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实时超声心动图引导下优化心尖标准切面

Real-Time Echocardiography Guidance for Optimized Apical Standard Views.

机构信息

Department of Circulation and Medical Imaging, Faculty of Medicine and Health Sciences, Norwegian University of Science and Technology, Trondheim, Norway.

Department of Circulation and Medical Imaging, Faculty of Medicine and Health Sciences, Norwegian University of Science and Technology, Trondheim, Norway.

出版信息

Ultrasound Med Biol. 2023 Jan;49(1):333-346. doi: 10.1016/j.ultrasmedbio.2022.09.006. Epub 2022 Oct 22.

Abstract

Measurements of cardiac function such as left ventricular ejection fraction and myocardial strain are typically based on 2-D ultrasound imaging. The reliability of these measurements depends on the correct pose of the transducer such that the 2-D imaging plane properly aligns with the heart for standard measurement views and is thus dependent on the operator's skills. We propose a deep learning tool that suggests transducer movements to help users navigate toward the required standard views while scanning. The tool can simplify echocardiography for less experienced users and improve image standardization for more experienced users. Training data were generated by slicing 3-D ultrasound volumes, which permits simulation of the movements of a 2-D transducer. Neural networks were further trained to calculate the transducer position in a regression fashion. The method was validated and tested on 2-D images from several data sets representative of a prospective clinical setting. The method proposed the adequate transducer movement 75% of the time when averaging over all degrees of freedom and 95% of the time when considering transducer rotation solely. Real-time application examples illustrate the direct relation between the transducer movements, the ultrasound image and the provided feedback.

摘要

心脏功能的测量,如左心室射血分数和心肌应变,通常基于 2 维超声成像。这些测量的可靠性取决于换能器的正确位置,即 2 维成像平面应与心脏正确对齐,以获得标准的测量视图,因此这取决于操作人员的技能。我们提出了一种深度学习工具,该工具可以建议换能器的运动方向,帮助用户在扫描时导航到所需的标准视图。该工具可以简化经验较少的用户的超声心动图操作,并提高更有经验的用户的图像标准化程度。训练数据是通过对 3 维超声体积进行切片生成的,这允许模拟 2 维换能器的运动。进一步的神经网络被训练以回归的方式计算换能器的位置。该方法在几个具有代表性的前瞻性临床环境的数据集的 2 维图像上进行了验证和测试。该方法在所有自由度上平均时,75%的时间提出了适当的换能器运动,而仅考虑换能器旋转时,95%的时间提出了适当的换能器运动。实时应用示例说明了换能器运动、超声图像和提供的反馈之间的直接关系。

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