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用于动态PET图像重建的引导块匹配与4-D变换域滤波投影去噪方法

Guided block matching and 4-D transform domain filter projection denoising method for dynamic PET image reconstruction.

作者信息

Xin Lin, Zhuo Weihai, Liu Haikuan, Xie Tianwu

机构信息

Institute of Radiation Medicine, Fudan University, 2094 Xietu Road, Shanghai, 200032, China.

出版信息

EJNMMI Phys. 2023 Sep 25;10(1):59. doi: 10.1186/s40658-023-00580-5.

Abstract

PURPOSE

Dynamic PET is an essential tool in oncology due to its ability to visualize and quantify radiotracer uptake, which has the potential to improve imaging quality. However, image noise caused by a low photon count in dynamic PET is more significant than in static PET. This study aims to develop a novel denoising method, namely the Guided Block Matching and 4-D Transform Domain Filter (GBM4D) projection, to enhance dynamic PET image reconstruction.

METHODS

The sinogram was first transformed using the Anscombe method, then denoised using a combination of hard thresholding and Wiener filtering. Each denoising step involved guided block matching and grouping, collaborative filtering, and weighted averaging. The guided block matching was performed on accumulated PET sinograms to prevent mismatching due to low photon counts. The performance of the proposed denoising method (GBM4D) was compared to other methods such as wavelet, total variation, non-local means, and BM3D using computer simulations on the Shepp-Logan and digital brain phantoms. The denoising methods were also applied to real patient data for evaluation.

RESULTS

In all phantom studies, GBM4D outperformed other denoising methods in all time frames based on the structural similarity and peak signal-to-noise ratio. Moreover, GBM4D yielded the lowest root mean square error in the time-activity curve of all tissues and produced the highest image quality when applied to real patient data.

CONCLUSION

GBM4D demonstrates excellent denoising and edge-preserving capabilities, as validated through qualitative and quantitative assessments of both temporal and spatial denoising performance.

摘要

目的

动态正电子发射断层扫描(PET)因其能够可视化和量化放射性示踪剂摄取,而成为肿瘤学中的重要工具,这有可能提高成像质量。然而,动态PET中由于光子计数低而产生的图像噪声比静态PET中更为显著。本研究旨在开发一种新型去噪方法,即引导块匹配和4维变换域滤波(GBM4D)投影,以增强动态PET图像重建。

方法

首先使用安斯库姆方法对正弦图进行变换,然后结合硬阈值处理和维纳滤波进行去噪。每个去噪步骤都包括引导块匹配和分组、协同滤波以及加权平均。对累积的PET正弦图进行引导块匹配,以防止由于光子计数低而导致的不匹配。使用Shepp-Logan模型和数字脑模型通过计算机模拟,将所提出的去噪方法(GBM4D)与其他方法(如小波、全变差、非局部均值和BM3D)进行比较。这些去噪方法也应用于真实患者数据进行评估。

结果

在所有模型研究中,基于结构相似性和峰值信噪比,GBM4D在所有时间帧中均优于其他去噪方法。此外,GBM4D在所有组织的时间-活度曲线中产生的均方根误差最低,并且在应用于真实患者数据时产生的图像质量最高。

结论

通过对时间和空间去噪性能的定性和定量评估验证,GBM4D展示了出色的去噪和边缘保留能力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/47ec/10519923/cab707b8f64f/40658_2023_580_Fig1_HTML.jpg

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