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首页> 外文期刊>Journal of Cerebral Blood Flow and Metabolism: Official Journal of the International Society of Cerebral Blood Flow and Metabolism >Determination of Volume of Distribution using Likelihood Estimation in Graphical Analysis: Elimination of Estimation Bias.
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Determination of Volume of Distribution using Likelihood Estimation in Graphical Analysis: Elimination of Estimation Bias.

机译:在图形分析中使用似然估计确定分布量:消除估计偏差。

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SUMMARY: The graphical analysis uses an ordinary least squares (OLS) fitting of transformed data to determine the total volume of distribution (VT) and is not dependent upon a compartmental model configuration. This method, however, suffers from a noise-dependent bias. Approaches for reducing this bias include incorporating a presmoothing step, minimizing the squared perpendicular distance to the regression line, and conducting multilinear analysis. The solution proposed by Ogden, likelihood estimation in graphical analysis (LEGA), is an estimation technique in the original (nontransformed) domain based upon standard likelihood theory that incorporates the specific assumptions made on the noise inherent in the measurements. To determine the impact of this new method upon the noise-dependent bias, we compared VT determinations by compartmental modeling, graphical analysis (GA), and LEGA in 36 regions of interest in dynamic PET data from 25 healthy volunteers injected with [11C]-WAY-100635 and [11C]-McN-5652, which are agents used to image the serotonin 1A receptor and serotonin transporter, respectively. As predicted by simulations, LEGA eliminates the noise-dependent bias associated with GA using OLS. This method is a valuable addition to the tools available for the quantification of radioligand binding data in PET and SPECT.
机译:简介:图形分析使用转换数据的普通最小二乘(OLS)拟合来确定总分布量(VT),并且不依赖于隔离模型配置。然而,该方法遭受与噪声有关的偏差。减少这种偏差的方法包括采用预平滑步骤,最小化与回归线的平方垂直距离以及进行多线性分析。由Ogden提出的解决方案,即图形分析中的似然估计(LEGA),是基于标准似然理论的原始(非变换)域中的一种估计技术,该理论结合了对测量固有噪声的特定假设。为了确定这种新方法对噪声依赖性偏差的影响,我们比较了通过隔室建模,图形分析(GA)和LEGA对来自25位健康志愿者(注射了[11C]- WAY-100635和[11C] -McN-5652,分别是用于对血清素1A受体和血清素转运蛋白成像的试剂。正如仿真所预测的,LEGA使用OLS消除了与GA相关的噪声相关偏差。该方法是可用于量化PET和SPECT中放射性配体结合数据的工具的宝贵补充。

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