使用自举可识别性作为动态[/sup 11/C]DASB PET数据模型选择的度量

R. Ogden, A. Ojha, K. Erlandsson, R. V. Van Heertum, J. Mann, R. Parsey
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引用次数: 1

摘要

许多示踪动力学模型已经开发用于估计神经受体结合参数从动态PET和SPECT脑研究。我们使用了自举技术来确定参数估计的可变性,以帮助选择最合适的动力学模型。这种技术使考虑不同的可变性来源成为可能。我们将该方法应用于11名健康受试者的数据,每位受试者用PET 5 -羟色胺转运体配体[11C]DASB扫描两次。基于代谢物校正的动脉血浆输入功能,通过动力学分析量化了示踪剂在不同脑区的结合。使用了六种不同的分析方法,包括迭代和非迭代实现1和2组织室室模型(1TC, 2TC, 1TCNI, 2TCNI),图形分析中的似然估计(LEGA)和基追踪(basis)。我们将自举技术应用于PET数据,以及血浆和代谢物数据。计算了总体积分布(VT)的标准误差(SE),以及不同的结合电位估计。计算各受试者估计SE值的平均值和标准差(SD)。为了进行比较,我们还通过仅自举组织数据来估计结果测量的可变性。全自举分析的结果表明,Basis一般是最好的方法。然而,当仅引导组织数据时,结果表明1TCNI是最好的。这表明,在使用自举可识别性进行模型选择时,考虑到所有可变性来源是很重要的
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using bootstrap identifiability as a metric for model selection for dynamic [/sup 11/C]DASB PET data
Numerous tracer kinetic models have been developed for estimation of neuroreceptor binding parameters from dynamic PET and SPECT brain studies. We have used the bootstrap technique to determine the variability of the parameter estimation as an aid in selecting the most appropriate kinetic model to use. This technique made it possible to take into account different sources of variability. We applied the method to data from 11 healthy subjects, each one scanned twice with the PET serotonin transporter ligand [11C]DASB. Tracer binding was quantified for different brain regions by kinetic analysis, based on metabolite corrected arterial plasma input functions. Six different analysis methods were used, including iterative as well as non-iterative implementations of 1- and 2-tissue compartmental models (1TC, 2TC, 1TCNI, 2TCNI), likelihood estimation in graphical analysis (LEGA), and basis pursuit (Basis). We applied the bootstrap technique to the PET data, as well as to the plasma and metabolite data. Standard errors (SE) were calculated for the total volume distribution (VT), as well as different binding potential estimates. The average and standard deviation (SD) of the estimated SE values were calculated across subjects. For comparison, we also estimated the variability of the outcome measures by bootstrapping only the tissue data. The results of the full bootstrap analysis showed that Basis was in general the best method. However, when only the tissue data were bootstrapped, the results indicated that 1TCNI was best. This shows that it can be important to take into account all sources of variability when using bootstrap identifiability for model selection
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