Boudjelal Abdelwahhab, Messali Zoubeida, Elmoataz Abderrahim, Attallah Bilal
Electronics Department, University of Mohammed Boudiaf-M'sila, M'sila, Algeria; Image Team, GREYC Laboratory, University of Caen Normandy, Caen Cedex, France.
Electronics Department, University of Mohamed El Bachir El Ibrahimi-Bordj Bou Arréridj, Bordj Bou Arréridj, Algeria.
J Med Imaging Radiat Sci. 2017 Dec;48(4):385-393. doi: 10.1016/j.jmir.2017.09.005. Epub 2017 Nov 1.
There has been considerable progress in the instrumentation for data measurement and computer methods for generating images of measured PET data. These computer methods have been developed to solve the inverse problem, also known as the "image reconstruction from projections" problem.
In this paper, we propose a modified Simultaneous Algebraic Reconstruction Technique (SART) algorithm to improve the quality of image reconstruction by incorporating total variation (TV) minimization into the iterative SART algorithm.
The SART updates the estimated image by forward projecting the initial image onto the sinogram space. Then, the difference between the estimated sinogram and the given sinogram is back-projected onto the image domain. This difference is then subtracted from the initial image to obtain a corrected image. Fast total variation (FTV) minimization is applied to the image obtained in the SART step. The second step is the result obtained from the previous FTV update. The SART and the FTV minimization steps run iteratively in an alternating manner. Fifty iterations were applied to the SART algorithm used in each of the regularization-based methods. In addition to the conventional SART algorithm, spatial smoothing was used to enhance the quality of the image. All images were sized at 128 × 128 pixels.
The proposed algorithm successfully accomplished edge preservation. A detailed scrutiny revealed that the reconstruction algorithms differed; for example, the SART and the proposed FTV-SART algorithm effectively preserved the hot lesion edges, whereas artifacts and deviations were more likely to occur in the ART algorithm than in the other algorithms.
Compared to the standard SART, the proposed algorithm is more robust in removing background noise while preserving edges to suppress the existent image artifacts. The quality measurements and visual inspections show a significant improvement in image quality compared to the conventional SART and Algebraic Reconstruction Technique (ART) algorithms.
在数据测量仪器以及用于生成测量PET数据图像的计算机方法方面已经取得了相当大的进展。这些计算机方法已被开发用于解决逆问题,也称为“从投影重建图像”问题。
在本文中,我们提出一种改进的同时代数重建技术(SART)算法,通过将总变差(TV)最小化纳入迭代SART算法来提高图像重建质量。
SART通过将初始图像向前投影到正弦图空间来更新估计图像。然后,将估计的正弦图与给定正弦图之间的差异反向投影到图像域。然后从初始图像中减去该差异以获得校正后的图像。将快速总变差(FTV)最小化应用于在SART步骤中获得的图像。第二步是从前一次FTV更新获得的结果。SART和FTV最小化步骤以交替方式迭代运行。对每种基于正则化的方法中使用的SART算法应用50次迭代。除了传统的SART算法外,还使用空间平滑来提高图像质量。所有图像的大小均为128×128像素。
所提出的算法成功实现了边缘保留。详细审查表明,重建算法存在差异;例如,SART和所提出的FTV-SART算法有效地保留了热病变边缘,而与其他算法相比,ART算法中更容易出现伪影和偏差。
与标准SART相比,所提出的算法在去除背景噪声同时保留边缘以抑制现有图像伪影方面更稳健。质量测量和视觉检查表明,与传统的SART和代数重建技术(ART)算法相比,图像质量有显著提高。