Bundeswehr Institute of Radiobiology, Munich, Germany.
Columbia University Irving Medical Center, Center for Radiological Research, New York, New York.
Radiat Res. 2023 Jun 1;199(6):598-615. doi: 10.1667/RADE-22-00206.1.
Early and high-throughput individual dose estimates are essential following large-scale radiation exposure events. In the context of the Running the European Network for Biodosimetry and Physical Dosimetry (RENEB) 2021 exercise, gene expression assays were conducted and their corresponding performance for dose-assessment is presented in this publication. Three blinded, coded whole blood samples from healthy donors were exposed to 0, 1.2 and 3.5 Gy X-ray doses (240 kVp, 1 Gy/min) using the X-ray source Yxlon. These exposures correspond to clinically relevant groups of unexposed, low dose (no severe acute health effects expected) and high dose exposed individuals (requiring early intensive medical health care). Samples were sent to eight teams for dose estimation and identification of clinically relevant groups. For quantitative reverse transcription polymerase chain reaction (qRT-PCR) and microarray analyses, samples were lysed, stored at 20°C and shipped on wet ice. RNA isolations and assays were run in each laboratory according to locally established protocols. The time-to-result for both rough early and more precise later reports has been documented where possible. Accuracy of dose estimates was calculated as the difference between estimated and reference doses for all doses (summed absolute difference, SAD) and by determining the number of correctly reported dose estimates that were defined as ±0.5 Gy for reference doses <2.5 Gy and ±1.0 Gy for reference doses >3 Gy, as recommended for triage dosimetry. We also examined the allocation of dose estimates to clinically/diagnostically relevant exposure groups. Altogether, 105 dose estimates were reported by the eight teams, and the earliest report times on dose categories and estimates were 5 h and 9 h, respectively. The coefficient of variation for 85% of all 436 qRT-PCR measurements did not exceed 10%. One team reported dose estimates that systematically deviated several-fold from reported dose estimates, and these outliers were excluded from further analysis. Teams employing a combination of several genes generated about two-times lower median SADs (0.8 Gy) compared to dose estimates based on single genes only (1.7 Gy). When considering the uncertainty intervals for triage dosimetry, dose estimates of all teams together were correctly reported in 100% of the 0 Gy, 50% of the 1.2 Gy and 50% of the 3.5 Gy exposed samples. The order of dose estimates (from lowest to highest) corresponding to three dose categories (unexposed, low dose and highest exposure) were correctly reported by all teams and all chosen genes or gene combinations. Furthermore, if teams reported no exposure or an exposure >3.5 Gy, it was always correctly allocated to the unexposed and the highly exposed group, while low exposed (1.2 Gy) samples sometimes could not be discriminated from highly (3.5 Gy) exposed samples. All teams used FDXR and 78.1% of correct dose estimates used FDXR as one of the predictors. Still, the accuracy of reported dose estimates based on FDXR differed considerably among teams with one team's SAD (0.5 Gy) being comparable to the dose accuracy employing a combination of genes. Using the workflow of this reference team, we performed additional experiments after the exercise on residual RNA and cDNA sent by six teams to the reference team. All samples were processed similarly with the intention to improve the accuracy of dose estimates when employing the same workflow. Re-evaluated dose estimates improved for half of the samples and worsened for the others. In conclusion, this inter-laboratory comparison exercise enabled (1) identification of technical problems and corrections in preparations for future events, (2) confirmed the early and high-throughput capabilities of gene expression, (3) emphasized different biodosimetry approaches using either only FDXR or a gene combination, (4) indicated some improvements in dose estimation with FDXR when employing a similar methodology, which requires further research for the final conclusion and (5) underlined the applicability of gene expression for identification of unexposed and highly exposed samples, supporting medical management in radiological or nuclear scenarios.
在大规模辐射暴露事件后,早期和高通量的个体剂量估计至关重要。在运行欧洲生物剂量学和物理剂量学网络(RENEB)2021 年演习的背景下,进行了基因表达分析,并在本出版物中介绍了其相应的剂量评估性能。从健康供体中抽取了三个盲样、编码的全血样本,使用 X 射线源 Yxlon 分别暴露于 0、1.2 和 3.5Gy X 射线剂量(240kVp,1Gy/min)。这些暴露对应于未暴露、低剂量(预计无严重急性健康影响)和高剂量暴露个体(需要早期密集医疗保健)的临床相关组。样本被送到八个团队进行剂量估计和鉴定临床相关组。对于定量逆转录聚合酶链反应(qRT-PCR)和微阵列分析,将样本裂解,储存在 20°C 下,并在湿冰上运输。根据当地建立的方案在每个实验室中运行 RNA 分离和测定。尽可能记录了粗略的早期报告和更精确的后期报告的时间。剂量估计的准确性是通过对所有剂量(总和绝对差,SAD)计算估计剂量和参考剂量之间的差异以及确定参考剂量<2.5Gy 时正确报告剂量估计的数量来计算的,定义为±0.5Gy,参考剂量>3Gy 时定义为±1.0Gy,这是分诊剂量学的推荐值。我们还检查了将剂量估计分配给临床/诊断相关暴露组的情况。总共,八个团队报告了 105 个剂量估计,剂量类别和估计的最早报告时间分别为 5 小时和 9 小时。85%的所有 436 个 qRT-PCR 测量值的变异系数不超过 10%。一个团队报告的剂量估计值与报告的剂量估计值系统地相差数倍,这些离群值被排除在进一步分析之外。使用几个基因组合生成的团队产生的中位数 SAD(0.8Gy)比仅基于单个基因的剂量估计(1.7Gy)低约两倍。考虑到分诊剂量学的不确定性区间,所有团队的剂量估计值在 0Gy 的 100%、1.2Gy 的 50%和 3.5Gy 的 50%暴露样本中被正确报告。所有团队和所有选定的基因或基因组合都正确报告了相应的三个剂量类别(未暴露、低剂量和最高暴露)的剂量估计顺序(从最低到最高)。此外,如果团队报告没有暴露或暴露>3.5Gy,它总是被正确分配到未暴露和高暴露组,而低暴露(1.2Gy)样本有时无法与高暴露(3.5Gy)样本区分。所有团队都使用 FDXR,78.1%的正确剂量估计值都使用 FDXR 作为预测因子之一。尽管如此,基于 FDXR 的报告剂量估计的准确性在团队之间差异很大,其中一个团队的 SAD(0.5Gy)与使用基因组合的剂量准确性相当。使用该参考团队的工作流程,我们在运动后对六个团队发送给参考团队的剩余 RNA 和 cDNA 进行了额外的实验。所有样本都以类似的方式处理,目的是在使用相同的工作流程时提高剂量估计的准确性。重新评估的剂量估计值对一半样本有所改善,而对另一半样本则有所恶化。总之,这项实验室间比较性的练习(1)确定了未来事件准备过程中的技术问题和纠正措施,(2)证实了基因表达的早期和高通量能力,(3)强调了使用仅 FDXR 或基因组合的不同生物剂量学方法,(4)表明在使用类似方法时,FDXR 进行剂量估计时有所改善,这需要进一步研究才能得出最终结论,(5)强调了基因表达在鉴定未暴露和高暴露样本中的适用性,支持放射性或核场景中的医疗管理。