医疗文本记录的匿名化与共享

Anonymizing and Sharing Medical Text Records

Information Systems Research · 2017
被引 78
FT 50UTD 24ABS 4★

中文导读

提出一种系统方法,通过递归分区和值枚举技术对医疗文本记录进行聚类和匿名化,在保护患者隐私的同时保留数据质量,实验证明其有效性。

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.

计算机科学健康信息学数据隐私医疗文本