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基于深度全卷积神经网络的 B 型超声合成弹性成像

Synthetic Elastography Using B-Mode Ultrasound Through a Deep Fully Convolutional Neural Network.

出版信息

IEEE Trans Ultrason Ferroelectr Freq Control. 2020 Dec;67(12):2640-2648. doi: 10.1109/TUFFC.2020.2983099. Epub 2020 Nov 24.

DOI:10.1109/TUFFC.2020.2983099
PMID:32217475
Abstract

Shear-wave elastography (SWE) permits local estimation of tissue elasticity, an important imaging marker in biomedicine. This recently developed, advanced technique assesses the speed of a laterally traveling shear wave after an acoustic radiation force "push" to estimate local Young's moduli in an operator-independent fashion. In this work, we show how synthetic SWE (sSWE) images can be generated based on conventional B-mode imaging through deep learning. Using side-by-side-view B-mode/SWE images collected in 50 patients with prostate cancer, we show that sSWE images with a pixel-wise mean absolute error of 4.5 ± 0.96 kPa with regard to the original SWE can be generated. Visualization of high-level feature levels through t -distributed stochastic neighbor embedding reveals substantial overlap between data from two different scanners. Qualitatively, we examined the use of the sSWE methodology for B-mode images obtained with a scanner without SWE functionality. We also examined the use of this type of network in elasticity imaging in the thyroid. Limitations of the technique reside in the fact that networks have to be retrained for different organs, and that the method requires standardization of the imaging settings and procedure. Future research will be aimed at the development of sSWE as an elasticity-related tissue typing strategy that is solely based on B-mode ultrasound acquisition, and the examination of its clinical utility.

摘要

剪切波弹性成像(SWE)允许对组织弹性进行局部估计,这是生物医学中重要的成像标志物。这项最近开发的先进技术通过声学辐射力“推动”来评估横向传播剪切波的速度,以独立于操作者的方式估计局部杨氏模量。在这项工作中,我们展示了如何通过深度学习从常规 B 模式成像生成合成 SWE(sSWE)图像。使用在 50 名前列腺癌患者中收集的并排 B 模式/SWE 图像,我们表明可以生成 sSWE 图像,其与原始 SWE 的像素级均方根误差为 4.5 ± 0.96 kPa。通过 t 分布随机邻域嵌入对高级特征水平的可视化显示了来自两个不同扫描仪的数据之间的大量重叠。定性地,我们研究了在没有 SWE 功能的扫描仪中使用 sSWE 方法对 B 模式图像的使用。我们还研究了在甲状腺弹性成像中使用这种类型的网络。该技术的局限性在于网络必须针对不同的器官进行重新训练,并且该方法需要标准化成像设置和程序。未来的研究将致力于开发仅基于 B 模式超声采集的与弹性相关的组织分类策略 sSWE,并研究其临床实用性。

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TSE-GAN: strain elastography using generative adversarial network for thyroid disease diagnosis.TSE-GAN:使用生成对抗网络进行甲状腺疾病诊断的应变弹性成像技术
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AUE-Net: Automated Generation of Ultrasound Elastography Using Generative Adversarial Network.AUE-Net:使用生成对抗网络自动生成超声弹性成像
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