Biomedical event extraction with a novel combination strategy based on hybrid deep neural networks

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Abstract

Background: Biomedical event extraction is a fundamental and in-demand technology that has attracted substantial interest from many researchers. Previous works have heavily relied on manual designed features and external NLP packages in which the feature engineering is large and complex. Additionally, most of the existing works use the pipeline process that breaks down a task into simple sub-tasks but ignores the interaction between them. To overcome these limitations, we propose a novel event combination strategy based on hybrid deep neural networks to settle the task in a joint end-to-end manner. Results: We adapted our method to several annotated corpora of biomedical event extraction tasks. Our method achieved state-of-the-art performance with noticeable overall F1 score improvement compared to that of existing methods for all of these corpora. Conclusions: The experimental results demonstrated that our method is effective for biomedical event extraction. The combination strategy can reconstruct complex events from the output of deep neural networks, while the deep neural networks effectively capture the feature representation from the raw text. The biomedical event extraction implementation is available online; http://www.predictor.xin/event_extraction; http://2013.bionlp-st.org/tasks; http://nactem.ac.uk/MLEE/.Otherwise, please provide alternatives.

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Zhu, L., & Zheng, H. (2020). Biomedical event extraction with a novel combination strategy based on hybrid deep neural networks. BMC Bioinformatics, 21(1). https://doi.org/10.1186/s12859-020-3376-2

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