Secure Discovery of Genetic Relatives across Large-Scale and Distributed Genomic Datasets.

Matthew M Hong, David Froelicher, Ricky Magner, Victoria Popic, Bonnie Berger, Hyunghoon Cho
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Abstract

Finding relatives within a study cohort is a necessary step in many genomic studies. However, when the cohort is distributed across multiple entities subject to data-sharing restrictions, performing this step often becomes infeasible. Developing a privacy-preserving solution for this task is challenging due to the significant burden of estimating kinship between all pairs of individuals across datasets. We introduce SF-Relate, a practical and secure federated algorithm for identifying genetic relatives across data silos. SF-Relate vastly reduces the number of individual pairs to compare while maintaining accurate detection through a novel locality-sensitive hashing approach. We assign individuals who are likely to be related together into buckets and then test relationships only between individuals in matching buckets across parties. To this end, we construct an effective hash function that captures identity-by-descent (IBD) segments in genetic sequences, which, along with a new bucketing strategy, enable accurate and practical private relative detection. To guarantee privacy, we introduce an efficient algorithm based on multiparty homomorphic encryption (MHE) to allow data holders to cooperatively compute the relatedness coefficients between individuals, and to further classify their degrees of relatedness, all without sharing any private data. We demonstrate the accuracy and practical runtimes of SF-Relate on the UK Biobank and All of Us datasets. On a dataset of 200K individuals split between two parties, SF-Relate detects 94.9% of third-degree relatives, and 99.9% of second-degree or closer relatives, within 15 hours of runtime. Our work enables secure identification of relatives across large-scale genomic datasets.

在大规模分布式基因组数据集上安全地发现基因亲属。
在研究队列中寻找亲属是许多基因组研究的必要步骤。然而,当队列分布在多个实体中并受到数据共享限制时,执行这一步骤往往变得不可行。为这项任务开发保护隐私的解决方案极具挑战性,因为在数据集上估算所有成对个体之间的亲缘关系是一项沉重的负担。我们引入了 SF-Relate,这是一种实用、安全的联合算法,用于识别跨数据孤岛的遗传亲缘关系。SF-Relate 通过一种新颖的位置敏感哈希算法,在保持准确检测的同时,大大减少了需要比较的个体配对数量。我们将可能有亲属关系的个体分配到不同的数据桶中,然后只检测匹配数据桶中的个体之间的关系。为此,我们构建了一种有效的哈希函数,它能捕捉基因序列中的后裔身份(IBD)片段,再加上新的分桶策略,就能实现准确、实用的私密亲属检测。为了保证隐私,我们引入了一种基于多方同态加密(MHE)的高效算法,允许数据持有者合作计算个体间的亲缘系数,并进一步对其亲缘程度进行分类,而无需共享任何私人数据。我们在英国生物库和 "我们所有人 "数据集上演示了 SF-Relate 的准确性和实际运行时间。在一个由双方共享的 20 万人的数据集上,SF-Relate 在 15 个小时的运行时间内检测出 94.9% 的三级亲属和 99.9% 的二级或更近的亲属。我们的工作实现了在大规模基因组数据集上安全识别亲属。
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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