Adverse drug events (ADEs) are unexpected incidents caused by the administration of a drug or medication. To identify and extract these events, we require information about not just the drug itself but attributes describing the drug (e.g., strength, dosage), the reason why the drug was initially prescribed, and any adverse reaction to the drug. This paper explores the relationship between a drug and its associated attributes using relation extraction techniques. We explore three approaches: a rule-based approach, a deep learning-based approach, and a contextualized language model-based approach. We evaluate our system on the n2c2-2018 ADE extraction dataset. Our experimental results demonstrate that the contextualized language model-based approach outperformed other models overall and obtain the state-of-the-art performance in ADE extraction with a Precision of 0.93, Recall of 0.96, and an $F_1$ score of 0.94; however, for certain relation types, the rule-based approach obtained a higher Precision and Recall than either learning approach.
翻译:反向药物事件(ADEs)是药物或药物使用造成的意外事件。为了识别和提取这些事件,我们不仅需要关于药物本身的信息,还需要描述药物特征的信息(例如,强度、剂量)、最初处方药物的原因和对药物的任何不利反应。本文探讨药物与使用相关提取技术的相关特征之间的关系。我们探讨三种方法:基于规则的方法、基于深层次学习的方法和基于背景的语言模型方法。我们评估了我们关于n2c2-2018ADE提取数据集的系统。我们的实验结果表明,基于背景的语言模型方法比其他模型总体完善,并获得了亚非药物提取的最新性能,精确度为0.93,回顾0.96,以及0.94美元分;然而,对于某些关系类型,基于规则的方法获得了比两种学习方法更高的精度和回顾。