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首页> 外文期刊>Nuclear Science, IEEE Transactions on >An Effective Post-Filtering Framework for 3-D PET Image Denoising Based on Noise and Sensitivity Characteristics
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An Effective Post-Filtering Framework for 3-D PET Image Denoising Based on Noise and Sensitivity Characteristics

机译:基于噪声和灵敏度特性的有效3D PET图像降噪后过滤框架

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摘要

Positron emission tomography (PET) images usually suffer from a noticeable amount of statistical noise. In order to reduce this noise, a post-filtering process is usually adopted. However, the performance of this approach is limited because the denoising process is mostly performed on the basis of the Gaussian random noise. It has been reported that in a PET image reconstructed by the expectation-maximization (EM), the noise variance of each voxel depends on its mean value, unlike in the case of Gaussian noise. In addition, we observe that the variance also varies with the spatial sensitivity distribution in a PET system, which reflects both the solid angle determined by a given scanner geometry and the attenuation information of a scanned object. Thus, if a post-filtering process based on the Gaussian random noise is applied to PET images without consideration of the noise characteristics along with the spatial sensitivity distribution, the spatially variant non-Gaussian noise cannot be reduced effectively. In the proposed framework, to effectively reduce the noise in PET images reconstructed by the 3-D ordinary Poisson ordered subset EM (3-D OP-OSEM), we first denormalize an image according to the sensitivity of each voxel so that the voxel mean value can represent its statistical properties reliably. Based on our observation that each noisy denormalized voxel has a linear relationship between the mean and variance, we try to convert this non-Gaussian noise image to a Gaussian noise image. We then apply a block matching 4-D algorithm that is optimized for noise reduction of the Gaussian noise image, and reconvert and renormalize the result to obtain a final denoised image. Using simulated phantom data and clinical patient data, we demonstrate that the proposed framework can effectively suppress the noise over the whole region of a PET image while minimizing degradation of the image resolution.
机译:正电子发射断层扫描(PET)图像通常遭受明显数量的统计噪声。为了减少这种噪声,通常采用后过滤处理。但是,该方法的性能受到限制,因为降噪处理主要是基于高斯随机噪声执行的。据报道,与高斯噪声的情况不同,在通过期望最大化(EM)重建的PET图像中,每个体素的噪声方差取决于其平均值。此外,我们观察到,方差也随PET系统中的空间灵敏度分布而变化,这既反映了由给定扫描仪几何形状确定的立体角,又反映了扫描对象的衰减信息。因此,如果在不考虑噪声特性以及空间灵敏度分布的情况下将基于高斯随机噪声的后滤波处理应用于PET图像,则不能有效地减少空间变化的非高斯噪声。在提出的框架中,为了有效减少由3-D普通泊松有序子集EM(3-D OP-OSEM)重建的PET图像中的噪声,我们首先根据每个体素的灵敏度对图像进行归一化,以使体素均值值可以可靠地表示其统计属性。基于我们的观察结果,即每个有噪声的归一化体素在均值和方差之间都具有线性关系,我们尝试将此非高斯噪声图像转换为高斯噪声图像。然后,我们应用针对高斯噪声图像的降噪进行了优化的块匹配4-D算法,并对结果进行重新转换和重新归一化以获得最终的去噪图像。使用模拟的幻像数据和临床患者数据,我们证明了所提出的框架可以有效地抑制PET图像整个区域的噪声,同时最大程度地降低图像分辨率的下降。

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