论文标题

超声超声成像的基于CNN的图像重建方法

CNN-Based Image Reconstruction Method for Ultrafast Ultrasound Imaging

论文作者

Perdios, Dimitris, Vonlanthen, Manuel, Martinez, Florian, Arditi, Marcel, Thiran, Jean-Philippe

论文摘要

Ultrafast Ultrasound(US)彻底改变了生物医学成像,其能力在1 kHz以上获得了全视觉框架,从而解除了诸如剪切波弹性学和功能性的美国神经影像的突破性方式。然而,它遭受了强烈的衍射伪像,主要是由光缘,侧叶或边缘波造成的。通常需要多次采集以获得足够的图像质量,而帧速率降低。为了回答单个未关注的采集对高质量成像的不断增长的需求,我们提出了一个两步卷积神经网络(CNN)基于基于实时成像的图像重建方法。通过基于反向投影的操作,类似于传统的延迟和隔离仪的形式,使用具有多尺度和多通道滤波的残留CNN来恢复高质量的图像,从而从中恢复高质量的图像,从而获得了高质量的估计值,该图像是从中恢复高质量的。为了说明射频US图像的高动态范围和振荡性能,我们将平均签名的对数绝对误差(MSLAE)作为训练损失函数。用线性换能器阵列在单平波(PW)成像中进行实验。在模拟数据集上进行了培训,该数据集精心制作,以包含各种各样的结构和回声。广泛的数值评估表明,所提出的方法可以从单个PWs重建与金标准合成孔径成像相似的质量的图像,在超过60 dB的动态范围内。体外和体内实验表明,对模拟数据进行的培训在实验环境中表现良好。

Ultrafast ultrasound (US) revolutionized biomedical imaging with its capability of acquiring full-view frames at over 1 kHz, unlocking breakthrough modalities such as shear-wave elastography and functional US neuroimaging. Yet, it suffers from strong diffraction artifacts, mainly caused by grating lobes, side lobes, or edge waves. Multiple acquisitions are typically required to obtain a sufficient image quality, at the cost of a reduced frame rate. To answer the increasing demand for high-quality imaging from single unfocused acquisitions, we propose a two-step convolutional neural network (CNN)-based image reconstruction method, compatible with real-time imaging. A low-quality estimate is obtained by means of a backprojection-based operation, akin to conventional delay-and-sum beamforming, from which a high-quality image is restored using a residual CNN with multiscale and multichannel filtering properties, trained specifically to remove the diffraction artifacts inherent to ultrafast US imaging. To account for both the high dynamic range and the oscillating properties of radio frequency US images, we introduce the mean signed logarithmic absolute error (MSLAE) as a training loss function. Experiments were conducted with a linear transducer array, in single plane-wave (PW) imaging. Trainings were performed on a simulated dataset, crafted to contain a wide diversity of structures and echogenicities. Extensive numerical evaluations demonstrate that the proposed approach can reconstruct images from single PWs with a quality similar to that of gold-standard synthetic aperture imaging, on a dynamic range in excess of 60 dB. In vitro and in vivo experiments show that trainings carried out on simulated data perform well in experimental settings.

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