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基于解剖先验的全身 PET 后重建非局部均值滤波。

Postreconstruction nonlocal means filtering of whole-body PET with an anatomical prior.

出版信息

IEEE Trans Med Imaging. 2014 Mar;33(3):636-50. doi: 10.1109/TMI.2013.2292881.

Abstract

Positron emission tomography (PET) images usually suffer from poor signal-to-noise ratio (SNR) due to the high level of noise and low spatial resolution, which adversely affect its performance for lesion detection and quantification. The complementary information present in high-resolution anatomical images from multi-modality imaging systems could potentially be used to improve the ability to detect and/or quantify lesions. However, previous methods that use anatomical priors usually require matched organ/lesion boundaries. In this study, we investigated the use of anatomical information to suppress noise in PET images while preserving both quantitative accuracy and the amplitude of prominent signals that do not have corresponding boundaries on computerized tomography (CT). The proposed approach was realized through a postreconstruction filter based on the nonlocal means (NLM) filter, which reduces noise by computing the weighted average of voxels based on the similarity measurement between patches of voxels within the image. Anatomical knowledge obtained from CT was incorporated to constrain the similarity measurement within a subset of voxels. In contrast to other methods that use anatomical priors, the actual number of neighboring voxels and weights used for smoothing were determined from a robust measurement on PET images within the subset. Thus, the proposed approach can be robust to signal mismatches between PET and CT. A 3-D search scheme was also investigated for the volumetric PET/CT data. The proposed anatomically guided median nonlocal means filter (AMNLM) was first evaluated using a computer phantom and a physical phantom to simulate realistic but challenging situations where small lesions are located in homogeneous regions, which can be detected on PET but not on CT. The proposed method was further assessed with a clinical study of a patient with lung lesions. The performance of the proposed method was compared to Gaussian, edge-preserving bilateral and NLM filters, as well as median nonlocal means (MNLM) filtering without an anatomical prior. The proposed AMNLM method yielded improved lesion contrast and SNR compared with other methods even with imperfect anatomical knowledge, such as missing lesion boundaries and mismatched organ boundaries.

摘要

正电子发射断层扫描(PET)图像通常由于噪声水平高和空间分辨率低而导致信噪比(SNR)较差,这会对其检测和量化病变的性能产生不利影响。来自多模态成像系统的高分辨率解剖图像中的互补信息有可能用于提高检测和/或量化病变的能力。然而,以前使用解剖先验的方法通常需要匹配器官/病变边界。在这项研究中,我们研究了在保留定量准确性和无对应 CT 边界的突出信号幅度的同时,使用解剖信息抑制 PET 图像噪声的方法。所提出的方法是通过基于非局部均值(NLM)滤波器的后重建滤波器来实现的,该滤波器通过根据图像内体素块之间的相似性测量计算体素的加权平均值来降低噪声。从 CT 获得的解剖学知识被纳入到子集内体素的相似性测量中。与使用解剖先验的其他方法不同,实际用于平滑的相邻体素数量和权重是根据子集中的 PET 图像的稳健测量确定的。因此,所提出的方法可以对 PET 和 CT 之间的信号不匹配具有鲁棒性。还研究了用于容积 PET/CT 数据的 3-D 搜索方案。所提出的解剖引导中值非局部均值滤波器(AMNLM)首先使用计算机体模和物理体模进行评估,以模拟小病变位于均匀区域的真实但具有挑战性的情况,这些病变可以在 PET 上检测到,但在 CT 上无法检测到。该方法进一步通过对患有肺部病变的患者的临床研究进行评估。所提出的方法的性能与高斯、边缘保持双边滤波器和 NLM 滤波器以及没有解剖先验的中值非局部均值(MNLM)滤波进行了比较。即使在解剖知识不完善(例如缺少病变边界和器官边界不匹配)的情况下,所提出的 AMNLM 方法也能提高病变对比度和 SNR。

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