We propose a Bayesian spatiotemporal statistical model for predicting out-of-hospital cardiac arrests (OHCAs). Risk maps for Ticino, adjusted for demographic covariates, are built for explaining and forecasting the spatial distribution of OHCAs and their temporal dynamics. The occurrence intensity of the OHCA event in each area of interest, and the cardiac risk-based clustering of municipalities are efficiently estimated, through a statistical model that decomposes OHCA intensity into overall intensity, demographic fixed effects, spatially structured and unstructured random effects, time polynomial dependence, and spatiotemporal random effect. In the studied geography, time evolution and dependence on demographic features are robust over different categories of OHCAs, but with variability in their spatial and spatiotemporal structure. Two main OHCA incidence-based clusters of municipalities are identified.

Peluso, S., Mira, A., Rue, H., Tierney, N., Benvenuti, C., Cianella, R., et al. (2020). A Bayesian spatiotemporal statistical analysis of out-of-hospital cardiac arrests. BIOMETRICAL JOURNAL, 62(4), 1105-1119 [10.1002/bimj.201900166].

A Bayesian spatiotemporal statistical analysis of out-of-hospital cardiac arrests

Peluso S.
;
2020

Abstract

We propose a Bayesian spatiotemporal statistical model for predicting out-of-hospital cardiac arrests (OHCAs). Risk maps for Ticino, adjusted for demographic covariates, are built for explaining and forecasting the spatial distribution of OHCAs and their temporal dynamics. The occurrence intensity of the OHCA event in each area of interest, and the cardiac risk-based clustering of municipalities are efficiently estimated, through a statistical model that decomposes OHCA intensity into overall intensity, demographic fixed effects, spatially structured and unstructured random effects, time polynomial dependence, and spatiotemporal random effect. In the studied geography, time evolution and dependence on demographic features are robust over different categories of OHCAs, but with variability in their spatial and spatiotemporal structure. Two main OHCA incidence-based clusters of municipalities are identified.
Articolo in rivista - Articolo scientifico
cardiac risk map; integrated nested Laplace approximation; temporal and spatial heterogeneity;
English
2020
62
4
1105
1119
partially_open
Peluso, S., Mira, A., Rue, H., Tierney, N., Benvenuti, C., Cianella, R., et al. (2020). A Bayesian spatiotemporal statistical analysis of out-of-hospital cardiac arrests. BIOMETRICAL JOURNAL, 62(4), 1105-1119 [10.1002/bimj.201900166].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/266191
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