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Evaluating the effects of machine pre-annotation and an interactive annotation interface on manual de-identification of clinical text

机译:评估机器预注释和交互式注释界面对手动取消识别临床文本的影响

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摘要

The Health Insurance Portability and Accountability Act (HIPAA) Safe Harbor method requires removal of 18 types of protected health information (PHI) from clinical documents to be considered “de-identified” prior to use for research purposes. Human review of PHI elements from a large corpus of clinical documents can be tedious and error-prone. Indeed, multiple annotators may be required to consistently redact information that represents each PHI class. Automated de-identification has the potential to improve annotation quality and reduce annotation time. For instance, using machine-assisted annotation by combining de-identification system outputs used as pre-annotations and an interactive annotation interface to provide annotators with PHI annotations for “curation” rather than manual annotation from “scratch” on raw clinical documents. In order to assess whether machine-assisted annotation improves the reliability and accuracy of the reference standard quality and reduces annotation effort, we conducted an annotation experiment. In this annotation study, we assessed the generalizability of the VA Consortium for Healthcare Informatics Research (CHIR) annotation schema and guidelines applied to a corpus of publicly available clinical documents called MTSamples. Specifically, our goals were to (1) characterize a heterogeneous corpus of clinical documents manually annotated for risk-ranked PHI and other annotation types (clinical eponyms and person relations), (2) evaluate how well annotators apply the CHIR schema to the heterogeneous corpus, (3) compare whether machine-assisted annotation (experiment) improves annotation quality and reduces annotation time compared to manual annotation (control), and (4) assess the change in quality of reference standard coverage with each added annotator’s annotations.
机译:《健康保险携带和责任法案(HIPAA)安全港法》要求从临床文档中删除18种受保护的健康信息(PHI),然后才将其视为“去识别的”,然后再用于研究目的。从大量临床文档中对PHI元素进行人工审查可能是乏味且容易出错的。实际上,可能需要多个注释器来一致地编辑代表每个PHI类的信息。自动化的取消识别具有提高注释质量和减少注释时间的潜力。例如,通过将用作预批注的去识别系统输出与交互式批注界面相结合,使用机器辅助批注,为批注者提供用于“治疗”的PHI批注,而不是原始临床文档上“从头开始”的手动批注。为了评估机器辅助标注是否可以提高参考标准质量的可靠性和准确性并减少标注工作,我们进行了标注实验。在本注释研究中,我们评估了VA医疗信息学研究联合会(CHIR)注释方案和指南的可推广性,该注释方案和指南适用于称为MTSamples的公共可用临床文献集。具体而言,我们的目标是(1)表征以风险等级PHI和其他注释类型(临床别名和人际关系)手动注释的临床文档的异类主体,(2)评估注释者将CHIR模式应用于异类主体的程度如何,(3)比较与人工注释(对照)相比,机器辅助注释(实验)是否提高注释质量和减少注释时间,以及(4)评估每个添加的注释者注释的参考标准覆盖范围的质量变化。

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