Department of Imaging Physics, Delft University of Technology, Delft, The Netherlands.
Department of Electrical Engineering, Eindhoven University of Technology, Eindhoven, The Netherlands.
Ultrasound Med Biol. 2023 Jan;49(1):237-255. doi: 10.1016/j.ultrasmedbio.2022.08.017. Epub 2022 Oct 15.
There is an increased desire for miniature ultrasound probes with small apertures to provide volumetric images at high frame rates for in-body applications. Satisfying these increased requirements makes simultaneous achievement of a good lateral resolution a challenge. As micro-beamforming is often employed to reduce data rate and cable count to acceptable levels, receive processing methods that try to improve spatial resolution will have to compensate the introduced reduction in focusing. Existing beamformers do not realize sufficient improvement and/or have a computational cost that prohibits their use. Here we propose the use of adaptive beamforming by deep learning (ABLE) in combination with training targets generated by a large aperture array, which inherently has better lateral resolution. In addition, we modify ABLE to extend its receptive field across multiple voxels. We illustrate that this method improves lateral resolution both quantitatively and qualitatively, such that image quality is improved compared with that achieved by existing delay-and-sum, coherence factor, filtered-delay-multiplication-and-sum and Eigen-based minimum variance beamformers. We found that only in silica data are required to train the network, making the method easily implementable in practice.
人们越来越希望使用小孔径的微型超声探头,以便在体内应用中以高帧率提供体积图像。满足这些更高的要求使得同时实现良好的横向分辨率成为一个挑战。由于微波束形成通常用于将数据率和电缆数量降低到可接受的水平,因此试图提高空间分辨率的接收处理方法将不得不补偿聚焦引入的降低。现有的波束形成器无法实现足够的改进,或者计算成本过高,无法使用。在这里,我们提出使用深度学习的自适应波束形成(ABLE)与由大孔径阵列生成的训练目标相结合,大孔径阵列固有地具有更好的横向分辨率。此外,我们修改了 ABLE 以扩展其跨多个体素的感受野。我们说明这种方法在数量和质量上都提高了横向分辨率,使得与现有的延迟求和、相干因子、滤波延迟乘法求和和基于特征值的最小方差波束形成器相比,图像质量得到了提高。我们发现,只需要在硅数据上进行网络训练,这使得该方法在实践中易于实现。