IEEE Trans Med Imaging. 2021 May;40(5):1428-1437. doi: 10.1109/TMI.2021.3056951. Epub 2021 Apr 30.
Ultrasound Localization Microscopy (ULM) can resolve the microvascular bed down to a few micrometers. To achieve such performance, microbubble contrast agents must perfuse the entire microvascular network. Microbubbles are then located individually and tracked over time to sample individual vessels, typically over hundreds of thousands of images. To overcome the fundamental limit of diffraction and achieve a dense reconstruction of the network, low microbubble concentrations must be used, which leads to acquisitions lasting several minutes. Conventional processing pipelines are currently unable to deal with interference from multiple nearby microbubbles, further reducing achievable concentrations. This work overcomes this problem by proposing a Deep Learning approach to recover dense vascular networks from ultrasound acquisitions with high microbubble concentrations. A realistic mouse brain microvascular network, segmented from 2-photon microscopy, was used to train a three-dimensional convolutional neural network (CNN) based on a V-net architecture. Ultrasound data sets from multiple microbubbles flowing through the microvascular network were simulated and used as ground truth to train the 3D CNN to track microbubbles. The 3D-CNN approach was validated in silico using a subset of the data and in vivo in a rat brain. In silico, the CNN reconstructed vascular networks with higher precision (81%) than a conventional ULM framework (70%). In vivo, the CNN could resolve micro vessels as small as 10 μ m with an improvement in resolution when compared against a conventional approach.
超声局部显微镜 (ULM) 可以将微血管床分辨率降低到几个微米。为了实现这种性能,微泡造影剂必须灌注整个微血管网络。然后单独定位微泡并随时间跟踪以对单个血管进行采样,通常需要数十万张图像。为了克服衍射的基本限制并实现网络的密集重建,必须使用低浓度的微泡,这会导致采集持续数分钟。传统的处理管道目前无法处理来自多个附近微泡的干扰,这进一步降低了可实现的浓度。这项工作通过提出一种深度学习方法来解决这个问题,该方法可以从高浓度微泡的超声采集数据中恢复密集的血管网络。基于二维光子显微镜分割的真实小鼠大脑微血管网络被用于训练基于 V 网架构的三维卷积神经网络 (CNN)。模拟了多个微泡流过微血管网络的超声数据集,并将其用作地面实况来训练 3D CNN 以跟踪微泡。该 3D-CNN 方法在使用数据子集的计算机上进行了验证,并在大鼠大脑中进行了体内验证。在计算机上,CNN 比传统的 ULM 框架 (70%) 重建血管网络的精度更高 (81%)。在体内,与传统方法相比,CNN 可以分辨出小至 10μm 的微血管,分辨率有所提高。