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采用数学代谢物校正的受体数据示踪动力学建模。

Tracer kinetic modelling of receptor data with mathematical metabolite correction.

作者信息

Burger C, Buck A

机构信息

Division of Nuclear Medicine, Department of Radiology, University Hospital, Ramistrasse 100, CH-8091 Zurich, Switzerland.

出版信息

Eur J Nucl Med. 1996 May;23(5):539-45. doi: 10.1007/BF00833389.

Abstract

Quantitation of metabolic processes with dynamic positron emission tomography (PET) and tracer kinetic modelling relies on the time course of authentic ligand in plasma, i.e. the input curve. The determination of the latter often requires the measurement of labelled metabolites, a laborious procedure. In this study we examined the possibility of mathematical metabolite correction, which might obviate the need for actual metabolite measurements. Mathematical metabolite correction was implemented by estimating the input curve together with kinetic tissue parameters. The general feasibility of the approach was evaluated in a Monte Carlo simulation using a two tissue compartment model. The method was then applied to a series of five human carbon-11 iomazenil PET studies. The measured cerebral tissue time-activity curves were fitted with a single tissue compartment model. For mathematical metabolite correction the input curve following the peak was approximated by a sum of three decaying exponentials, the amplitudes and characteristic half-times of which were then estimated by the fitting routine. In the simulation study the parameters used to generate synthetic tissue time-activity curves (K1-k4) were refitted with reasonable identifiability when using mathematical metabolite correction. Absolute quantitation of distribution volumes was found to be possible provided that the metabolite and the kinetic models are adequate. If the kinetic model is oversimplified, the linearity of the correlation between true and estimated distribution volumes is still maintained, although the linear regression becomes dependent on the input curve. These simulation results were confirmed when applying mathematical metabolite correction to the [11C]iomazenil study. Estimates of the distribution volume calculated with a measured input curve were linearly related to the estimates calculated using mathematical metabolite correction with correlation coefficients >0.990. However, the slope of the regression line displayed considerable variability among the subjects (0.33-0.95), demonstrating that absolute quantitation of the distribution volume was impaired. Mathematical metabolite correction is a feasible method and may prove useful in cases where actual metabolite data cannot be obtained. The potential for absolute quantitation seems limited, but the method allows the quantitative assessment of regional ratios of receptor measures.

摘要

利用动态正电子发射断层扫描(PET)和示踪剂动力学模型对代谢过程进行定量分析,依赖于血浆中真实配体的时间进程,即输入曲线。而确定后者通常需要测量标记代谢物,这是一个繁琐的过程。在本研究中,我们探讨了数学代谢物校正的可能性,这可能无需实际测量代谢物。通过估计输入曲线以及动力学组织参数来实现数学代谢物校正。在使用双组织室模型的蒙特卡罗模拟中评估了该方法的总体可行性。然后将该方法应用于一系列五项人体碳-11异氟烷PET研究。用单组织室模型拟合测得的脑组织时间-活性曲线。对于数学代谢物校正,峰值后的输入曲线用三个衰减指数的和来近似,然后通过拟合程序估计其幅度和特征半衰期。在模拟研究中,当使用数学代谢物校正时,用于生成合成组织时间-活性曲线的参数(K1-k4)以合理的可识别性重新拟合。发现只要代谢物和动力学模型合适,就可以对分布容积进行绝对定量。如果动力学模型过于简化,尽管线性回归依赖于输入曲线,但真实和估计分布容积之间的相关性线性仍然保持。当将数学代谢物校正应用于[11C]异氟烷研究时,这些模拟结果得到了证实。用测得的输入曲线计算的分布容积估计值与使用数学代谢物校正计算的估计值呈线性相关,相关系数>0.990。然而,回归线的斜率在受试者之间显示出相当大的变异性(0.33-0.95),表明分布容积的绝对定量受到损害。数学代谢物校正是一种可行的方法,在无法获得实际代谢物数据的情况下可能会有用。绝对定量的潜力似乎有限,但该方法允许对受体测量的区域比值进行定量评估。

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