Exploring the use of deep learning models for accurate tracking of 3D zebrafish trajectories.

IF 4.3 3区 工程技术 Q1 BIOTECHNOLOGY & APPLIED MICROBIOLOGY Frontiers in Bioengineering and Biotechnology Pub Date : 2024-09-25 eCollection Date: 2024-01-01 DOI:10.3389/fbioe.2024.1461264
Yi-Ling Fan, Ching-Han Hsu, Fang-Rong Hsu, Lun-De Liao
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Abstract

Zebrafish are ideal model organisms for various fields of biological research, including genetics, neural transmission patterns, disease and drug testing, and heart disease studies, because of their unique ability to regenerate cardiac muscle. Tracking zebrafish trajectories is essential for understanding their behavior, physiological states, and disease associations. While 2D tracking methods are limited, 3D tracking provides more accurate descriptions of their movements, leading to a comprehensive understanding of their behavior. In this study, we used deep learning models to track the 3D movements of zebrafish. Videos were captured by two custom-made cameras, and 21,360 images were labeled for the dataset. The YOLOv7 model was trained using hyperparameter tuning, with the top- and side-view camera models trained using the v7x.pt and v7.pt weights, respectively, over 300 iterations with 10,680 data points each. The models achieved impressive results, with an accuracy of 98.7% and a recall of 98.1% based on the test set. The collected data were also used to generate dynamic 3D trajectories. Based on a test set with 3,632 3D coordinates, the final model detected 173.11% more coordinates than the initial model. Compared to the ground truth, the maximum and minimum errors decreased by 97.39% and 86.36%, respectively, and the average error decreased by 90.5%.This study presents a feasible 3D tracking method for zebrafish trajectories. The results can be used for further analysis of movement-related behavioral data, contributing to experimental research utilizing zebrafish.

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探索利用深度学习模型精确跟踪三维斑马鱼轨迹。
斑马鱼具有独特的心肌再生能力,因此是各种生物研究领域(包括遗传学、神经传递模式、疾病和药物测试以及心脏病研究)的理想模式生物。跟踪斑马鱼的运动轨迹对于了解其行为、生理状态和疾病相关性至关重要。虽然二维跟踪方法有限,但三维跟踪能更准确地描述斑马鱼的运动,从而全面了解它们的行为。在这项研究中,我们使用深度学习模型来跟踪斑马鱼的三维运动。视频由两台定制相机拍摄,数据集标注了 21,360 张图像。YOLOv7 模型使用超参数调整进行训练,顶视和侧视摄像头模型分别使用 v7x.pt 和 v7.pt 权重进行训练,每个模型使用 10,680 个数据点进行 300 次迭代。这些模型取得了令人印象深刻的结果,基于测试集的准确率达到 98.7%,召回率达到 98.1%。收集到的数据还被用于生成动态三维轨迹。根据包含 3,632 个三维坐标的测试集,最终模型比初始模型多检测出 173.11% 的坐标。与地面实况相比,最大和最小误差分别减少了 97.39% 和 86.36%,平均误差减少了 90.5%。该研究提出了一种可行的斑马鱼轨迹三维跟踪方法,其结果可用于进一步分析与运动相关的行为数据,有助于利用斑马鱼开展实验研究。
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来源期刊
Frontiers in Bioengineering and Biotechnology
Frontiers in Bioengineering and Biotechnology Chemical Engineering-Bioengineering
CiteScore
8.30
自引率
5.30%
发文量
2270
审稿时长
12 weeks
期刊介绍: The translation of new discoveries in medicine to clinical routine has never been easy. During the second half of the last century, thanks to the progress in chemistry, biochemistry and pharmacology, we have seen the development and the application of a large number of drugs and devices aimed at the treatment of symptoms, blocking unwanted pathways and, in the case of infectious diseases, fighting the micro-organisms responsible. However, we are facing, today, a dramatic change in the therapeutic approach to pathologies and diseases. Indeed, the challenge of the present and the next decade is to fully restore the physiological status of the diseased organism and to completely regenerate tissue and organs when they are so seriously affected that treatments cannot be limited to the repression of symptoms or to the repair of damage. This is being made possible thanks to the major developments made in basic cell and molecular biology, including stem cell science, growth factor delivery, gene isolation and transfection, the advances in bioengineering and nanotechnology, including development of new biomaterials, biofabrication technologies and use of bioreactors, and the big improvements in diagnostic tools and imaging of cells, tissues and organs. In today`s world, an enhancement of communication between multidisciplinary experts, together with the promotion of joint projects and close collaborations among scientists, engineers, industry people, regulatory agencies and physicians are absolute requirements for the success of any attempt to develop and clinically apply a new biological therapy or an innovative device involving the collective use of biomaterials, cells and/or bioactive molecules. “Frontiers in Bioengineering and Biotechnology” aspires to be a forum for all people involved in the process by bridging the gap too often existing between a discovery in the basic sciences and its clinical application.
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