优化基于激光的斑马鱼皮肤消融方法,开发基于深度学习的皮肤伤口大小测量方法

Petrus Siregar, Yi-Shan Liu, F. Casuga, Ching-Yu Huang, K. H. Chen, Jong-Chin Huang, Chih-Hsin Hung, Yih-Kai Lin, Chung-Der Hsiao, Hung-Yu Lin
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引用次数: 0

摘要

皮肤在人类或动物等生物体内发挥着抵御环境病原体的重要作用。一旦伤口破坏了皮肤的完整性,病原体就很容易侵入人体深层,诱发疾病。因此,皮肤必须在受伤后迅速再生,以恢复其保护屏障功能。传统上,科学家使用啮齿动物或哺乳动物作为实验动物来研究皮肤伤口愈合。然而,由于对动物福利的担忧以及啮齿动物等实验动物成本的增加,科学家们考虑在实验中采用替代、减少和改进(3Rs)等替代方法。此外,之前几项关于鱼类皮肤伤口愈合的研究使用了相对昂贵的医用级激光器,对伤口面积的计算效率较低,导致人为判断失误。因此,本研究旨在利用斑马鱼和一种快速高效的新方法,开发一种新的皮肤伤口愈合替代模型,作为研究皮肤伤口愈合的替代方法。首先,为了实现 3R 概念,使用三维运动试验评估了受试斑马鱼的疼痛。随后,我们使用 Kruskal-Wallis 检验对所获得的行为数据进行了分析,并进行了邓恩多重比较检验;之后,我们选择了 3 瓦作为激光的功率,因为在此功率下激光造成的伤口不会显著改变斑马鱼的游泳行为。此外,我们还利用激光雕刻机对斑马鱼皮肤伤口愈合的实验条件进行了优化,激光雕刻机所产生的皮肤伤口在大小和深度上都具有很高的再现性。然后,我们利用双向方差分析法分析了受试斑马鱼的伤口闭合情况,并将伤口闭合率分为 25%、50% 和 75%。在斑马鱼皮肤上造成伤口后,收集伤口图像并利用卷积神经网络(CNN)(Mask-RCNN 或 U-Net)进行深度学习训练,以便计算机自动计算皮肤伤口的面积。以 ImageJ 人工计数作为黄金标准,我们发现在斑马鱼皮肤伤口判断方面,U-Net 的性能优于 Mask RCNN。为了验证概念,我们将训练好的 U-Net 模型用于研究和确定不同温度和抗氧化剂对皮肤伤口愈合动力学的影响。结果显示,伤口闭合速度与暴露于不同温度和使用抗氧化剂之间存在明显的正相关。综上所述,本研究中报道的基于激光的皮肤消融和基于深度学习的伤口大小测量方法首次为斑马鱼皮肤伤口愈合提供了一种更快速、可靠和减少痛苦的方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of Laser-Based Method to Conduct Skin Ablation in Zebrafish and Development of Deep Learning-Based Method for Skin Wound-Size Measurement
Skin plays an important role as a defense mechanism against environmental pathogens in organisms such as humans or animals. Once the skin integrity is disturbed by a wound, pathogens can penetrate easily into a deeper part of the body to induce disease. By this means, it is important for the skin to regenerate quickly upon injury to regain its protective barrier function. Traditionally, scientists use rodents or mammals as experimental animals to study skin wound healing. However, due to concerns about animal welfare and increasing costs of laboratory animals, such as rodents, scientists have considered alternative methods of implementing replace, reduce, and refine (3Rs) in experimentation. Moreover, several previous studies on skin wound healing in fish used relatively expensive medical-grade lasers with a low calculation efficiency of the wound area, which led to human judgment errors. Thus, this study aimed to develop a new alternative model for skin wound healing by utilizing zebrafish together with a new rapid and efficient method as an alternative in investigating skin wound healing. First, in order to fulfill the 3Rs concept, the pain in the tested zebrafish was evaluated by using a 3D locomotion assay. Afterward, the obtained behavior data were analyzed using the Kruskal–Wallis test, followed by Dunn’s multiple comparisons tests; later, 3 watts was chosen as the power for the laser, since the wound caused by the laser at this power did not significantly alter zebrafish swimming behaviors. Furthermore, we also optimized the experimental conditions of zebrafish skin wound healing using a laser engraving machine, which can create skin wounds with a high reproducibility in size and depth. The wound closure of the tested zebrafish was then analyzed by using a two-way ANOVA, and presented in 25%, 50%, and 75% of wound-closure percentages. After imparting wounds to the skin of the zebrafish, wound images were collected and used for deep-learning training by convolutional neural networks (CNNs), either the Mask-RCNN or U-Net, so that the computer could calculate the area of the skin wounds in an automatic manner. Using ImageJ manual counting as a gold standard, we found that the U-Net performance was better than the Mask RCNN for zebrafish skin wound judgment. For proof-of-concept validation, a U-Net trained model was applied to study and determine the effect of different temperatures and the administration of antioxidants on the skin wound-healing kinetics. Results showed a significant positive correlation between the speed of wound closure and the exposure to different temperatures and administration of antioxidants. Taken together, the laser-based skin ablation and deep learning-based wound-size measurement methods reported in this study provide a faster, reliable, and reduced suffering protocol to conduct skin wound healing in zebrafish for the first time.
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