Tian Yuan, Gao Ruiyang, Shi Xinran, Lang Jiaxin, Xue Yang, Wang Chunrong, Zhang Yuelun, Shen Le, Yu Chunhua, Zhou Zhuhuang
Department of Anesthesiology, Chinese Academy of Medical Sciences and Peking Union Medical College Hospital, Beijing 100730, China.
Department of Biomedical Engineering, College of Chemistry and Life Science, Beijing University of Technology, Beijing 100124, China.
Diagnostics (Basel). 2024 Oct 23;14(21):2358. doi: 10.3390/diagnostics14212358.
Radial artery tracking (RAT) in the short-axis view is a pivotal step for ultrasound-guided radial artery catheterization (RAC), which is widely employed in various clinical settings. To eliminate disparities and lay the foundations for automated procedures, a pilot study was conducted to explore the feasibility of U-Net and its variants in automatic RAT. Approved by the institutional ethics committee, patients as potential RAC candidates were enrolled, and the radial arteries were continuously scanned by B-mode ultrasonography. All acquired videos were processed into standardized images, and randomly divided into training, validation, and test sets in an 8:1:1 ratio. Deep learning models, including U-Net and its variants, such as Attention U-Net, UNet++, Res-UNet, TransUNet, and UNeXt, were utilized for automatic RAT. The performance of the deep learning architectures was assessed using loss functions, dice similarity coefficient (DSC), and Jaccard similarity coefficient (JSC). Performance differences were analyzed using the Kruskal-Wallis test. The independent datasets comprised 7233 images extracted from 178 videos of 135 patients (53.3% women; mean age: 41.6 years). Consistent convergence of loss functions between the training and validation sets was achieved for all models except Attention U-Net. Res-UNet emerged as the optimal architecture in terms of DSC and JSC (93.14% and 87.93%), indicating a significant improvement compared to U-Net (91.79% vs. 86.19%, < 0.05) and Attention U-Net (91.20% vs. 85.02%, < 0.05). This pilot study validates the feasibility of U-Net and its variants in automatic RAT, highlighting the predominant performance of Res-UNet among the evaluated architectures.
短轴视图下的桡动脉追踪(RAT)是超声引导下桡动脉置管术(RAC)的关键步骤,RAC在各种临床环境中广泛应用。为了消除差异并为自动化程序奠定基础,开展了一项初步研究,以探索U-Net及其变体在自动RAT中的可行性。经机构伦理委员会批准,招募了可能接受RAC的患者,并通过B型超声对桡动脉进行连续扫描。所有获取的视频都被处理成标准化图像,并以8:1:1的比例随机分为训练集、验证集和测试集。利用深度学习模型,包括U-Net及其变体,如注意力U-Net、UNet++、Res-UNet、TransUNet和UNeXt,进行自动RAT。使用损失函数、骰子相似系数(DSC)和杰卡德相似系数(JSC)评估深度学习架构的性能。使用Kruskal-Wallis检验分析性能差异。独立数据集包括从135名患者的178个视频中提取的7233张图像(女性占53.3%;平均年龄:41.6岁)。除注意力U-Net外,所有模型的训练集和验证集之间的损失函数均实现了一致收敛。就DSC和JSC而言,Res-UNet是最佳架构(分别为93.14%和87.93%),与U-Net(91.79%对86.19%,<0.05)和注意力U-Net(91.20%对85.02%,<0.05)相比有显著改善。这项初步研究验证了U-Net及其变体在自动RAT中的可行性,突出了Res-UNet在评估架构中的卓越性能。