Safeguarding Privacy in Genome Research: A Comprehensive Framework for Authors.

Maryam Ghasemian, Lynette Hammond Gerido, Erman Ayday
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Abstract

As genomic research continues to advance, sharing of genomic data and research outcomes has become increasingly important for fostering collaboration and accelerating scientific discovery. However, such data sharing must be balanced with the need to protect the privacy of individuals whose genetic information is being utilized. This paper presents a bidirectional framework for evaluating privacy risks associated with data shared (both in terms of summary statistics and research datasets) in genomic research papers, particularly focusing on re-identification risks such as membership inference attacks (MIA). The framework consists of a structured workflow that begins with a questionnaire designed to capture researchers' (authors') self-reported data sharing practices and privacy protection measures. Responses are used to calculate the risk of re-identification for their study (paper) when compared with the National Institutes of Health (NIH) genomic data sharing policy. Any gaps in compliance help us to identify potential vulnerabilities and encourage the researchers to enhance their privacy measures before submitting their research for publication. The paper also demonstrates the application of this framework, using published genomic research as case study scenarios to emphasize the importance of implementing bidirectional frameworks to support trustworthy open science and genomic data sharing practices.

基因组研究中的隐私保护:作者的综合框架。
随着基因组研究的不断推进,共享基因组数据和研究成果对于促进合作和加速科学发现变得越来越重要。然而,这种数据共享必须与保护正在使用其遗传信息的个人隐私的需要相平衡。本文提出了一个双向框架,用于评估基因组研究论文中与共享数据相关的隐私风险(包括汇总统计和研究数据集),特别关注重新识别风险,如成员推理攻击(MIA)。该框架由一个结构化的工作流组成,该工作流从一个问卷开始,旨在捕获研究人员(作者)自我报告的数据共享实践和隐私保护措施。当与美国国立卫生研究院(NIH)基因组数据共享政策进行比较时,应答被用来计算他们的研究(论文)被重新识别的风险。合规方面的任何漏洞都有助于我们识别潜在的漏洞,并鼓励研究人员在提交研究报告发表之前加强他们的隐私措施。本文还演示了该框架的应用,使用已发表的基因组研究作为案例研究场景,强调实施双向框架以支持可信赖的开放科学和基因组数据共享实践的重要性。
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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