调和基因组学中的效用与隐私

Mathias Humbert, Erman Ayday, J. Hubaux, A. Telenti
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引用次数: 38

摘要

直接面向消费者的基因检测使每个人都有可能了解自己的基因组序列。为了对医学研究做出贡献,越来越多的人在网上发布他们的基因组数据,有时是用他们的真实身份。然而,这不仅与他们自己的隐私不一致,也与他们亲戚的隐私不一致。亲属的基因组高度相关,一些家庭成员可能会反对透露任何家庭的基因组数据。在本文中,我们研究了基因组学中效用和隐私之间的权衡。我们专注于最相关的变异,即单核苷酸多态性(snp)。我们考虑到这样一个事实,即一个人的snp包含有关他的家庭成员的snp的信息,snp是相互关联的。此外,我们假设snp在医学研究中有不同的用途,对个体有不同程度的敏感性。我们提出了一种模糊机制,使基因组数据能够公开用于研究,同时保护家庭中个人的基因组隐私。我们的基因组隐私保护机制依赖于组合优化和图形模型来优化效用和满足隐私要求。我们还提出了优化算法的扩展,以处理由snp之间的相关性引起的非线性约束。实验结果表明,该方法在满足家庭成员隐私约束的前提下,使基因组研究的效用最大化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reconciling Utility with Privacy in Genomics
Direct-to-consumer genetic testing makes it possible for everyone to learn their genome sequences. In order to contribute to medical research, a growing number of people publish their genomic data on the Web, sometimes under their real identities. However, this is at odds not only with their own privacy but also with the privacy of their relatives. The genomes of relatives being highly correlated, some family members might be opposed to revealing any of the family's genomic data. In this paper, we study the trade-off between utility and privacy in genomics. We focus on the most relevant kind of variants, namely single nucleotide polymorphisms (SNPs). We take into account the fact that the SNPs of an individual contain information about the SNPs of his family members and that SNPs are correlated with each other. Furthermore, we assume that SNPs can have different utilities in medical research and different levels of sensitivity for individuals. We propose an obfuscation mechanism that enables the genomic data to be publicly available for research, while protecting the genomic privacy of the individuals in a family. Our genomic-privacy preserving mechanism relies upon combinatorial optimization and graphical models to optimize utility and meet privacy requirements. We also present an extension of the optimization algorithm to cope with the non-linear constraints induced by the correlations between SNPs. Our results on real data show that our proposed technique maximizes the utility for genomic research and satisfies family members' privacy constraints.
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