MaskAl:隐私保护屏蔽读取对齐使用英特尔SGX

Christoph Lambert, Maria Fernandes, Jérémie Decouchant, P. Veríssimo
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引用次数: 10

摘要

最近引入的新的DNA测序技术导致处理和存储的生物数据量激增。为了处理这些海量的数据,生物中心一直试图使用低成本的公共云。然而,基因组是隐私敏感的,因为它们存储了捐赠者的个人信息,例如他们的身份、疾病风险、遗传和种族血统。可以在云端执行的第一个关键的DNA处理步骤,即读取比对,包括找到由测序机产生的DNA序列在人类基因组中的位置。虽然最近的发展旨在提高性能,但只有少数方法满足快速和保护隐私的读对齐方法的需求。本文介绍了一种新的读对齐方法MaskAl。MaskAl将原始基因组数据的快速预处理步骤(过滤和屏蔽)与已建立的算法相结合,以对齐经过消毒的读取,其中敏感部分已被屏蔽,并使用英特尔的软件保护扩展(SGX)使用屏蔽信息来优化对齐分数。MaskAl是一款极具竞争力的保护隐私的读取对齐软件,可以与公共云和新兴的飞地云大规模并行。最后,MaskAl几乎与纯文本方法一样准确(使用MaskAl的对齐读取率超过96%,而使用BWA的对齐读取率为98%),并且在使用更少的内存和网络带宽的情况下,处理对齐工作负载的速度比当前的隐私保护方法快87%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MaskAl: Privacy Preserving Masked Reads Alignment using Intel SGX
The recent introduction of new DNA sequencing techniques caused the amount of processed and stored biological data to skyrocket. In order to process these vast amounts of data, bio-centers have been tempted to use low-cost public clouds. However, genomes are privacy sensitive, since they store personal information about their donors, such as their identity, disease risks, heredity and ethnic origin. The first critical DNA processing step that can be executed in a cloud, i.e., read alignment, consists in finding the location of the DNA sequences produced by a sequencing machine in the human genome. While recent developments aim at increasing performance, only few approaches address the need for fast and privacy preserving read alignment methods. This paper introduces MaskAl, a novel approach for read alignment. MaskAl combines a fast preprocessing step on raw genomic data - filtering and masking - with established algorithms to align sanitized reads, from which sensitive parts have been masked out, and refines the alignment score using the masked out information with Intel's software guard extensions (SGX). MaskAl is a highly competitive privacy-preserving read alignment software that can be massively parallelized with public clouds and emerging enclave clouds. Finally, MaskAl is nearly as accurate as plain-text approaches (more than 96% of aligned reads with MaskAl compared to 98% with BWA) and can process alignment workloads 87% faster than current privacy-preserving approaches while using less memory and network bandwidth.
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