Food and Animal Systemics, Graduate School of Agricultural and Life Sciences, The University of Tokyo, Tokyo, Japan.
Biological/Pharmacological Research Laboratories, Central Pharmaceutical Research Institute, Japan Tobacco Inc., 1-1 Murasaki-cho, Takatsuki, Osaka, Japan.
Behav Brain Res. 2025 Jan 5;476:115278. doi: 10.1016/j.bbr.2024.115278. Epub 2024 Sep 30.
The novel object recognition test (NORT) is one of the most commonly employed behavioral tests in experimental animals designed to evaluate an animal's interest in and recognition of novelty. However, manual procedures, which rely on researchers' observations, prevent high throughput analysis. In this study, we developed an automated analysis method for NORT utilizing machine learning-assisted exploratory behavior detection. We recorded the exploratory behavior of the mice using a video camera. The coordinates of the mouse nose and tail base in recorded video files were detected using a pre-trained machine learning model, DeepLabCut. Each video was then segmented into frame images, which were categorized into "exploratory," or "non-exploratory" frames based on manual observation. Mouse feature vectors were calculated as vectors from the nose to the vertices of the object and were utilized for SVM training. The trained SVM effectively detected exploratory behaviors, showing a strong correlation with human observer assessments. Upon application to NORT, the duration of mouse exploratory behavior towards objects predicted by the SVM exhibited a significant correlation with the assessments made by human observers. The novelty discrimination index derived from the SVM predictions also aligned well with that from human observations.
新颖物体识别测试(NORT)是一种常用于实验动物的行为测试方法,旨在评估动物对新奇事物的兴趣和识别能力。然而,手动操作的方法,依赖于研究人员的观察,无法进行高通量分析。在本研究中,我们开发了一种利用机器学习辅助探索行为检测的 NORT 自动分析方法。我们使用摄像机记录了小鼠的探索行为。使用预先训练的机器学习模型 DeepLabCut 检测记录的视频文件中鼠标的鼻子和尾巴基部的坐标。然后,将每个视频分割成帧图像,并根据手动观察将其分类为“探索性”或“非探索性”帧。计算鼠标特征向量作为从鼻子到物体顶点的向量,并用于 SVM 训练。训练好的 SVM 能够有效地检测探索行为,与人类观察者的评估结果具有很强的相关性。在应用于 NORT 时,SVM 预测的小鼠对物体的探索行为持续时间与人类观察者的评估结果显著相关。从 SVM 预测中得出的新颖性辨别指数也与人类观察结果一致。