深度相干学习:用于医用超声波高质量单面波成像的无监督深度波束成形器。

IF 3.8 2区 物理与天体物理 Q1 ACOUSTICS Ultrasonics Pub Date : 2024-07-19 DOI:10.1016/j.ultras.2024.107408
Hyunwoo Cho , Seongjun Park , Jinbum Kang , Yangmo Yoo
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引用次数: 0

摘要

医学超声中的平面波成像(PWI)正成为一种重要的重建方法,具有高帧率和新的临床应用。最近,人们研究了基于深度学习(DL)的单幅脉搏波成像,以克服传统脉搏波成像中多幅脉搏波传输帧率较低的问题。然而,由于缺乏适当的地面实况图像,基于深度学习的脉搏波成像在性能改进方面仍面临挑战。为解决这一问题,我们在本文中提出了一种新的无监督学习方法,即基于深度相干学习(DCL)的 DL 波束成形器(DL-DCL),用于高质量的单路 PWI。在 DL-DCL 中,DL 网络经过训练,能从一组脉搏波数据中利用独特的损失函数预测高度相关的信号,而经过训练的 DL 模型能从低质量的单一脉搏波数据中预测高质量的脉搏波成像。此外,基于复杂基带信号的 DL-DCL 框架可实现通用波束成形器。为了评估 DL-DCL 的性能,利用公开数据集进行了模拟、模型和体内研究,并将其与传统波束成形器(即使用 75-PW 的 DAS 和使用 1-PW 的 DMAS)以及其他基于 DL 的方法(即使用 1-PW 的监督学习方法和使用 1-PW 的生成对抗网络 (GAN))进行了比较。实验结果表明,所提出的 DL-DCL 在空间分辨率方面与使用 1-PW 的 DMAS 和使用 75-PW 的 DAS 的结果相当,而在对比分辨率方面则优于所有比较方法。这些结果表明,所提出的无监督学习方法可以解决传统基于 DL 的脉搏波速度成像的固有局限性,而且在临床环境中也显示出巨大的潜力,伪影极少。
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Deep coherence learning: An unsupervised deep beamformer for high quality single plane wave imaging in medical ultrasound

Plane wave imaging (PWI) in medical ultrasound is becoming an important reconstruction method with high frame rates and new clinical applications. Recently, single PWI based on deep learning (DL) has been studied to overcome lowered frame rates of traditional PWI with multiple PW transmissions. However, due to the lack of appropriate ground truth images, DL-based PWI still remains challenging for performance improvements. To address this issue, in this paper, we propose a new unsupervised learning approach, i.e., deep coherence learning (DCL)-based DL beamformer (DL-DCL), for high-quality single PWI. In DL-DCL, the DL network is trained to predict highly correlated signals with a unique loss function from a set of PW data, and the trained DL model encourages high-quality PWI from low-quality single PW data. In addition, the DL-DCL framework based on complex baseband signals enables a universal beamformer. To assess the performance of DL-DCL, simulation, phantom and in vivo studies were conducted with public datasets, and it was compared with traditional beamformers (i.e., DAS with 75-PWs and DMAS with 1-PW) and other DL-based methods (i.e., supervised learning approach with 1-PW and generative adversarial network (GAN) with 1-PW). From the experiments, the proposed DL-DCL showed comparable results with DMAS with 1-PW and DAS with 75-PWs in spatial resolution, and it outperformed all comparison methods in contrast resolution. These results demonstrated that the proposed unsupervised learning approach can address the inherent limitations of traditional PWIs based on DL, and it also showed great potential in clinical settings with minimal artifacts.

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来源期刊
Ultrasonics
Ultrasonics 医学-核医学
CiteScore
7.60
自引率
19.00%
发文量
186
审稿时长
3.9 months
期刊介绍: Ultrasonics is the only internationally established journal which covers the entire field of ultrasound research and technology and all its many applications. Ultrasonics contains a variety of sections to keep readers fully informed and up-to-date on the whole spectrum of research and development throughout the world. Ultrasonics publishes papers of exceptional quality and of relevance to both academia and industry. Manuscripts in which ultrasonics is a central issue and not simply an incidental tool or minor issue, are welcomed. As well as top quality original research papers and review articles by world renowned experts, Ultrasonics also regularly features short communications, a calendar of forthcoming events and special issues dedicated to topical subjects.
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