用于访问大型生物医学数据库的查询工具的安全体系结构。

Proceedings. AMIA Symposium Pub Date : 2002-01-01
Shawn N Murphy, Henry C Chueh
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引用次数: 0

摘要

传播来自大型生物医学数据库的信息对研究至关重要。这些数据通常是针对特定患者的,因此需要保护患者的隐私。针对这一要求,HIPAA发布了患者数据发布规定。在许多情况下,这些规定的限制性太大,使得数据在许多用途上毫无用处。我们在本文中提出了一个模型,用于在向客户端应用程序提供服务时混淆数据,这将使识别个人的可能性极小。在拥有140多万患者和400名研究临床医生用户的Partners Healthcare Inc,我们实现了这个模型。基于这些结果,我们认为,使用所提出的数据混淆方案,可以使web客户端普遍可用,该方案可以允许一般使用大型生物医学数据库的患者信息,而不会对患者隐私造成风险。
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A security architecture for query tools used to access large biomedical databases.

Disseminating information from large biomedical databases can be crucial for research. Often this data will be patient-specific, and therefore require that the privacy of the patient be protected. In response to this requirement, HIPAA released regulations for the dissemination of patient data. In many cases, the regulations are so restrictive as to render data useless for many purposes. We propose in this paper a model for obfuscation of data when served to a client application, that will make it extremely unlikely that an individual will be identified. At Partners Healthcare Inc, with over 1.4 million patients and 400 research clinician users, we implemented this model. Based on the results, we believe that a web-client could be made generally available using the proposed data obfuscation scheme that could allow general usage of large biomedical databases of patient information without risk to patient privacy.

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