Electrical Engineering Department, University of Washington, Seattle, WA 98195, USA.
J Digit Imaging. 2009 Dec;22(6):681-8. doi: 10.1007/s10278-008-9131-2. Epub 2008 May 17.
Doppler ultrasound is an important noninvasive diagnostic tool for cardiovascular diseases. Modern ultrasound imaging systems utilize spectral Doppler techniques for quantitative evaluation of blood flow velocities, and these measurements play a crucial rule in the diagnosis and grading of arterial stenosis. One drawback of Doppler-based blood flow quantification is that the operator has to manually specify the angle between the Doppler ultrasound beam and the vessel orientation, which is called the Doppler angle, in order to calculate flow velocities. In this paper, we will describe a computer vision approach to automate the Doppler angle estimation. Our approach starts with the segmentation of blood vessels in ultrasound color Doppler images. The segmentation step is followed by an estimation technique for the Doppler angle based on a skeleton representation of the segmented vessel. We conducted preliminary clinical experiments to evaluate the agreement between the expert operator's angle specification and the new automated method. Statistical regression analysis showed strong agreement between the manual and automated methods. We hypothesize that the automation of the Doppler angle will enhance the workflow of the ultrasound Doppler exam and achieve more standardized clinical outcome.
多普勒超声是心血管疾病的一种重要的无创诊断工具。现代超声成像系统利用频谱多普勒技术对血流速度进行定量评估,这些测量在动脉狭窄的诊断和分级中起着至关重要的作用。基于多普勒的血流量化的一个缺点是,操作人员必须手动指定多普勒超声束与血管方向之间的角度,即多普勒角,以便计算血流速度。在本文中,我们将描述一种计算机视觉方法来自动估计多普勒角。我们的方法从超声彩色多普勒图像中的血管分割开始。分割步骤之后是基于分割血管的骨架表示的多普勒角估计技术。我们进行了初步的临床实验,以评估专家操作人员的角度指定与新的自动方法之间的一致性。统计回归分析显示了手动和自动方法之间的强一致性。我们假设多普勒角的自动化将增强超声多普勒检查的工作流程,并实现更标准化的临床结果。