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A Software Tool for Removing Patient Identifying Information from Clinical Documents

机译:用于从临床文档中删除患者识别信息的软件工具

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摘要

We created a software tool that accurately removes all patient identifying information from various kinds of clinical data documents, including laboratory and narrative reports. We created the Medical De-identification System (MeDS), a software tool that de-identifies clinical documents, and performed 2 evaluations. Our first evaluation used 2,400 Health Level Seven (HL7) messages from 10 different HL7 message producers. After modifying the software based on the results of this first evaluation, we performed a second evaluation using 7,190 pathology report HL7 messages. We compared the results of MeDS de-identification process to a gold standard of human review to find identifying strings. For both evaluations, we calculated the number of successful scrubs, missed identifiers, and over-scrubs committed by MeDS and evaluated the readability and interpretability of the scrubbed messages. We categorized all missed identifiers into 3 groups: (1) complete HIPAA-specified identifiers, (2) HIPAA-specified identifier fragments, (3) non-HIPAA–specified identifiers (such as provider names and addresses). In the results of the first-pass evaluation, MeDS scrubbed 11,273 (99.06%) of the 11,380 HIPAA-specified identifiers and 38,095 (98.26%) of the 38,768 non-HIPAA–specified identifiers. In our second evaluation (status postmodification to the software), MeDS scrubbed 79,993 (99.47%) of the 80,418 HIPAA-specified identifiers and 12,689 (96.93%) of the 13,091 non-HIPAA–specified identifiers. Approximately 95% of scrubbed messages were both readable and interpretable. We conclude that MeDS successfully de-identified a wide range of medical documents from numerous sources and creates scrubbed reports that retain their interpretability, thereby maintaining their usefulness for research.
机译:我们创建了一个软件工具,可以从各种临床数据文档(包括实验室和叙述报告)中准确删除所有患者识别信息。我们创建了医疗去识别系统(MeDS),这是一种可对临床文档进行去识别的软件工具,并进行了2次评估。我们的首次评估使用了来自10个不同HL7消息产生者的2,400个健康等级7(HL7)消息。在基于第一次评估的结果修改软件之后,我们使用7,190个病理报告HL7消息执行了第二次评估。我们将MeDS取消识别过程的结果与人工审查的金标准进行了比较,以找到识别字符串。对于这两次评估,我们计算了由MeDS进行的成功清理,遗漏标识符和过度清理的次数,并评估了清理后消息的可读性和可解释性。我们将所有遗漏的标识符分为3组:(1)完整的HIPAA指定的标识符,(2)HIPAA指定的标识符片段,(3)非HIPAA指定的标识符(例如提供商名称和地址)。在首过评估的结果中,MeDS擦洗了11380个HIPAA指定的标识符中的11273个(99.06%)和38768个非HIPAA指定的标识符中的38095个(98.26%)。在我们的第二次评估(软件的状态后修改)中,MeDS擦洗了80,418个HIPAA指定的标识符中的79,993个(99.47%)和13,091个非HIPAA指定的标识符中的12,689个(96.93%)。大约95%的已清除消息是可读和可解释的。我们得出的结论是,MeDS成功地从众多来源中取消了对大量医学文档的识别,并创建了保留其可解释性的清理报告,从而保持了其对研究的有用性。

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