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Chemical-protein interaction extraction from biomedical literature: a hierarchical recurrent convolutional neural network method

机译:生物医学文献中的化学蛋白质相互作用提取:一种分层复发性卷积神经网络方法

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摘要

Mining chemical-protein interactions between chemicals and proteins plays vital roles in biomedical tasks, such as knowledge graph, pharmacology, and clinical research. Although chemical-protein interactions can be manually curated from the biomedical literature, the process is difficult and time-consuming. Hence, it is of great value to automatically obtain the chemical-protein interactions from biomedical literature. Recently, the most popular methods are based on the neural network to avoid complex manual processing. However, the performance is usually limited because of the lengthy and complicated sentences. To address this limitation, we propose a novel model, Hierarchical Recurrent Convolutional Neural Network (HRCNN), to learn hidden semantic and syntactic features from sentence sub-sequences effectively. Our approach achieves an F-score of 65.56% on the CHEMPROT corpus and outperforms the state-of-the-art systems. The experimental results demonstrate that our approach can greatly alleviate the defect of existing methods due to the existence of long sentences.
机译:挖掘化学品和蛋白质之间的化学蛋白质相互作用在生物医学任务中起着重要作用,例如知识图,药理学和临床研究。尽管化学蛋白质相互作用可以从生物医学文献中被手动策略,但该过程难以耗时。因此,自动获得生物医学文献的化学蛋白质相互作用是很大的价值。最近,最流行的方法基于神经网络,以避免复杂的手动处理。但是,由于冗长和复杂的句子,性能通常是有限的。为了解决这一限制,我们提出了一种新型模型,分层经常性卷积神经网络(HRCNN),从而有效地从句子子序列中学习隐藏的语义和句法特征。我们的方法在ChemProt语料库上实现了65.56%的F分,优于最先进的系统。实验结果表明,由于长期句子存在,我们的方法可以大大缓解现有方法的缺陷。

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