Towards Autonomous Cardiac Ultrasound Scanning: Combining Physician Expertise and Machine Intelligence

IF 3.8 Q2 ENGINEERING, BIOMEDICAL
Mingrui Hao;Pengcheng Zhang;Xilong Hou;Xiaolin Gu;Xiao-Hu Zhou;Zeng-Guang Hou;Chen Chen;Shuangyi Wang
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Abstract

Echocardiography serves as a prevalent modality for both heart disease diagnosis and procedural guidance in medical applications. Nevertheless, the conventional echocardiography examination heavily relies on the manual dexterity of the sonographer, leading to the suboptimal repeatability. Despite the extensive exploration of robot-assisted ultrasound systems, achieving a heightened level of automation in examinations and enhancing the practicality of these robotic platforms for primary utilization remain formidable challenges within the field. In this study, we introduce an innovative automatic acquisition method for cardiac views using a novel ultrasound robot. The method is designed to autonomously traverse and scan target positions and angular ranges to search and identify the target cardiac views. First, the target positions and angular ranges were derived from a professional sonographer’s practice on 14 cases. Then, an automatic traversal scanning method is designed integrating visual guidance, human-machine collaboration, and path planning within the framework of a novel parallel mechanism-based ultrasound robot. Finally, we explore deep metric learning to search for target ultrasound images in the traversed ultrasound video. Experiments on the test set to evaluate the target ultrasound view searching algorithm achieved a mAP of 98.8% and a Rank-1 accuracy of 98.23%. Our method has been successfully validated by data from five subjects, achieving the acquisition of standard parasternal long-axis and short-axis cardiac views essential for diagnosis, demonstrating the effectiveness of the proposed method.
走向自主心脏超声扫描:结合医师专业知识和机器智能
超声心动图是心脏病诊断和医学应用程序指导的一种流行方式。然而,传统的超声心动图检查在很大程度上依赖于超声医师的手工灵巧性,导致不理想的重复性。尽管对机器人辅助超声系统进行了广泛的探索,但在检查中实现更高水平的自动化并增强这些机器人平台在初级应用中的实用性仍然是该领域的巨大挑战。在这项研究中,我们介绍了一种利用新型超声机器人进行心脏图像自动采集的创新方法。该方法可以自动遍历和扫描目标位置和角度范围,以搜索和识别目标心脏视图。首先,从专业超声医师对14例患者的实践中得出目标位置和角度范围。然后,在新型并联机构超声机器人的框架内,设计了一种集视觉引导、人机协作和路径规划于一体的自动遍历扫描方法。最后,我们探索了深度度量学习在遍历的超声视频中搜索目标超声图像。在评估目标超声视图搜索算法的测试集上进行实验,mAP为98.8%,Rank-1准确率为98.23%。我们的方法已经通过五个受试者的数据成功验证,实现了诊断所需的标准胸骨旁长轴和短轴心脏视图的获取,证明了所提出方法的有效性。
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CiteScore
6.80
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