Ultrasound is progressing toward becoming an affordable and versatile solution to medical imaging. With the advent of COVID-19 global pandemic, there is a need to fully automate ultrasound imaging as it requires trained operators in close proximity to patients for a long period of time, therefore increasing risk of infection. In this work, we investigate the important yet seldom-studied problem of scan target localization, under the setting of lung ultrasound imaging. We propose a purely vision-based, data driven method that incorporates learning-based computer vision techniques. We combine a human pose estimation model with a specially designed regression model to predict the lung ultrasound scan targets, and deploy multiview stereo vision to enhance the consistency of 3D target localization. While related works mostly focus on phantom experiments, we collect data from 30 human subjects for testing. Our method attains an accuracy level of 16.00(9.79) mm for probe positioning and 4.44(3.75) degree for probe orientation, with a success rate above 80% under an error threshold of 25mm for all scan targets. Moreover, our approach can serve as a general solution to other types of ultrasound modalities. The code for implementation has been released.
翻译:超声波正在逐渐成为医疗成像的一种负担得起和多功能的解决方案。随着COVID-19全球大流行的出现,需要完全自动化超声波成像,因为它需要长期在病人附近进行训练有素的操作员,因此感染的风险越来越大。在这项工作中,我们调查了在肺超声成像设置下扫描目标定位的重要但很少研究的问题。我们提出了一个纯粹基于视觉的、数据驱动的方法,其中包括基于学习的计算机视觉技术。我们把人造图象模型与专门设计的回归模型结合起来,以预测肺超声波扫描目标,并采用多视像立体图像,以提高3D目标定位的一致性。虽然相关工作主要侧重于幻影实验,但我们收集了30个人类实验对象的数据。我们的方法达到16.00(9.79)毫米用于探测定位的精确度,4.44(3.75)度用于探测定向,在所有扫描目标的误差阈值为25毫米的情况下,成功率超过80%。此外,我们的方法可以作为其他超声波模式的一般解决方案。</s>