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Cloud-Assisted Read Alignment and Privacy

机译:云辅助阅读对齐和隐私

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摘要

Thanks to the rapid advances in sequencing technologies, genomic data is now being produced at an unprecedented rate. To adapt to this growth, several algorithms and paradigm shifts have been proposed to increase the throughput of the classical DNA workflow, e.g. by relying on the cloud to perform CPU intensive operations. However, the scientific community raised an alarm due to the possible privacy-related attacks that can be executed on genomic data. In this paper we review the state of the art in cloud-based alignment algorithms that have been developed for performance. We then present several privacy-preserving mechanisms that have been, or could be, used to align reads at an incremental performance cost. We finally argue for the use of risk analysis throughout the DNA workflow, to strike a balance between performance and protection of data.
机译:由于测序技术的快速进步,基因组数据现在正在以前所未有的速度生产。为了适应这种增长,已经提出了几种算法和范例转变来增加经典DNA工作流程的吞吐量,例如,通过依靠云来执行CPU密集型操作。然而,由于可能在基因组数据上执行的隐私相关攻击,科学界提出了警报。在本文中,我们在为性能开发的基于云的对齐算法中审查了最先进的对齐算法。然后,我们提供了几种隐私保留机制,该机制已经或可能用于以增量性能成本对准读取。我们终于争论在整个DNA工作流程中使用风险分析,在性能和数据保护之间取得平衡。

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