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使用Mask R-CNN的多只小鼠无标记跟踪系统。

Marker-less tracking system for multiple mice using Mask R-CNN.

作者信息

Sakamoto Naoaki, Kakeno Hitoshi, Ozaki Noriko, Miyazaki Yusuke, Kobayashi Koji, Murata Takahisa

机构信息

Animal Radiology, Graduate School of Agricultural and Life Sciences, The University of Tokyo, Tokyo, Japan.

Food and Animal Systemics, Graduate School of Agricultural and Life Sciences, The University of Tokyo, Tokyo, Japan.

出版信息

Front Behav Neurosci. 2023 Jan 6;16:1086242. doi: 10.3389/fnbeh.2022.1086242. eCollection 2022.

Abstract

Although the appropriate evaluation of mouse behavior is crucial in pharmacological research, most current methods focus on single mouse behavior under light conditions, owing to the limitations of human observation and experimental tools. In this study, we aimed to develop a novel marker-less tracking method for multiple mice with top-view videos using deep-learning-based techniques. The following stepwise method was introduced: (i) detection of mouse contours, (ii) assignment of identifiers (IDs) to each mouse, and (iii) correction of mis-predictions. The behavior of C57BL/6 mice was recorded in an open-field arena, and the mouse contours were manually annotated for hundreds of frame images. Then, we trained the mask regional convolutional neural network (Mask R-CNN) with all annotated images. The mouse contours predicted by the trained model in each frame were assigned to IDs by calculating the similarities of every mouse pair between frames. After assigning IDs, correction steps were applied to remove the predictive errors semi-automatically. The established method could accurately predict two to four mice for first-look videos recorded under light conditions. The method could also be applied to videos recorded under dark conditions, extending our ability to accurately observe and analyze the sociality of nocturnal mice. This technology would enable a new approach to understand mouse sociality and advance the pharmacological research.

摘要

尽管在药理学研究中对小鼠行为进行恰当评估至关重要,但由于人类观察和实验工具的局限性,目前大多数方法都聚焦于光照条件下单只小鼠的行为。在本研究中,我们旨在利用基于深度学习的技术,开发一种用于通过顶视图视频对多只小鼠进行新型无标记跟踪的方法。介绍了以下逐步方法:(i) 检测小鼠轮廓,(ii) 为每只小鼠分配标识符(ID),以及 (iii) 纠正错误预测。在旷场实验场地中记录C57BL/6小鼠的行为,并对数百帧图像手动标注小鼠轮廓。然后,我们用所有标注图像训练掩码区域卷积神经网络(Mask R-CNN)。通过计算各帧之间每对小鼠的相似度,将训练模型在每一帧中预测的小鼠轮廓分配给ID。在分配ID之后,应用校正步骤以半自动方式消除预测误差。所建立的方法能够准确预测在光照条件下录制的初看视频中的两到四只小鼠。该方法还可应用于在黑暗条件下录制的视频,扩展了我们准确观察和分析夜行性小鼠社交性的能力。这项技术将为理解小鼠社交性提供一种新方法,并推动药理学研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d746/9853548/35743007ee7c/fnbeh-16-1086242-g001.jpg

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