首页> 外文会议>Engineering in Medicine and Biology Society, 1998. Proceedings of the 20th Annual International Conference of the IEEE >A fast algorithm for estimating FDG model parameters in dynamic PET with an optimised image sampling schedule and corrections for cerebral blood volume and partial volume
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A fast algorithm for estimating FDG model parameters in dynamic PET with an optimised image sampling schedule and corrections for cerebral blood volume and partial volume

机译:快速的动态PET图像中的FDG模型参数估计算法,具有优化的图像采样时间表和脑血量和部分血量的校正

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The generalized linear least squares (GLLS) method for parameter estimation of nonuniformly sampled biomedical systems is a computationally efficient and statistically reliable way to generate parametric images for tracer dynamic studies with positron emission tomography (PET). However, previous work on GLLS in FDG-PET has been mainly based on a conventional sampling schedule (CSS) with twenty or more dynamic image frames, and with a standard four-parameter model which ignores the effects of cerebral blood volume (CBV) and partial volume (PV) on the tissue uptake measurements. In order to reduce image storage requirements and obtain more reliable parameter estimates, the authors derived a new OISS5-GLLS algorithm based on an optimal image sampling schedule involving a much smaller number of image frames with a five-parameter FDG model for correcting CBV and PV error effects, and validated this algorithm through computer simulations and clinical FDG-PET studies. The results showed that the OISS5-GLLS could provide reliable parameter estimates in dynamic FDG-PET studies, while greatly reducing computational complexity and image storage requirements.
机译:用于非均匀采样生物医学系统的参数估计的广义线性最小二乘(GLL)方法是计算具有正电子发射断层扫描(PET)的示踪动态研究的参数图像的计算有效和统计上可靠的方法。然而,以前的FDG-PET上的GLL工作主要基于具有20个或更多个动态图像帧的传统采样时间表(CSS),并且具有标准的四参数模型,忽略了脑血量(CBV)的影响组织吸收测量的部分体积(PV)。为了降低图像存储要求并获得更可靠的参数估计,作者基于最佳图像采样计划导出了一种新的Oiss5-Glls算法,涉及具有五个参数FDG模型的较少数量的图像帧来校正CBV和PV误差效果,并通过计算机模拟和临床FDG-PET研究验证了该算法。结果表明,Oiss5-GLL可以在动态FDG-PET研究中提供可靠的参数估计,同时大大降低了计算复杂性和图像存储要求。

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