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A hybrid cloud read aligner based on MinHash and kmer voting that preserves privacy

机译:基于MinHash和kmer投票的混合云读取对齐器可保护隐私

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摘要

Low-cost clouds can alleviate the compute and storage burden of the genome sequencing data explosion. However, moving personal genome data analysis to the cloud can raise serious privacy concerns. Here, we devise a method named Balaur, a privacy preserving read mapper for hybrid clouds based on locality sensitive hashing and kmer voting. Balaur can securely outsource a substantial fraction of the computation to the public cloud, while being highly competitive in accuracy and speed with non-private state-of-the-art read aligners on short read data. We also show that the method is significantly faster than the state of the art in long read mapping. Therefore, Balaur can enable institutions handling massive genomic data sets to shift part of their analysis to the cloud without sacrificing accuracy or exposing sensitive information to an untrusted third party.
机译:低成本的云可以减轻基因组测序数据爆炸的计算和存储负担。但是,将个人基因组数据分析移至云中会引发严重的隐私问题。在这里,我们设计了一种名为Balaur的方法,这是一种基于位置敏感的哈希和kmer投票的混合云的隐私保护读取映射器。 Balaur可以将大部分计算安全地外包给公共云,同时在短读数据上使用非私有的最新读对齐器在准确性和速度上具有很高的竞争力。我们还显示,在长读取映射中,该方法比现有技术快得多。因此,Balaur可以使处理大量基因组数据集的机构将其分析的一部分转移到云上,而无需牺牲准确性或将敏感信息暴露给不受信任的第三方。

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