实现高效、可靠的人类基因组云存储

V. Cogo, A. Bessani
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引用次数: 1

摘要

有效地存储大量人类基因组数据集是研究和临床生命科学界的长期目标。例如,生物银行储存了成千上万的生物物理样本,并且一直面临着存储这些样本的数字化基因组的压力。然而,这些机构和其他生命科学机构缺乏有效存储这些数据的基础设施和专业知识。云计算是私有基础设施的一种自然的经济替代方案,但就安全性和隐私性而言,它不是一种好的替代方案。在这项工作中,我们提出了一个端到端复合管道,旨在通过整合我们最近提出的三种机制,实现高效、可靠的基于云的人类基因组存储。这些机制包括(1)针对人类基因组的隐私敏感检测器,(2)针对测序数据的基于相似性的重复数据删除和增量编码算法,以及(3)可审计方案,以验证谁有效地读取了使用安全信息分散的存储系统中的数据。通过将它们与适当的存储配置集成,人们可以以适度的成本(例如,低于1美元/基因组/年)获得合理的隐私保护、安全性和可靠性保证。我们的初步分析表明,这种管道的成本仅比非复制系统高3%,比完全复制所有数据的系统低48%,比安全信息分散方案低31%。
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Enabling the Efficient, Dependable Cloud-Based Storage of Human Genomes
Efficiently storing large data sets of human genomes is a long-term ambition from both the research and clinical life sciences communities. For instance, biobanks stock thousands to millions of biological physical samples and have been under pressure to store also their resulting digitized genomes. However, these and other life sciences institutions lack the infrastructure and expertise to efficiently store this data. Cloud computing is a natural economic alternative to private infrastructures, but it is not as good an alternative in terms of security and privacy. In this work, we present an end-to-end composite pipeline intended to enable the efficient, dependable cloud-based storage of human genomes by integrating three mechanisms we have recently proposed. These mechanisms encompass (1) a privacy-sensitivity detector for human genomes, (2) a similarity-based deduplication and delta-encoding algorithm for sequencing data, and (3) an auditability scheme to verify who has effectively read data in storage systems that use secure information dispersal. By integrating them with appropriate storage configurations, one can obtain reasonable privacy protection, security, and dependability guarantees at modest costs (e.g., less than $1/Genome/Year). Our preliminary analysis indicates that this pipeline costs only 3% more than non-replicated systems, 48% less than fully-replicating all data, and 31% less than secure information dispersal schemes.
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