Chen Yaqi, O'Sullivan Joseph A, Politte David G, Evans Joshua D, Han Dong, Whiting Bruce R, Williamson Jeffrey F
IEEE Trans Med Imaging. 2016 Feb;35(2):685-98. doi: 10.1109/TMI.2015.2490658. Epub 2015 Oct 14.
We propose a new algorithm, called line integral alternating minimization (LIAM), for dual-energy X-ray CT image reconstruction. Instead of obtaining component images by minimizing the discrepancy between the data and the mean estimates, LIAM allows for a tunable discrepancy between the basis material projections and the basis sinograms. A parameter is introduced that controls the size of this discrepancy, and with this parameter the new algorithm can continuously go from a two-step approach to the joint estimation approach. LIAM alternates between iteratively updating the line integrals of the component images and reconstruction of the component images using an image iterative deblurring algorithm. An edge-preserving penalty function can be incorporated in the iterative deblurring step to decrease the roughness in component images. Images from both simulated and experimentally acquired sinograms from a clinical scanner were reconstructed by LIAM while varying the regularization parameters to identify good choices. The results from the dual-energy alternating minimization algorithm applied to the same data were used for comparison. Using a small fraction of the computation time of dual-energy alternating minimization, LIAM achieves better accuracy of the component images in the presence of Poisson noise for simulated data reconstruction and achieves the same level of accuracy for real data reconstruction.
我们提出了一种用于双能X射线计算机断层扫描(CT)图像重建的新算法,称为线积分交替最小化(LIAM)。LIAM不是通过最小化数据与均值估计之间的差异来获取成分图像,而是允许在基物质投影和基正弦图之间存在可调的差异。引入了一个参数来控制这种差异的大小,通过该参数,新算法可以从两步法连续过渡到联合估计法。LIAM在迭代更新成分图像的线积分与使用图像迭代去模糊算法重建成分图像之间交替进行。在迭代去模糊步骤中可以纳入一个边缘保持惩罚函数,以减少成分图像中的粗糙度。LIAM对来自临床扫描仪的模拟和实验获取的正弦图的图像进行了重建,同时改变正则化参数以确定合适的选择。将双能交替最小化算法应用于相同数据的结果用于比较。LIAM使用双能交替最小化计算时间的一小部分,在存在泊松噪声的情况下,对于模拟数据重建,成分图像具有更高的精度,对于实际数据重建,达到了相同的精度水平。