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A review of Automatic end-to-end De-Identification: Is High Accuracy the Only Metric?

机译:自动端对端去识别的回顾:高精度是唯一的度量标准吗?

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摘要

De-identification of electronic health records (EHR) is a vital step toward advancing health informatics research and maximizing 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.
机译:电子病历(EHR)的去标识化是推进健康信息学研究和最大程度利用可用数据的重要步骤。这是一个分为两个步骤的过程,其中第一步是识别受保护的健康信息(PHI),而第二步是用代理替代此类PHI。尽管最近在自动取消EHR识别方面取得了进展,但如果要充分利用现有的大量健康数据,仍然存在巨大的障碍。未经个人患者同意,使用电子病历的身份识别准确性可能被认为是必要的,但不是充分的条件。我们在这里对迄今为止的进展进行了全面的回顾,包括在实现高精度方面的令人印象深刻的成功以及仍然存在的重大风险和挑战。据我们所知,这是第一篇介绍端到端自动去识别的完整图片。我们回顾了18个最近发布的自动去识别系统,这些系统旨在以自由文本的形式对EHR进行去识别,以显示在提高系统整体准确性以及识别单个PHI方面所取得的进步。我们认为,尽管准确性有所提高,但代孕的PHI和替代已鉴定的PHI仍然存在挑战,并且给患者保护和隐私带来了风险。

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  • 来源
    《Applied Artificial Intelligence》 |2020年第4期|251-269|共19页
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  • 作者单位

    Univ Waikato Dept Comp Sci Hamilton New Zealand;

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  • 正文语种 eng
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