Guaranteeing anonymity when sharing medical data, the Datafly System.

L Sweeney
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引用次数: 0

Abstract

We present a computer program named Datafly that maintains anonymity in medical data by automatically generalizing, substituting, and removing information as appropriate without losing many of the details found within the data. Decisions are made at the field and record level at the time of database access, so the approach can be used on the fly in role-based security within an institution, and in batch mode for exporting data from an institution. Often organizations release and receive medical data with all explicit identifiers, such as name, address and phone number, removed in the incorrect belief that patient confidentiality is maintained because the resulting data look anonymous; however, we show the remaining data can often be used to re-identify individuals by linking or matching the data to other databases or by looking at unique characteristics found in the fields and records of the database itself. When these less apparent aspects are taken into account, each released record can be made to ambiguously map to many possible people, providing a level of anonymity determined by the user.

在共享医疗数据时保证匿名,Datafly系统。
我们提出了一个名为Datafly的计算机程序,它通过自动泛化、替换和删除适当的信息来保持医疗数据中的匿名性,而不会丢失数据中的许多细节。决策是在数据库访问时在字段和记录级别做出的,因此该方法可以在机构内基于角色的安全性中动态使用,也可以在批处理模式中用于从机构导出数据。组织发布和接收的医疗数据通常带有所有显式标识符(如姓名、地址和电话号码),这些标识符被删除,错误地认为,由于结果数据看起来是匿名的,因此保持了患者的机密性;然而,我们表明,通过将数据链接或匹配到其他数据库,或者通过查看数据库本身的字段和记录中发现的独特特征,通常可以使用剩余的数据来重新识别个人。当考虑到这些不太明显的方面时,每个发布的记录都可以含糊地映射到许多可能的人,从而提供由用户决定的匿名级别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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