Litcius/Paper detail

Biomedical Relation Extraction With Knowledge Graph-Based Recommendations

Diana Sousa, Francisco M. Couto

2022IEEE Journal of Biomedical and Health Informatics33 citationsDOIOpen Access PDF

Abstract

Biomedical Relation Extraction (RE) systems identify and classify relations between biomedical entities to enhance our knowledge of biological and medical processes. Most state-of-the-art systems use deep learning approaches, mainly to target relations between entities of the same type, such as proteins or pharmacological substances. However, these systems are mostly restricted to what they directly identify on the text and ignore specialized domain knowledge bases, such as ontologies, that formalize and integrate biomedical information typically structured as direct acyclic graphs. On the other hand, Knowledge Graph (KG)-based recommendation systems already showed the importance of integrating KGs to add additional features to items. Typical systems have users as people and items that can range from movies to books, which people saw or read and classified according to their satisfaction rate. This work proposes to integrate KGs into biomedical RE through a recommendation model to further improve their range of action. We developed a new RE system, named K-BiOnt, by integrating a baseline state-of-the-art deep biomedical RE system with an existing KG-based recommendation state-of-the-art system. Our results show that adding recommendations from KG-based recommendation improves the system's ability to identify true relations that the baseline deep RE model could not extract from the text. The code supporting this system is available at https://github.com/lasigeBioTM/K-BiOnt.

Topics & Concepts

Computer scienceRelationship extractionRelation (database)Knowledge graphRecommender systemBaseline (sea)Information retrievalCode (set theory)GraphDomain knowledgeDomain (mathematical analysis)Open Biomedical OntologiesArtificial intelligenceInformation extractionData scienceData miningTheoretical computer scienceProgramming languageSuggested Upper Merged OntologyMathematicsGeologyMathematical analysisOceanographyProcess ontologySet (abstract data type)Biomedical Text Mining and OntologiesSemantic Web and OntologiesBioinformatics and Genomic Networks