基于二维超声图像的机器人辅助插针跟踪和偏转预测

M. Waine, C. Rossa, R. Sloboda, N. Usmani, M. Tavakoli
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引用次数: 23

摘要

在许多类型的经皮针头插入手术中,组织变形和针头偏转会给准确的针头放置带来很大的困难。在本文中,我们提出了一种在二维超声(US)图像中自动跟踪针头的方法,该方法用于针头-组织相互作用模型中,以估计当前和未来的针尖偏转。这是使用半自动针转向系统进行演示的。US探头可以控制跟随针尖,也可以停在合适的位置,避免靶区组织变形。US图像用于充分参数化针组织模型。一旦针的偏转达到预定的阈值,机器人就会旋转针来纠正针尖的轨迹。实验结果表明,在有旋转和无旋转两种情况下,估算出的最终针尖挠度平均精度在0.7 ~ 1.0mm之间。所提出的方法为外科医生提供了改进的针尖偏转的US反馈,并最大限度地减少了US探头的运动,以减少目标区域的组织变形。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Needle Tracking and Deflection Prediction for Robot-Assisted Needle Insertion Using 2D Ultrasound Images
In many types of percutaneous needle insertion surgeries, tissue deformation and needle deflection can create significant difficulties for accurate needle placement. In this paper, we present a method for automatic needle tracking in 2D ultrasound (US) images, which is used in a needle–tissue interaction model to estimate current and future needle tip deflection. This is demonstrated using a semi-automatic needle steering system. The US probe can be controlled to follow the needle tip or it can be stopped at an appropriate position to avoid tissue deformation of the target area. US images are used to fully parameterize the needle-tissue model. Once the needle deflection reaches a pre-determined threshold, the robot rotates the needle to correct the tip’s trajectory. Experimental results show that the final needle tip deflection can be estimated with average accuracies between 0.7mm and 1.0mm for insertions with and without rotation. The proposed method provides surgeons with improved US feedback of the needle tip deflection and minimizes the motion of the US probe to reduce tissue deformation of the target area.
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