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A Context-sensitive Approach to Anonymizing Spatial Surveillance Data: Impact on Outbreak Detection

机译:对空间监视数据进行匿名处理的上下文相关方法:对爆发检测的影响

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摘要

>Objective: The use of spatially based methods and algorithms in epidemiology and surveillance presents privacy challenges for researchers and public health agencies. We describe a novel method for anonymizing individuals in public health data sets by transposing their spatial locations through a process informed by the underlying population density. Further, we measure the impact of the skew on detection of spatial clustering as measured by a spatial scanning statistic.>Design: Cases were emergency department (ED) visits for respiratory illness. Baseline ED visit data were injected with artificially created clusters ranging in magnitude, shape, and location. The geocoded locations were then transformed using a de-identification algorithm that accounts for the local underlying population density.>Measurements: A total of 12,600 separate weeks of case data with artificially created clusters were combined with control data and the impact on detection of spatial clustering identified by a spatial scan statistic was measured.>Results: The anonymization algorithm produced an expected skew of cases that resulted in high values of data set k-anonymity. De-identification that moves points an average distance of 0.25 km lowers the spatial cluster detection sensitivity by less than 4% and lowers the detection specificity less than 1%.>Conclusion: A population-density–based Gaussian spatial blurring markedly decreases the ability to identify individuals in a data set while only slightly decreasing the performance of a standardly used outbreak detection tool. These findings suggest new approaches to anonymizing data for spatial epidemiology and surveillance.
机译:>目标:在流行病学和监测中使用基于空间的方法和算法给研究人员和公共卫生机构带来了隐私挑战。我们描述了一种通过在潜在人口密度所告知的过程中转移空间位置来匿名化公共卫生数据集中个体的新颖方法。此外,我们通过空间扫描统计数据来测量偏斜对空间聚类检测的影响。>设计:病例为呼吸系统疾病的急诊科。在基线ED访问数据中注入了人工创建的大小,形状和位置不等的聚类。然后,使用说明本地基础人口密度的去识别算法对地理编码的位置进行转化。测量了对通过空间扫描统计量识别的空间聚类的影响。>结果:匿名算法产生了预期的偏斜情况,导致数据集k匿名值很高。移动点的平均距离为0.25 km的取消标识将使空间簇检测灵敏度降低不到4%,并使检测特异性降低不到1%。>结论:基于人口密度的高斯空间模糊明显降低了识别数据集中个体的能力,而仅稍微降低了标准使用的爆发检测工具的性能。这些发现提示了用于空间流行病学和监视的匿名数据的新方法。

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