Department of Medical Physics and Engineering, Faculty of Health Science, Graduate School of Medicine, Osaka University, Suita, Osaka, Japan.
Center for Borderless Design of Medicine, Graduate School of Medicine, Osaka University, 1-7 Yamadaoka, Suita, Osaka, 565-0871, Japan.
Radiol Phys Technol. 2020 Dec;13(4):365-377. doi: 10.1007/s12194-020-00595-y. Epub 2020 Nov 9.
We developed a new image-restoration method that incorporates the point spread function (PSF) into the simultaneous algebraic reconstruction technique (SART-PSF). Additionally, through simulation studies, we investigated the usefulness of the method in comparison with the Richardson-Lucy (RL) algorithm. In the simulation studies, degraded images were generated by convolving magnetic resonance imaging-based brain images with PSF and adding Gaussian or Poisson noise to them to simulate various noise levels. The effects of the number of iterations N, noise, and PSF error on the processed images were quantitatively evaluated using the percent root mean square error (PRMSE) and mean structural similarity index (mSSIM). After applying the SART-PSF to images degraded using Gaussian noise, the PRMSE value and increase thereof, when N was increased, were smaller than those when using the RL algorithm. The mSSIM value was higher and its decrease upon increasing N was smaller than that of the RL algorithm. When Poisson noise was assumed, the differences in PRMSE and mSSIM between both methods were smaller than those when Gaussian noise was assumed. When the PSF error was negative, its effect on PRMSE and mSSIM was similar for both methods. However, when it was positive, the deterioration of these parameters for the SART-PSF was less than that for the RL algorithm in both the Gaussian and Poisson noise cases. The results suggest that the SART-PSF is more robust against noise and a PSF error than the RL algorithm and, thus, can be used as an alternative to the RL algorithm.
我们开发了一种新的图像恢复方法,将点扩散函数(PSF)纳入到同时代数重建技术(SART-PSF)中。此外,通过模拟研究,我们研究了该方法与 Richardson-Lucy(RL)算法相比的有用性。在模拟研究中,通过将磁共振成像脑图像与 PSF 卷积并向其添加高斯或泊松噪声来生成退化图像,以模拟各种噪声水平。使用均方根百分比误差(PRMSE)和平均结构相似性指数(mSSIM)定量评估迭代次数 N、噪声和 PSF 误差对处理图像的影响。在用高斯噪声退化的图像上应用 SART-PSF 后,当 N 增加时,PRMSE 值及其增加量小于使用 RL 算法时的值。mSSIM 值更高,当 N 增加时其下降幅度小于 RL 算法。当假设泊松噪声时,两种方法之间的 PRMSE 和 mSSIM 的差异小于假设高斯噪声时的差异。当 PSF 误差为负时,两种方法的 PRMSE 和 mSSIM 受其影响的程度相似。但是,当 PSF 误差为正时,SART-PSF 对这些参数的恶化程度小于 RL 算法在高斯和泊松噪声情况下的恶化程度。结果表明,与 RL 算法相比,SART-PSF 对噪声和 PSF 误差更具鲁棒性,因此可以作为 RL 算法的替代方法。