A Neural Network Approach for Ultrasound Attenuation Coefficient Estimation

J. Birdi, J. D’hooge, A. Bertrand
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引用次数: 1

Abstract

Quantitative ultrasound (QUS) imaging complements the standard B-mode images with a quantitative represen-tation of the target's acoustic properties. Attenuation coefficient is an important parameter characterizing these properties, with applications in medical diagnosis and tissue characterization. Traditional QUS methods use analytical models to estimate this coefficient from the acquired signal. Propagation effects, such as diffraction, which are difficult to model analytically are usually ignored, affecting their estimation accuracy. To tackle this issue, reference phantom measurements are commonly used. These are, however, time-consuming and may not always be feasible, limiting the existing approaches' practical applicability. To overcome these challenges, we leverage recent advances in the deep learning field and propose a neural network approach which takes the magnitude spectra of the backscattered ultrasound signal at different axial depths as the input and provides the target's attenuation coefficient as the output. For the presented proof-of-concept study, the network was trained on a simulated dataset, and learnt a proper model from the training data, thereby avoiding the need for an analytical model. The trained network was tested on both simulated and tissue-mimicking phantom datasets, demonstrating the capability of neural networks to provide accurate attenuation estimates from diffraction affected recordings without a reference phantom measurement.
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超声衰减系数估计的神经网络方法
定量超声(QUS)成像补充了标准的b模式图像与目标的声学特性的定量表示。衰减系数是表征这些特性的重要参数,在医学诊断和组织表征中有着广泛的应用。传统的QUS方法使用解析模型从采集的信号中估计该系数。衍射等难以解析建模的传播效应通常被忽略,影响了其估计精度。为了解决这个问题,通常使用参考幻像测量。然而,这些都是耗时的,可能并不总是可行的,限制了现有方法的实际适用性。为了克服这些挑战,我们利用深度学习领域的最新进展,提出了一种神经网络方法,该方法以不同轴向深度的后向散射超声信号的幅度谱作为输入,并提供目标的衰减系数作为输出。对于提出的概念验证研究,网络在模拟数据集上进行训练,并从训练数据中学习适当的模型,从而避免了对分析模型的需要。经过训练的网络在模拟和组织模拟的幻影数据集上进行了测试,证明了神经网络能够在没有参考幻影测量的情况下,从衍射影响的记录中提供准确的衰减估计。
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