Using encrypted genotypes and phenotypes for collaborative genomic analyses to maintain data confidentiality.

IF 3.3 3区 生物学
Genetics Pub Date : 2023-12-12 DOI:10.1093/genetics/iyad210
Tianjing Zhao, Fangyi Wang, Richard Mott, Jack Dekkers, Hao Cheng
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引用次数: 0

Abstract

To adhere to and capitalize on the benefits of the FAIR (Findable, Accessible, Interoperable and Reusable) principles in agricultural genome-to-phenome studies, it is crucial to address privacy and intellectual property issues that prevent sharing and reuse of data in research and industry. Direct sharing of genotype and phenotype data is often prohibited due to intellectual property and privacy concerns. Thus there is a pressing need for encryption methods that obscure confidential aspects of the data, without affecting the outcomes of certain statistical analyses. A homomorphic encryption method for genotypes and phenotypes (HEGP) has been proposed for single-marker regression in genome-wide association studies using linear mixed models with Gaussian errors. This methodology permits frequentist likelihood-based parameter estimation and inference. In this paper, we extend HEGP to broader applications in genome-to-phenome analyses. We show that HEGP is suited to commonly used linear mixed models for genetic analyses of quantitative traits including GBLUP and RR-BLUP, as well as Bayesian variable selection methods (e.g., those in Bayesian Alphabet), for genetic parameter estimation, genomic prediction, and genome-wide association studies. By advancing the capabilities of HEGP, we offer researchers and industry professionals a secure and efficient approach for collaborative genomic analyses while preserving data confidentiality.
使用加密的基因型和表型进行合作基因组分析,以保持数据的机密性。
要在农业基因组到表型组研究中坚持并利用 FAIR(可查找、可访问、可互操作和可重用)原则的好处,关键是要解决阻碍研究和产业界共享和重用数据的隐私和知识产权问题。由于知识产权和隐私问题,通常禁止直接共享基因型和表型数据。因此,迫切需要能在不影响某些统计分析结果的情况下掩盖数据机密性的加密方法。有人提出了一种基因型和表型的同态加密方法(HEGP),用于使用高斯误差线性混合模型的全基因组关联研究中的单标记回归。这种方法允许基于频数的似然参数估计和推断。在本文中,我们将 HEGP 扩展到基因组到表型组分析的更广泛应用中。我们的研究表明,HEGP 适合用于数量性状遗传分析的常用线性混合模型,包括 GBLUP 和 RR-BLUP,以及用于遗传参数估计、基因组预测和全基因组关联研究的贝叶斯变量选择方法(如贝叶斯字母中的方法)。通过提升 HEGP 的功能,我们为研究人员和行业专业人员提供了一种安全高效的方法,用于基因组协作分析,同时保护数据机密性。
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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来源期刊
Genetics
Genetics 生物-遗传学
CiteScore
6.20
自引率
6.10%
发文量
177
期刊介绍: GENETICS is published by the Genetics Society of America, a scholarly society that seeks to deepen our understanding of the living world by advancing our understanding of genetics. Since 1916, GENETICS has published high-quality, original research presenting novel findings bearing on genetics and genomics. The journal publishes empirical studies of organisms ranging from microbes to humans, as well as theoretical work. While it has an illustrious history, GENETICS has changed along with the communities it serves: it is not your mentor''s journal. The editors make decisions quickly – in around 30 days – without sacrificing the excellence and scholarship for which the journal has long been known. GENETICS is a peer reviewed, peer-edited journal, with an international reach and increasing visibility and impact. All editorial decisions are made through collaboration of at least two editors who are practicing scientists. GENETICS is constantly innovating: expanded types of content include Reviews, Commentary (current issues of interest to geneticists), Perspectives (historical), Primers (to introduce primary literature into the classroom), Toolbox Reviews, plus YeastBook, FlyBook, and WormBook (coming spring 2016). For particularly time-sensitive results, we publish Communications. As part of our mission to serve our communities, we''ve published thematic collections, including Genomic Selection, Multiparental Populations, Mouse Collaborative Cross, and the Genetics of Sex.
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