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Generalized linear least squares algorithms for modeling glucose metabolism in the human brain with corrections for vascular effects.

机译:通用线性最小二乘算法,可对人脑中的葡萄糖代谢进行建模,并对血管效应进行校正。

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摘要

The generalized linear least squares (GLLS) algorithm has been found useful in image-wide parameter estimation for the generation of parametric images with positron emission tomography (PET) as it is computationally efficient and statistically reliable. However, the original algorithm was designed for parameter estimation with non-uniformly sampled instantaneous measurements. When dynamic PET data are sampled with the optimal image sampling schedule (OISS) to reduce memory and storage space, only a few temporal image frames are recorded. As a result, the direct application of GLLS is no longer appropriate. In this paper, we extend the GLLS algorithm to a five parameter model for the study of human brain metabolism, which accounts for the effect of cerebral blood volume (CBV), using OISS sampled data, with as few as five temporal samples. The formulation for this new GLLS algorithm is developed, and its computational efficiency and statistical reliability are investigated and validated using computer simulations and clinical PET [18F]-2-fluoro-2-deoxy-D-glucose (FDG) data.
机译:已经发现,广义线性最小二乘(GLLS)算法在利用正电子发射断层扫描(PET)生成参数图像的全图像参数估计中很有用,因为它计算效率高且统计可靠。但是,原始算法是为使用非均匀采样的瞬时测量值进行参数估计而设计的。当使用最佳图像采样计划(OISS)对动态PET数据进行采样以减少内存和存储空间时,仅记录了一些临时图像帧。结果,直接应用GLLS不再合适。在本文中,我们将GLLS算法扩展到用于研究人脑代谢的五参数模型,该模型使用OISS采样数据(占五个时间样本)说明了脑血容量(CBV)的影响。开发了这种新的GLLS算法的公式,并使用计算机模拟和临床PET [18F] -2-氟-2-脱氧-D-葡萄糖(FDG)数据研究和验证了其计算效率和统计可靠性。

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