School of Aerospace, Transport, and Manufacturing, Cranfield University, Cranfield, MK43 0AL, UK.
Department of Mechanical, Aerospace, and Civil Engineering, The University of Manchester, Manchester, M13 9PL, UK.
Sci Rep. 2023 Sep 11;13(1):15008. doi: 10.1038/s41598-023-42263-2.
Echocardiography is an effective tool for diagnosing cardiovascular disease. However, numerous challenges affect its accessibility, including skill requirements, workforce shortage, and sonographer strain. We introduce a navigation framework for the automated acquisition of echocardiography images, consisting of 3 modules: perception, intelligence, and control. The perception module contains an ultrasound probe, a probe actuator, and a locator camera. Information from this module is sent to the intelligence module, which grades the quality of an ultrasound image for different echocardiography views. The window search algorithm in the control module governs the decision-making process in probe movement, finding the best location based on known probe traversal positions and image quality. We conducted a series of simulations using the HeartWorks simulator to assess the proposed framework. This study achieved an accuracy of 99% for the image quality model, 96% for the probe locator model, and 99% for the view classification model, trained on an 80/20 training and testing split. We found that the best search area corresponds with general guidelines: at the anatomical left of the sternum between the 2nd and 5th intercostal space. Additionally, the likelihood of successful acquisition is also driven by how long it stores past coordinates and how much it corrects itself. Results suggest that achieving an automated echocardiography system is feasible using the proposed framework. The long-term vision is of a widely accessible and accurate heart imaging capability within hospitals and community-based settings that enables timely diagnosis of early-stage heart disease.
超声心动图是诊断心血管疾病的有效工具。然而,其普及受到诸多因素的影响,包括技能要求、劳动力短缺和超声医师的工作压力。我们引入了一种用于自动获取超声心动图图像的导航框架,该框架由 3 个模块组成:感知、智能和控制。感知模块包括超声探头、探头驱动器和定位器相机。该模块的信息被发送到智能模块,智能模块会对不同超声心动图视图的超声图像质量进行分级。控制模块中的窗口搜索算法控制着探头移动的决策过程,根据已知的探头遍历位置和图像质量找到最佳位置。我们使用 HeartWorks 模拟器进行了一系列模拟,以评估所提出的框架。该研究在 80/20 的训练和测试分割上进行训练,对图像质量模型的准确率达到了 99%,对探头定位器模型的准确率达到了 96%,对视图分类模型的准确率达到了 99%。我们发现最佳搜索区域与一般指南相符:胸骨左侧第 2 到第 5 肋间隙之间。此外,成功采集的可能性还取决于它存储过去坐标的时间长度以及自我修正的程度。研究结果表明,使用所提出的框架实现自动化超声心动图系统是可行的。我们的长期愿景是在医院和社区环境中实现广泛普及和准确的心脏成像能力,从而能够及时诊断早期心脏病。