School of Radiological Technology, Gunma Prefectural College of Health Sciences, Maebashi, Japan.
Department of Radiology, Cardiovascular Hospital of Central Japan, Shibukawa, Japan.
Phys Eng Sci Med. 2024 Jun;47(2):679-689. doi: 10.1007/s13246-024-01397-x. Epub 2024 Feb 15.
Ultrasound guidance has become the gold standard for obtaining vascular access. Angle information, which indicates the entry angle of the needle into the vein, is required to ensure puncture success. Although various image processing-based methods, such as deep learning, have recently been applied to improve needle visibility, these methods have limitations, in that the puncture angle to the target organ is not measured. We aim to detect the target vessel and puncture needle and to derive the puncture angle by combining deep learning and conventional image processing methods such as the Hough transform. Median cubital vein US images were obtained from 20 healthy volunteers, and images of simulated blood vessels and needles were obtained during the puncture of a simulated blood vessel in four phantoms. The U-Net architecture was used to segment images of blood vessels and needles, and various image processing methods were employed to automatically measure angles. The experimental results indicated that the mean dice coefficients of median cubital veins, simulated blood vessels, and needles were 0.826, 0.931, and 0.773, respectively. The quantitative results of angular measurement showed good agreement between the expert and automatic measurements of the puncture angle with 0.847 correlations. Our findings indicate that the proposed method achieves extremely high segmentation accuracy and automated angular measurements. The proposed method reduces the variability and time required in manual angle measurements and presents the possibility where the operator can concentrate on delicate techniques related to the direction of the needle.
超声引导已成为获得血管通路的金标准。需要角度信息来确保穿刺成功,角度信息指示针进入静脉的进入角度。尽管最近已经应用了各种基于图像处理的方法,如深度学习,来提高针的可见度,但这些方法存在局限性,因为它们没有测量到目标器官的穿刺角度。我们的目标是通过结合深度学习和传统的图像处理方法(如霍夫变换)来检测目标血管和穿刺针,并推导出穿刺角度。从中选取 20 名健康志愿者的肘部正中静脉 US 图像,并在四个模拟体中模拟血管穿刺时获取模拟血管和针的图像。使用 U-Net 架构对血管和针的图像进行分割,并采用各种图像处理方法自动测量角度。实验结果表明,肘部正中静脉、模拟血管和针的平均骰子系数分别为 0.826、0.931 和 0.773。穿刺角度的专家和自动测量的定量结果显示出良好的相关性,相关系数为 0.847。我们的研究结果表明,所提出的方法实现了极高的分割精度和自动角度测量。该方法减少了手动角度测量的可变性和所需时间,并为操作人员提供了集中精力于与针的方向相关的精细技术的可能性。