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Adverse Drug Event Detection Using a Weakly Supervised Convolutional Neural Network and Recurrent Neural Network Model

机译:使用弱监督卷积神经网络和递归神经网络模型的药品不良事件检测

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Social media and health-related forums, including the expression of customer reviews, have recently provided data sources for adverse drug reaction (ADR) identification research. However, in the existing methods, the neglect of noise data and the need for manually labeled data reduce the accuracy of the prediction results and greatly increase manual labor. We propose a novel architecture named the weakly supervised mechanism (WSM) convolutional neural network (CNN) long-short-term memory (WSM-CNN-LSTM), which combines the strength of CNN and bi-directional long short-term memory (Bi-LSTM). The WSM applies the weakly labeled data to pre-train the parameters of the model and then uses the labeled data to fine-tune the initialized network parameters. The CNN employs a convolutional layer to study the characteristics of the drug reviews and active features at different scales, and then the feed-forward and feed-back neural networks of the Bi-LSTM utilize these salient features to output the regression results. The experimental results effectively demonstrate that our model marginally outperforms the comparison models in ADR identification and that a small quantity of labeled samples results in an optimal performance, which decreases the influence of noise and reduces the manual data-labeling requirements.
机译:社交媒体和与健康相关的论坛(包括表达客户评论)最近为药品不良反应(ADR)识别研究提供了数据来源。然而,在现有方法中,噪声数据的忽略以及对手动标记的数据的需求降低了预测结果的准确性,并极大地增加了人工。我们提出了一种新颖的架构,称为弱监督机制(WSM)卷积神经网络(CNN)长短期记忆(WSM-CNN-LSTM),该架构结合了CNN和双向长短期记忆(Bi -LSTM)。 WSM应用弱标记的数据来预训练模型的参数,然后使用标记的数据来微调初始化的网络参数。 CNN使用卷积层来研究药物评论的特征和不同规模的有效特征,然后Bi-LSTM的前馈和反馈神经网络利用这些显着特征输出回归结果。实验结果有效地证明了我们的模型在ADR识别方面略胜于比较模型,少量标记的样品可实现最佳性能,从而降低了噪声的影响并降低了手动数据标记的要求。

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