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TP-DDI: Transformer-based pipeline for the extraction of Drug-Drug Interactions

机译:TP-DDI:基于变压器的管道,用于提取药物 - 药物相互作用

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摘要

Drug-Drug Interaction (DDI) extraction is the task of identifying drug entities and the potential interactions between drug pairs from biomedical literature. Computer-aided extraction of DDIs is vital for drug discovery, as this process remains extremely expensive and time consuming. Therefore, Machine Learning-based approaches can reduce the laborious task during the drug development cycle. Numerous traditional and Neural Network based approaches for Drug Named Entity Recognition (DNER) and the classification of DDIs have been proposed over the years. However, despite the development of many effective methods, achieving good prediction accuracy is an area where significant improvement can be made. In this article, we present a novel end-to-end approach that tackles the overall DDI extraction task as a pipelined method via the Transformer model architecture and biomedical domain pre-trained weights. In our approach, the tasks of DNER and DDI classification are executed successively to extract the drug entities and to classify their relationship respectively. The proposed approach, TP-DDI, integrates prior knowledge by using pre-trained weights from BioBERT and improves in both the Drug Named Entity Recognition and the overall DDI extraction task over the current state-of-the-art approaches on the DDI Extraction 2013 corpus.
机译:药物 - 药物相互作用(DDI)提取是鉴定药物实体的任务以及来自生物医学文献的药物对之间的潜在相互作用。计算机辅助提取DDIS对药物发现至关重要,因为该过程仍然非常昂贵且耗时。因此,基于机器学习的方法可以减少药物开发循环期间的艰苦任务。多年来提出了许多基于药物名为实体识别(DNER)的传统和神经网络的基于网络的方法和DDIS的分类。然而,尽管发展了许多有效的方法,但实现了良好的预测精度是可以进行显着改善的领域。在本文中,我们提出了一种新的端到端方法,通过变压器模型架构和生物医学域预先训练的重量将整体DDI提取任务作为流水线方法。在我们的方法中,DNER和DDI分类的任务是连续执行的,以提取药物实体并分别对其进行分类。所提出的方法TP-DDI,通过使用Biobert预先训练的重量来集成先验知识,并在DDI提取的当前最先进的方法中提高了目前的最先进方法的药物识别和整体DDI提取任务语料库。

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