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A Deep Learning Based Named Entity Recognition Approach for Adverse Drug Events Identification and Extraction in Health Social Media

机译:基于深度学习的命名实体识别方法,用于健康社交媒体中不良药物事件的识别和提取

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Drug safety surveillance plays a significant role in supporting medication decision-making by both healthcare providers and patients. Extracting adverse drug events (ADEs) from social media provides a promising direction to addressing this challenging task. Prior studies typically perform lexicon-based extraction using existing dictionaries or medical lexicons. While those approaches can capture ADEs and identify risky drugs from patient social media postings, they often fail to detect those ADEs whose descriptive words do not exist in medical lexicons and dictionaries. In addition, their performance is inferior when ADE related social media content is expressed in an ambiguous manner. In this research, we propose a research framework using advanced natural language processing and deep learning for high-performance ADE extraction. The framework consists of training the word embeddings using a large medical domain corpus to capture precise semantic and syntactic word relationships, and a deep learning based named entity recognition method for drug and ADE entity identification and prediction. Experimental results show that our framework significantly outperforms existing models when extracting ADEs from social media in different test beds.
机译:药物安全监视在支持医疗保健提供者和患者做出药物决策方面起着重要作用。从社交媒体中提取药品不良事件(ADEs)为解决这一具有挑战性的任务提供了一个有希望的方向。先前的研究通常使用现有词典或医学词典来执行基于词典的提取。虽然这些方法可以捕获ADE并从患者的社交媒体帖子中识别出危险药物,但它们通常无法检测出其描述性词在医学词典和词典中不存在的ADE。另外,当以不明确的方式表达与ADE相关的社交媒体内容时,它们的性能也较差。在这项研究中,我们提出了一个使用高级自然语言处理和深度学习来实现高性能ADE提取的研究框架。该框架包括使用大型医学领域语料库训练单词嵌入以捕获精确的语义和句法单词关系,以及用于药物和ADE实体识别和预测的基于深度学习的命名实体识别方法。实验结果表明,当从不同测试平台的社交媒体中提取ADE时,我们的框架明显优于现有模型。

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