IEEE Trans Med Imaging. 2024 Feb;43(2):662-673. doi: 10.1109/TMI.2023.3316995. Epub 2024 Feb 2.
Ultrasound Localization Microscopy (ULM) can map microvessels at a resolution of a few micrometers ( [Formula: see text]). Transcranial ULM remains challenging in presence of aberrations caused by the skull, which lead to localization errors. Herein, we propose a deep learning approach based on recently introduced complex-valued convolutional neural networks (CV-CNNs) to retrieve the aberration function, which can then be used to form enhanced images using standard delay-and-sum beamforming. CV-CNNs were selected as they can apply time delays through multiplication with in-phase quadrature input data. Predicting the aberration function rather than corrected images also confers enhanced explainability to the network. In addition, 3D spatiotemporal convolutions were used for the network to leverage entire microbubble tracks. For training and validation, we used an anatomically and hemodynamically realistic mouse brain microvascular network model to simulate the flow of microbubbles in presence of aberration. The proposed CV-CNN performance was compared to the coherence-based method by using microbubble tracks. We then confirmed the capability of the proposed network to generalize to transcranial in vivo data in the mouse brain (n=3). Vascular reconstructions using a locally predicted aberration function included additional and sharper vessels. The CV-CNN was more robust than the coherence-based method and could perform aberration correction in a 6-month-old mouse. After correction, we measured a resolution of [Formula: see text] for younger mice, representing an improvement of 25.8%, while the resolution was improved by 13.9% for the 6-month-old mouse. This work leads to different applications for complex-valued convolutions in biomedical imaging and strategies to perform transcranial ULM.
超声局部显微镜 (ULM) 可以以几微米的分辨率绘制微血管图([公式:见正文])。在颅骨引起的像差存在的情况下,经颅 ULM 仍然具有挑战性,这会导致定位误差。在此,我们提出了一种基于最近引入的复值卷积神经网络 (CV-CNN) 的深度学习方法来获取像差函数,然后可以使用标准的延时求和波束形成来形成增强图像。选择 CV-CNN 是因为它们可以通过与同相正交输入数据相乘来施加时间延迟。预测像差函数而不是校正图像也为网络提供了更强的可解释性。此外,还使用 3D 时空卷积使网络能够利用整个微泡轨迹。为了训练和验证,我们使用解剖学和血流动力学上逼真的小鼠大脑微血管网络模型来模拟存在像差时微泡的流动。通过使用微泡轨迹比较了所提出的 CV-CNN 性能与基于相干性的方法。然后,我们确认了该网络在小鼠大脑的经颅体内数据中具有泛化能力(n=3)。使用局部预测的像差函数进行血管重建包括更多和更清晰的血管。CV-CNN 比基于相干性的方法更稳健,并且可以在 6 个月大的小鼠中进行像差校正。校正后,我们测量了年轻小鼠的分辨率为[公式:见正文],这代表提高了 25.8%,而 6 个月大的小鼠的分辨率提高了 13.9%。这项工作为生物医学成像中的复值卷积和执行经颅 ULM 的策略带来了不同的应用。