Autonomous Ultrasound Scanning using Bayesian Optimization and Hybrid Force Control

Raghavv Goel, Fnu Abhimanyu, Kirtan Patel, J. Galeotti, H. Choset
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引用次数: 8

Abstract

Ultrasound scanning is an imaging technique that aids medical professionals in diagnostics and interventional procedures. However, a trained human-in-the-loop (HITL) with a radiologist is required to perform the scanning procedure. We seek to create a novel ultrasound system that can provide imaging in the absence of a trained radiologist, say for patients in the field who suffered injuries after a natural disaster. One challenge of automating ultrasound scanning involves finding the optimal area to scan and then performing the actual scan. This task requires simultaneously maintaining contact with the surface while moving along it to capture high quality images. In this work, we present an automated Robotic Ultrasound System (RUS) to tackle these challenges. Our approach introduces a Bayesian Optimization framework to guide the probe to multiple points on the unknown surface. Our proposed framework collects the ultrasound images as well as the pose information at every probed point to estimate regions with high vessel density (information map) and the surface contour. Based on the information map and the surface contour, an area of interest is selected for scanning. Furthermore, to scan the proposed region, a novel 6-axis hybrid force-position controller is presented to ensure acoustic coupling. Lastly, we provide experimental results on two different phantom models to corroborate our approach.
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基于贝叶斯优化和混合力控制的自主超声扫描
超声扫描是一种成像技术,可以帮助医疗专业人员进行诊断和介入治疗。然而,需要一个训练有素的人在环(HITL)与放射科医生执行扫描过程。我们试图创造一种新的超声系统,可以在没有训练有素的放射科医生的情况下提供成像,比如为在自然灾害后受伤的现场病人提供成像。自动化超声扫描的一个挑战是找到最佳的扫描区域,然后进行实际的扫描。这项任务需要在沿着表面移动的同时保持与表面的接触,以捕获高质量的图像。在这项工作中,我们提出了一个自动化机器人超声系统(RUS)来解决这些挑战。我们的方法引入了一个贝叶斯优化框架来引导探针到未知表面上的多个点。我们提出的框架收集超声图像以及每个探测点的位姿信息,以估计血管密度高的区域(信息图)和表面轮廓。基于信息图和表面轮廓,选择感兴趣的区域进行扫描。此外,为了扫描所提出的区域,提出了一种新型的六轴混合力-位置控制器,以确保声耦合。最后,我们提供了两种不同的幻影模型的实验结果来证实我们的方法。
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