Long-term monitoring of huddling behavior in mice using online image processing.

IF 2 Q3 NEUROSCIENCES
Neuropsychopharmacology Reports Pub Date : 2024-03-01 Epub Date: 2023-10-26 DOI:10.1002/npr2.12387
Kensaku Nomoto, Jitsu Tajima, Takefumi Kikusui, Kazutaka Mogi
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Abstract

Many animal species, including mice, form societies of numerous individuals for survival. Understanding the interactions between individual animals is crucial for elucidating group behavior. One such behavior in mice is huddling, yet its analysis has been limited. In this study, we propose a cost-effective method for monitoring long-term huddling behavior in mice using online image processing with OpenCV. This method treats a single mouse or a group of mice as a cluster of pixels (a 'blob') in video images, extracting and saving only essential information such as areas, coordinates, and orientations. This approach reduces data storage needs to 1/200000th of what would be required if the video were recorded in its compressed form, thereby enabling long-term behavioral analysis. To validate the performance of our algorithm, ~2000 video frames were randomly chosen. We manually counted the number of clusters of mice in these frames and compared them with the number of blobs automatically detected by the algorithm. The results indicated a high level of consistency, exceeding 90% across the selected video frames. Initial observations of both male and female groups suggested some variations in huddling behavior among male and female groups; however, these results should be interpreted cautiously due to a small sample. Group behavior is known to be disrupted in several neuropsychiatric disorders, such as autism. Various mouse models of these disorders have been proposed. Our measurement system, when combined with drug or genetic modification screening, could provide a valuable tool for high-throughput analyses of huddling behavior.

使用在线图像处理对小鼠抱团行为进行长期监测。
包括老鼠在内的许多动物物种为了生存而组成了由许多个体组成的社会。了解个体动物之间的相互作用对于阐明群体行为至关重要。小鼠的一种行为是抱团,但其分析受到限制。在这项研究中,我们提出了一种成本效益高的方法,通过OpenCV在线图像处理来监测小鼠的长期抱团行为。这种方法将单个鼠标或一组鼠标视为视频图像中的像素簇(“斑点”),只提取和保存区域、坐标和方向等基本信息。这种方法将数据存储需求减少到视频以压缩形式录制时所需的1/200000,从而实现长期行为分析。为了验证我们算法的性能,随机选择了约2000个视频帧。我们手动统计了这些帧中小鼠集群的数量,并将其与算法自动检测到的斑点数量进行了比较。结果表明,高水平的一致性,在选定的视频帧中超过90%。对男性和女性群体的初步观察表明,男性和女性人群在拥挤行为方面存在一些差异;然而,由于样本较少,因此应谨慎解读这些结果。众所周知,群体行为在一些神经精神障碍中会受到干扰,比如自闭症。已经提出了这些疾病的各种小鼠模型。当我们的测量系统与药物或基因修饰筛选相结合时,可以为拥挤行为的高通量分析提供一个有价值的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Neuropsychopharmacology Reports
Neuropsychopharmacology Reports Psychology-Clinical Psychology
CiteScore
3.60
自引率
4.00%
发文量
75
审稿时长
14 weeks
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