预测:在直接面向消费者的模式下,有效的私人疾病敏感性测试

Chibuike Ugwuoke, Z. Erkin, M. Reinders, R. Lagendijk
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引用次数: 0

摘要

基因组测序技术在过去十年发展迅速,使得任何人都可以更容易地从Helix、MyHeritage和23andMe等公司获得低成本的数字基因组。公司现在在没有医疗机构干预的情况下以直接面向消费者(DTC)的模式提供服务。从而为人们提供亲子鉴定、血统检测和疾病易感性检测(DST)的直接服务,推断疾病的易感性。基因组分析在一定程度上是出于好奇心,人们通常希望参与其中,而不必担心隐私受到侵犯。现有的DST隐私保护解决方案采用加密技术来保护患者的基因组不被负责计算分析的一方获取。这些技术包括同态加密,这在计算上是昂贵的,并且可能需要几分钟的时间来处理几个单核苷酸多态性(snp)。一种主要的方法是在加密数据上计算DST的解决方案,但是这种设计依赖于医疗单位,并将患者的测试结果暴露给医疗单位,使得这种设计对注重隐私的个人来说不舒服。因此,具有DTC服务的高效隐私保护DST解决方案是相关的。我们提出了一种新的DTC模型,该模型可以保护snp的隐私,并防止测试结果泄露给除基因组所有者以外的任何其他方。相反,我们保护基因组分析公司使用的算法或商业秘密的隐私。我们的工作在计算DST时使用了一种安全的混淆技术,消除了对加密数据的昂贵计算。我们的方法在运行时显著优于现有的最先进的解决方案,并且在相同的安全级别上呈线性扩展。例如,在商用硬件上计算10,000个snp的DST大约需要96毫秒。通过这种高效且保护隐私的解决方案,同时也是基于模拟的安全解决方案,我们为在集体共享的数据资源上执行基因组分析打开了可能性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PREDICT: Efficient Private Disease Susceptibility Testing in Direct-to-Consumer Model
Genome sequencing has rapidly advanced in the last decade, making it easier for anyone to obtain digital genomes at low costs from companies such as Helix, MyHeritage, and 23andMe. Companies now offer their services in a direct-to-consumer (DTC) model without the intervention of a medical institution. Thereby, providing people with direct services for paternity testing, ancestry testing and disease susceptibility testing (DST) to infer diseases' predisposition. Genome analyses are partly motivated by curiosity and people often want to partake without fear of privacy invasion. Existing privacy protection solutions for DST adopt cryptographic techniques to protect the genome of a patient from the party responsible for computing the analysis. Said techniques include homomorphic encryption, which can be computationally expensive and could take minutes for only a few single-nucleotide polymorphisms (SNPs). A predominant approach is a solution that computes DST over encrypted data, but the design depends on a medical unit and exposes test results of patients to the medical unit, making the design uncomfortable for privacy-aware individuals. Hence it is pertinent to have an efficient privacy-preserving DST solution with a DTC service. We propose a novel DTC model that protects the privacy of SNPs and prevents leakage of test results to any other party save for the genome owner. Conversely, we protect the privacy of the algorithms or trade secrets used by the genome analyzing companies. Our work utilizes a secure obfuscation technique in computing DST, eliminating expensive computations over encrypted data. Our approach significantly outperforms existing state-of-the-art solutions in runtime and scales linearly for equivalent levels of security. As an example, computing DST for 10,000 SNPs requires approximately 96 milliseconds on commodity hardware. With this efficient and privacy-preserving solution which is also simulation-based secure, we open possibilities for performing genome analyses on collectively shared data resources.
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