CYLGMLJan 27, 2019

Automatic end-to-end De-identification: Is high accuracy the only metric?

arXiv:1901.10583v131 citations
Originality Synthesis-oriented
AI Analysis

It addresses the problem of ensuring comprehensive privacy protection in health informatics research, but is incremental as it primarily reviews existing work.

This paper reviews 18 automatic de-identification systems for electronic health records, highlighting that while high accuracy has been achieved in identifying protected health information, significant challenges remain in surrogate generation and patient privacy risks.

De-identification of electronic health records (EHR) is a vital step towards advancing health informatics research and maximising the use of available data. It is a two-step process where step one is the identification of protected health information (PHI), and step two is replacing such PHI with surrogates. Despite the recent advances in automatic de-identification of EHR, significant obstacles remain if the abundant health data available are to be used to the full potential. Accuracy in de-identification could be considered a necessary, but not sufficient condition for the use of EHR without individual patient consent. We present here a comprehensive review of the progress to date, both the impressive successes in achieving high accuracy and the significant risks and challenges that remain. To best of our knowledge, this is the first paper to present a complete picture of end-to-end automatic de-identification. We review 18 recently published automatic de-identification systems -designed to de-identify EHR in the form of free text- to show the advancements made in improving the overall accuracy of the system, and in identifying individual PHI. We argue that despite the improvements in accuracy there remain challenges in surrogate generation and replacements of identified PHIs, and the risks posed to patient protection and privacy.

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