Attention-Gated Graph Convolutions for Extracting Drug Interaction Information from Drug Labels.

Tung Tran, Ramakanth Kavuluru, Halil Kilicoglu
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引用次数: 3

Abstract

Preventable adverse events as a result of medical errors present a growing concern in the healthcare system. As drug-drug interactions (DDIs) may lead to preventable adverse events, being able to extract DDIs from drug labels into a machine-processable form is an important step toward effective dissemination of drug safety information. Herein, we tackle the problem of jointly extracting mentions of drugs and their interactions, including interaction outcome, from drug labels. Our deep learning approach entails composing various intermediate representations, including graph-based context derived using graph convolutions (GCs) with a novel attention-based gating mechanism (holistically called GCA), which are combined in meaningful ways to predict on all subtasks jointly. Our model is trained and evaluated on the 2018 TAC DDI corpus. Our GCA model in conjunction with transfer learning performs at 39.20% F1 and 26.09% F1 on entity recognition (ER) and relation extraction (RE), respectively, on the first official test set and at 45.30% F1 and 27.87% F1 on ER and RE, respectively, on the second official test set. These updated results lead to improvements over our prior best by up to 6 absolute F1 points. After controlling for available training data, the proposed model exhibits state-of-the-art performance for this task.

从药物标签中提取药物相互作用信息的注意门控图卷积。
医疗失误导致的可预防不良事件在医疗系统中引起了越来越多的关注。由于药物-药物相互作用(DDI)可能导致可预防的不良事件,能够将药物标签中的DDI提取成机器可处理的形式是有效传播药物安全信息的重要一步。在此,我们解决了从药物标签中联合提取药物及其相互作用的提及,包括相互作用结果的问题。我们的深度学习方法需要组合各种中间表示,包括使用图卷积(GC)和一种新的基于注意力的门控机制(整体称为GCA)导出的基于图的上下文,它们以有意义的方式组合在一起,共同预测所有子任务。我们的模型在2018 TAC-DDI语料库上进行了训练和评估。我们的GCA模型与迁移学习相结合,在第一个官方测试集上,在实体识别(ER)和关系提取(RE)上的表现分别为39.20%和26.09%,在第二个官方测试集中,在ER和RE上分别为45.30%和27.87%。这些更新的结果比我们之前的最佳成绩提高了6个绝对F1积分。在控制了可用的训练数据后,所提出的模型在这项任务中表现出了最先进的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
10.30
自引率
0.00%
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