Ramis Rebeca, Gómez-Barroso Diana, López-Abente Gonzalo
Geospat Health. 2014 May;8(2):517-26. doi: 10.4081/gh.2014.41.
Cluster detection has become an important part of the agenda of epidemiologists and public health authorities, the identification of high- and low-risk areas is fundamental in the definition of public health strategies and in the suggestion of potential risks factors. Currently, there are different cluster detection techniques available, the most popular being those using windows to scan the areas within the studied region. However, when these areas are heterogeneous in populations' sizes, scan window methods can lead to inaccurate conclusions. In order to perform cluster detection over heterogeneously populated areas, we developed a method not based on scanning windows but instead on standard mortality ratios (SMR) using irregular spatial aggregation (ISA). Its extension, i.e. irregular spatial aggregation with covariates (ISAC), includes covariates with residuals from Poisson regression. We compared the performance of the method with the flexible shaped spatial scan statistic (FlexScan) using mortality data for stomach and bladder cancer for 8,098 Spanish towns. The results show a collection of clusters for stomach and bladder cancer similar to that detected by ISA and FlexScan. However, in general, clusters detected by FlexScan were bigger and include towns with SMR, which were not statistically significant. For bladder cancer, clusters detected by ISAC differed from those detected by ISA and FlexScan in shape and location. The ISA and ISAC methods could be an alternative to the traditional scan window methods for cluster detection over aggregated data when the areas under study are heterogeneous in terms of population. The simplicity and flexibility of the methods make them more attractive than methods based on more complicated algorithms.
聚类检测已成为流行病学家和公共卫生当局议程的重要组成部分,确定高风险和低风险区域是制定公共卫生策略以及提出潜在风险因素的基础。目前,有多种聚类检测技术可供使用,最常用的是使用窗口扫描研究区域内的区域。然而,当这些区域的人口规模存在差异时,扫描窗口方法可能会得出不准确的结论。为了在人口分布不均的地区进行聚类检测,我们开发了一种不基于扫描窗口,而是基于使用不规则空间聚集(ISA)的标准化死亡率(SMR)的方法。其扩展,即带协变量的不规则空间聚集(ISAC),包括来自泊松回归残差的协变量。我们使用西班牙8098个城镇的胃癌和膀胱癌死亡率数据,将该方法的性能与灵活形状空间扫描统计量(FlexScan)进行了比较。结果显示,胃癌和膀胱癌的聚类集合与ISA和FlexScan检测到的相似。然而,总体而言,FlexScan检测到的聚类更大,并且包括标准化死亡率无统计学意义的城镇。对于膀胱癌,ISAC检测到的聚类在形状和位置上与ISA和FlexScan检测到的不同。当研究区域在人口方面存在差异时,ISA和ISAC方法可以作为传统扫描窗口方法的替代方法,用于对汇总数据进行聚类检测。这些方法的简单性和灵活性使其比基于更复杂算法的方法更具吸引力。