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修订版 UF/NCI 儿科参考模型的特定吸收分数:内部光子源。

Specific absorbed fractions for a revised series of the UF/NCI pediatric reference phantoms: internal photon sources.

机构信息

Department of Radiology, University of Florida, Gainesville, FL 32611, United States of America.

Department of Radiation Oncology, Medical University of South Carolina, Charleston, SC 29407, United States of America.

出版信息

Phys Med Biol. 2021 Jan 26;66(3):035006. doi: 10.1088/1361-6560/abc708.

Abstract

Assessment of radiation absorbed dose to internal organs of the body from the intake of radionuclides, or in the medical setting through the injection of radiopharmaceuticals, is generally performed based upon reference biokinetic models or patient imaging data, respectively. Biokinetic models estimate the time course of activity localized to source organs. The time-integration of these organ activity profiles are then scaled by the radionuclide S-value, which defines the absorbed dose to a target tissue per nuclear transformation in various source tissues. S-values are computed using established nuclear decay information (particle energies and yields), and a parameter termed the specific absorbed fraction (SAF). The SAF is the ratio of the absorbed fraction-fraction of particle energy emitted in the source tissue that is deposited in the target tissue-and the target organ mass. While values of the SAF may be computed using patient-specific or individual-specific anatomic models, they have been more widely available through the use of computational reference phantoms. In this study, we report on an extensive series of photon SAFs computed in a revised series of the University of Florida and the National Cancer Institute pediatric reference phantoms which have been modified to conform to the specifications embodied in the ICRP reference adult phantoms of Publication 110 (e.g. organs modeled, organ ID numbers, blood contribution to elemental compositions). Following phantom anatomical revisions, photon radiation transport simulations were performed using MCNPX v2.7 in each of the ten phantoms of the series-male and female newborn, 1 year old, 5 year old, 10 year old, and 15 year old-for 60 different tissues serving as source and/or target regions. A total of 25 photon energies were considered from 10 keV to 10 MeV along a logarithm energy grid. Detailed analyses were conducted of the relative statistical errors in the Monte Carlo target tissue energy deposition tallies at low photon energies and over all energies for source-target combinations at large intra-organ separation distances. Based on these analyses, various data smoothing algorithms were employed, including multi-point weighted data smoothing, and log-log interpolation at low energies (1 keV and 5 keV) using limiting SAF values based upon target organ mass to bound the interpolation interval. The final dataset is provided in a series of ten electronic supplemental files in MS Excel format. The results of this study were further used as the basis for assessing the radiative component of internal electron source SAFs as described in our companion paper (Schwarz et al 2021) for this same pediatric phantom series.

摘要

评估体内器官因摄入放射性核素或通过注射放射性药物而吸收的辐射剂量,通常分别基于参考生物动力学模型或患者成像数据进行。生物动力学模型估计放射性核素在源器官中定位的活性随时间的变化。然后,通过放射性核素 S 值对这些器官活性谱进行时间积分,S 值定义了各种源组织中每核转化的靶组织吸收剂量。S 值是使用已建立的核衰变信息(粒子能量和产额)和称为特定吸收分数(SAF)的参数计算得出的。SAF 是源组织中发射的粒子能量的吸收分数-沉积在靶组织中的分数与靶器官质量的比值。虽然 SAF 值可以使用患者特定或个体特定的解剖模型计算,但通过使用计算参考体模更广泛地可用。在这项研究中,我们报告了在佛罗里达大学和国家癌症研究所儿科参考体模的修订系列中计算的一系列广泛的光子 SAF 值,这些体模已修改为符合 ICRP 出版物 110 中包含的参考成人体模的规范(例如,建模的器官、器官 ID 编号、血液对元素组成的贡献)。在体模解剖学修订之后,在该系列中的十个体模中的每一个(男性和女性新生儿、1 岁、5 岁、10 岁和 15 岁)中使用 MCNPX v2.7 进行了光子辐射传输模拟,对于 60 种不同的组织作为源和/或靶区。沿着对数能量网格考虑了从 10 keV 到 10 MeV 的总共 25 种光子能量。对在低光子能量下蒙特卡罗靶组织能量沉积计数的相对统计误差以及对于在大器官内分离距离处的源-靶组合的所有能量进行了详细分析。基于这些分析,使用了各种数据平滑算法,包括多点加权数据平滑以及在低能量(1 keV 和 5 keV)处使用基于靶器官质量的限制 SAF 值进行对数-对数插值,以限制插值间隔。最终数据集以十个 MS Excel 格式的电子补充文件系列提供。本研究的结果进一步用于评估我们关于同一儿科体模系列的内部电子源 SAF 辐射成分的基础(Schwarz 等人,2021 年)。

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