Privacy-Preserving and Efficient Verification of the Outcome in Genome-Wide Association Studies.

Anisa Halimi, Leonard Dervishi, Erman Ayday, Apostolos Pyrgelis, Juan Ramón Troncoso-Pastoriza, Jean-Pierre Hubaux, Xiaoqian Jiang, Jaideep Vaidya
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Abstract

Providing provenance in scientific workflows is essential for reproducibility and auditability purposes. In this work, we propose a framework that verifies the correctness of the aggregate statistics obtained as a result of a genome-wide association study (GWAS) conducted by a researcher while protecting individuals' privacy in the researcher's dataset. In GWAS, the goal of the researcher is to identify highly associated point mutations (variants) with a given phenotype. The researcher publishes the workflow of the conducted study, its output, and associated metadata. They keep the research dataset private while providing, as part of the metadata, a partial noisy dataset (that achieves local differential privacy). To check the correctness of the workflow output, a verifier makes use of the workflow, its metadata, and results of another GWAS (conducted using publicly available datasets) to distinguish between correct statistics and incorrect ones. For evaluation, we use real genomic data and show that the correctness of the workflow output can be verified with high accuracy even when the aggregate statistics of a small number of variants are provided. We also quantify the privacy leakage due to the provided workflow and its associated metadata and show that the additional privacy risk due to the provided metadata does not increase the existing privacy risk due to sharing of the research results. Thus, our results show that the workflow output (i.e., research results) can be verified with high confidence in a privacy-preserving way. We believe that this work will be a valuable step towards providing provenance in a privacy-preserving way while providing guarantees to the users about the correctness of the results.

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全基因组关联研究结果的隐私保护与高效验证
在科学工作流程中提供出处对于可重复性和可审计性至关重要。在这项工作中,我们提出了一个框架,用于验证研究人员进行全基因组关联研究(GWAS)后获得的综合统计数据的正确性,同时保护研究人员数据集中的个人隐私。在全基因组关联研究中,研究人员的目标是找出与给定表型高度关联的点突变(变异)。研究人员公布所进行研究的工作流程、研究结果和相关元数据。他们将研究数据集保密,同时作为元数据的一部分,提供部分噪声数据集(实现局部差异保密)。为了检查工作流输出的正确性,验证者利用工作流、其元数据和另一个 GWAS(使用公开可用的数据集进行)的结果来区分正确的统计数据和错误的统计数据。为了进行评估,我们使用了真实的基因组数据,结果表明,即使提供的是少量变异的总体统计数据,也能高精度地验证工作流输出的正确性。我们还量化了所提供的工作流及其相关元数据造成的隐私泄露,结果表明,所提供元数据造成的额外隐私风险不会增加因共享研究成果而产生的现有隐私风险。因此,我们的结果表明,工作流输出(即研究成果)可以通过保护隐私的方式进行高可信度验证。我们相信,这项工作将在以保护隐私的方式提供出处方面迈出宝贵的一步,同时为用户提供结果正确性的保证。
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