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Geostatistical analysis of disease data: estimation of cancer mortality risk from empirical frequencies using Poisson kriging

BACKGROUND: Cancer mortality maps are used by public health officials to identify areas of excess and to guide surveillance and control activities. Quality of decision-making thus relies on an accurate quantification of risks from observed rates which can be very unreliable when computed from sparse...

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Autor principal: Goovaerts, Pierre
Formato: Texto
Lenguaje:English
Publicado: BioMed Central 2005
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1360096/
https://www.ncbi.nlm.nih.gov/pubmed/16354294
http://dx.doi.org/10.1186/1476-072X-4-31
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author Goovaerts, Pierre
author_facet Goovaerts, Pierre
author_sort Goovaerts, Pierre
collection PubMed
description BACKGROUND: Cancer mortality maps are used by public health officials to identify areas of excess and to guide surveillance and control activities. Quality of decision-making thus relies on an accurate quantification of risks from observed rates which can be very unreliable when computed from sparsely populated geographical units or recorded for minority populations. This paper presents a geostatistical methodology that accounts for spatially varying population sizes and spatial patterns in the processing of cancer mortality data. Simulation studies are conducted to compare the performances of Poisson kriging to a few simple smoothers (i.e. population-weighted estimators and empirical Bayes smoothers) under different scenarios for the disease frequency, the population size, and the spatial pattern of risk. A public-domain executable with example datasets is provided. RESULTS: The analysis of age-adjusted mortality rates for breast and cervix cancers illustrated some key features of commonly used smoothing techniques. Because of the small weight assigned to the rate observed over the entity being smoothed (kernel weight), the population-weighted average leads to risk maps that show little variability. Other techniques assign larger and similar kernel weights but they use a different piece of auxiliary information in the prediction: global or local means for global or local empirical Bayes smoothers, and spatial combination of surrounding rates for the geostatistical estimator. Simulation studies indicated that Poisson kriging outperforms other approaches for most scenarios, with a clear benefit when the risk values are spatially correlated. Global empirical Bayes smoothers provide more accurate predictions under the least frequent scenario of spatially random risk. CONCLUSION: The approach presented in this paper enables researchers to incorporate the pattern of spatial dependence of mortality rates into the mapping of risk values and the quantification of the associated uncertainty, while being easier to implement than a full Bayesian model. The availability of a public-domain executable makes the geostatistical analysis of health data, and its comparison to traditional smoothers, more accessible to common users. In future papers this methodology will be generalized to the simulation of the spatial distribution of risk values and the propagation of the uncertainty attached to predicted risks in local cluster analysis.
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spelling pubmed-13600962006-02-02 Geostatistical analysis of disease data: estimation of cancer mortality risk from empirical frequencies using Poisson kriging Goovaerts, Pierre Int J Health Geogr Methodology BACKGROUND: Cancer mortality maps are used by public health officials to identify areas of excess and to guide surveillance and control activities. Quality of decision-making thus relies on an accurate quantification of risks from observed rates which can be very unreliable when computed from sparsely populated geographical units or recorded for minority populations. This paper presents a geostatistical methodology that accounts for spatially varying population sizes and spatial patterns in the processing of cancer mortality data. Simulation studies are conducted to compare the performances of Poisson kriging to a few simple smoothers (i.e. population-weighted estimators and empirical Bayes smoothers) under different scenarios for the disease frequency, the population size, and the spatial pattern of risk. A public-domain executable with example datasets is provided. RESULTS: The analysis of age-adjusted mortality rates for breast and cervix cancers illustrated some key features of commonly used smoothing techniques. Because of the small weight assigned to the rate observed over the entity being smoothed (kernel weight), the population-weighted average leads to risk maps that show little variability. Other techniques assign larger and similar kernel weights but they use a different piece of auxiliary information in the prediction: global or local means for global or local empirical Bayes smoothers, and spatial combination of surrounding rates for the geostatistical estimator. Simulation studies indicated that Poisson kriging outperforms other approaches for most scenarios, with a clear benefit when the risk values are spatially correlated. Global empirical Bayes smoothers provide more accurate predictions under the least frequent scenario of spatially random risk. CONCLUSION: The approach presented in this paper enables researchers to incorporate the pattern of spatial dependence of mortality rates into the mapping of risk values and the quantification of the associated uncertainty, while being easier to implement than a full Bayesian model. The availability of a public-domain executable makes the geostatistical analysis of health data, and its comparison to traditional smoothers, more accessible to common users. In future papers this methodology will be generalized to the simulation of the spatial distribution of risk values and the propagation of the uncertainty attached to predicted risks in local cluster analysis. BioMed Central 2005-12-14 /pmc/articles/PMC1360096/ /pubmed/16354294 http://dx.doi.org/10.1186/1476-072X-4-31 Text en Copyright © 2005 Goovaerts; licensee BioMed Central Ltd. http://creativecommons.org/licenses/by/2.0 This is an Open Access article distributed under the terms of the Creative Commons Attribution License ( (http://creativecommons.org/licenses/by/2.0) ), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Methodology
Goovaerts, Pierre
Geostatistical analysis of disease data: estimation of cancer mortality risk from empirical frequencies using Poisson kriging
title Geostatistical analysis of disease data: estimation of cancer mortality risk from empirical frequencies using Poisson kriging
title_full Geostatistical analysis of disease data: estimation of cancer mortality risk from empirical frequencies using Poisson kriging
title_fullStr Geostatistical analysis of disease data: estimation of cancer mortality risk from empirical frequencies using Poisson kriging
title_full_unstemmed Geostatistical analysis of disease data: estimation of cancer mortality risk from empirical frequencies using Poisson kriging
title_short Geostatistical analysis of disease data: estimation of cancer mortality risk from empirical frequencies using Poisson kriging
title_sort geostatistical analysis of disease data: estimation of cancer mortality risk from empirical frequencies using poisson kriging
topic Methodology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC1360096/
https://www.ncbi.nlm.nih.gov/pubmed/16354294
http://dx.doi.org/10.1186/1476-072X-4-31
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