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A comparative study of current clinical natural language processing systems on handling abbreviations in discharge summaries

机译:当前临床自然语言处理系统在处理放电摘要中的缩写的比较研究

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摘要

Clinical Natural Language Processing (NLP) systems extract clinical information from narrative clinical texts in many settings. Previous research mentions the challenges of handling abbreviations in clinical texts, but provides little insight into how well current NLP systems correctly recognize and interpret abbreviations. In this paper, we compared performance of three existing clinical NLP systems in handling abbreviations: MetaMap, MedLEE, and cTAKES. The evaluation used an expert-annotated gold standard set of clinical documents (derived from from 32 de-identified patient discharge summaries) containing 1,112 abbreviations. The existing NLP systems achieved suboptimal performance in abbreviation identification, with F-scores ranging from 0.165 to 0.601. MedLEE achieved the best F-score of 0.601 for all abbreviations and 0.705 for clinically relevant abbreviations. This study suggested that accurate identification of clinical abbreviations is a challenging task and that more advanced abbreviation recognition modules might improve existing clinical NLP systems.
机译:临床自然语言处理(NLP)系统在许多情况下都从叙述性临床文本中提取临床信息。先前的研究提到了在临床文本中处理缩写的挑战,但是对于当前的NLP系统如何正确识别和解释缩写却知之甚少。在本文中,我们比较了三种现有的临床NLP系统在处理缩写时的性能:MetaMap,MedLEE和cTAKES。评估使用了由专家注释的金标准临床文件集(来自32个身份不明的患者出院摘要),其中包含1,112个缩写。现有的NLP系统在缩写识别方面表现不佳,F分数在0.165至0.601之间。 MedLEE的所有缩写的最佳F得分均为0.601,临床上相关的缩写的最佳F得分为0.705。这项研究表明,准确识别临床缩写词是一项艰巨的任务,而更高级的缩写词识别模块可能会改善现有的临床NLP系统。

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