A review outlining deep learning strategies for adaptive beamforming, spectral Doppler, compressive color Doppler encodings, and structured signal recovery in ultrasound.
End-to-End Learning-Based Ultrasound Reconstruction
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abstract
Ultrasound imaging is caught between the quest for the highest image quality, and the necessity for clinical usability. Our contribution is two-fold: First, we propose a novel fully convolutional neural network for ultrasound reconstruction. Second, a custom loss function tailored to the modality is employed for end-to-end training of the network. We demonstrate that training a network to map time-delayed raw data to a minimum variance ground truth offers performance increases in a clinical environment. In doing so, a path is explored towards improved clinically viable ultrasound reconstruction. The proposed method displays both promising image reconstruction quality and acquisition frequency when integrated for live ultrasound scanning. A clinical evaluation is conducted to verify the diagnostic usefulness of the proposed method in a clinical setting.
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eess.SP 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Deep learning in ultrasound imaging
A review outlining deep learning strategies for adaptive beamforming, spectral Doppler, compressive color Doppler encodings, and structured signal recovery in ultrasound.