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Improved Estimation of Parametric Images of CerebralGlucose Metabolic Rate from Dynamic FDG-PET UsingVolume-Wise Principle Component Analysis

机译:从动态FDG-PET使用Volume-Wise原理分析改进了大脑葡萄糖代谢率参数图像的估计

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Parametric images can represent both spatial distribution and quantification of the biological and physiological parameters of tracer kinetics. The linear least square (LLS) method is a well-estimated linear regression method for generating parametric images by fitting compartment models with good computational efficiency. However, bias exists in LLS-based parameter estimates, owing to the noise present in tissue time activity curves (TTACs) that propagates as correlated error in the LLS linearized equations. To address this problem, a volume-wise principal component analysis (PCA) based method is proposed. In this method, firstly dynamic PET data are properly pre-transformed to standardize noise variance as PCA is a data driven technique and can not itself separate signals from noise. Secondly, the volume-wise PCA is applied on PET data. The signals can be mostly represented by the first few principle components (PC) and the noise is left in the subsequent PCs. Then the noise-reduced data are obtained using the first few PCs by applying 'inverse PCA'. It should also be transformed back according to the pre-transformation method used in the first step to maintain the scale of the original data set. Finally, the obtained new data set is used to generate parametric images using the linear least squares (LLS) estimation method. Compared with other noise-removal method, the proposed method can achieve high statistical reliability in the generated parametric images. The effectiveness of the method is demonstrated both with computer simulation and with clinical dynamic FDG PET study.
机译:参数图像可以代表示踪动力学的生物学和生理参数的空间分布和量化。线性最小二乘(LLS)方法是通过拟合舱层模型产生参数图像的良好估计的线性回归方法,其具有良好的计算效率。然而,由于组织时间活动曲线(TTACs)中存在的噪声作为LLS线性化方程中的相关误差传播的噪声,偏差存在于基于LLS的参数估计中。为了解决这个问题,提出了一种基于卷的主成分分析(PCA)方法。在该方法中,首先将动态PET数据被适当地预转换为标准化噪声方差,因为PCA是数据驱动技术,并且本身不能将信号与噪声分开。其次,储存的PCA应用于PET数据。信号可以主要由前几个原理组件(PC)表示,并且噪声留在后续PC中。然后通过应用“逆PCA”,使用前几个PC获得降噪数据。还应根据第一步中使用的预转换方法来转换,以维持原始数据集的比例。最后,获得的新数据集用于使用线性最小二乘(LLS)估计方法生成参数图像。与其他噪声除去方法相比,所提出的方法可以在所生成的参数图像中实现高统计可靠性。通过计算机仿真和临床动态FDG宠物研究证明了该方法的有效性。

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