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Recognizing Continuous and Discontinuous Adverse Drug Reaction Mentions from Social Media Using LSTM-CRF

机译:使用LSTM-CRF识别社交媒体中持续和不连续的药物不良反应

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Social media in medicine, where patients can express their personal treatment experiences by personal computers and mobile devices, usually contains plenty of useful medical information, such as adverse drug reactions (ADRs); mining this useful medical information from social media has attracted more and more attention from researchers. In this study, we propose a deep neural network (called LSTM-CRF) combining long short-term memory (LSTM) neural networks (a type of recurrent neural networks) and conditional random fields (CRFs) to recognize ADR mentions from social media in medicine and investigate the effects of three factors on ADR mention recognition. The three factors are as follows representation for continuous and discontinuous ADR mentions two novel representations, that is, “BIOHD“ and “Multilabel,“ are compared; subject of posts each post has a subject (i.e., drug here); and external knowledge bases. Experiments conducted on a benchmark corpus, that is, CADEC, show that LSTM-CRF achieves better -score than CRF; “Multilabel“ is better in representing continuous and discontinuous ADR mentions than “BIOHD“; both subjects of comments and external knowledge bases are individually beneficial to ADR mention recognition. To the best of our knowledge, this is the first time to investigate deep neural networks to mine continuous and discontinuous ADRs from social media.
机译:医学上的社交媒体可以使患者通过个人计算机和移动设备表达自己的个人治疗经验,该媒体通常包含大量有用的医学信息,例如药物不良反应(ADR);从社交媒体中挖掘有用的医学信息吸引了越来越多的研究人员关注。在这项研究中,我们提出了一个深度神经网络(称为LSTM-CRF),它将长短期记忆(LSTM)神经网络(一种递归神经网络)与条件随机场(CRF)相结合,以识别来自社交媒体中的ADR提及医学和调查三个因素对ADR提及识别的影响。这三个因素如下:连续和不连续ADR的表示法提到了两种新颖的表示法,即“ BIOHD”和“ Multilabel”。帖子主题每个帖子都有一个主题(即此处的毒品);和外部知识库。在基准语料库CADEC上进行的实验表明,LSTM-CRF的得分高于CRF;与“ BIOHD”相比,“多标签”在代表连续和不连续的ADR提及方面表现更好;评论主题和外部知识库都分别对ADR提及识别有利。据我们所知,这是第一次研究深度神经网络来挖掘社交媒体中连续和不连续的ADR。

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