Department of Health Informatics, Informatics Institute, Middle East Technical University, Ankara, Turkey.
Department of Radiology, Faculty of Medicine, TOBB University of Economics and Technology, Ankara, Turkey.
Ultrason Imaging. 2019 Nov;41(6):368-386. doi: 10.1177/0161734619865961. Epub 2019 Aug 1.
B-mode ultrasound is an essential part of radiological examinations due to its low cost, safety, and portability, but has the drawbacks of the speckle noise and output of most systems is two-dimensional (2D) cross sections. Image restoration techniques, using mathematical models for image degradation and noise, can be used to boost resolution (deconvolution) as well as to reduce the speckle. In this study, new single-image Bayesian restoration (BR) and multi-image super-resolution restoration (BSRR) methods are proposed for in-plane B-mode ultrasound images. The spatially correlated nature of the speckle was modeled, allowing for examination of two different models for BR and BSRR for uncorrelated Gaussian (BR-UG, BSRR-UG) and correlated Gaussian (BR-CG, BSRR-CG). The performances of these models were compared with common image restoration methods (Wiener filter, bilateral filtering, and anisotropic diffusion). Well-recognized metrics (peak signal-to-noise ratio, contrast-to-noise ratio, and normalized information density) were used for algorithm free-parameter estimation and objective evaluations. The methods were tested using superficial tissue (2D scan data collected from volunteers, tissue-mimicking resolutions, and breast phantoms). Improvement in image quality was assessed by experts using visual grading analysis. In general, BSRR-CG performed better than all other methods. A potential downside of BSRR-CG is increased computation time, which can be addressed by the use of high-performance graphics processing units (GPUs).
B 模式超声是放射学检查的重要组成部分,因为它具有成本低、安全性高和便携性等优点,但也存在斑点噪声和大多数系统输出为二维(2D)横截面的缺点。使用针对图像降质和噪声的数学模型的图像恢复技术可用于提高分辨率(反卷积)和降低斑点噪声。在这项研究中,提出了新的单幅图像贝叶斯恢复(BR)和多幅图像超分辨率恢复(BSRR)方法,用于平面内 B 模式超声图像。对斑点的空间相关性质进行建模,允许检查 BR 和 BSRR 的两种不同模型,即不相关高斯(BR-UG、BSRR-UG)和相关高斯(BR-CG、BSRR-CG)。将这些模型的性能与常见的图像恢复方法(维纳滤波器、双边滤波和各向异性扩散)进行了比较。使用公认的指标(峰值信噪比、对比度噪声比和归一化信息密度)进行了无算法参数估计和客观评估。该方法使用浅层组织(志愿者采集的 2D 扫描数据、组织模拟分辨率和乳房体模)进行了测试。通过视觉分级分析,由专家评估图像质量的改善。一般来说,BSRR-CG 优于所有其他方法。BSRR-CG 的一个潜在缺点是计算时间增加,可以通过使用高性能图形处理单元(GPU)来解决。