个人基因组测序数据共享中的隐私保护

Xiaofeng Wang, Haixu Tang
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引用次数: 2

摘要

近年来,人类基因组研究发展迅速,特别是全基因组关联研究(GWAS)和个性化医疗,这是由于下一代测序(NGS)技术的进步,以极低的成本产生大量的测序数据。对基因组数据进行大规模荟萃分析的新技术不断发展,使人类基因组研究应用于临床诊断和治疗,这一趋势被称为“碱基对到床边”。然而,这一领域的进一步进展越来越受到访问测序数据的限制的阻碍,部分原因是数据共享涉及隐私问题。目前保护人类基因组数据的方法主要基于数据使用协议,这涉及一个耗时的申请/审查/协议过程。为了更方便地访问数据,本文提出了一种数据分析模型,允许生物医学研究人员和医疗保健从业者通过大型数据中心提供的数据计算服务(而不是直接访问数据),使用无法以高效方式直接发布的敏感基因组数据。
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Privacy Protection in Sharing Personal Genome Sequencing Data
The past few years has witnessed rapid development in human genome research, in particular the genome-wide association studies (GWAS) and personalized medicine, which has been made possible by the advance in the Next Generation Sequencing (NGS) technologies that produces a large amount of sequencing data at an exceedingly low cost. New technologies for large-scale meta-analysis on genomic data continue to be developed, enabling the application of human genome research to clinical diagnosis and therapy, a trend dubbed “base pairs to bedside”. However, further progress in this area has been increasingly impeded by the constraints in accessing sequencing data, due in part to privacy concerns involved in data sharing. The current approach to protecting human genomic data is mainly based upon data-use agreements, which involves a time-consuming application/review/agreement process. To enable more convenient data access, this paper proposes a data analysis model that allows biomedical researchers and healthcare practitioners to use the sensitive genomic data that cannot be directly released in an efficient fashion, through the computing service over the data (instead of direct access to the data) provided by a large data center.
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