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Privacy-preserving genome-wide association studies on cloud environment using fully homomorphic encryption

机译:使用完全同态加密的云环境下保护隐私的全基因组关联研究

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Objective Developed sequencing techniques are yielding large-scale genomic data at low cost. A genome-wide association study (GWAS) targeting genetic variations that are significantly associated with a particular disease offers great potential for medical improvement. However, subjects who volunteer their genomic data expose themselves to the risk of privacy invasion; these privacy concerns prevent efficient genomic data sharing. Our goal is to presents a cryptographic solution to this problem. Methods To maintain the privacy of subjects, we propose encryption of all genotype and phenotype data. To allow the cloud to perform meaningful computation in relation to the encrypted data, we use a fully homomorphic encryption scheme. Noting that we can evaluate typical statistics for GWAS from a frequency table, our solution evaluates frequency tables with encrypted genomic and clinical data as input. We propose to use a packing technique for efficient evaluation of these frequency tables. Results Our solution supports evaluation of the D′ measure of linkage disequilibrium, the Hardy-Weinberg Equilibrium, the χ 2 test, etc. In this paper, we take χ 2 test and linkage disequilibrium as examples and demonstrate how we can conduct these algorithms securely and efficiently in an outsourcing setting. We demonstrate with experimentation that secure outsourcing computation of one χ 2 test with 10, 000 subjects requires about 35 ms and evaluation of one linkage disequilibrium with 10, 000 subjects requires about 80 ms. Conclusions With appropriate encoding and packing technique, cryptographic solutions based on fully homomorphic encryption for secure computations of GWAS can be practical.
机译:目的开发的测序技术可以低成本生成大量的基因组数据。针对与特定疾病显着相关的遗传变异的全基因组关联研究(GWAS)具有巨大的医学改良潜力。但是,自愿提供基因组数据的受试者可能会遭受隐私侵犯的风险。这些隐私问题妨碍了有效的基因组数据共享。我们的目标是提出针对此问题的密码解决方案。方法为了保护受试者的隐私,我们建议对所有基因型和表型数据进行加密。为了使云能够对加密数据执行有意义的计算,我们使用了完全同态的加密方案。注意到我们可以从频率表评估GWAS的典型统计数据,因此我们的解决方案以加密的基因组和临床数据作为输入来评估频率表。我们建议使用打包技术对这些频率表进行有效评估。结果我们的解决方案支持评估连锁不平衡的D'测度,Hardy-Weinberg平衡,χ 2 检验等。本文采用χ 2 检验和链接不平衡为例,并演示了如何在外包环境中安全有效地实施这些算法。我们通过实验证明,对10 000名受试者进行一次χ 2 检验的安全外包计算大约需要35毫秒,对10 000名受试者进行一次连锁不平衡的评估大约需要80毫秒。结论通过适当的编码和打包技术,基于完全同态加密的GWAS安全计算的密码解决方案将是实用的。

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