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Patch-based image reconstruction for PET using prior-image derived dictionaries

机译:使用先前图像派生词典对PET进行基于补丁的图像重建

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摘要

In PET image reconstruction, regularization is often needed to reduce the noise in the resulting images. Patch-based image processing techniques have recently been successfully used for regularization in medical image reconstruction through a penalized likelihood framework. Re-parameterization within reconstruction is another powerful regularization technique in which the object in the scanner is re-parameterized using coefficients for spatially-extensive basis vectors. In this work, a method for extracting patch-based basis vectors from the subject's MR image is proposed. The coefficients for these basis vectors are then estimated using the conventional MLEM algorithm. Furthermore, using the alternating direction method of multipliers, an algorithm for optimizing the Poisson log-likelihood while imposing sparsity on the parameters is also proposed. This novel method is then utilized to find sparse coefficients for the patch-based basis vectors extracted from the MR image. The results indicate the superiority of the proposed methods to patch-based regularization using the penalized likelihood framework.
机译:在PET图像重建中,经常需要进行正规化处理以减少所得图像中的噪声。基于补丁的图像处理技术最近已成功地通过惩罚似然框架用于医学图像重建中的正则化。重构内的重新参数化是另一种强大的正则化技术,其中使用空间扩展基向量的系数对扫描仪中的对象进行重新参数化。在这项工作中,提出了一种用于从对象的MR图像中提取基于补丁的基础向量的方法。然后,使用常规MLEM算法估算这些基向量的系数。此外,还使用乘法器的交替方向方法,提出了一种在参数稀疏的同时优化泊松对数似然性的算法。然后,利用这种新颖的方法来找到从MR图像中提取的基于补丁的基础向量的稀疏系数。结果表明,所提出的方法优于使用惩罚似然框架的基于补丁的正则化方法。

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