Out-of-hospital cardiac arrest in the home: Can area characteristics identify at-risk communities in the Republic of Ireland?
Abstract Background Internationally, the majority of out-of-hospital cardiac arrests where resuscitation is attempted (OHCAs) occur in private residential locations i.e. at home. The prospect of survival for this patient group is universally dismal. Understanding of the area-level factors that affec...
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doaj-fbd877ca55dc4388ab3e5eaff8a19f3e2020-11-25T00:36:09ZengBMCInternational Journal of Health Geographics1476-072X2018-02-0117111110.1186/s12942-018-0126-zOut-of-hospital cardiac arrest in the home: Can area characteristics identify at-risk communities in the Republic of Ireland?Siobhán Masterson0Conor Teljeur1John Cullinan2Andrew W. Murphy3Conor Deasy4Akke Vellinga5School of Medicine, National University of Ireland GalwayPublic Health and Primary Care, Trinity CollegeSchool of Business and Economics, National University of Ireland GalwaySchool of Medicine, National University of Ireland GalwayNational Ambulance ServiceSchool of Medicine, National University of Ireland GalwayAbstract Background Internationally, the majority of out-of-hospital cardiac arrests where resuscitation is attempted (OHCAs) occur in private residential locations i.e. at home. The prospect of survival for this patient group is universally dismal. Understanding of the area-level factors that affect the incidence of OHCA at home may help national health planners when implementing community resuscitation training and services. Methods We performed spatial smoothing using Bayesian conditional autoregression on case data from the Irish OHCA register. We further corrected for correlated findings using area level variables extracted and constructed for national census data. Results We found that increasing deprivation was associated with increased case incidence. The methodology used also enabled us to identify specific areas with higher than expected case incidence. Conclusions Our study demonstrates novel use of Bayesian conditional autoregression in quantifying area level risk of a health event with high mortality across an entire country with a diverse settlement pattern. It adds to the evidence that the likelihood of OHCA resuscitation events is associated with greater deprivation and suggests that area deprivation should be considered when planning resuscitation services. Finally, our study demonstrates the utility of Bayesian conditional autoregression as a methodological approach that could be applied in any country using registry data and area level census data.http://link.springer.com/article/10.1186/s12942-018-0126-zOut-of-hospital cardiac arrestResuscitationDeprivationResidential characteristicsSpatial smoothingConditional autoregression |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Siobhán Masterson Conor Teljeur John Cullinan Andrew W. Murphy Conor Deasy Akke Vellinga |
spellingShingle |
Siobhán Masterson Conor Teljeur John Cullinan Andrew W. Murphy Conor Deasy Akke Vellinga Out-of-hospital cardiac arrest in the home: Can area characteristics identify at-risk communities in the Republic of Ireland? International Journal of Health Geographics Out-of-hospital cardiac arrest Resuscitation Deprivation Residential characteristics Spatial smoothing Conditional autoregression |
author_facet |
Siobhán Masterson Conor Teljeur John Cullinan Andrew W. Murphy Conor Deasy Akke Vellinga |
author_sort |
Siobhán Masterson |
title |
Out-of-hospital cardiac arrest in the home: Can area characteristics identify at-risk communities in the Republic of Ireland? |
title_short |
Out-of-hospital cardiac arrest in the home: Can area characteristics identify at-risk communities in the Republic of Ireland? |
title_full |
Out-of-hospital cardiac arrest in the home: Can area characteristics identify at-risk communities in the Republic of Ireland? |
title_fullStr |
Out-of-hospital cardiac arrest in the home: Can area characteristics identify at-risk communities in the Republic of Ireland? |
title_full_unstemmed |
Out-of-hospital cardiac arrest in the home: Can area characteristics identify at-risk communities in the Republic of Ireland? |
title_sort |
out-of-hospital cardiac arrest in the home: can area characteristics identify at-risk communities in the republic of ireland? |
publisher |
BMC |
series |
International Journal of Health Geographics |
issn |
1476-072X |
publishDate |
2018-02-01 |
description |
Abstract Background Internationally, the majority of out-of-hospital cardiac arrests where resuscitation is attempted (OHCAs) occur in private residential locations i.e. at home. The prospect of survival for this patient group is universally dismal. Understanding of the area-level factors that affect the incidence of OHCA at home may help national health planners when implementing community resuscitation training and services. Methods We performed spatial smoothing using Bayesian conditional autoregression on case data from the Irish OHCA register. We further corrected for correlated findings using area level variables extracted and constructed for national census data. Results We found that increasing deprivation was associated with increased case incidence. The methodology used also enabled us to identify specific areas with higher than expected case incidence. Conclusions Our study demonstrates novel use of Bayesian conditional autoregression in quantifying area level risk of a health event with high mortality across an entire country with a diverse settlement pattern. It adds to the evidence that the likelihood of OHCA resuscitation events is associated with greater deprivation and suggests that area deprivation should be considered when planning resuscitation services. Finally, our study demonstrates the utility of Bayesian conditional autoregression as a methodological approach that could be applied in any country using registry data and area level census data. |
topic |
Out-of-hospital cardiac arrest Resuscitation Deprivation Residential characteristics Spatial smoothing Conditional autoregression |
url |
http://link.springer.com/article/10.1186/s12942-018-0126-z |
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