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Recognizing Mentions of Adverse Drug Reaction in Social Media Using Knowledge-Infused Recurrent Models

机译:使用知识注入的递归模型识别社交媒体中的药物不良反应

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Recognizing mentions of Adverse Drug Reactions (ADR) in social media is challenging: ADR mentions are context-dependent and include long, varied and unconventional descriptions as compared to more formal medical symptom terminology. We use the CADEC corpus to train a recurrent neural network (RNN) transducer, integrated with knowledge graph embeddings of DBpedia, and show the resulting model to be highly accurate (93.4 F1). Furthermore, even when lacking high quality expert annotations, we show that by employing an active learning technique and using purpose built annotation tools, we can train the RNN to perform well (83.9 F1).
机译:在社交媒体中识别药品不良反应(ADR)的举动是具有挑战性的:与更正式的医学症状术语相比,ADR提及是与上下文相关的,并且包含长而多样的非常规描述。我们使用CADEC语料库来训练递归神经网络(RNN)换能器,并与DBpedia的知识图嵌入集成在一起,并显示生成的模型非常准确(93.4 F1)。此外,即使缺乏高质量的专家注释,我们也表明,通过采用主动学习技术和使用专用的注释工具,我们可以训练RNN表现良好(83.9 F1)。

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