临床缩略语的实时识别和消歧的原型应用

Yonghui Wu, J. Denny, S. Rosenbloom, R. Miller, D. Giuse, Min Song, Hua Xu
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引用次数: 12

摘要

为了节省时间,医疗保健提供者在编写临床文档时经常使用缩写。然而,作者认为没有歧义的缩写常常使其他读者感到困惑,包括临床医生、患者和自然语言处理(NLP)系统。大多数目前的临床NLP系统在临床医生将记录输入电子健康记录系统(EHRs)后很长时间才进行“后处理”。这种后处理不能保证缩略词识别和消歧的100%准确性,因为存在多种替代解释。在本文中,作者描述了一个用于实时临床缩写识别和消歧(CARD)的原型系统,即一个在注释生成过程中与作者交互以验证正确缩写感觉的系统。CARD系统设计预计未来将与基于web的临床文档系统集成,以提高医疗记录的质量。原型应用程序体现了三种词义消歧方法。我们在模拟研究中评估了原型CARD系统的准确性和响应时间。使用现有的25个常见的、高度模糊的临床缩略语的测试数据集,评估表明,最佳WSD方法的准确率为88.8%,每个缩略语的合理平均响应时间为1.6毫秒。该研究表明,潜在的可行性实时nlp启用缩写消歧在临床文件系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A prototype application for real-time recognition and disambiguation of clinical abbreviations
To save time, healthcare providers frequently use abbreviations while authoring clinical documents. Nevertheless, abbreviations that authors deem unambiguous often confuse other readers, including clinicians, patients, and natural language processing (NLP) systems. Most current clinical NLP systems "post-process" notes long after clinicians enter them into electronic health record systems (EHRs). Such post-processing cannot guarantee 100% accuracy in abbreviation identification and disambiguation, since multiple alternative interpretations exist. In this paper, authors describe a prototype system for real-time Clinical Abbreviation Recognition and Disambiguation (CARD) -- i.e., a system that interacts with authors during note generation to verify correct abbreviation senses. The CARD system design anticipates future integration with web-based clinical documentation systems to improve quality of healthcare records. The prototype application embodies three word sense disambiguation (WSD) methods. We evaluated the accuracy and response times of the prototype CARD system in a simulated study. Using an existing test data set of 25 commonly observed, highly ambiguous clinical abbreviations the evaluation demonstrated that the best WSD method had an accuracy of 88.8%, and a reasonable average response time of 1.6 milliseconds per each abbreviation. The study indicates potential feasibility of real-time NLP-enabled abbreviation disambiguation within clinical documentation systems.
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