Literature DB >> 33684036

Evaluating Input Domain and Model Selection for Deep Network Ultrasound Beamforming.

Jaime Tierney, Adam Luchies, Matthew Berger, Brett Byram.   

Abstract

Improving ultrasound B-mode image quality remains an important area of research. Recently, there has been increased interest in using deep neural networks (DNNs) to perform beamforming to improve image quality more efficiently. Several approaches have been proposed that use different representations of channel data for network processing, including a frequency-domain approach that we previously developed. We previously assumed that the frequency domain would be more robust to varying pulse shapes. However, frequency- and time-domain implementations have not been directly compared. In addition, because our approach operates on aperture domain data as an intermediate beamforming step, a discrepancy often exists between network performance and image quality on fully reconstructed images, making model selection challenging. Here, we perform a systematic comparison of frequency- and time-domain implementations. In addition, we propose a contrast-to-noise ratio (CNR)-based regularization to address previous challenges with model selection. Training channel data were generated from simulated anechoic cysts. Test channel data were generated from simulated anechoic cysts with and without varied pulse shapes, in addition to physical phantom and in vivo data. We demonstrate that simplified time-domain implementations are more robust than we previously assumed, especially when using phase preserving data representations. Specifically, 0.39- and 0.36-dB median improvements in in vivo CNR compared to DAS were achieved with frequency- and time-domain implementations, respectively. We also demonstrate that CNR regularization improves the correlation between training validation loss and simulated CNR by 0.83 and between simulated and in vivo CNR by 0.35 compared to DNNs trained without CNR regularization.

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Year:  2021        PMID: 33684036      PMCID: PMC8285087          DOI: 10.1109/TUFFC.2021.3064303

Source DB:  PubMed          Journal:  IEEE Trans Ultrason Ferroelectr Freq Control        ISSN: 0885-3010            Impact factor:   3.267


  24 in total

1.  Adaptive beamforming applied to medical ultrasound imaging.

Authors:  Johan-Fredrik Synnevåg; Andreas Austeng; Sverre Holm
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2007-08       Impact factor: 2.725

2.  Broadband minimum variance beamforming for ultrasound imaging.

Authors:  Iben Kraglund Holfort; Fredrik Gran; Jørgen Arendt Jensen
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2009-02       Impact factor: 2.725

3.  High-Quality Plane Wave Compounding Using Convolutional Neural Networks.

Authors:  Maxime Gasse; Fabien Millioz; Emmanuel Roux; Damien Garcia; Herve Liebgott; Denis Friboulet
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2017-08-07       Impact factor: 2.725

4.  High Spatial-Temporal Resolution Reconstruction of Plane-Wave Ultrasound Images With a Multichannel Multiscale Convolutional Neural Network.

Authors:  Zixia Zhou; Yuanyuan Wang; Jinhua Yu; Yi Guo; Wei Guo; Yanxing Qi
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2018-08-14       Impact factor: 2.725

5.  On the complexity of neural network classifiers: a comparison between shallow and deep architectures.

Authors:  Monica Bianchini; Franco Scarselli
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2014-08       Impact factor: 10.451

6.  The Impact of Model-Based Clutter Suppression on Cluttered, Aberrated Wavefronts.

Authors:  Kazuyuki Dei; Brett Byram
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2017-07-20       Impact factor: 2.725

7.  Phase coherence imaging.

Authors:  Jorge Camacho; Montserrat Parrilla; Carlos Fritsch
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2009-05       Impact factor: 2.725

8.  The Generalized Contrast-to-Noise Ratio: A Formal Definition for Lesion Detectability.

Authors:  Alfonso Rodriguez-Molares; Ole Marius Hoel Rindal; Jan D'hooge; Svein-Erik Masoy; Andreas Austeng; Muyinatu A Lediju Bell; Hans Torp
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2019-11-29       Impact factor: 2.725

9.  Deep learning-based reconstruction of ultrasound images from raw channel data.

Authors:  Hannah Strohm; Sven Rothlübbers; Klaus Eickel; Matthias Günther
Journal:  Int J Comput Assist Radiol Surg       Date:  2020-06-03       Impact factor: 2.924

10.  Deep Learning to Obtain Simultaneous Image and Segmentation Outputs From a Single Input of Raw Ultrasound Channel Data.

Authors:  Arun Asokan Nair; Kendra N Washington; Trac D Tran; Austin Reiter; Muyinatu A Lediju Bell
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2020-11-24       Impact factor: 2.725

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  1 in total

1.  Deep Learning for Ultrasound Image Formation: CUBDL Evaluation Framework and Open Datasets.

Authors:  Dongwoon Hyun; Alycen Wiacek; Sobhan Goudarzi; Sven Rothlubbers; Amir Asif; Klaus Eickel; Yonina C Eldar; Jiaqi Huang; Massimo Mischi; Hassan Rivaz; David Sinden; Ruud J G van Sloun; Hannah Strohm; Muyinatu A Lediju Bell
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2021-11-23       Impact factor: 2.725

  1 in total

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