论文标题

基于深度学习的自适应超声检查来自子nyquist通道数据

Deep-Learning Based Adaptive Ultrasound Imaging from Sub-Nyquist Channel Data

论文作者

Mamistvalov, Alon, Amar, Ariel, Kessler, Naama, Eldar, Yonina C.

论文摘要

医疗超声图像的传统波束形成依赖于采样率明显高于实际信号的实际奈奎斯特率。这导致大量数据以存储和流程,对超声机械和算法的开发施加硬件和软件挑战,并影响由此产生的性能。鉴于过去几年在包括医学成像在内的深度学习方法所证明的能力,自然可以考虑他们从部分数据中恢复高质量超声图像的能力。在这里,我们提出了一种从时间和空间亚采样通道数据中基于学习深度学习的方法的方法。我们首先考虑在频域中进行时间对准的子nyquist采样数据,然后转换回时域。数据将在空间上进一步采样,因此仅获取接收信号的子集。部分数据用于训练编码器卷积神经网络,用作目标最小变量(MV)的信号,这些信号是从原始,完全采样的数据中生成的。我们的方法产生了高质量的B模式图像,其分辨率高于以前提出的重建方法(NESTA),以及来自压缩数据的延迟和am束构造(DAS)。与噪声比形成鲜明对比的是,我们的结果与完全采样的数据的MV光束相媲美,从而比当今临床实践中主要使用的是更好,更有效的成像。

Traditional beamforming of medical ultrasound images relies on sampling rates significantly higher than the actual Nyquist rate of the received signals. This results in large amounts of data to store and process, imposing hardware and software challenges on the development of ultrasound machinery and algorithms, and impacting the resulting performance. In light of the capabilities demonstrated by deep learning methods over the past years across a variety of fields, including medical imaging, it is natural to consider their ability to recover high-quality ultrasound images from partial data. Here, we propose an approach for deep-learning based reconstruction of B-mode images from temporally and spatially sub-sampled channel data. We begin by considering sub-Nyquist sampled data, time-aligned in the frequency domain and transformed back to the time domain. The data is further sampled spatially, so that only a subset of the received signals is acquired. The partial data is used to train an encoder-decoder convolutional neural network, using as targets minimum-variance (MV) beamformed signals that were generated from the original, fully-sampled data. Our approach yields high-quality B-mode images, with higher resolution than previously proposed reconstruction approaches (NESTA) from compressed data as well as delay-and-sum beamforming (DAS) of the fully-sampled data. In terms of contrast to noise ratio, our results are comparable to MV beamforming of the fully-sampled data, thus enabling better and more efficient imaging than is mostly used in clinical practice today.

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