Improving Lateral Resolution in 3-D Imaging With Micro-beamforming Through Adaptive Beamforming by Deep Learning

Journal Article (2023)
Authors

B.W. Ossenkoppele (TU Delft - ImPhys/Imaging Physics, ImPhys/Medical Imaging)

Ben Luijten (Eindhoven University of Technology)

D. Bera (Philips Research)

N. de Jong (ImPhys/Medical Imaging, Erasmus MC)

Martin D. Verweij (TU Delft - Technology, Policy and Management, Erasmus MC)

Ruud J.G. Van Sloun (Eindhoven University of Technology, Philips Research)

Research Group
ImPhys/Medical Imaging
Copyright
© 2023 B.W. Ossenkoppele, Ben Luijten, Deep Bera, N. de Jong, M.A. Verweij, Ruud J.G. van Sloun
More Info
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Publication Year
2023
Language
English
Copyright
© 2023 B.W. Ossenkoppele, Ben Luijten, Deep Bera, N. de Jong, M.A. Verweij, Ruud J.G. van Sloun
Research Group
ImPhys/Medical Imaging
Issue number
1
Volume number
49
Pages (from-to)
237-255
DOI:
https://doi.org/10.1016/j.ultrasmedbio.2022.08.017
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Abstract

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.