斑马鱼运动变化的跟踪与分析

Chien-Feng Chiu, Yu-Hao Lee, An-Bang Liu, Hsin-Ru Liu, Wei-Min Liu
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摘要

斑马鱼是生物医学和制药领域行为学研究中应用最广泛的模式生物之一。许多斑马鱼研究使用药物来测试其反应,然后跟踪其运动并分析运动特征。这种跟踪分析是一项具有挑战性的任务,由于复杂的身体变形,偶尔的闭塞,它的“爆发”运动。本研究将目标检测模型YOLOv7与多目标跟踪方法StrongSORT相结合,开发了斑马鱼自动跟踪系统,并生成了相应的运动特征。通过该系统可以执行多种分析。首先,我们提出使用近似熵来量化一系列运动特征变化,以评估运动的规律性和不可预测性。其次,通过跟踪函数建立运动轨迹数据,采集斑马鱼在摄像机监控的水箱中运动时的距离、速度、不同类型的身体角度等运动特征的时间序列。这些分析有助于我们进一步了解药物对斑马鱼运动变化的影响。实验结果表明了该系统的功能,并证明了提取的运动特征可以用于区分健康和患病的斑马鱼群体。该系统为斑马鱼的研究提供了一个实用友好的工具。
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Tracking and Analyzing Locomotor Changes in Zebrafish
Zebrafish is one of the most widely used model organisms for behavior research in biomedical and pharmaceutical field. Many zebrafish studies used drugs to test its responses, then tracked its movement and analyzed the locomotor features. Such tracking analysis is a challenging task due to the complex body deformation, occasional occlusions, and its “burst” movements. In this study an object detection model YOLOv7 and a multi-object tracking method StrongSORT were integrated to develop an automated zebrafish tracking system and generate relevant locomotor features. Several analyses can be performed through the system. First, we proposed to use approximate entropy to quantify a series of locomotor feature change to evaluate the regularity and unpredictability of movement. Second, through the tracking function we can establish the locomotor trajectory data and collect the time series of several locomotor features including distance, velocity, and different types of body angles when a zebrafish moving in a camera-monitored tank. These analyses help us further understand the impact of drugs through zebrafish’s movement change. The experimental results showed the capabilities of the proposed system and demonstrated that the extracted motion features can be used to distinguish healthy versus diseased groups of zebrafish. The proposed system provides a useful and friendly tool for zebrafish research.
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