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A multigrid expectation maximization reconstruction algorithm for positron emission tomography

机译:正电子发射层析成像的多网格期望最大化重构算法

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摘要

The problem of reconstruction in positron emission tomography (PET) is basically estimating the number of photon pairs emitted from the source. Using the concept of the maximum-likelihood (ML) algorithm, the problem of reconstruction is reduced to determining an estimate of the emitter density that maximizes the probability of observing the actual detector count data over all possible emitter density distributions. A solution using this type of expectation maximization (EM) algorithm with a fixed grid size is severely handicapped by the slow convergence rate, the large computation time, and the nonuniform correction efficiency of each iteration, which makes the algorithm very sensitive to the image pattern. An efficient knowledge-based multigrid reconstruction algorithm based on the ML approach is presented to overcome these problems.
机译:正电子发射断层扫描(PET)重建的问题基本上是估计从源发射的光子对的数量。使用最大似然(ML)算法的概念,将重建问题简化为确定发射器密度的估计,该估计使在所有可能的发射器密度分布上观察实际检测器计数数据的概率最大化。使用这种具有固定网格大小的期望最大化(EM)算法的解决方案由于收敛速度慢,计算时间长以及每次迭代的校正效率不统一而严重受阻,这使得该算法对图像图案非常敏感。为了克服这些问题,提出了一种基于机器学习方法的基于知识的高效多网格重构算法。

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