Nemzow Leah, Aljian Alec, Boehringer Thomas, Phillippi Michelle A, Taveras Maria, Wang Eric, Shuryak Igor, Polikoff Lee A, Turner Helen C
Center for Radiological Research, Columbia University Irving Medical Center, New York, New York, United States of America.
Pediatric Critical Care Medicine, Warren Alpert School of Medicine, Brown University, Providence, Rhode Island, United States of America.
PLoS One. 2025 Sep 9;20(9):e0331230. doi: 10.1371/journal.pone.0331230. eCollection 2025.
In the event of a large-scale radiological or nuclear emergency, a rapid, high-throughput screening tool will be essential for efficient triage of potentially exposed individuals, optimizing scarce medical resources and ensuring timely care. The objective of this work was to characterize the effects of age and sex on two intracellular lymphocyte protein biomarkers, BAX and p53, for early radiation exposure classification in the human population, using an imaging flow cytometry-based platform for rapid biomarker quantification in whole blood samples. Peripheral blood samples from male and female donors, across three adult age groups (young adult, middle-aged, senior) and a juvenile cohort, were X-irradiated (0-5 Gy), and biomarker expression was quantified at two- and three-days post-exposure. Mixed-effects modeling and ensemble machine learning approaches were employed to evaluate the influence of Age and Sex on biomarker expression and develop predictive models for radiation exposure classification. Although some Age and Sex effects on biomarker expression levels were observed when the data was stratified by targeted conditions of biomarker, day, age group, and sex, these variables were ultimately not retained as significant predictors of exposure classification. A single ensemble model successfully classified radiation exposure across all tested cohorts, with ROC AUC values ranging from 0.85 to 0.95 at the 1 Gy threshold and 0.81 to 0.87 at the 2 Gy threshold, high sensitivity values (91-96%) and low false-negative rates across all classifications. These findings support the use of BAX and p53 biomarkers in a blood test for efficient triage in large-scale emergencies, excluding individuals below exposure thresholds from unnecessary medical care with minimal risk of denying care to those truly exposed.
在发生大规模放射性或核紧急情况时,一种快速、高通量的筛查工具对于有效分流潜在受辐射个体、优化稀缺的医疗资源以及确保及时治疗至关重要。本研究的目的是利用基于成像流式细胞术的平台对全血样本中的生物标志物进行快速定量,以表征年龄和性别对两种细胞内淋巴细胞蛋白生物标志物BAX和p53的影响,用于人群早期辐射暴露分类。对来自三个成年年龄组(青年、中年、老年)和一个青少年队列的男性和女性捐赠者的外周血样本进行X射线照射(0 - 5 Gy),并在照射后两天和三天对生物标志物表达进行定量。采用混合效应建模和集成机器学习方法来评估年龄和性别对生物标志物表达的影响,并开发辐射暴露分类的预测模型。尽管在按生物标志物、天数、年龄组和性别的目标条件对数据进行分层时,观察到了年龄和性别对生物标志物表达水平的一些影响,但这些变量最终并未作为暴露分类的显著预测因子保留下来。一个单一的集成模型成功地对所有测试队列的辐射暴露进行了分类,在1 Gy阈值下ROC AUC值范围为0.85至0.95,在2 Gy阈值下为0.81至0.87,在所有分类中具有高灵敏度值(91 - 96%)和低假阴性率。这些发现支持在血液检测中使用BAX和p53生物标志物,以便在大规模紧急情况下进行有效分流,将低于暴露阈值的个体排除在不必要的医疗护理之外,同时将拒绝给予真正受辐射者护理的风险降至最低。