Rauby Brice, Xing Paul, Gasse Maxime, Provost Jean
IEEE Trans Ultrason Ferroelectr Freq Control. 2024 Dec;71(12: Breaking the Resolution Barrier in Ultrasound):1765-1784. doi: 10.1109/TUFFC.2024.3462299. Epub 2025 Jan 8.
Ultrasound localization microscopy (ULM) is a novel super-resolution imaging technique that can image the vasculature in vivo at depth with resolution far beyond the conventional limit of diffraction. By relying on the localization and tracking of clinically approved microbubbles injected in the blood stream, ULM can provide not only anatomical visualization but also hemodynamic quantification of the microvasculature. Several deep learning approaches have been proposed to address challenges in ULM including denoising, improving microbubble localization, estimating blood flow velocity, or performing aberration correction. Proposed deep learning methods often outperform their conventional counterparts by improving image quality and reducing processing time. In addition, their robustness to high concentrations of microbubbles can lead to reduced acquisition times in ULM, addressing a major hindrance to ULM clinical application. Herein, we propose a comprehensive review of the diversity of deep learning applications in ULM focusing on approaches assuming a sparse microbubble distribution. We first provide an overview of how existing studies vary in the constitution of their datasets or in the tasks targeted by the deep learning model. We also take a deeper look into the numerous approaches that have been proposed to improve the localization of microbubbles since they differ highly in their formulation of the optimization problem, their evaluation, or their network architectures. We finally discuss the current limitations and challenges of these methods, as well as the promises and potential of deep learning for ULM in the future.
超声定位显微镜(ULM)是一种新型的超分辨率成像技术,它能够在体内对深部血管系统进行成像,其分辨率远远超出传统的衍射极限。通过依赖对注入血流中的临床批准微泡进行定位和跟踪,ULM不仅可以提供微血管系统的解剖可视化,还能进行血流动力学定量分析。已经提出了几种深度学习方法来应对ULM中的挑战,包括去噪、改善微泡定位、估计血流速度或进行像差校正。所提出的深度学习方法通常通过提高图像质量和减少处理时间,优于传统方法。此外,它们对高浓度微泡的鲁棒性可导致ULM采集时间缩短,解决了ULM临床应用的一个主要障碍。在此,我们针对假定微泡分布稀疏的方法,对深度学习在ULM中的应用多样性进行全面综述。我们首先概述现有研究在数据集构成或深度学习模型所针对的任务方面是如何不同的。我们还更深入地研究了为改善微泡定位而提出的众多方法,因为它们在优化问题的表述、评估或网络架构方面差异很大。我们最后讨论这些方法当前的局限性和挑战,以及深度学习在未来对ULM的前景和潜力。