School of Electronic Science and Engineering, Nanjing University, Nanjing 210023, China.
School of Electronic Science and Engineering, Nanjing University, Nanjing 210023, China.
Ultrasonics. 2024 Dec;144:107450. doi: 10.1016/j.ultras.2024.107450. Epub 2024 Aug 30.
Medical Speed-of-sound (SoS) imaging, which can characterize medical tissue properties better by quantifying their different SoS, is an effective imaging method compared with conventional B-mode ultrasound imaging. As a commonly used diagnostic instrument, a hand-held array probe features convenient and quick inspection. However, artifacts will occur in the single-angle SoS imaging, resulting in indistinguishable tissue boundaries. In order to build a high-quality SoS image, a number of raw data are needed, which will bring difficulties to data storage and processing. Compressed sensing (CS) theory offers theoretical support to the feasibility that a sparse signal can be rebuilt with random but less sampling data. In this study, we proposed an SoS reconstruction method based on CS theory to process signals obtained from a hand-held linear array probe with a passive reflector positioned on the opposite side. The SoS reconstruction method consists of three parts. Firstly, a sparse transform basis is selected appropriately for a sparse representation of the original signal. Then, considering the mathematical principles of SoS imaging, the ray-length matrix is used as a sparse measurement matrix to observe the original signal, which represents the length of the acoustic propagation path. Finally, the orthogonal matching pursuit algorithm is introduced for image reconstruction. The experimental result of the phantom proves that SoS imaging can clearly distinguish tissues that show similar echogenicity in B-mode ultrasound imaging. The simulation and experimental results show that our proposed method holds promising potential for reconstructing precision SoS images with fewer signal samplings, transmission, and storage.
医学中的声速(SoS)成像是一种有效的成像方法,它通过量化不同组织的声速来更好地描述组织特性,与传统的 B 型超声成像相比具有优势。作为一种常用的诊断仪器,手持式线阵探头具有方便、快捷的检查特点。然而,在单角度声速成像中会出现伪影,导致组织边界难以区分。为了构建高质量的声速图像,需要大量的原始数据,这将给数据存储和处理带来困难。压缩感知(CS)理论为稀疏信号可以用随机但较少的采样数据重建的可行性提供了理论支持。在本研究中,我们提出了一种基于 CS 理论的 SoS 重建方法,用于处理由手持式线性阵列探头获取的信号,该探头在对面放置了一个被动反射器。SoS 重建方法包括三个部分。首先,选择适当的稀疏变换基对原始信号进行稀疏表示。然后,考虑到 SoS 成像的数学原理,使用射线长度矩阵作为稀疏测量矩阵来观察原始信号,该矩阵表示声传播路径的长度。最后,引入正交匹配追踪算法进行图像重建。仿体实验结果证明,SoS 成像可以清晰地区分在 B 型超声成像中具有相似回声强度的组织。模拟和实验结果表明,我们提出的方法在使用较少信号采样、传输和存储的情况下,具有重建高精度声速图像的潜力。