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面向结构化健康数据的多样性感知匿名化。

Diversity-Aware Anonymization for Structured Health Data.

出版信息

Annu Int Conf IEEE Eng Med Biol Soc. 2021 Nov;2021:2148-2154. doi: 10.1109/EMBC46164.2021.9629918.

Abstract

Patients' health data are captured by local hospital facilities, which has the potential for data analysis. However, due to privacy and legal concerns, local hospital facilities are unable to share the data with others which makes it difficult to apply data analysis and machine learning techniques over the health data. Analysis of such data across hospitals can provide valuable information to health professionals. Anonymization methods offer privacy-preserving solutions for sharing data for analysis purposes. In this paper, we propose a novel method for anonymizing and sharing data that addresses the record-linkage and attribute-linkage attack models. Our proposed method achieves anonymity by formulating and solving this problem as a constrained optimization problem which is based on the k-anonymity, l-diversity, and t-closeness privacy models. The proposed method has been evaluated with respect to the utility and privacy of data after anonymization in comparison to the original data.

摘要

患者的健康数据由当地医院设施捕获,这些数据具有进行数据分析的潜力。然而,由于隐私和法律方面的考虑,当地医院设施无法与他人共享数据,这使得在健康数据上应用数据分析和机器学习技术变得困难。对跨医院的此类数据进行分析可以为医疗保健专业人员提供有价值的信息。匿名化方法为出于分析目的共享数据提供了隐私保护解决方案。在本文中,我们提出了一种新颖的方法,用于解决记录链接和属性链接攻击模型的匿名化和共享数据问题。我们的方法通过将此问题表述为基于 k-匿名性、l-多样性和 t-机密性隐私模型的约束优化问题来实现匿名化。与原始数据相比,我们对经过匿名化处理后的数据的实用性和隐私性进行了评估。

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