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Adapting Word Embeddings from Multiple Domains to Symptom Recognition from Psychiatric Notes

机译:将多个领域的词嵌入改编为精神病学笔记的症状识别

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摘要

Mental health is increasingly recognized an important topic in healthcare. Information concerning psychiatric symptoms is critical for the timely diagnosis of mental disorders, as well as for the personalization of interventions. However, the diversity and sparsity of psychiatric symptoms make it challenging for conventional natural language processing techniques to automatically extract such information from clinical text. To address this problem, this study takes the initiative to use and adapt word embeddings from four source domains – intensive care, biomedical literature, Wikipedia and Psychiatric Forum – to recognize symptoms in the target domain of psychiatry. We investigated four different approaches including 1) only using word embeddings of the source domain, 2) directly combining data of the source and target to generate word embeddings, 3) assigning different weights to word embeddings, and 4) retraining the word embedding model of the source domain using a corpus of the target domain. To the best of our knowledge, this is the first work of adapting multiple word embeddings of external domains to improve psychiatric symptom recognition in clinical text. Experimental results showed that the last two approaches outperformed the baseline methods, indicating the effectiveness of our new strategies to leverage embeddings from other domains.
机译:心理健康越来越被认为是医疗保健中的重要话题。有关精神病症状的信息对于及时诊断精神障碍以及个性化干预措施至关重要。但是,精神病症状的多样性和稀疏性使得传统自然语言处理技术难以从临床文本中自动提取此类信息。为了解决这个问题,本研究主动使用并改编了来自四个来源域的单词嵌入-重症监护,生物医学文献,维基百科和精神病学论坛-以识别精神病学目标域中的症状。我们研究了四种不同的方法,包括:1)仅使用源域的词嵌入,2)直接组合源和目标的数据以生成词嵌入,3)为词嵌入分配不同的权重,以及4)重新训练图的词嵌入模型源域使用目标域的语料库。据我们所知,这是适应外部域的多个单词嵌入以改善临床文本中的精神病症状识别的第一项工作。实验结果表明,后两种方法的性能优于基准方法,这表明我们采用新策略来利用来自其他域的嵌入的有效性。

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