Lalush D S, Tsui B M
Department of Biomedical Engineering, University of North Carolina at Chapel Hill 27599-7575, USA.
Med Phys. 1995 Aug;22(8):1273-84. doi: 10.1118/1.597614.
We have derived a maximum a posteriori (MAP) approach for iterative reconstruction based on a weighted least-squares conjugate gradient (WLS-CG) algorithm. The WLS-CG algorithm has been shown to have initial convergence rates up to 10x faster than the maximum-likelihood expectation maximization (ML-EM) algorithm, but WLS-CG suffers from rapidly increasing image noise at higher iteration numbers. In our MAP-CG algorithm, the increasing noise is controlled by a Gibbs smoothing prior, resulting in stable, convergent solutions. Our formulation assumes a Gaussian noise model for the likelihood function. When a linear transformation of the pixel space is performed (the "relaxation" acceleration method), the MAP-CG algorithm obtains a low-noise, stable solution (one that does not change with further iterations) in 10-30 iterations, compared to 100-200 iterations for MAP-EM. Each iteration of MAP-CG requires approximately the same amount of processing time as one iteration of ML-EM or MAP-EM. We show that the use of an initial image estimate obtained from a single iteration of the Chang method helps the algorithm to converge faster when acceleration is not used, but does not help when acceleration is applied. While both the WLS-CG and MAP-CG methods suffer from the potential for obtaining negative pixel values in the iterated image estimates, the use of the Gibbs prior substantially reduces the number of pixels with negative values and restricts them to regions of little or no activity. We use SPECT data from simulated hot-sphere phantoms and from patient studies to demonstrate the advantages of the MAP-CG algorithm. We conclude that the MAP-CG algorithm requires 10%-25% of the processing time of EM techniques, and provides images of comparable or superior quality.
我们基于加权最小二乘共轭梯度(WLS-CG)算法,推导出了一种用于迭代重建的最大后验(MAP)方法。WLS-CG算法已被证明其初始收敛速度比最大似然期望最大化(ML-EM)算法快达10倍,但在较高迭代次数时,WLS-CG会出现图像噪声迅速增加的问题。在我们的MAP-CG算法中,增加的噪声由吉布斯平滑先验控制,从而产生稳定、收敛的解。我们的公式假设似然函数为高斯噪声模型。当对像素空间进行线性变换(“松弛”加速方法)时,与MAP-EM的100 - 200次迭代相比,MAP-CG算法在10 - 30次迭代中就能获得低噪声、稳定的解(即不会随进一步迭代而变化的解)。MAP-CG的每次迭代所需的处理时间与ML-EM或MAP-EM的一次迭代大致相同。我们表明,当不使用加速时,使用从Chang方法的单次迭代获得的初始图像估计有助于算法更快收敛,但在应用加速时则无帮助。虽然WLS-CG和MAP-CG方法在迭代图像估计中都存在获得负像素值的可能性,但使用吉布斯先验能大幅减少具有负值的像素数量,并将它们限制在很少或没有活动的区域。我们使用来自模拟热球模型和患者研究的SPECT数据来证明MAP-CG算法的优势。我们得出结论,MAP-CG算法所需的处理时间仅为EM技术的10% - 25%,并能提供质量相当或更优的图像。