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Impact of socioeconomic inequalities on geographic disparities in cancer incidence: comparison of methods for spatial disease mapping

机译:社会经济不平等对癌症发病率地理差异的影响:空间疾病作图方法的比较

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Background The reliability of spatial statistics is often put into question because real spatial variations may not be found, especially in heterogeneous areas. Our objective was to compare empirically different cluster detection methods. We assessed their ability to find spatial clusters of cancer cases and evaluated the impact of the socioeconomic status (e.g., the Townsend index) on cancer incidence. Methods Moran’s I, the empirical Bayes index (EBI), and Potthoff-Whittinghill test were used to investigate the general clustering. The local cluster detection methods were: i) the spatial oblique decision tree (SpODT); ii) the spatial scan statistic of Kulldorff (SaTScan); and, iii) the hierarchical Bayesian spatial modeling (HBSM) in a univariate and multivariate setting. These methods were used with and without introducing the Townsend index of socioeconomic deprivation known to be related to the distribution of cancer incidence. Incidence data stemmed from the Cancer Registry of Isère and were limited to prostate, lung, colon-rectum, and bladder cancers diagnosed between 1999 and 2007 in men only. Results The study found a spatial heterogeneity ( p 1.2). The multivariate HBSM found a spatial correlation between lung and bladder cancers ( r =?0.6). Conclusions In spatial analysis of cancer incidence, SpODT and HBSM may be used not only for cluster detection but also for searching for confounding or etiological factors in small areas. Moreover, the multivariate HBSM offers a flexible and meaningful modeling of spatial variations; it shows plausible previously unknown associations between various cancers.
机译:背景技术空间统计的可靠性经常受到质疑,因为可能找不到真正的空间变化,尤其是在异质区域。我们的目标是比较经验上不同的聚类检测方法。我们评估了他们发现癌症病例空间集群的能力,并评估了社会经济状况(例如汤森指数)对癌症发病率的影响。方法使用Moran I,经验贝叶斯指数(EBI)和Potthoff-Whittinghill检验来研究一般聚类。局部聚类检测方法是:i)空间倾斜决策树(SpODT); ii)Kulldorff的空间扫描统计量(SaTScan); iii)单变量和多变量设置中的分层贝叶斯空间建模(HBSM)。不论是否引入与癌症发病率分布有关的社会经济剥夺的汤森指数,都使用了这些方法。发病率数据来自伊泽尔省癌症登记处,仅限于1999年至2007年之间在男性中诊断出的前列腺癌,肺癌,结肠直肠癌和膀胱癌。结果研究发现空间异质性(p 1.2)。多元HBSM发现肺癌和膀胱癌之间存在空间相关性(r =?0.6)。结论在癌症发病率的空间分析中,SpODT和HBSM不仅可以用于聚类检测,还可以用于寻找小区域的混杂因素或病因。此外,多元HBSM为空间变化提供了灵活而有意义的建模。它显示了各种癌症之间可能存在的先前未知的关联。

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