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Named Entity Recognition from Table Headers in Randomized Controlled Trial Articles

机译:从随机对照试验文章中的表格标题命名实体识别

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Tables in biomedical articles often contain important information of research findings. However, they are often not available for direct uses by downstream computational applications due to its unstructured nature, with both structural and semantic complexity. In this study, we developed a deep learning-based approach that takes contextual information into consideration to recognize biomedical entities in tables headers in Randomized Controlled Trial (RCT) articles, using a manually annotated corpus. Our evaluation shows that it achieved good performance with an F1 score of 92.60% for entity recognition in headers. We believe the proposed approach for table information extraction, as well as the developed annotated corpus, would be great resources for biomedical text mining, thus facilitating other biomedical research and applications.
机译:生物医学物品中的表通常包含研究结果的重要信息。然而,由于其非结构化性质,它们通常无法直接用于下游计算应用程序,具有结构和语义复杂性。在这项研究中,我们开发了一种基于深度学习的方法,考虑到识别随机对照试验(RCT)文章中的表格中的生物医学实体,使用手动注释的语料库来识别生物医学实体。我们的评价表明,它在标题中的实体识别的F1得分为92.60%的良好表现。我们认为,拟议的表信息提取方法以及发达的注释语料库将是生物医学宣传的巨大资源,从而促进其他生物医学研究和应用。

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