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首页> 外文期刊>Nuclear Instruments & Methods in Physics Research. Section A, Accelerators, Spectrometers, Detectors and Associated Equipment >An overview of fast convergent ordered-subsets reconstruction methods for emission tomography based on the incremental EM algorithm
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An overview of fast convergent ordered-subsets reconstruction methods for emission tomography based on the incremental EM algorithm

机译:基于增量EM算法的发射层析成像快速收敛有序子集重构方法概述

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Statistical reconstruction has become popular in emission computed tomography but suffers slow convergence (to the MAP or ML solution). Methods proposed to address this problem include the fast but non-convergent OSEM and the convergent RAMLA [J. Browne, A. De Pierro, IEEE Trans. Med. Imaging 15 (5) (1996) 687.] for the ML case, and the convergent BSREM [A. De Pierro, M. Yamagishi, IEEE Trans. Med. Imaging 20 (4) (2001) 280.], relaxed OS-SPS and modified BSREM [S. Ahn, J.A. Fessler, IEEE Trans. Med. Imaging 22 (5) (2003) 613.] for the MAP case. The convergent algorithms required a user-determined relaxation schedule. We proposed fast convergent OS reconstruction algorithms for both ML and MAP cases, called COSEM (Complete-data OSEM), which avoid the use of a relaxation schedule while maintaining convergence. COSEM is a form of incremental EM algorithm. Here, we provide a derivation of our COSEM algorithms and demonstrate COSEM using simulations. At early iterations, COSEM-ML is typically slower than RAMLA, and COSEM-MAP is typically slower than optimized BSREM while remaining much faster than conventional MAP-EM. We discuss how COSEM may be modified to overcome these limitations.
机译:统计重建已在放射计算机断层扫描中变得很流行,但收敛速度较慢(针对MAP或ML解决方案)。为解决这个问题而提出的方法包括快速但不收敛的OSEM和收敛的RAMLA [J. Browne,A。De Pierro,IEEE Trans。中ML案,影像学15(5)(1996)687.],以及收敛的BSREM [A. De Pierro,M。Yamagishi,IEEE Trans。中成像20(4)(2001)280.],宽松的OS-SPS和修改的BSREM [S.安恩(J.A.) Fessler,IEEE Trans。中成像22(5)(2003)613.]。收敛算法需要用户确定的松弛时间表。我们针对ML和MAP情况提出了一种快速收敛的OS重建算法,称为COSEM(完整数据OSEM),该算法避免了使用松弛计划同时保持收敛。 COSEM是一种增量式EM算法。在这里,我们提供了我们的COSEM算法的推导,并通过仿真演示了COSEM。在早期迭代中,COSEM-ML通常比RAMLA慢,而COSEM-MAP通常比优化的BSREM慢,而仍然比常规MAP-EM快得多。我们讨论如何修改COSEM以克服这些限制。

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