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Postreconstruction filtering of 3D PET images by using weighted higher-order singular value decomposition

机译:使用加权高阶奇异值分解对3D PET图像进行重建后滤波

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摘要

Background Positron emission tomography (PET) always suffers from high levels of noise due to the constraints of the injected dose and acquisition time, especially in the studies of dynamic PET imaging. To improve the quality of PET image, several approaches have been introduced to suppress noise. However, traditional filters often blur the image edges, or erase small detail, or rely on multiple parameters. In order to solve such problems, nonlocal denoising methods have been adapted to denoise PET images. Methods In this paper, we propose to use the weighted higher-order singular value decomposition for PET image denoising. We first modeled the noise in the PET image as Poisson distribution. Then, we transformed the noise to an additive Gaussian noise by use of the anscombe root transformation. Finally, we denoised the transformed image using the proposed higher-order singular value decomposition (HOSVD)-based algorithms. The denoised results were compared with results from some general filters by performing physical phantom and mice studies. Results Compared to other commonly used filters, HOSVD-based denoising algorithms can preserve boundaries and quantitative accuracy better. The spatial resolution and the low activity features in PET image also can be preserved by use of HOSVD-based methods. Comparing with the standard HOSVD-based algorithm, the proposed weighted HOSVD algorithm can suppress the stair-step artifact, and the time-consumption is about half of that needed by the Wiener-augmented HOSVD algorithm. Conclusions The proposed weighted HOSVD denoising algorithm can suppress noise while better preserving of boundary and quantity in PET images.
机译:背景技术由于注入剂量和采集时间的限制,正电子发射断层扫描(PET)始终遭受高水平的噪声干扰,尤其是在动态PET成像研究中。为了提高PET图像的质量,已经引入了几种抑制噪声的方法。但是,传统的滤镜通常会模糊图像边缘,或擦除较小的细节,或依赖多个参数。为了解决这些问题,已经将非局部去噪方法用于对PET图像进行去噪。方法在本文中,我们建议将加权高阶奇异值分解用于PET图像去噪。我们首先将PET图像中的噪声建模为泊松分布。然后,我们使用anscombe根变换将噪声转换为加性高斯噪声。最后,我们使用提出的基于高阶奇异值分解(HOSVD)的算法对变换后的图像进行去噪。通过进行体模和小鼠研究,将去噪的结果与某些通用过滤器的结果进行比较。结果与其他常用过滤器相比,基于HOSVD的降噪算法可以更好地保留边界和定量精度。 PET图像中的空间分辨率和低活性特征也可以通过使用基于HOSVD的方法来保留。与标准的基于HOSVD的算法相比,所提出的加权HOSVD算法可以抑制阶梯伪像,并且时间消耗约为Wiener增强的HOSVD算法所需时间的一半。结论提出的加权HOSVD去噪算法可以抑制噪声,同时更好地保留PET图像的边界和数量。

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