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Cramer-Rao bound for gated PET

机译:Cramer-Rao绑定到门控PET

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Respiratory and cardiac motions degrade the spatial resolution in PET and SPECT imaging, with a negative impact on the diagnostic accuracy for cardiac studies and for the detection of lung tumors. The goal of this work is to determine the limit on the achievable performance in gated PET reconstruction with joint motion estimation, without external data, using the Cramer-Rao lower bound (CRLB). For a single ring scanner and a simple beating phantom we compute the CRLB with and without motion estimation. This comparison gives an insight into the increase in the number of events required to obtain in the presence of motion the same variance as with an hypothetical scan without motion. This preliminary study assumes an unbiased estimator for the image coefficients. The importance of the bias is however illustrated for a problem without motion and for the bias corresponding to a specific algorithm, OSEM with 7 subsets and 8 iterations. The empirical variance observed with that algorithm is lower than the unbiased CRLB but, as expected, higher than the biased CRLB. When the number of counts decreases below a certain threshold, the difference between the unbiased and biased CRLBs increases dramatically, and in addition the variance of the OSEM reconstruction becomes significantly higher than the lower bound given by the CRLB with the corresponding bias. Finally, we set up a direction to estimate the CRLB for larger images, by approximating the bound using a submatrix of the Fisher matrix.
机译:呼吸运动和心脏运动降低了PET和SPECT成像的空间分辨率,对心脏研究和肺肿瘤检测的诊断准确性产生了负面影响。这项工作的目的是使用Cramer-Rao下界(CRLB)在没有外部数据的情况下通过联合运动估计来确定门控PET重建中可达到的性能极限。对于单环扫描仪和简单的拍打模型,我们可以在有运动估计和无运动估计的情况下计算CRLB。通过这种比较,可以深入了解在有运动的情况下获得与假设运动而不进行运动相同的方差所需的事件数量。这项初步研究假设图像系数的估计量为无偏。但是,对于没有运动的问题以及与特定算法(具有7个子集和8次迭代的OSEM)相对应的偏置,说明了偏置的重要性。用该算法观察到的经验方差低于无偏CRLB,但正如预期的那样,高于偏CRLB。当计数的数量减少到某个阈值以下时,未偏置和偏置的CRLB之间的差异会急剧增加,此外,OSEM重构的方差变得明显高于带有相应偏置的CRLB给出的下限。最后,我们通过使用Fisher矩阵的子矩阵逼近边界,设置了一个方向来估计较大图像的CRLB。

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