Radon is a naturally occurring decay product of uranium known to be the main contributor to natural background radiation exposure. It has been established that the health risk related to radon exposure is lung cancer. In fact, radon is considered to be a major leading cause of lung cancer, second only to smoking. In this paper, we identified building typologies that affect the probability of detecting indoor radon concentration above reference values, using the data collected within two monitoring campaigns recently conducted in Northern Italy. This information is fundamental both in prevention, i.e. when the construction of a new building is planned and in mitigation, i.e. when a high concentration detected inside buildings has to be reduced. A spatial regression approach for binary data was adopted for this goal where some relevant covariates on the soil were retrieved by linking external spatial databases.

Borgoni, R., Tritto, V., de Bartolo, D. (2013). Identifying radon-prone building typologies by marginal modelling. JOURNAL OF APPLIED STATISTICS, 40(9), 2069-2086 [10.1080/02664763.2013.804906].

Identifying radon-prone building typologies by marginal modelling

BORGONI, RICCARDO;
2013

Abstract

Radon is a naturally occurring decay product of uranium known to be the main contributor to natural background radiation exposure. It has been established that the health risk related to radon exposure is lung cancer. In fact, radon is considered to be a major leading cause of lung cancer, second only to smoking. In this paper, we identified building typologies that affect the probability of detecting indoor radon concentration above reference values, using the data collected within two monitoring campaigns recently conducted in Northern Italy. This information is fundamental both in prevention, i.e. when the construction of a new building is planned and in mitigation, i.e. when a high concentration detected inside buildings has to be reduced. A spatial regression approach for binary data was adopted for this goal where some relevant covariates on the soil were retrieved by linking external spatial databases.
Articolo in rivista - Articolo scientifico
Longitudinal Data-Analysis; Generalized Linear-Models; Indoor Radon; Residential Radon; Lung-Cancer; Geostatistical Approach; Collaborative Analysis; Spatial Association; Southern Belgium; Individual Data
English
2013
40
9
2069
2086
none
Borgoni, R., Tritto, V., de Bartolo, D. (2013). Identifying radon-prone building typologies by marginal modelling. JOURNAL OF APPLIED STATISTICS, 40(9), 2069-2086 [10.1080/02664763.2013.804906].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/53456
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