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Performance evaluation of a natural language processing tool to extract infectious disease problems.

机译:评估传染病问题的自然语言处理工具的性能评估。

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摘要

Use of a complete problem list can benefit patient care, quality improvement initiatives, and research activities. However, it can be time consuming for physicians to enter the correct encoded problem from a standardized terminology. I evaluated Discern nCode, the natural language processing (NLP) system embedded in Cerner Powerchart at Harborview Medical Center (HMC), for its utility to add Infectious Diseases (ID) problems to the electronic medical record problem list, in comparison with the usual practice of physicians adding problems unaided by NLP. 74 ID consultation notes were annotated by human experts to create gold standard problem lists. NLP-extracted problems and problem list entries were recorded for each note. Recall, precision and f-measure were calculated for nCode and the problem list, and an error analysis was performed to describe false positives and missed concepts. Discern nCode's recall was .65 and precision was .14. Problem list recall was .10 and precision was .43. Many false negatives resulted from partial matches between NLP-extracted and reference standard problems. The majority of false positives were due to inclusion of past medical problems and non-ID problems; nearly 20% of false positives should not have been extracted. Discern nCode had significantly higher recall for ID problems than the problem list. Recommendations are provided for increasing system sensitivity and recall. Overall, nCode could be a useful facilitator of problem entry and result in higher problem list completeness, but recall should be increased.
机译:使用完整的问题清单可以使患者护理,质量改善计划和研究活动受益。但是,对于医生来说,从标准化术语中输入正确的编码问题可能会很耗时。我评估了Discern nCode(嵌入Harbourview医疗中心(HMC)Cerner Powerchart的自然语言处理(NLP)系统)的实用性,与常规做法相比,它可以将传染病(ID)问题添加到电子病历问题列表中的医生增加了NLP带来的问题。人类专家对74份ID咨询笔记进行了注释,以创建黄金标准问题列表。为每个注释记录了NLP提取的问题和问题列表条目。召回率,精确度和f量度针对nCode和问题列表进行了计算,并进行了错误分析以描述误报和遗漏的概念。分辨nCode的召回率为.65,精度为.14。问题清单的召回率为.10,精确度为.43。 NLP提取的参考标准问题与部分标准匹配问题导致许多误报。大部分误报归因于过去的医疗问题和非身分证问题;不应提取将近20%的误报。识别出的nCode对ID问题的回忆远高于问题列表。提供了有关提高系统灵敏度和召回率的建议。总体而言,nCode可能是问题输入的有用促进者,并可以提高问题清单的完整性,但应提高召回率。

著录项

  • 作者

    Mandel, Hannah L.;

  • 作者单位

    University of Washington.;

  • 授予单位 University of Washington.;
  • 学科 Bioinformatics.;Health care management.;Medicine.
  • 学位 Masters
  • 年度 2013
  • 页码 45 p.
  • 总页数 45
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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