The Role of Inference in the Anonymization of Medical Records

Athanasios Zigomitros, A. Solanas, C. Patsakis
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引用次数: 6

Abstract

The quality of life has been significantly improved and one of the main reasons is the medical advances of the past decades. Nevertheless, to further advance the research and services in the field, practitioners, researchers and health organizations should share more information. While this need is indisputable, the sensitivity of the information demands that it is preprocessed, so that the published data are anonym zed and individuals cannot be identified. The scope of this work is to highlight the difficulties in providing automated anonymization approaches for medical records without consulting experts in the field. One of the major problems that is going to be highlighted is that Quasi-Identifiers (QI) are not independent. It is well known that combinations of QIs can be used to infer other relevant information. Nevertheless, this work tries to exploit the other way of information flow, we show how sensitive attributes can be exploited to derive information about the QIs, leading to many privacy hazards for the patients whose records are shared. To this extent, we illustrate some relevant examples and discuss probable counter-measures.
推理在病历匿名化中的作用
生活质量已经显著提高,其中一个主要原因是过去几十年医学的进步。然而,为了进一步推进该领域的研究和服务,从业人员、研究人员和卫生组织应该分享更多的信息。虽然这种需求是无可争辩的,但信息的敏感性要求对其进行预处理,从而使发布的数据匿名化,个人无法识别。这项工作的范围是强调在没有咨询该领域专家的情况下为医疗记录提供自动匿名化方法的困难。将要强调的一个主要问题是准标识符(QI)不是独立的。众所周知,QIs的组合可以用来推断其他相关信息。然而,这项工作试图利用信息流的另一种方式,我们展示了如何利用敏感属性来获取有关QIs的信息,从而导致其记录被共享的患者面临许多隐私风险。在这种程度上,我们举例说明了一些相关的例子,并讨论了可能的对策。
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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