Li Si, Zhang Jiahan, Krol Andrzej, Schmidtlein C Ross, Feiglin David, Xu Yuesheng
School of Data and Computer Science, Guangdong Province Key Lab of Computational Science, Sun Yat-sen University, Guangzhou 510275, China.
Department of Physics, Syracuse University, Syracuse, NY 13244, USA.
Phys Med. 2017 Jun;38:23-35. doi: 10.1016/j.ejmp.2017.05.001. Epub 2017 May 9.
The authors recently developed a preconditioned alternating projection algorithm (PAPA) for solving the penalized-likelihood SPECT reconstruction problem. The proposed algorithm can solve a wide variety of non-differentiable optimization models. This work is dedicated to comparing the performance of PAPA with total variation (TV) regularization (TV-PAPA) and a novel forward-backward algorithm with nested expectation maximization (EM)-TV iteration scheme (FB-EM-TV).
Monte Carlo technique was used to simulate multiple noise realizations of the fan-beam collimated SPECT data for a piecewise constant phantom with warm background, and hot and cold spheres with uniform activities at two noise levels. They were reconstructed using the aforementioned algorithms with attenuation, scatter, distance-dependent collimator blurring and sensitivity corrections. Noise suppressing performance, lesion detectability, lesion contrast, contrast recovery coefficient, convergence speed and selection of optimal parameters were evaluated. The conventional EM algorithms with TV post-filter (TVPF-EM) and Gaussian post-filter (GPF-EM) were used as benchmarks.
The TV-PAPA and FB-EM-TV demonstrated similar performance in all investigated categories. Both algorithms outperformed TVPF-EM in terms of image noise suppression, lesion detectability, lesion contrast and convergence speed. We established that the optimal parameters versus information density approximately followed power laws, which offers a guidance in parameter selection for reconstruction methods.
For the simulated SPECT data, TV-PAPA and FB-EM-TV produced qualitatively and quantitatively similar images. They performed better than the benchmark TVPF-EM and GPF-EM, with only limited loss of lesion contrast.
作者最近开发了一种预处理交替投影算法(PAPA),用于解决惩罚似然单光子发射计算机断层扫描(SPECT)重建问题。所提出的算法可以解决各种不可微优化模型。这项工作致力于比较PAPA与总变差(TV)正则化(TV-PAPA)以及一种具有嵌套期望最大化(EM)-TV迭代方案的新型前向-后向算法(FB-EM-TV)的性能。
采用蒙特卡罗技术模拟了具有温暖背景的分段常数体模以及具有均匀放射性的热球和冷球的扇束准直SPECT数据在两种噪声水平下的多个噪声实现。使用上述算法对它们进行重建,并进行衰减、散射、距离依赖性准直器模糊和灵敏度校正。评估了噪声抑制性能、病变可检测性、病变对比度、对比度恢复系数、收敛速度和最优参数选择。将具有TV后滤波(TVPF-EM)和高斯后滤波(GPF-EM)的传统EM算法用作基准。
TV-PAPA和FB-EM-TV在所有研究类别中表现出相似的性能。在图像噪声抑制、病变可检测性、病变对比度和收敛速度方面,这两种算法均优于TVPF-EM。我们确定,最优参数与信息密度大致遵循幂律,这为重建方法的参数选择提供了指导。
对于模拟的SPECT数据,TV-PAPA和FB-EM-TV产生了定性和定量上相似的图像。它们的表现优于基准TVPF-EM和GPF-EM,仅在病变对比度上有有限的损失。