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Clustering-Based Linear Least Square Fitting Method for Generation of Parametric Images in Dynamic FDG PET Studies

机译:动态FDG PET研究中基于聚类的线性最小二乘拟合生成参数图像

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摘要

Parametric images generated from dynamic positron emission tomography (PET) studies are useful for presenting functional/biological information in the 3-dimensional space, but usually suffer from their high sensitivity to image noise. To improve the quality of these images, we proposed in this study a modified linear least square (LLS) fitting method named cLLS that incorporates a clustering-based spatial constraint for generation of parametric images from dynamic PET data of high noise levels. In this method, the combination of K-means and hierarchical cluster analysis was used to classify dynamic PET data. Compared with conventional LLS, cLLS can achieve high statistical reliability in the generated parametric images without incurring a high computational burden. The effectiveness of the method was demonstrated both with computer simulation and with a human brain dynamic FDG PET study. The cLLS method is expected to be useful for generation of parametric images from dynamic FDG PET study.
机译:从动态正电子发射断层扫描(PET)研究生成的参数化图像可用于在3维空间中展示功能/生物信息,但通常会遭受其对图像噪声的高敏感性的困扰。为了提高这些图像的质量,我们在这项研究中提出了一种名为cLLS的改进的线性最小二乘(LLS)拟合方法,该方法结合了基于聚类的空间约束,可从高噪声水平的动态PET数据生成参数图像。在这种方法中,结合使用了K均值和层次聚类分析对动态PET数据进行分类。与传统的LLS相比,cLLS可以在生成的参数图像中实现较高的统计可靠性,而不会产生较高的计算负担。通过计算机仿真和人脑动态FDG PET研究证明了该方法的有效性。预期cLLS方法可用于从动态FDG PET研究生成参数图像。

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