolutional recurrent neural network (CRNN). The established CRNN model was trained by white mice (BALB/c), and it could predict their scratching bouts and duration. However, its performance in black mice (C57BL/6) is insufficient. Here, we established a model for black mice to increase prediction accuracy. Scratching behavior in black mice was elicited by serotonin administration, and their behavior was recorded using a video camera. The videos were carefully observed, and each frame was manually labeled as scratching or other behavior. The CRNN model was trained using the labels and predicted the first-look videos. In addition, posterior filters were set to remove unlikely short predictions. The newly trained CRNN could sufficiently detect scratching behavior in black mice (sensitivity, 98.1%; positive predictive rate, 94.0%). Thus, our established CRNN and posterior filter successfully predicted the scratching behavior in black mice, highlighting that our workflow can be useful, regardless of the mouse strain.
在实验动物中评估抓挠行为很重要,因为人们对阐明瘙痒机制和开发止痒药物有着浓厚兴趣。传统上,抓挠行为是通过人工观察进行量化的,但这种方法劳动强度大且通量低。我们之前建立了一种使用卷积循环神经网络(CRNN)的自动抓挠检测方法。所建立的CRNN模型是用白色小鼠(BALB/c)进行训练的,它可以预测小鼠的抓挠发作和持续时间。然而,其在黑色小鼠(C57BL/6)中的性能不足。在此,我们建立了一个针对黑色小鼠的模型以提高预测准确性。通过给黑色小鼠注射血清素引发抓挠行为,并用摄像机记录它们的行为。对视频进行仔细观察,每一帧都手动标记为抓挠或其他行为。使用这些标签对CRNN模型进行训练,并对初看视频进行预测。此外,设置了后置滤波器以去除不太可能的短时间预测。新训练的CRNN能够充分检测黑色小鼠的抓挠行为(灵敏度为98.1%;阳性预测率为94.0%)。因此,我们建立的CRNN和后置滤波器成功地预测了黑色小鼠的抓挠行为,这突出表明我们的工作流程无论小鼠品系如何都可能有用。