首页> 外文期刊>BMC Medical Informatics and Decision Making >FORESEE: Fully Outsourced secuRe gEnome Study basEd on homomorphic Encryption
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FORESEE: Fully Outsourced secuRe gEnome Study basEd on homomorphic Encryption

机译:FORESEE:基于同态加密的完全外包的安全基因组研究

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Background The increasing availability of genome data motivates massive research studies in personalized treatment and precision medicine. Public cloud services provide a flexible way to mitigate the storage and computation burden in conducting genome-wide association studies (GWAS). However, data privacy has been widely concerned when sharing the sensitive information in a cloud environment. Methods We presented a novel framework (FORESEE: Fully Outsourced secuRe gEnome Study basEd on homomorphic Encryption) to fully outsource GWAS (i.e., chi-square statistic computation) using homomorphic encryption. The proposed framework enables secure divisions over encrypted data. We introduced two division protocols (i.e., secure errorless division and secure approximation division) with a trade-off between complexity and accuracy in computing chi-square statistics. Results The proposed framework was evaluated for the task of chi-square statistic computation with two case-control datasets from the 2015 iDASH genome privacy protection challenge. Experimental results show that the performance of FORESEE can be significantly improved through algorithmic optimization and parallel computation. Remarkably, the secure approximation division provides significant performance gain, but without missing any significance SNPs in the chi-square association test using the aforementioned datasets. Conclusions Unlike many existing HME based studies, in which final results need to be computed by the data owner due to the lack of the secure division operation, the proposed FORESEE framework support complete outsourcing to the cloud and output the final encrypted chi-square statistics.
机译:背景技术基因组数据的可用性日益提高,激发了对个性化治疗和精密医学的大规模研究。公共云服务提供了一种灵活的方式来减轻进行基因组范围关联研究(GWAS)的存储和计算负担。但是,在云环境中共享敏感信息时,数据隐私已受到广泛关注。方法我们提出了一个新颖的框架(FORESEE:基于同态加密的完全外包安全的基因组研究),可以使用同态加密将GWAS完全外包(即卡方统计计算)。所提出的框架实现了对加密数据的安全划分。我们介绍了两种除法协议(即安全无误除法和安全近似除法),在计算卡方统计量的复杂性和准确性之间进行了权衡。结果使用2015 iDASH基因组隐私保护挑战中的两个病例对照数据集,评估了拟议框架的卡方统计计算任务。实验结果表明,通过算法优化和并行计算,可以显着提高FORESEE的性能。值得注意的是,安全近似除法可显着提高性能,但在使用上述数据集的卡方关联测试中,不会丢失任何重要的SNP。结论与许多现有的基于HME的研究不同,由于缺乏安全的除法运算,最终结果需要由数据所有者计算,而提议的FORESEE框架则支持将全部外包给云并输出最终的加密卡方统计量。

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