Interpreting posterior relative risk estimates in disease-mapping studies

被引:408
作者
Richardson, S [1 ]
Thomson, A [1 ]
Best, N [1 ]
Elliott, P [1 ]
机构
[1] Univ London Imperial Coll Sci Technol & Med, Fac Med, Dept Epidemiol & Publ Hlth, Small Area Hlth Stat Unit, London W2 1PG, England
关键词
Bayesian hierarchical models; cancer mapping; enviromental epidemiology; sensitivity; small-area studies; spatial smoothing; specificity;
D O I
10.1289/ehp.6740
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
There is currently much interest in conducting spatial analyses of health outcomes at the small-area scale. This requires sophisticated statistical techniques, usually involving Bayesian models, to smooth the underlying risk estimates because the data are typically sparse. However, questions have been raised about the performance of these models for recovering the "true" risk surface, about the influence of the prior structure specified, and about the amount of smoothing of the risks that is actually performed. We describe a comprehensive simulation study designed to address these questions. Our results show that Bayesian disease-mapping models are essentially conservative, with high specificity even in situations with very sparse data but low sensitivity if the raised-risk areas have only a moderate (< 2-fold) excess or are not based on substantial expected counts (> 50 per area). Semiparametric spatial mixture models typically produce less smoothing than their conditional autoregressive counterpart when there is sufficient information in the data (moderate-size expected count and/or high true excess risk). Sensitivity may be improved by exploiting the whole posterior distribution to try to detect true raised-risk areas rather than just reporting and mapping the mean posterior relative risk. For the widely used conditional autoregressive model, we show that a decision rule based on computing the probability that the relative risk is above 1 with a cutoff between 70 and 80% gives a specific rule with reasonable sensitivity for a range of scenarios having moderate expected counts (similar to20) and excess risks (similar to1.5- to 2-fold). Larger (3-fold) excess risks are detected almost certainly using this rule, even when based on small expected counts, although the mean of the posterior distribution is typically smoothed to about half the true value. Key words: Bayesian hierarchical models, cancer mapping, environmental epidemiology, sensitivity, small-area studies, spatial smoothing, specificity.
引用
收藏
页码:1016 / 1025
页数:10
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