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首页> 外文期刊>Studies in Health Technology and Informatics >Evaluation of Medical Problem Extraction from Electronic Clinical Documents Using MetaMap Transfer (MMTx)
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Evaluation of Medical Problem Extraction from Electronic Clinical Documents Using MetaMap Transfer (MMTx)

机译:使用MetaMap Transfer(MMTx)从电子临床文档中提取医学问题的评估

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摘要

To improve the use and quality of the electronic Problem List, which is at the heart of the problem-oriented medical record in development in our institution (Intermountain Health Care, Utah. U.S.), we developed an Automated Problem List system using Natural Language Processing (NLP) technologies. A key part of this system is a module that automatically extracts potential medical problems from free-text clinical documents. The NLP module uses MMTx, developed at the U.S. National Library of Medicine. Negation detection was added to this application by adapting a negation detection algorithm called NegEx. To evaluate the adequacy of the performance of the NLP module for our Automated Problem List system, we evaluated it with 160 electronic clinical documents of different types. Two different data sets for MMTx were used: the default full UMLS data set and a customised subset adapted to detect the set of 80 medical problems we are interested in. With the default data set, we measured a recall of 0.74 (95% CI 0.68-0.8) and a precision of 0.76 (0.69-0.82). The customised subset had a significantly better recall of 0.9 (0.85-0.94), and a non-significantly different precision of 0.69 (0.63-0.75).
机译:为了提高电子问题清单的使用和质量,这是我们机构(美国犹他州Intermountain Health Care)开发中以问题为导向的病历的核心,我们开发了使用自然语言处理的自动问题清单系统(NLP)技术。该系统的关键部分是一个模块,该模块可从自由文本临床文档中自动提取潜在的医学问题。 NLP模块使用由美国国家医学图书馆开发的MMTx。否定检测是通过适应称为NegEx的否定检测算法而添加到此应用程序的。为了评估NLP模块对我们的“自动问题列表”系统的性能是否适当,我们使用160种不同类型的电子临床文档对其进行了评估。使用了两个不同的MMTx数据集:默认的完整UMLS数据集和用于检测我们感兴趣的80个医疗问题的定制子集。使用默认数据集,我们得出的召回率为0.74(95%CI 0.68) -0.8)和0.76(0.69-0.82)的精度。定制子集的召回率明显更好,为0.9(0.85-0.94),精确度无明显差异,为0.69(0.63-0.75)。

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