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首页> 外文期刊>American Journal of Epidemiology >Protecting Confidentiality in Cancer Registry Data With Geographic Identifiers
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Protecting Confidentiality in Cancer Registry Data With Geographic Identifiers

机译:用地理标识符保护癌症注册数据中的机密性

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摘要

The National Cancer Institute's Surveillance, Epidemiology, and End Results Program releases research files of cancer registry data. These files include geographic information at the county level, but no finer. Access to finer geography, such as census tract identifiers, would enable richer analyses-for example, examination of health disparities across neighborhoods. To date, tract identifiers have been left off the research files because they could compromise the confidentiality of patients' identities. We present an approach to inclusion of tract identifiers based on multiply imputed, synthetic data. The idea is to build a predictive model of tract locations, given patient and tumor characteristics, and randomly simulate the tract of each patient by sampling from this model. For the predictive model, we use multivariate regression trees fitted to the latitude and longitude of the population centroid of each tract. We implement the approach in the registry data from California. The method results in synthetic data that reproduce a wide range (but not all) of analyses of census tract socioeconomic cancer disparities and have relatively low disclosure risks, which we assess by comparing individual patients' actual and synthetic tract locations. We conclude with a discussion of how synthetic data sets can be used by researchers with cancer registry data.
机译:国家癌症研究所的监测,流行病学和最终结果计划发布癌症注册表数据的研究档案。这些文件包括县级的地理信息,但没有更精细。获得更精细的地理学,例如人口普查局标识符,将使更丰富的分析 - 例如,跨社区的卫生差异检查。迄今为止,已经删除了课程标识符,因为它们可能会损害患者身份的机密性。我们提出了一种基于乘法算法的合成数据来包含截图标识符的方法。该想法是在给定患者和肿瘤特征的情况下建立一个患者和肿瘤特征的预测模型,并通过从该模型中抽样来随机模拟每位患者的道路。对于预测模型,我们使用拟合每个道路的人口质心的纬度和经度的多变量回归树。我们在加利福尼亚州的注册表数据中实施方法。该方法导致合成数据再现广泛(但不是全部)的人口普查社会经济癌症差异的分析,并且具有相对较低的披露风险,我们通过比较个体患者的实际和合成的道路。我们结束了讨论研究人员如何使用癌症注册表数据的合成数据集。

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