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首页> 外文期刊>IEEE Transactions on Ultrasonics, Ferroelectrics, and Frequency Control >Displacement Estimation in Ultrasound Elastography Using Pyramidal Convolutional Neural Network
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Displacement Estimation in Ultrasound Elastography Using Pyramidal Convolutional Neural Network

机译:基于锥体卷积神经网络的超声弹性成像中的位移估计

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In this article, two novel deep learning methods are proposed for displacement estimation in ultrasound elastography (USE). Although convolutional neural networks (CNNs) have been very successful for displacement estimation in computer vision, they have been rarely used for USE. One of the main limitations is that the radio frequency (RF) ultrasound data, which is crucial for precise displacement estimation, has vastly different frequency characteristics compared with images in computer vision. Top-rank CNN methods used in computer vision applications are mostly based on a multilevel strategy, which estimates finer resolution based on coarser ones. This strategy does not work well for RF data due to its large high-frequency content. To mitigate the problem, we propose modified pyramid warping and cost volume network (MPWC-Net) and RFMPWC-Net, both based on PWC-Net, to exploit information in RF data by employing two different strategies. We obtained promising results using networks trained only on computer vision images. In the next step, we constructed a large ultrasound simulation database and proposed a new loss function to fine-tune the network to improve its performance. The proposed networks and well-known optical flow networks as well as state-of-the-art elastography methods are evaluated using simulation, phantom, and amp;italicamp;in vivoamp;/italicamp; data. Our two proposed networks substantially outperform current deep learning methods in terms of contrast-to-noise ratio (CNR) and strain ratio (SR). Also, the proposed methods perform similar to the state-of-the-art elastography methods in terms of CNR and have better SR by substantially reducing the underestimation bias.
机译:本文提出了两种用于超声弹性成像(USE)位移估计的新型深度学习方法。尽管卷积神经网络 (CNN) 在计算机视觉中的位移估计方面非常成功,但它们很少用于 USE。其中一个主要局限性是,射频(RF)超声数据对于精确的位移估计至关重要,与计算机视觉中的图像相比,具有截然不同的频率特性。计算机视觉应用中使用的顶级 CNN 方法大多基于多级策略,该策略基于较粗的分辨率估计更精细的分辨率。由于射频数据的高频含量较大,因此该策略不适用于该数据。为了缓解这一问题,我们提出了基于PWC-Net的改进金字塔变形和成本体积网络(MPWC-Net)和RFMPWC-Net,通过采用两种不同的策略来利用RF数据中的信息。我们使用仅在计算机视觉图像上训练的网络获得了有希望的结果。下一步,我们构建了一个大型超声模拟数据库,并提出了一种新的损失函数来微调网络以提高其性能。使用模拟、体像和斜体体内/斜体数据评估了所提出的网络和众所周知的光流网络以及最先进的弹性成像方法。我们提出的两个网络在对比噪声比 (CNR) 和应变比 (SR) 方面大大优于当前的深度学习方法。此外,所提出的方法在CNR方面的表现与最先进的弹性成像方法相似,并且通过大大降低低估偏差而具有更好的SR。

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