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Examining the impact of the number of regions used in cluster detection methods: An application to childhood asthma visits to a hospital in Manitoba, Canada

机译:研究簇检测方法中使用的区域数量的影响:加拿大马尼托巴省一家医院对儿童哮喘病诊治的应用

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The level of spatial aggregation is a major concern in cluster investigations. Combining regions to protect privacy may result in a loss of power and thus, can limit the information researchers can obtain. The impact of spatial aggregation on the ability to detect clusters is examined in this study, which shows the importance of choosing the correct level of spatial aggregation in cluster investigations. We applied the circular spatial scan statistic (CSS), flexible spatial scan statistic (FSS) and Bayesian disease mapping (BYM) approaches to a dataset containing childhood asthma visits to a hospital in Manitoba, Canada, using three different levels of spatial aggregation. Specifically, we used 56, 67 and 220 regions in the analysis, respectively. It is expected that the three scenarios will yield different results and will highlight the importance of using the right level of spatial aggregation. The three methods (CSS, FSS, BYM) examined in this study performed similarly when detecting potential clusters. However, for different levels of spatial aggregation, the potential clusters identified were different. As the number of regions used in the analysis increased, the total area identified in the cluster decreased. In general, potential clusters were identified in the central and northern parts of Manitoba. Overall, it is crucial to identify the appropriate number of regions to study spatial patterns of disease as it directly affects the results and consequently the conclusions. Additional investigation through future work is needed to determine which scenario of spatial aggregation is best.
机译:空间聚集的水平是聚类研究的主要关注点。组合区域以保护隐私可能会导致断电,因此可能会限制研究人员获得的信息。本研究考察了空间聚集对检测聚类能力的影响,这表明在聚类研究中选择正确水平的空间聚集的重要性。我们使用三种不同的空间聚合水平,将循环空间扫描统计(CSS),灵活空间扫描统计(FSS)和贝叶斯疾病映射(BYM)方法应用于包含儿童哮喘就诊到加拿大马尼托巴省一家医院的数据集。具体来说,我们在分析中分别使用了56、67和220个区域。预计这三种情况将产生不同的结果,并将突出显示使用正确级别的空间聚合的重要性。本研究中研究的三种方法(CSS,FSS,BYM)在检测潜在簇时的执行效果相似。但是,对于不同级别的空间聚集,识别出的潜在簇是不同的。随着分析中使用的区域数量的增加,在群集中识别出的总面积减少了。通常,在曼尼托巴省的中部和北部发现了潜在的集群。总体而言,至关重要的是要确定适当数量的区域以研究疾病的空间格局,因为它直接影响结果并因此影响结论。需要通过未来的工作进行进一步的调查,以确定哪种空间聚集方案是最佳的。

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