Anonymizing and Sharing Medical Text Records.

Information systems research : ISR Pub Date : 2017-01-01 Epub Date: 2017-04-12 DOI:10.1287/isre.2016.0676
Xiao-Bai Li, Jialun Qin
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引用次数: 49

Abstract

Health information technology has increased accessibility of health and medical data and benefited medical research and healthcare management. However, there are rising concerns about patient privacy in sharing medical and healthcare data. A large amount of these data are in free text form. Existing techniques for privacy-preserving data sharing deal largely with structured data. Current privacy approaches for medical text data focus on detection and removal of patient identifiers from the data, which may be inadequate for protecting privacy or preserving data quality. We propose a new systematic approach to extract, cluster, and anonymize medical text records. Our approach integrates methods developed in both data privacy and health informatics fields. The key novel elements of our approach include a recursive partitioning method to cluster medical text records based on the similarity of the health and medical information and a value-enumeration method to anonymize potentially identifying information in the text data. An experimental study is conducted using real-world medical documents. The results of the experiments demonstrate the effectiveness of the proposed approach.

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匿名化和共享医疗文本记录。
卫生信息技术提高了卫生和医疗数据的可及性,并使医学研究和保健管理受益。然而,在分享医疗和保健数据时,人们对患者隐私的担忧日益增加。这些数据中有大量是自由文本形式的。现有的保护隐私的数据共享技术主要处理结构化数据。目前医疗文本数据的隐私保护方法侧重于从数据中检测和删除患者标识符,这可能不足以保护隐私或保持数据质量。我们提出了一种新的系统方法来提取、聚类和匿名化医疗文本记录。我们的方法集成了数据隐私和健康信息学领域开发的方法。该方法的关键新颖元素包括基于健康和医疗信息相似性的递归划分方法,用于聚类医疗文本记录,以及用于匿名化文本数据中潜在识别信息的值枚举方法。使用真实世界的医学文献进行了一项实验研究。实验结果证明了该方法的有效性。
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