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Mining clinical phrases from nursing notes to discover risk factors of patient deterioration

机译:从护理记录中挖掘临床短语以发现患者恶化的危险因素

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摘要

Objective: Early identification and treatment of patient deterioration is crucial to improving clinical outcomes. To act, hospital rapid response (RR) teams often rely on nurses' clinical judgement typically documented narratively in the electronic health record (EHR). We developed a data-driven, unsupervised method to discover potential risk factors of RR events from nursing notes.Methods: We applied multiple natural language processing methods, including language modelling, word embeddings, and two phrase mining methods (TextRank and NC-Value), to identify quality phrases that represent clinical entities from unannotated nursing notes. TextRank was used to determine the important word-sequences in each note. NC-Value was then used to globally rank the locally-important sequences across the whole corpus. We evaluated our method both on its accuracy compared to human judgement and on the ability of the mined phrases to predict a clinical outcome, RR event hazard.Results: When applied to 61,740 hospital encounters with 1,067 RR events and 778,955 notes, our method achieved an average precision of 0.590 to 0.764 (when excluding numeric tokens). Time-dependent covariates Cox model using the phrases achieved a concordance index of 0.739. Clustering the phrases revealed clinical concepts significantly associated with RR event hazard.Discussion: Our findings demonstrate that our minimal-annotation, unsurprised method can rapidly mine quality phrases from a large amount of nursing notes, and these identified phrases are useful for downstream tasks, such as clinical outcome predication and risk factor identification.
机译:目的:及早发现和治疗患者恶化对改善临床结局至关重要。要采取行动,医院快速反应(RR)团队通常依靠护士的临床判断,这些判断通常记录在电子健康记录(EHR)中。我们开发了一种数据驱动的无监督方法来从护理笔记中发现RR事件的潜在风险因素。方法:我们应用了多种自然语言处理方法,包括语言建模,单词嵌入和两种短语挖掘方法(TextRank和NC-Value) ,以从未注释的护理笔记中识别代表临床实体的优质短语。 TextRank用于确定每个音符中的重要单词顺序。然后使用NC值对整个语料库中的局部重要序列进行全局排名。我们评估了该方法的准确性(与人类判断相比)以及所用短语预测临床结果(RR事件危险)的能力。结果:当该方法应用于61,740例发生1,067 RR事件和778,955笔记的医院时,我们的方法达到了平均精度为0.590至0.764(不包括数字标记)。使用短语的时间相关协变量Cox模型获得的一致性指数为0.739。短语的聚类揭示了与RR事件危险显着相关的临床概念。讨论:我们的发现表明,我们的最小注释,不惊奇的方法可以从大量护理笔记中快速挖掘高质量的短语,并且这些已识别的短语对于下游任务很有用,例如作为临床结果的预测和危险因素的识别。

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  • 来源
    《International journal of medical informatics》 |2020年第3期|104053.1-104053.8|共8页
  • 作者

  • 作者单位

    Brigham & Womens Hosp Div Gen Internal Med & Primary Care Boston MA 02145 USA|Harvard Med Sch Boston MA 02115 USA;

    Columbia Univ Dept Biomed Informat New York NY USA|Columbia Univ Sch Nursing New York NY USA;

    Columbia Univ Sch Nursing New York NY USA;

    Brigham & Womens Hosp Div Gen Internal Med & Primary Care Boston MA 02145 USA;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Data mining; Nursing informatics; Hospital Rapid response team; Unsupervised machine learning;

    机译:数据挖掘;护理信息学;医院快速反应团队;无监督机器学习;

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