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Embedding Transfer for Low-Resource Medical Named Entity Recognition: A Case Study on Patient Mobility

机译:嵌入转移用于低资源医学命名实体识别:以患者移动性为例

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Functioning is gaining recognition as an important indicator of global health, but remains under-studied in medical natural language processing research. We present the first analysis of automatically extracting descriptions of patient mobility, using a recently-developed dataset of free text electronic health records. We frame the task as a named entity recognition (NER) problem, and investigate the applicability of NER techniques to mobility extraction. As text corpora focused on patient functioning are scarce, we explore domain adaptation of word embeddings for use in a recurrent neural network NER system. We find that embeddings trained on a small in-domain corpus perform nearly as well as those learned from large out-of-domain corpora, and that domain adaptation techniques yield additional improvements in both precision and recall. Our analysis identifies several significant challenges in extracting descriptions of patient mobility, including the length and complexity of annotated entities and high linguistic variability in mobility descriptions.
机译:运作是获得识别作为全球健康的重要指标,但在医学自然语言处理研究中仍然在研究过。我们使用最近开发的自由文本电子健康记录的数据集来提出自动提取患者移动性描述的第一次分析。我们将任务框架作为命名实体识别(NER)问题,并调查NER技术对移动提取的适用性。由于专注于患者功能的文本语料,我们探讨了用于反复性神经网络NER系统的Word Embeddings的域适应。我们发现,在小型域名语料品上培训的嵌入物几乎和那些从域外的语料库中学到的那些,以及域适应技术在精度和召回中产生了额外的改进。我们的分析识别提取患者移动性描述的几个重大挑战,包括推荐实体的长度和复杂性以及移动性描述中的高语言变异性。

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