基于OS-EM方法的锥束CT图像重建

Baoyu Dong
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引用次数: 0

摘要

传统的CT重建受到各种伪影的限制,得到的图像效果不理想。为了减少图像噪声和伪影,提出了一种统计迭代的锥形束CT图像重建方法。首先将极大似然估计理论从发射CT推广到x射线扫描,然后推导出锥束CT直接重建的期望最大化公式。EM算法是一种迭代方法,可以产生较好的重建质量,但与快速鲁棒的FDK算法相比,EM算法的计算量大,收敛速度慢。为了加快EM算法的收敛速度,将有序子集(OS)应用于锥束CT中。计算机模拟数据和真实CT数据的实验结果表明,OS-EM算法只需几次迭代就能提供较好的重建质量。此外,分析了OS-EM算法的点扩展函数,用于评价成像系统的性能。
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Image Reconstruction Using OS-EM Method in Cone-beam CT
Traditional CT reconstructions are limited by many kinds of artifacts, and they give dissatisfactory image. To reduce image noise and artifacts, we propose a statistical iterative method for image reconstruction in cone-beam CT. First the theory of maximum likelihood estimation (MLE) is extended from emission CT to X-ray scan, then an expectation-maximization (EM) formula is deduced for direct reconstruction of cone-beam CT. EM algorithm is an iterative method that can produce good quality reconstruction, but compared with fast and robust FDK algorithm, EM algorithm is computer intensive and convergence slow. In order to accelerate the convergence speed of EM algorithm, ordered subset (OS) is applied in Cone-beam CT. Experimental results with computer simulated data and real CT data show that OS-EM algorithm can provide good quality reconstructions after only a few iterations. In addition, the point spread function of the OS-EM algorithm is analyzed for evaluating the imaging system performance.
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