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Structuring unstructured clinical narratives in OpenMRS with medical concept extraction

机译:通过医学概念提取在OpenMRS中构建非结构化的临床叙事

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We have developed a new software module for the open source Electronic Medical Record System OpenMRS to analyze unstructured clinical narratives. This module leverages Named Entity Recognition (NER) to deliver concise, semantic-type driven, interactive summaries of clinical notes. To this end, we performed an extensive empirical evaluation of four Named Entity Recognition (NER) systems using textual clinical narratives and full biomedical journal articles. The four NER systems under evaluation are MetaMap, cTAKES, BANNER. We studied several ensemble approaches built upon the above four NER systems to exploit their collaborative strengths. Evaluations are performed on the manually annotated patient discharge summaries from the Informatics for Integrating Biology and the Bedside group (I2B2) and the CRAFT dataset. The main results include (1) BANNER significantly outperforms the other three systems on the I2B2 dataset with F1 values in the range of .73-.89, in contrast to .28 - .60 of other systems; and (2) Surprisingly, an ensemble approach of BANNER with any combinations of the other three approaches tends to degrade the performance by .08 - .11 in F1 when evaluated on the I2B2 dataset. Based on the evaluation results, we have developed a BANNER-based NER module for OpenMRS to recognize semantic concepts including problems, tests, and treatments. This module works with OpenMRS versions 2.×. The user interface presents concise clinical notes summaries and allows the user to filter, search and view the context of the concepts. We have also developed a companion web application to retrain the BANNER model using data from OpenMRS. The module and source code are available at wiki.openmrs.org/display/docs/Visit+Notes+Analysis+Module.
机译:我们开发了一个新的软件模块,用于开源电子医疗记录系统OpenMRS分析非结构化的临床叙述。该模块利用命名实体识别(ner)来提供简明,语义类型驱动的临床笔记的交互式汇总。为此,我们对使用文本临床叙述和全部生物医学期刊文章进行了广泛的四个名为实体识别(NER)系统的实证评估。在评估中的四个NER系统是Metamap,Ctakes,横幅。我们研究了建立在上述四个内系统的几种集合方法,以利用其协同优势。对来自信息学的手动注释的患者放电摘要进行评估,用于整合生物学和床头群(I2B2)和工艺数据集。主要结果包括(1)横幅显着优于I2B2数据集上的其他三个系统,其与.73-.89的范围内的F1值相比。28 - .60的其他系统; (2)令人惊讶的是,当在I2B2数据集上评估时,其他三种方法的任何组合的横幅与其他三种方法的组合往往会降低横幅的集合方法。根据评估结果,我们开发了一个基于横幅的NER模块,用于识别语义概念,包括问题,测试和治疗。此模块适用于OpenMRS版本2.×。用户界面介绍简明扼要的临床注意事项,并允许用户过滤,搜索和查看概念的上下文。我们还开发了一个伴侣Web应用程序,可以使用OpenMRS的数据培训横幅模型。模块和源代码可在wiki.openmrs.org/display/docs/visit anylestes +Nalysis +Module上获得。

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