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Estimation of physiological parameters using knowledge-based factor analysis of dynamic nuclear medicine image sequences

机译:使用基于知识的动态核医学图像序列分析的生理参数估计

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We have previously developed a knowledge-based method of factor analysis to analyze dynamic nuclear medicine image sequences. In this paper, we analyze dynamic PET cerebral glucose metabolism and neuroreceptor binding studies. These methods have shown the ability to reduce the dimensionality of the data, enhance the image quality of the sequence, and generate meaningful functional images and their corresponding physiological time functions. The new information produced by the factor analysis has now been used to improve the estimation of various physiological parameters. A principal component analysis (PCA) is first performed to identify statistically significant temporal variations and remove the uncorrelated variations (noise) due to Poisson counting statistics. The statistically significant principal components are then used to reconstruct a noise-reduced image sequence as well as provide an initial solution for the factor analysis. Prior knowledge such as the compartmental models or the requirement of positivity and simple structure can be used to constrain the analysis. These constraints are used to rotate the factors to the most physically and physiologically realistic solution. The final result is a small number of time functions (factors) representing the underlying physiologic processes and their associated weighting images representing the spatial localization of these functions. Estimation of physiological parameters can then be performed using the noise-reduced image sequence generated from the statistically significant PCs and/or the final factor images and time functions. These results are compared to the parameter estimation using standard methods and the original raw image sequences. Graphical analysis was performed at the pixel level to generate comparable parametric images of the slope and intercept (influx constant and distribution volume).
机译:我们以前开发了一种基于知识的因子分析方法,分析了动态核医学图像序列。在本文中,我们分析了动态宠物脑葡萄糖代谢和神经大学结合研究。这些方法表明能够降低数据的维度,增强序列的图像质量,并产生有意义的功能图像及其相应的生理时间函数。现在,因子分析产生的新信息已经用于改善各种生理参数的估计。首先执行主成分分析(PCA)以识别统计上显着的时间变化,并消除由于泊松计数统计而导致的不相关的变化(噪声)。然后使用统计学上的显着的主成分来重建噪声降低的图像序列,并为因子分析提供初始解决方案。现有知识,例如隔间模型或积极性和简单结构的要求可用于限制分析。这些约束用于将因素旋转到最身体和生理的现实解决方案。最终结果是表示基础生理过程的少量时间函数(因子)及其相关联的加权图像,其代表这些功能的空间定位。然后可以使用从统计学显着的PC和/或最终因子图像和时间函数产生的噪声降低的图像序列来执行生理参数的估计。使用标准方法和原始原始图像序列将这些结果与参数估计进行比较。在像素级执行图形分析以生成斜率的比较参数图像(流入常数和分布卷)。

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