Nuyts Johan, Fessler Jeffrey A
Department of Nuclear Medicine, K.U. Leuven, Herestraat 49, B3000 Leuven, Belgium.
IEEE Trans Med Imaging. 2003 Sep;22(9):1042-52. doi: 10.1109/TMI.2003.816960.
Regularization is desirable for image reconstruction in emission tomography. A powerful regularization method is the penalized-likelihood (PL) reconstruction algorithm (or equivalently, maximum a posteriori reconstruction), where the sum of the likelihood and a noise suppressing penalty term (or Bayesian prior) is optimized. Usually, this approach yields position-dependent resolution and bias. However, for some applications in emission tomography, a shift-invariant point spread function would be advantageous. Recently, a new method has been proposed, in which the penalty term is tuned in every pixel to impose a uniform local impulse response. In this paper, an alternative way to tune the penalty term is presented. We performed positron emission tomography and single photon emission computed tomography simulations to compare the performance of the new method to that of the postsmoothed maximum-likelihood (ML) approach, using the impulse response of the former method as the postsmoothing filter for the latter. For this experiment, the noise properties of the PL algorithm were not superior to those of postsmoothed ML reconstruction.
正则化对于发射断层成像中的图像重建是很有必要的。一种强大的正则化方法是惩罚似然(PL)重建算法(或者等效地,最大后验重建),其中似然和一个噪声抑制惩罚项(或贝叶斯先验)的总和被优化。通常,这种方法会产生位置依赖的分辨率和偏差。然而,对于发射断层成像中的某些应用,平移不变点扩散函数会更具优势。最近,有人提出了一种新方法,其中在每个像素中调整惩罚项以施加均匀的局部脉冲响应。在本文中,提出了一种调整惩罚项的替代方法。我们进行了正电子发射断层成像和单光子发射计算机断层成像模拟,以比较新方法与后平滑最大似然(ML)方法的性能,以前者方法的脉冲响应作为后者的后平滑滤波器。对于这个实验,PL算法的噪声特性并不优于后平滑ML重建的噪声特性。