An Easy-to-use and Robust Approach for the Differentially Private De-Identification of Clinical Textual Documents

Yakini Tchouka, Jean-François Couchot, David Laiymani
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Abstract

Unstructured textual data is at the heart of healthcare systems. For obvious privacy reasons, these documents are not accessible to researchers as long as they contain personally identifiable information. One way to share this data while respecting the legislative framework (notably GDPR or HIPAA) is, within the medical structures, to de-identify it, i.e. to detect the personal information of a person through a Named Entity Recognition (NER) system and then replacing it to make it very difficult to associate the document with the person. The challenge is having reliable NER and substitution tools without compromising confidentiality and consistency in the document. Most of the conducted research focuses on English medical documents with coarse substitutions by not benefiting from advances in privacy. This paper shows how an efficient and differentially private de-identification approach can be achieved by strengthening the less robust de-identification method and by adapting state-of-the-art differentially private mechanisms for substitution purposes. The result is an approach for de-identifying clinical documents in French language, but also generalizable to other languages and whose robustness is mathematically proven.
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一种易于使用且稳健的临床文本文件差异隐私去识别方法
非结构化文本数据是医疗保健系统的核心。出于明显的隐私原因,只要这些文件包含个人身份信息,研究人员就无法访问。在尊重立法框架(特别是GDPR或HIPAA)的情况下共享这些数据的一种方法是,在医疗结构中去识别它,即通过命名实体识别(NER)系统检测一个人的个人信息,然后替换它,使其很难将文档与该人关联起来。挑战在于拥有可靠的NER和替代工具,同时又不损害文档的保密性和一致性。大多数已进行的研究都集中在英文医疗文件上,这些文件没有从隐私方面的进步中受益,替换粗糙。本文展示了如何通过加强不太健壮的去识别方法和通过采用最先进的差异私有机制来实现替代目的,从而实现有效和差异私有的去识别方法。结果是一种去识别法语临床文件的方法,但也可推广到其他语言,其稳健性已被数学证明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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