Confidential computing for population-scale genome-wide association studies with SECRET-GWAS

IF 18.3 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Jonah Rosenblum, Juechu Dong, Satish Narayanasamy
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引用次数: 0

Abstract

Genomic data from a single institution lacks global diversity representation, especially for rare variants and diseases. Confidential computing can enable collaborative genome-wide association studies (GWAS) without compromising privacy or accuracy. However, due to limited secure memory space and performance overheads, previous solutions fail to support widely used regression methods. Here we present SECRET-GWAS—a rapid, privacy-preserving, population-scale, collaborative GWAS tool. We discuss several system optimizations, including streaming, batching, data parallelization and reducing trusted hardware overheads to efficiently scale linear and logistic regression to over a thousand processor cores on an Intel SGX-based cloud platform. In addition, we protect SECRET-GWAS against several hardware side-channel attacks. SECRET-GWAS is an open-source tool and works with the widely used Hail genomic analysis framework. Our experiments on Azure’s Confidential Computing platform demonstrate that SECRET-GWAS enables multivariate linear and logistic regression GWAS queries on population-scale datasets from ten independent sources in just 4.5 and 29 minutes, respectively. Secure collaborative genome-wide association studies (GWAS) with population-scale datasets address gaps in genomic data. This work proposes SECRET-GWAS and system optimizations that overcome resource constraints and exploit parallelism, while maintaining privacy and accuracy.

Abstract Image

SECRET-GWAS用于群体规模全基因组关联研究的保密计算。
来自单一机构的基因组数据缺乏全球多样性代表,特别是对于罕见变异和疾病。保密计算可以使协作性全基因组关联研究(GWAS)在不损害隐私或准确性的情况下实现。但是,由于有限的安全内存空间和性能开销,以前的解决方案无法支持广泛使用的回归方法。在这里,我们提出了secret -GWAS-一个快速,隐私保护,人口规模,协作的GWAS工具。我们讨论了几个系统优化,包括流、批处理、数据并行化和减少可信硬件开销,以便在基于Intel sgx的云平台上有效地将线性和逻辑回归扩展到超过1000个处理器内核。此外,我们还保护SECRET-GWAS免受几种硬件侧信道攻击。SECRET-GWAS是一个开源工具,与广泛使用的Hail基因组分析框架一起工作。我们在Azure的机密计算平台上的实验表明,SECRET-GWAS可以在4.5分钟和29分钟内分别对来自10个独立来源的人口规模数据集进行多元线性和逻辑回归GWAS查询。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
11.70
自引率
0.00%
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