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首页> 外文期刊>BMC Bioinformatics >Adverse drug reaction detection via a multihop self-attention mechanism
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Adverse drug reaction detection via a multihop self-attention mechanism

机译:通过多跳自我注意机制进行药物不良反应检测

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The adverse reactions that are caused by drugs are potentially life-threatening problems. Comprehensive knowledge of adverse drug reactions (ADRs) can reduce their detrimental impacts on patients. Detecting ADRs through clinical trials takes a large number of experiments and a long period of time. With the growing amount of unstructured textual data, such as biomedical literature and electronic records, detecting ADRs in the available unstructured data has important implications for ADR research. Most of the neural network-based methods typically focus on the simple semantic information of sentence sequences; however, the relationship of the two entities depends on more complex semantic information. In this paper, we propose multihop self-attention mechanism (MSAM) model that aims to learn the multi-aspect semantic information for the ADR detection task. first, the contextual information of the sentence is captured by using the bidirectional long short-term memory (Bi-LSTM) model. Then, via applying the multiple steps of an attention mechanism, multiple semantic representations of a sentence are generated. Each attention step obtains a different attention distribution focusing on the different segments of the sentence. Meanwhile, our model locates and enhances various keywords from the multiple representations of a sentence. Our model was evaluated by using two ADR corpora. It is shown that the method has a stable generalization ability. Via extensive experiments, our model achieved F-measure of 0.853, 0.799 and 0.851 for ADR detection for TwiMed-PubMed, TwiMed-Twitter, and ADE, respectively. The experimental results showed that our model significantly outperforms other compared models for ADR detection. In this paper, we propose a modification of multihop self-attention mechanism (MSAM) model for an ADR detection task. The proposed method significantly improved the learning of the complex semantic information of sentences.
机译:药物引起的不良反应可能会危及生命。对药物不良反应(ADR)的全面了解可以减少其对患者的有害影响。通过临床试验检测ADR需要大量的实验和较长的时间。随着非结构化文本数据(例如生物医学文献和电子记录)数量的增长,在可用的非结构化数据中检测ADR对ADR研究具有重要意义。大多数基于神经网络的方法通常集中于句子序列的简单语义信息。但是,两个实体的关系取决于更复杂的语义信息。在本文中,我们提出了一种多跳自注意机制(MSAM)模型,旨在学习用于ADR检测任务的多方面语义信息。首先,通过使用双向长短期记忆(Bi-LSTM)模型捕获句子的上下文信息。然后,通过应用注意力机制的多个步骤,生成句子的多个语义表示。每个关注步骤都会获得针对句子不同部分的不同关注分布。同时,我们的模型从句子的多种表示中找到并增强了各种关键词。我们的模型是通过使用两个ADR语料库进行评估的。结果表明,该方法具有稳定的泛化能力。通过广泛的实验,我们的模型分别针对TwiMed-PubMed,TwiMed-Twitter和ADE的ADR检测达到了0.853、0.799和0.851的F值。实验结果表明,我们的模型在ADR检测方面明显优于其他比较模型。在本文中,我们提出了一种针对ADR检测任务的多跳自注意机制(MSAM)模型的修改。该方法大大提高了句子复杂语义信息的学习能力。

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