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通过地质统计学抽样满足大规模人群暴露的辐射剂量测定能力要求。

Meeting radiation dosimetry capacity requirements of population-scale exposures by geostatistical sampling.

机构信息

Department of Biochemistry, Schulich School of Medicine & Dentistry, University of Western Ontario, London, ON, Canada.

CytoGnomix Inc, London, ON, Canada.

出版信息

PLoS One. 2020 Apr 24;15(4):e0232008. doi: 10.1371/journal.pone.0232008. eCollection 2020.

Abstract

BACKGROUND

Accurate radiation dose estimates are critical for determining eligibility for therapies by timely triaging of exposed individuals after large-scale radiation events. However, the universal assessment of a large population subjected to a nuclear spill incident or detonation is not feasible. Even with high-throughput dosimetry analysis, test volumes far exceed the capacities of first responders to measure radiation exposures directly, or to acquire and process samples for follow-on biodosimetry testing.

AIM

To significantly reduce data acquisition and processing requirements for triaging of treatment-eligible exposures in population-scale radiation incidents.

METHODS

Physical radiation plumes modelled nuclear detonation scenarios of simulated exposures at 22 US locations. Models assumed only location of the epicenter and historical, prevailing wind directions/speeds. The spatial boundaries of graduated radiation exposures were determined by targeted, multistep geostatistical analysis of small population samples. Initially, locations proximate to these sites were randomly sampled (generally 0.1% of population). Empirical Bayesian kriging established radiation dose contour levels circumscribing these sites. Densification of each plume identified critical locations for additional sampling. After repeated kriging and densification, overlapping grids between each pair of contours of successive plumes were compared based on their diagonal Bray-Curtis distances and root-mean-square deviations, which provided criteria (<10% difference) to discontinue sampling.

RESULTS/CONCLUSIONS: We modeled 30 scenarios, including 22 urban/high-density and 2 rural/low-density scenarios under various weather conditions. Multiple (3-10) rounds of sampling and kriging were required for the dosimetry maps to converge, requiring between 58 and 347 samples for different scenarios. On average, 70±10% of locations where populations are expected to receive an exposure ≥2Gy were identified. Under sub-optimal sampling conditions, the number of iterations and samples were increased, and accuracy was reduced. Geostatistical mapping limits the number of required dose assessments, the time required, and radiation exposure to first responders. Geostatistical analysis will expedite triaging of acute radiation exposure in population-scale nuclear events.

摘要

背景

在大规模辐射事件后,对暴露个体进行及时分诊,以确定治疗的资格,准确的辐射剂量估计至关重要。然而,对遭受核泄漏事件或爆炸的大量人群进行普遍评估是不可行的。即使进行高通量剂量测定分析,测试量也远远超过第一响应者直接测量辐射暴露或获取和处理样本进行后续生物剂量测定测试的能力。

目的

大大减少大规模辐射事件中治疗合格暴露人群分诊的数据采集和处理要求。

方法

物理辐射羽流模拟了在 22 个美国地点的模拟暴露的核爆炸场景。模型仅假设了震中位置和历史上盛行的风向/速度。通过对小人群样本进行有针对性的多步骤地质统计分析,确定了逐渐增加的辐射暴露的空间边界。最初,靠近这些地点的地点被随机抽样(通常为人口的 0.1%)。经验贝叶斯克里金法确定了包围这些地点的辐射剂量轮廓水平。每个羽流的加密确定了需要额外采样的关键位置。经过多次克里金和加密,根据每个连续羽流的轮廓之间的对角线布雷-柯蒂斯距离和均方根偏差,比较每个对之间的重叠网格,这提供了停止采样的标准(<10%的差异)。

结果/结论:我们模拟了 30 种情况,包括 22 种城市/高密度和 2 种农村/低密度情况以及各种天气条件。剂量测定图需要进行多次(3-10 次)采样和克里金才能收敛,不同情况下需要 58 到 347 个样本不等。平均而言,确定了 70±10%预计人群将接受≥2Gy 暴露的地点。在采样条件不理想的情况下,迭代次数和样本数量增加,准确性降低。地质统计制图限制了所需剂量评估的数量、所需时间以及第一响应者的辐射暴露。地质统计分析将加快人口规模核事件中急性辐射暴露的分诊。

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