Litcius/Paper detail

Research on Medical Question Answering System Based on Knowledge Graph

Zhixue Jiang, Chengying Chi, Yunyun Zhan

2021IEEE Access79 citationsDOIOpen Access PDF

Abstract

To meet the high-efficiency question answering needs of existing patients and doctors, this system integrates medical professional knowledge, knowledge graphs, and question answering systems that conduct man-machine dialogue through natural language. This system locates the medical field, uses crawler technology to use vertical medical websites as data sources, and uses diseases as the core entity to construct a knowledge graph containing 44,000 knowledge entities of 7 types and 300,000 entities of 11 kinds. It is stored in the Neo4j graph database, using rule-based matching methods and string-matching algorithms to construct a domain lexicon to classify and query questions. This system has specific practical value in the medical field knowledge graph and question answering system.

Topics & Concepts

Computer scienceQuestion answeringConstruct (python library)Information retrievalLexiconGraph databaseKnowledge graphGraphKnowledge-based systemsDomain knowledgeField (mathematics)Knowledge extractionArtificial intelligenceTheoretical computer scienceProgramming languageMathematicsPure mathematicsTopic ModelingAdvanced Graph Neural NetworksData Quality and Management