Hu Jieyu, Olaisen Sindre Hellum, Smistad Erik, Dalen Havard, Lovstakken Lasse
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.
Ultrasound Med Biol. 2024 Jan;50(1):47-56. doi: 10.1016/j.ultrasmedbio.2023.08.024. Epub 2023 Oct 8.
Echocardiography, a critical tool for assessing left atrial (LA) volume, often relies on manual or semi-automated measurements. This study introduces a fully automated, real-time method for measuring LA volume in both 2-D and 3-D imaging, in the aim of offering accuracy comparable to that of expert assessments while saving time and reducing operator variability.
We developed an automated pipeline comprising a network to identify the end-systole (ES) time point and robust 2-D and 3-D U-Nets for segmentation. We employed data sets of 789 2-D images and 286 3-D recordings and explored various training regimes, including recurrent networks and pseudo-labeling, to estimate volume curves.
Our baseline results revealed an average volume difference of 2.9 mL for 2-D and 7.8 mL for 3-D, respectively, compared with manual methods. The application of pseudo-labeling to all frames in the cine loop generally led to more robust volume curves and notably improved ES measurement in cases with limited data.
Our results highlight the potential of automated LA volume estimation in clinical practice. The proposed prototype application, capable of processing real-time data from a clinical ultrasound scanner, provides valuable temporal volume curve information in the echo lab.
超声心动图是评估左心房(LA)容积的关键工具,通常依赖手动或半自动测量。本研究引入了一种用于在二维和三维成像中测量LA容积的全自动实时方法,旨在提供与专家评估相当的准确性,同时节省时间并减少操作者的变异性。
我们开发了一个自动化流程,包括一个用于识别收缩末期(ES)时间点的网络以及用于分割的强大二维和三维U-Net。我们使用了789幅二维图像和286个三维记录的数据集,并探索了各种训练方案,包括循环网络和伪标签,以估计容积曲线。
我们的基线结果显示,与手动方法相比,二维测量的平均容积差异分别为2.9 mL,三维测量为7.8 mL。在电影环中对所有帧应用伪标签通常会产生更稳健的容积曲线,并在数据有限的情况下显著改善ES测量。
我们的结果突出了临床实践中自动LA容积估计的潜力。所提出的原型应用能够处理来自临床超声扫描仪的实时数据,在超声实验室中提供有价值的时间容积曲线信息。