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首页> 外文期刊>Radiation Research: Official Organ of the Radiation Research Society >Rapid Prediction of Hematologic Acute Radiation Syndrome in Radiation Injury Patients Using Peripheral Blood Cell Counts
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Rapid Prediction of Hematologic Acute Radiation Syndrome in Radiation Injury Patients Using Peripheral Blood Cell Counts

机译:外周血细胞计数辐射损伤患者血液学急性辐射综合征的快速预测

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摘要

Rapid clinical triage of radiation injury patients is essential for determining appropriate diagnostic and therapeutic interventions. We examined the utility of blood cell counts (BCCs) in the first three days postirradiation to predict clinical outcome, specifically for hematologic acute radiation syndrome (HARS). We analyzed BCC test samples from radiation accident victims (n = 135) along with their clinical outcome HARS severity scores (H1-4) using the System for Evaluation and Archiving of Radiation Accidents based on Case Histories (SEARCH) database. Data from nonirradiated individuals (H0, n = 132) were collected from an outpatient facility. We created binary categories for severity scores, i.e., 1 (H0 vs. H1-4), 2 (H0-1 vs. H2-4) and 3 (H0-2 vs. H3-4), to assess the discrimination ability of BCCs using unconditional logistic regression analysis. The test sample contained 454 BCCs from 267 individuals. We validated the discrimination ability on a second independent group comprised of 275 BCCs from 252 individuals originating from SEARCH (HARS 1-4), an outpatient facility (H0) and hospitals (e.g., leukemia patients, H4). Individuals with a score of H0 were easily separated from exposed individuals based on developing lymphopenia and granulocytosis. The separation of H0 and H1-4 became more prominent with increasing hematologic severity scores and time. On day 1, lymphocyte counts were most predictive for discriminating binary categories, followed by granulocytes and thrombocytes. For days 2 and 3, an almost complete separation was achieved when BCCs from different days were combined, supporting the measurement of sequential BCC. We found an almost complete discrimination of H0 vs. irradiated individuals during model validation (negative predictive value, NPV > 94%) for all three days, while the correct prediction of exposed individuals increased from day 1 (positive predictive value, PPV 78-89%) to day 3 (PPV > 90%). The models were unable to provide predictions for 10.9% of the test samples, because the PPVs or NPVs did not reach a 95% likelihood defined as the lower limit for a prediction. We developed a prediction model spreadsheet to provide early and prompt diagnostic predictions and therapeutic recommendations including identification of the worried well, requirement of hospitalization or development of severe hematopoietic syndrome. These results improve the provisional classification of HARS. For the final diagnosis, further procedures (sequential diagnosis, retrospective dosimetry, clinical follow-up, etc.) must be taken into account. Clinical outcome of radiation injury patients can be rapidly predicted within the first three days postirradiation using peripheral BCC. (C) 2017 by Radiation Research Society
机译:辐射损伤患者的快速临床分类对于确定适当的诊断和治疗干预症是必不可少的。我们在Postradiation的前三天中检查了血细胞计数(BCCS)的效用,以预测临床结果,特别是用于血液学急性辐射综合征(HARS)。我们分析了来自辐射事故受害者(n = 135)的BCC测试样本以及他们的临床结果,使用该系统使用系统进行评估和存档基于案例历史(搜索)数据库的辐射事故。从门诊设施收集来自非放射性个体(H0,N = 132)的数据。我们为严重性分数的二进制类别创建了二进制类别,即1(H0与H1-4),2(H0-1与H2-4)和3(H0-1与H3-4),以评估歧视能力BCCS使用无条件逻辑回归分析。测试样品包含来自267个个体的454个BCC。我们验证了由来自搜索(HAS 1-4)的252个个人的第二个独立组的歧视能力,该组成于275名BCC,该专用人士(HAS 1-4),门诊设施(H0)和医院(例如白血病患者,H4)。基于显影淋巴细胞瘤和颗粒细胞滴度,患有H0得分的个体容易与暴露的个体分离。随着血液学严重程度和时间的增加,H0和H1-4的分离变得更加突出。在第1天,淋巴细胞计数最预测,用于区分二进制类别,其次是粒细胞和血小板细胞。对于第2天和第3天,当组合不同天的BCC时,实现了几乎完全分离,支持顺序BCC的测量。我们发现在所有三天内验证(负预测值,NPV> 94%)在模型验证(负预测值,NPV> 94%)中几乎完全辨别,而暴露的人的正确预测从第1天增加(阳性预测值,PPV 78-89 %)至第3天(PPV> 90%)。该模型无法为10.9%的测试样本提供预测,因为PPV或NPV没有达到95%定义为预测下限的可能性。我们开发了一种预测模型电子表格,提供早期和及时​​的诊断预测和治疗建议,包括识别令人担忧的良好,住院需求或严重造血综合征的发展。这些结果改善了Hars的临时分类。对于最终诊断,必须考虑进一步的程序(顺序诊断,回顾性给药剂量,临床随访等)。使用外周式BCC,可以在发布后三天内快速预测放射损伤患者的临床结果。 (c)2017由辐射研究协会

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