使用分组来维护医疗数据的机密性。

Proceedings. AMIA Symposium Pub Date : 2002-01-01
Zhen Lin, Michael Hewett, Russ B Altman
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引用次数: 0

摘要

一般的生物医学信息学,特别是药物基因组学,需要一个研究平台,在保证发现的同时保护研究对象的隐私和信息机密性。廉价的DNA测序和分析技术的发展保证了对个人非常具体信息的前所未有的数据库访问。为了在不损害研究对象隐私的情况下分析这些数据,我们必须开发从医学和基因组数据中删除识别信息的方法。在本文中,我们基于这样的想法,即分类数据库记录更难以追溯到个人。我们分层表示符号和数字数据,并通过对记录进行泛化来存储它们。我们使用一种称为互信息的信息理论度量来度量由于分组而造成的信息损失。结果表明,我们可以将数据分组到不同的精度级别,并使用分组大小来控制隐私和数据分辨率之间的权衡。
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Using binning to maintain confidentiality of medical data.

Biomedical informatics in general and pharmacogenomics in particular require a research platform that simultaneously enables discovery while protecting research subjects' privacy and information confidentiality. The development of inexpensive DNA sequencing and analysis technologies promises unprecedented database access to very specific information about individuals. To allow analysis of this data without compromising the research subjects' privacy, we must develop methods for removing identifying information from medical and genomic data. In this paper, we build upon the idea that binned database records are more difficult to trace back to individuals. We represent symbolic and numeric data hierarchically, and bin them by generalizing the records. We measure the information loss due to binning using an information theoretic measure called mutual information. The results show that we can bin the data to different levels of precision and use the bin size to control the tradeoff between privacy and data resolution.

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