论文标题
仅基于实时超声成像反馈的管状结构的自主机器人筛选
Autonomous Robotic Screening of Tubular Structures based only on Real-Time Ultrasound Imaging Feedback
论文作者
论文摘要
超声(US)成像被广泛用于诊断和分期,主要是由于其高可用性及其不发射辐射的事实。但是,高度操作员的可变性和我们的图像获取缺乏可重复性阻碍了广泛的筛选程序的实施。为了应对这一挑战,我们提出了一个仅使用实时US成像反馈的自动机器人US筛选管状结构的端到端工作流程。我们首先训练U-NET从横截面US图像对血管结构进行实时分割。然后,我们将检测到的血管结构表示为3D点云,并使用它来估计目标管状结构的纵轴及其平均半径,通过求解受约束的非线性优化问题。迭代以前的过程,美国探测器会自动与目标管状组织正常的方向排列,并在线调整以根据空间校准将轨道组织中心。实时分割结果在志愿者的腕臂动脉上都在幻影和体内评估。另外,在模拟和物理幻像中均已验证整个过程。模拟中的平均绝对半径错误和方向错误($ \ pm $ SD)分别为$ 1.16 \ pm0.1〜mm $和$ 2.7 \ pm3.3^{\ circ} $。在凝胶幻影上,这些错误为$ 1.95 \ pm2.02〜mm $和$ 3.3 \ pm2.4^{\ circ} $。这表明该方法能够以最佳的探针取向(即正常与容器)自动筛选管状组织,并在相同的情况下实时估算平均半径。
Ultrasound (US) imaging is widely employed for diagnosis and staging of peripheral vascular diseases (PVD), mainly due to its high availability and the fact it does not emit radiation. However, high inter-operator variability and a lack of repeatability of US image acquisition hinder the implementation of extensive screening programs. To address this challenge, we propose an end-to-end workflow for automatic robotic US screening of tubular structures using only the real-time US imaging feedback. We first train a U-Net for real-time segmentation of the vascular structure from cross-sectional US images. Then, we represent the detected vascular structure as a 3D point cloud and use it to estimate the longitudinal axis of the target tubular structure and its mean radius by solving a constrained non-linear optimization problem. Iterating the previous processes, the US probe is automatically aligned to the orientation normal to the target tubular tissue and adjusted online to center the tracked tissue based on the spatial calibration. The real-time segmentation result is evaluated both on a phantom and in-vivo on brachial arteries of volunteers. In addition, the whole process is validated both in simulation and physical phantoms. The mean absolute radius error and orientation error ($\pm$ SD) in the simulation are $1.16\pm0.1~mm$ and $2.7\pm3.3^{\circ}$, respectively. On a gel phantom, these errors are $1.95\pm2.02~mm$ and $3.3\pm2.4^{\circ}$. This shows that the method is able to automatically screen tubular tissues with an optimal probe orientation (i.e. normal to the vessel) and at the same to accurately estimate the mean radius, both in real-time.