MedJEx: A Medical Jargon Extraction Model with Wiki's Hyperlink Span and Contextualized Masked Language Model Score.

Sunjae Kwon, Zonghai Yao, Harmon S Jordan, David A Levy, Brian Corner, Hong Yu
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Abstract

This paper proposes a new natural language processing (NLP) application for identifying medical jargon terms potentially difficult for patients to comprehend from electronic health record (EHR) notes. We first present a novel and publicly available dataset with expert-annotated medical jargon terms from 18K+ EHR note sentences (MedJ). Then, we introduce a novel medical jargon extraction (MedJEx) model which has been shown to outperform existing state-of-the-art NLP models. First, MedJEx improved the overall performance when it was trained on an auxiliary Wikipedia hyperlink span dataset, where hyperlink spans provide additional Wikipedia articles to explain the spans (or terms), and then fine-tuned on the annotated MedJ data. Secondly, we found that a contextualized masked language model score was beneficial for detecting domain-specific unfamiliar jargon terms. Moreover, our results show that training on the auxiliary Wikipedia hyperlink span datasets improved six out of eight biomedical named entity recognition benchmark datasets. Both MedJ and MedJEx are publicly available.

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MedJEx:一个具有Wiki超链接跨度和上下文化掩码语言模型分数的医学术语提取模型。
本文提出了一种新的自然语言处理(NLP)应用程序,用于从电子健康记录(EHR)笔记中识别患者可能难以理解的医学术语。我们首先提出了一个新的和公开可用的数据集,其中包含来自18K+ EHR笔记句子(MedJ)的专家注释的医学术语。然后,我们引入了一种新的医学术语提取(MedJEx)模型,该模型已被证明优于现有的最先进的NLP模型。首先,在辅助Wikipedia超链接跨度数据集上训练MedJEx时,MedJEx提高了整体性能,其中超链接跨度提供了额外的Wikipedia文章来解释跨度(或术语),然后对带注释的MedJ数据进行微调。其次,我们发现上下文化的掩蔽语言模型分数有助于检测特定领域的不熟悉术语。此外,我们的结果表明,在辅助维基百科超链接跨度数据集上的训练提高了8个生物医学命名实体识别基准数据集中的6个。MedJ和MedJEx都是公开的。
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