Suryanto Michael Edbert, Saputra Ferry, Kurnia Kevin Adi, Vasquez Ross D, Roldan Marri Jmelou M, Chen Kelvin H-C, Huang Jong-Chin, Hsiao Chung-Der
Department of Chemistry, Chung Yuan Christian University, Taoyuan 320314, Taiwan.
Department of Bioscience Technology, Chung Yuan Christian University, Taoyuan 320314, Taiwan.
Biology (Basel). 2022 Aug 21;11(8):1243. doi: 10.3390/biology11081243.
DeepLabCut (DLC) is a deep learning-based tool initially invented for markerless pose estimation in mammals. In this study, we explored the possibility of adopting this tool for conducting markerless cardiac physiology assessment in an important aquatic toxicology model of zebrafish (). Initially, high-definition videography was applied to capture heartbeat information at a frame rate of 30 frames per second (fps). Next, 20 videos from different individuals were used to perform convolutional neural network training by labeling the heart chamber (ventricle) with eight landmarks. Using Residual Network (ResNet) 152, a neural network with 152 convolutional neural network layers with 500,000 iterations, we successfully obtained a trained model that can track the heart chamber in a real-time manner. Later, we validated DLC performance with the previously published ImageJ Time Series Analysis (TSA) and Kymograph (KYM) methods. We also evaluated DLC performance by challenging experimental animals with ethanol and ponatinib to induce cardiac abnormality and heartbeat irregularity. The results showed that DLC is more accurate than the TSA method in several parameters tested. The DLC-trained model also detected the ventricle of zebrafish embryos even in the occurrence of heart abnormalities, such as pericardial edema. We believe that this tool is beneficial for research studies, especially for cardiac physiology assessment in zebrafish embryos.
深度实验室切割(DeepLabCut,DLC)是一种基于深度学习的工具,最初是为哺乳动物的无标记姿态估计而发明的。在本研究中,我们探讨了在斑马鱼这一重要的水生毒理学模型中采用该工具进行无标记心脏生理学评估的可能性。最初,应用高清摄像以每秒30帧(fps)的帧率捕捉心跳信息。接下来,使用来自不同个体的20个视频,通过用八个地标标记心室来进行卷积神经网络训练。使用具有152个卷积神经网络层、经过500,000次迭代的残差网络(ResNet)152,我们成功获得了一个能够实时跟踪心室的训练模型。之后,我们用先前发表的ImageJ时间序列分析(TSA)和波形记录(KYM)方法验证了DLC的性能。我们还通过用乙醇和波纳替尼对实验动物进行挑战以诱导心脏异常和心跳不规则来评估DLC的性能。结果表明,在测试的几个参数中,DLC比TSA方法更准确。经过DLC训练的模型即使在出现心脏异常(如心包水肿)时也能检测到斑马鱼胚胎的心室。我们相信该工具对研究有益,特别是对于斑马鱼胚胎的心脏生理学评估。