Preserving Genomic Privacy via Selective Sharing.

Emre Yilmaz, Tianxi Ji, Erman Ayday, Pan Li
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Abstract

Although genomic data has significant impact and widespread usage in medical research, it puts individuals' privacy in danger, even if they anonymously or partially share their genomic data. To address this problem, we present a framework that is inspired from differential privacy for sharing individuals' genomic data while preserving their privacy. We assume an individual with some sensitive portion on her genome (e.g., mutations or single nucleotide polymorphisms - SNPs that reveal sensitive information about the individual) that she does not want to share. The goals of the individual are to (i) preserve the privacy of her sensitive data (considering the correlations between the sensitive and non-sensitive part), (ii) preserve the privacy of interdependent data (data that belongs to other individuals that is correlated with her data), and (iii) share as much non-sensitive data as possible to maximize utility of data sharing. As opposed to traditional differential privacy-based data sharing schemes, the proposed scheme does not intentionally add noise to data; it is based on selective sharing of data points. We observe that traditional differential privacy concept does not capture sharing data in such a setting, and hence we first introduce a privacy notation, ϵ-indirect privacy, that addresses data sharing in such settings. We show that the proposed framework does not provide sensitive information to the attacker while it provides a high data sharing utility. We also compare the proposed technique with the previous ones and show our advantage both in terms of privacy and data sharing utility.

通过选择性共享保护基因组隐私。
虽然基因组数据在医学研究中具有重大影响和广泛应用,但它会危及个人隐私,即使他们匿名或部分共享其基因组数据也是如此。为了解决这个问题,我们提出了一个框架,该框架的灵感来自于在共享个人基因组数据的同时保护个人隐私的差分隐私。我们假设一个人的基因组中有一些敏感部分(如突变或单核苷酸多态性--SNPs,可揭示个人的敏感信息)是她不想共享的。个人的目标是:(i) 保护其敏感数据的隐私(考虑敏感和非敏感部分之间的相关性),(ii) 保护相互依存数据(属于其他个人并与她的数据相关的数据)的隐私,(iii) 尽可能多地共享非敏感数据,以实现数据共享效用的最大化。与传统的基于差分隐私的数据共享方案不同,所提出的方案不会故意给数据添加噪音,而是基于数据点的选择性共享。我们发现,传统的差分隐私概念无法捕捉到这种情况下的数据共享,因此我们首先引入了一种隐私符号--ϵ-间接隐私,以解决这种情况下的数据共享问题。我们证明,所提出的框架不会向攻击者提供敏感信息,同时还能提供较高的数据共享效用。我们还将提出的技术与之前的技术进行了比较,并展示了我们在隐私和数据共享效用方面的优势。
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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