Doan Son, Maehara Cleo K, Chaparro Juan D, Lu Sisi, Liu Ruiling, Graham Amanda, Berry Erika, Hsu Chun-Nan, Kanegaye John T, Lloyd David D, Ohno-Machado Lucila, Burns Jane C, Tremoulet Adriana H
Department of Biomedical Informatics, University of California, San Diego, CA.
Department of Computer Science, University of Pittsburgh, Pittsburgh, PA.
Acad Emerg Med. 2016 May;23(5):628-36. doi: 10.1111/acem.12925. Epub 2016 Apr 13.
Delayed diagnosis of Kawasaki disease (KD) may lead to serious cardiac complications. We sought to create and test the performance of a natural language processing (NLP) tool, the KD-NLP, in the identification of emergency department (ED) patients for whom the diagnosis of KD should be considered.
We developed an NLP tool that recognizes the KD diagnostic criteria based on standard clinical terms and medical word usage using 22 pediatric ED notes augmented by Unified Medical Language System vocabulary. With high suspicion for KD defined as fever and three or more KD clinical signs, KD-NLP was applied to 253 ED notes from children ultimately diagnosed with either KD or another febrile illness. We evaluated KD-NLP performance against ED notes manually reviewed by clinicians and compared the results to a simple keyword search.
KD-NLP identified high-suspicion patients with a sensitivity of 93.6% and specificity of 77.5% compared to notes manually reviewed by clinicians. The tool outperformed a simple keyword search (sensitivity = 41.0%; specificity = 76.3%).
KD-NLP showed comparable performance to clinician manual chart review for identification of pediatric ED patients with a high suspicion for KD. This tool could be incorporated into the ED electronic health record system to alert providers to consider the diagnosis of KD. KD-NLP could serve as a model for decision support for other conditions in the ED.
川崎病(KD)的延迟诊断可能导致严重的心脏并发症。我们试图创建并测试一种自然语言处理(NLP)工具——KD-NLP,用于识别急诊科(ED)中应考虑诊断为KD的患者。
我们开发了一种NLP工具,该工具基于标准临床术语和医学词汇用法,利用统一医学语言系统词汇表增强的22份儿科急诊记录来识别KD诊断标准。将高度怀疑为KD定义为发热且伴有三种或更多KD临床体征,将KD-NLP应用于最终诊断为KD或其他发热性疾病的253名儿童的急诊记录。我们根据临床医生人工审核的急诊记录评估KD-NLP的性能,并将结果与简单的关键词搜索进行比较。
与临床医生人工审核的记录相比,KD-NLP识别高度怀疑患者的灵敏度为93.6%,特异度为77.5%。该工具的表现优于简单的关键词搜索(灵敏度 = 41.0%;特异度 = 76.3%)。
KD-NLP在识别高度怀疑为KD的儿科急诊患者方面,表现与临床医生人工病历审核相当。该工具可纳入急诊电子健康记录系统,以提醒医护人员考虑KD的诊断。KD-NLP可作为急诊科其他病症决策支持的模型。