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Clustering-initiated factor analysis application for tissue classification in dynamic brain positron emission tomography

机译:聚类启动因子分析在动态脑正电子发射断层扫描中的组织分类中的应用

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摘要

The goal is to quantify the fraction of tissues that exhibit specific tracer binding in dynamic brain positron emission tomography (PET). It is achieved using a new method of dynamic image processing: clustering-initiated factor analysis (CIFA). Standard processing of such data relies on region of interest analysis and approximate models of the tracer kinetics and of tissue properties, which can degrade accuracy and reproducibility of the analysis. Clustering-initiated factor analysis allows accurate determination of the time–activity curves and spatial distributions for tissues that exhibit significant radiotracer concentration at any stage of the emission scan, including the arterial input function. We used this approach in the analysis of PET images obtained using 11C-Pittsburgh Compound B in which specific binding reflects the presence of β-amyloid. The fraction of the specific binding tissues determined using our approach correlated with that computed using the Logan graphical analysis. We believe that CIFA can be an accurate and convenient tool for measuring specific binding tissue concentration and for analyzing tracer kinetics from dynamic images for a variety of PET tracers. As an illustration, we show that four-factor CIFA allows extraction of two blood curves and the corresponding distributions of arterial and venous blood from PET images even with a coarse temporal resolution.
机译:目的是量化在动态脑正电子发射断层扫描(PET)中显示特异性示踪剂结合的组织比例。它是使用一种新的动态图像处理方法来实现的:聚类初始因子分析(CIFA)。此类数据的标准处理依赖于目标区域分析以及示踪动力学和组织特性的近似模型,这可能会降低分析的准确性和可重复性。聚类启动的因子分析可以精确确定组织的时间-活动曲线和空间分布,这些组织在发射扫描的任何阶段都表现出显着的放射性示踪剂浓度,包括动脉输入功能。我们使用这种方法来分析使用 11 C-匹兹堡化合物B获得的PET图像,其中特异性结合反映了β-淀粉样蛋白的存在。使用我们的方法确定的特异性结合组织的分数与使用Logan图形分析计算的分数相关。我们相信CIFA可以是一种精确而方便的工具,可用于测量特定的结合组织浓度并从动态影像中分析各种PET示踪剂的示踪剂动力学。作为说明,我们显示四因素CIFA允许从PET图像中提取两条血液曲线以及相应的动静脉血和静脉血分布,即使时间分辨率较粗糙也是如此。

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