A Deep Learning Approach for Beamforming and Contrast Enhancement of Ultrasound Images in Monostatic Synthetic Aperture Imaging: A Proof-of-Concept

IF 2.7 Q3 ENGINEERING, BIOMEDICAL IEEE Open Journal of Engineering in Medicine and Biology Pub Date : 2024-03-15 DOI:10.1109/OJEMB.2024.3401098
Edoardo Bosco;Edoardo Spairani;Eleonora Toffali;Valentino Meacci;Alessandro Ramalli;Giulia Matrone
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Abstract

Goal: In this study, we demonstrate that a deep neural network (DNN) can be trained to reconstruct high-contrast images, resembling those produced by the multistatic Synthetic Aperture (SA) method using a 128-element array, leveraging pre-beamforming radiofrequency (RF) signals acquired through the monostatic SA approach. Methods : A U-net was trained using 27200 pairs of RF signals, simulated considering a monostatic SA architecture, with their corresponding delay-and-sum beamformed target images in a multistatic 128-element SA configuration. The contrast was assessed on 500 simulated test images of anechoic/hyperechoic targets. The DNN's performance in reconstructing experimental images of a phantom and different in vivo scenarios was tested too. Results : The DNN, compared to the simple monostatic SA approach used to acquire pre-beamforming signals, generated better-quality images with higher contrast and reduced noise/artifacts. Conclusions : The obtained results suggest the potential for the development of a single-channel setup, simultaneously providing good-quality images and reducing hardware complexity.
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用于单静态合成孔径成像中超声图像波束成形和对比度增强的深度学习方法:概念验证
目标:在本研究中,我们证明了深度神经网络(DNN)可以通过训练来重建高对比度图像,类似于使用 128 元阵列的多静态合成孔径(SA)方法生成的图像,并利用通过单静态 SA 方法获取的预波束成形射频(RF)信号。方法:使用 27200 对射频信号训练 U-网络,模拟单静态 SA 架构,以及多静态 128 元 SA 配置中相应的延迟和波束成形目标图像。对比度在 500 幅模拟测试图像上进行了评估,测试图像为消声/低消声目标。此外,还测试了 DNN 在重建幻影实验图像和不同活体场景中的性能。测试结果与用于获取波束成形前信号的简单单静态 SA 方法相比,DNN 生成的图像质量更好,对比度更高,噪声/伪影更少。结论获得的结果表明,开发单通道设置具有潜力,可同时提供高质量图像并降低硬件复杂性。
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来源期刊
CiteScore
9.50
自引率
3.40%
发文量
20
审稿时长
10 weeks
期刊介绍: The IEEE Open Journal of Engineering in Medicine and Biology (IEEE OJEMB) is dedicated to serving the community of innovators in medicine, technology, and the sciences, with the core goal of advancing the highest-quality interdisciplinary research between these disciplines. The journal firmly believes that the future of medicine depends on close collaboration between biology and technology, and that fostering interaction between these fields is an important way to advance key discoveries that can improve clinical care.IEEE OJEMB is a gold open access journal in which the authors retain the copyright to their papers and readers have free access to the full text and PDFs on the IEEE Xplore® Digital Library. However, authors are required to pay an article processing fee at the time their paper is accepted for publication, using to cover the cost of publication.
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