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Bio-semantic Relation Extraction with Attention-based External Knowledge Reinforcement

Overview
Publisher Biomed Central
Specialty Biology
Date 2020 May 26
PMID 32448122
Citations 1
Authors
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Abstract

Background: Semantic resources such as knowledge bases contains high-quality-structured knowledge and therefore require significant effort from domain experts. Using the resources to reinforce the information retrieval from the unstructured text may further exploit the potentials of such unstructured text resources and their curated knowledge.

Results: The paper proposes a novel method that uses a deep neural network model adopting the prior knowledge to improve performance in the automated extraction of biological semantic relations from the scientific literature. The model is based on a recurrent neural network combining the attention mechanism with the semantic resources, i.e., UniProt and BioModels. Our method is evaluated on the BioNLP and BioCreative corpus, a set of manually annotated biological text. The experiments demonstrate that the method outperforms the current state-of-the-art models, and the structured semantic information could improve the result of bio-text-mining.

Conclusion: The experiment results show that our approach can effectively make use of the external prior knowledge information and improve the performance in the protein-protein interaction extraction task. The method should be able to be generalized for other types of data, although it is validated on biomedical texts.

Citing Articles

Lisen&Curate: A platform to facilitate gathering textual evidence for curation of regulation of transcription initiation in bacteria.

Diaz-Rodriguez M, Lithgow-Serrano O, Guadarrama-Garcia F, Tierrafria V, Gama-Castro S, Solano-Lira H Biochim Biophys Acta Gene Regul Mech. 2021; 1864(11-12):194753.

PMID: 34461312 PMC: 10155859. DOI: 10.1016/j.bbagrm.2021.194753.

References
1.
Sun T, Zhou B, Lai L, Pei J . Sequence-based prediction of protein protein interaction using a deep-learning algorithm. BMC Bioinformatics. 2017; 18(1):277. PMC: 5445391. DOI: 10.1186/s12859-017-1700-2. View

2.
Zhou H, Yang Y, Ning S, Liu Z, Lang C, Lin Y . Combining Context and Knowledge Representations for Chemical-Disease Relation Extraction. IEEE/ACM Trans Comput Biol Bioinform. 2018; 16(6):1879-1889. DOI: 10.1109/TCBB.2018.2838661. View

3.
Zhou H, Liu Z, Ning S, Yang Y, Lang C, Lin Y . Leveraging prior knowledge for protein-protein interaction extraction with memory network. Database (Oxford). 2018; 2018. PMC: 6047414. DOI: 10.1093/database/bay071. View

4.
Schultz T, Medina J, Hill A, Quatrano R . 14-3-3 proteins are part of an abscisic acid-VIVIPAROUS1 (VP1) response complex in the Em promoter and interact with VP1 and EmBP1. Plant Cell. 1998; 10(5):837-47. PMC: 144375. DOI: 10.1105/tpc.10.5.837. View

5.
Gallet X, Charloteaux B, Thomas A, Brasseur R . A fast method to predict protein interaction sites from sequences. J Mol Biol. 2000; 302(4):917-26. DOI: 10.1006/jmbi.2000.4092. View