Elucidating the spatially varying relation between cervical cancer and socio-economic conditions in England
Elucidating the spatially varying relation between cervical cancer and socio-economic conditions in England
Background
Geographically weighted Poisson regression (GWPR) was applied to the relation between cervical cancer disease incidence rates in England and socio-economic deprivation, social status and family structure covariates. Local parameters were estimated which describe the spatial variation in the relations between incidence and socio-economic covariates.
Results
A global (stationary) regression model revealed a significant correlation between cervical cancer incidence rates and social status. However, a local (non-stationary) GWPR model provided a better fit with less autocorrelation in the residuals. Moreover, the GWPR model was able to represent local variation in the relations between cervical cancer incidence and socio-economic covariates across space, whereas the global model represented only the overall (or average) relation for the whole of England. The global model could lead to misinterpretation of the relations between cervical cancer incidence and socio-economic covariates locally.
Conclusions
Cervical cancer incidence was shown to be highly correlated with spatially varying covariates that are available through national datasets. As a result, it was shown that if low social status sectors of the population are to be targeted preferentially, this targeting should be done on a region-by-region basis such as to optimize health outcomes. While such a strategy may be difficult to implement in practice, the research does highlight the inequalities inherent in a uniform intervention approach.
51-[17 pages]
Cheng, Edith M.Y.
527314dd-0f74-4d4e-85d6-56e5d3c04584
Atkinson, Peter M.
96e96579-56fe-424d-a21c-17b6eed13b0b
Shahani, Arjan K.
01f30d3f-6d62-4c19-8a3e-e4d223559dc7
26 September 2011
Cheng, Edith M.Y.
527314dd-0f74-4d4e-85d6-56e5d3c04584
Atkinson, Peter M.
96e96579-56fe-424d-a21c-17b6eed13b0b
Shahani, Arjan K.
01f30d3f-6d62-4c19-8a3e-e4d223559dc7
Cheng, Edith M.Y., Atkinson, Peter M. and Shahani, Arjan K.
(2011)
Elucidating the spatially varying relation between cervical cancer and socio-economic conditions in England.
International Journal of Health Geographics, 10 (1), .
(doi:10.1186/1476-072X-10-51).
(PMID:21943079)
Abstract
Background
Geographically weighted Poisson regression (GWPR) was applied to the relation between cervical cancer disease incidence rates in England and socio-economic deprivation, social status and family structure covariates. Local parameters were estimated which describe the spatial variation in the relations between incidence and socio-economic covariates.
Results
A global (stationary) regression model revealed a significant correlation between cervical cancer incidence rates and social status. However, a local (non-stationary) GWPR model provided a better fit with less autocorrelation in the residuals. Moreover, the GWPR model was able to represent local variation in the relations between cervical cancer incidence and socio-economic covariates across space, whereas the global model represented only the overall (or average) relation for the whole of England. The global model could lead to misinterpretation of the relations between cervical cancer incidence and socio-economic covariates locally.
Conclusions
Cervical cancer incidence was shown to be highly correlated with spatially varying covariates that are available through national datasets. As a result, it was shown that if low social status sectors of the population are to be targeted preferentially, this targeting should be done on a region-by-region basis such as to optimize health outcomes. While such a strategy may be difficult to implement in practice, the research does highlight the inequalities inherent in a uniform intervention approach.
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More information
Published date: 26 September 2011
Organisations:
Primary Care & Population Sciences
Identifiers
Local EPrints ID: 199017
URI: http://eprints.soton.ac.uk/id/eprint/199017
ISSN: 1476-072X
PURE UUID: bb82ce7d-c071-40b4-a344-e595f5585d7b
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Date deposited: 10 Oct 2011 16:00
Last modified: 15 Mar 2024 02:47
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Contributors
Author:
Edith M.Y. Cheng
Author:
Peter M. Atkinson
Author:
Arjan K. Shahani
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