Guo Li, Xu Yan, Xu Zhengfu, Jiang Jingfeng
School of Mathematical Sciences, University of Science and Technology of China, Hefei, China Department of Mathematical Sciences, Michigan Technological University, Houghton, MI, USA Department of Biomedical Engineering, Michigan Technological University, Houghton, MI, USA.
School of Mathematical Sciences, University of Science and Technology of China, Hefei, China.
Ultrason Imaging. 2015 Oct;37(4):277-93. doi: 10.1177/0161734614561128. Epub 2014 Nov 30.
Obtaining accurate ultrasonically estimated displacements along both axial (parallel to the acoustic beam) and lateral (perpendicular to the beam) directions is an important task for various clinical elastography applications (e.g., modulus reconstruction and temperature imaging). In this study, a partial differential equation (PDE)-based regularization algorithm was proposed to enhance motion tracking accuracy. More specifically, the proposed PDE-based algorithm, utilizing two-dimensional (2D) displacement estimates from a conventional elastography system, attempted to iteratively reduce noise contained in the original displacement estimates by mathematical regularization. In this study, tissue incompressibility was the physical constraint used by the above-mentioned mathematical regularization. This proposed algorithm was tested using computer-simulated data, a tissue-mimicking phantom, and in vivo breast lesion data. Computer simulation results demonstrated that the method significantly improved the accuracy of lateral tracking (e.g., a factor of 17 at 0.5% compression). From in vivo breast lesion data investigated, we have found that, as compared with the conventional method, higher quality axial and lateral strain images (e.g., at least 78% improvements among the estimated contrast-to-noise ratios of lateral strain images) were obtained. Our initial results demonstrated that this conceptually and computationally simple method could be useful for improving the image quality of ultrasound elastography with current clinical equipment as a post-processing tool.
对于各种临床弹性成像应用(如模量重建和温度成像)而言,获取沿轴向(平行于声束)和横向(垂直于声束)方向的准确超声估计位移是一项重要任务。在本研究中,提出了一种基于偏微分方程(PDE)的正则化算法来提高运动跟踪精度。更具体地说,所提出的基于PDE的算法利用传统弹性成像系统的二维(2D)位移估计,试图通过数学正则化迭代减少原始位移估计中包含的噪声。在本研究中,组织不可压缩性是上述数学正则化所使用的物理约束。使用计算机模拟数据、组织模拟体模和体内乳腺病变数据对该算法进行了测试。计算机模拟结果表明,该方法显著提高了横向跟踪的精度(例如,在0.5%压缩率下提高了17倍)。从所研究的体内乳腺病变数据中,我们发现,与传统方法相比,获得了更高质量的轴向和横向应变图像(例如,横向应变图像的估计对比噪声比至少提高了78%)。我们的初步结果表明,这种概念和计算上都很简单的方法作为一种后处理工具,对于利用当前临床设备提高超声弹性成像的图像质量可能是有用的。