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首页> 外文期刊>International Journal of Health Geographics >A linear programming model for preserving privacy when disclosing patient spatial information for secondary purposes
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A linear programming model for preserving privacy when disclosing patient spatial information for secondary purposes

机译:线性规划模型,用于在出于次要目的披露患者空间信息时保护隐私

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Background A linear programming (LP) model was proposed to create de-identified data sets that maximally include spatial detail (e.g., geocodes such as ZIP or postal codes, census blocks, and locations on maps) while complying with the HIPAA Privacy Rule鈥檚 Expert Determination method, i.e., ensuring that the risk of re-identification is very small. The LP model determines the transition probability from an original location of a patient to a new randomized location. However, it has a limitation for the cases of areas with a small population (e.g., median of 10 people in a ZIP code). Methods We extend the previous LP model to accommodate the cases of a smaller population in some locations, while creating de-identified patient spatial data sets which ensure the risk of re-identification is very small. Results Our LP model was applied to a data set of 11,740 postal codes in the City of Ottawa, Canada. On this data set we demonstrated the limitations of the previous LP model, in that it produces improbable results, and showed how our extensions to deal with small areas allows the de-identification of the whole data set. Conclusions The LP model described in this study can be used to de-identify geospatial information for areas with small populations with minimal distortion to postal codes. Our LP model can be extended to include other information, such as age and gender.
机译:背景技术提出了一种线性规划(LP)模型,以创建去识别的数据集,该数据集最大程度地包含空间细节(例如,邮政编码或邮政编码,邮政编码,人口普查区块和地图上的位置等地理编码),同时遵守HIPAA隐私规则”专家确定方法,即确保重新识别的风险非常小。 LP模型确定从患者原始位置到新的随机位置的转移概率。但是,对于人口少的地区(例如,邮政编码中的10个人的中位数)的情况存在限制。方法我们扩展了以前的LP模型,以适应某些地区人口较少的情况,同时创建了身份不明的患者空间数据集,以确保重新识别的风险很小。结果我们的LP模型应用于加拿大渥太华市的11,740个邮政编码的数据集。在此数据集上,我们证明了以前的LP模型的局限性,因为它产生了难以置信的结果,并说明了我们处理小区域的扩展如何取消对整个数据集的标识。结论本研究中描述的LP模型可用于对人口少的地区进行地理空间信息识别,而对邮政编码的失真最小。我们的LP模型可以扩展为包括其他信息,例如年龄和性别。

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