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Using Gini coefficient to determining optimal cluster reporting sizes for spatial scan statistics

机译:使用基尼系数确定用于空间扫描统计的最佳聚类报告大小

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摘要

BackgroundSpatial and space–time scan statistics are widely used in disease surveillance to identify geographical areas of elevated disease risk and for the early detection of disease outbreaks. With a scan statistic, a scanning window of variable location and size moves across the map to evaluate thousands of overlapping windows as potential clusters, adjusting for the multiple testing. Almost always, the method will find many very similar overlapping clusters, and it is not useful to report all of them. This paper proposes to use the Gini coefficient to help select which of the many overlapping clusters to report.
机译:背景技术时空扫描统计数据已广泛用于疾病监测,以识别疾病风险升高的地理区域,以及及早发现疾病暴发。利用扫描统计信息,位置和大小可变的扫描窗口将在整个地图上移动,以评估成千上万个重叠的窗口作为潜在的簇,从而针对多次测试进行调整。几乎总是,该方法将找到许多非常相似的重叠群集,并且报告所有这些群集都没有用。本文建议使用基尼系数来帮助选择要报告的多个重叠聚类中的哪个。

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