Department of Animal Radiology, Graduate School of Agricultural and Life Sciences, The University of Tokyo, 1-1-1, Yayoi, Bunkyo-ku, Tokyo, 113-8657, Japan.
Autonomous Systems Engineering Laboratory, Graduate School of Information Science and Technology, Hokkaido University, Sapporo, Japan.
Sci Rep. 2021 Jan 12;11(1):658. doi: 10.1038/s41598-020-79965-w.
Scratching is one of the most important behaviours in experimental animals because it can reflect itching and/or psychological stress. Here, we aimed to establish a novel method to detect scratching using deep neural network. Scratching was elicited by injecting a chemical pruritogen lysophosphatidic acid to the back of a mouse, and behaviour was recorded using a standard handy camera. Images showing differences between two consecutive frames in each video were generated, and each frame was manually labelled as showing scratching behaviour or not. Next, a convolutional recurrent neural network (CRNN), composed of sequential convolution, recurrent, and fully connected blocks, was constructed. The CRNN was trained using the manually labelled images and then evaluated for accuracy using a first-look dataset. Sensitivity and positive predictive rates reached 81.6% and 87.9%, respectively. The predicted number and durations of scratching events correlated with those of the human observation. The trained CRNN could also successfully detect scratching in the hapten-induced atopic dermatitis mouse model (sensitivity, 94.8%; positive predictive rate, 82.1%). In conclusion, we established a novel scratching detection method using CRNN and showed that it can be used to study disease models.
抓挠是实验动物最重要的行为之一,因为它可以反映瘙痒和/或心理压力。在这里,我们旨在使用深度学习神经网络建立一种新的抓挠检测方法。通过向小鼠背部注射化学瘙痒原溶血磷脂酸来诱发抓挠,使用标准的便携相机记录行为。生成每个视频中连续两帧之间差异的图像,并手动标记每个帧是否显示抓挠行为。接下来,构建了一个由顺序卷积、递归和全连接块组成的卷积递归神经网络 (CRNN)。使用手动标记的图像对 CRNN 进行训练,然后使用首次查看数据集评估其准确性。敏感性和阳性预测率分别达到 81.6%和 87.9%。预测的抓挠事件次数和持续时间与人类观察结果相关。经过训练的 CRNN 还可以成功检测到变应性接触性皮炎小鼠模型中的抓挠(敏感性为 94.8%;阳性预测率为 82.1%)。总之,我们使用 CRNN 建立了一种新的抓挠检测方法,并表明它可用于研究疾病模型。