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Scalable privacy-preserving data sharing methodology for genome-wide association studies: an application to iDASH healthcare privacy protection challenge

机译:用于全基因组关联研究的可扩展隐私保护数据共享方法:在iDASH医疗保健隐私保护挑战中的应用

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In response to the growing interest in genome-wide association study (GWAS) data privacy, the Integrating Data for Analysis, Anonymization and SHaring (iDASH) center organized the iDASH Healthcare Privacy Protection Challenge , with the aim of investigating the effectiveness of applying privacy-preserving methodologies to human genetic data. This paper is based on a submission to the iDASH Healthcare Privacy Protection Challenge. We apply privacy-preserving methods that are adapted from Uhler et al. 2013 and Yu et al. 2014 to the challenge's data and analyze the data utility after the data are perturbed by the privacy-preserving methods. Major contributions of this paper include new interpretation of the χ 2 statistic in a GWAS setting and new results about the Hamming distance score, a key component for one of the privacy-preserving methods.
机译:为了响应人们对全基因组关联研究(GWAS)数据隐私日益增长的兴趣,分析,匿名化和共享数据集成(iDASH)中心组织了iDASH医疗保健隐私保护挑战赛,旨在调查应用隐私保护的有效性-保存人类遗传数据的方法。本文基于向iDASH医疗保健隐私保护挑战赛提交的材料。我们采用了Uhler等人改编的隐私保护方法。 2013和Yu等。 2014年挑战的数据,并在数据被隐私保护方法干扰后分析数据实用程序。本文的主要贡献包括在GWAS设置中对χ 2 统计量的新解释,以及有关汉明距离得分的新结果,汉明距离得分是其中一种隐私保护方法的关键组成部分。

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