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Investigating the association between indoor radon concentrations and some potential influencing factors through a profile regression approach

机译:通过剖面回归方法调查室内氡浓度与一些潜在影响因素之间的关联

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Radon-222 is a naturally occurring radioactive gas arising from the decay of Uranium-238 present in the earth's crust. The knowledge of the radon effects on human health is generating a growing attention by national and international authorities aimed at assessing the exposure of people to this radioactive gas and identifying building types and geographic areas where high indoor radon concentrations (IRCs) are likely to be found. However, given its multi-factorial dependence and the substantial regional variation, the analysis of IRC is not a simple task. There have been several efforts to evaluate the impact of the major influencing factors on IRCs. In this paper we illustrate how the complex relationships between the IRCs and a set of associated variables can be analysed using profile regression, a Bayesian non-parametric model for clustering responses and regressors simultaneously. Analyzing a geo-referenced database of annual IRCs for the Abruzzo region (Central Italy), we show that the proposed methodology allows to identify clusters of buildings according to their proneness to IRCs and that, through cluster assignment, it is possible to disentangle the effect of regressors on IRC and predict its levels for specific combinations of the explanatory variables.
机译:Radon-222是从地壳中存在的铀-238的衰减产生的天然存在的放射性气体。对人类健康的氡效应的了解是由国家和国际当局产生不断增长的关注,旨在评估将人们暴露给这种放射性气体,并识别可能会发现高室内氡浓度(IRC)的建筑类型和地理区域。但是,鉴于其多因素依赖和实质性区域变异,IRC的分析不是一个简单的任务。有几次努力评估主要影响因素对IRC的影响。在本文中,我们说明了IRC和一组相关变量之间的复杂关系如何使用简档回归来分析贝叶斯非参数模型,同时聚类响应和回归量。分析了Abruzzo地区的地理参考数据库(意大利中部),我们表明所提出的方法允许根据对IRC的倾向识别建筑物的集群,并且通过集群分配,可以解开效果在IRC上的回归和预测其对解释变量的特定组合的水平。

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