PubMed ® is an essential resource for the medical domain, but useful concepts are either difficult to extract or are ambiguous, which has significantly hindered knowledge discovery. To address this issue, we constructed a PubMed knowledge graph (PKG) by extracting bio-entities from 29 million PubMed abstracts, disambiguating author names, integrating funding data through the National Institutes of Health (NIH) ExPORTER, collecting affiliation history and educational background of authors from ORCID ® , and identifying fine-grained affiliation data from MapAffil. Through the integration of these credible multi-source data, we could create connections among the bio-entities, authors, articles, affiliations, and funding. Data validation revealed that the BioBERT deep learning method of bio-entity extraction significantly outperformed the state-of-the-art models based on the F1 score (by 0.51%), with the author name disambiguation (AND) achieving an F1 score of 98.09%. PKG can trigger broader innovations, not only enabling us to measure scholarly impact, knowledge usage, and knowledge transfer, but also assisting us in profiling authors and organizations based on their connections with bio-entities. Measurement(s) textual entity • author information textual entity • funding source declaration textual entity • abstract • Biologic Entity Classification Technology Type(s) machine learning • computational modeling technique Machine-accessible metadata file describing the reported data: 10.6084/m9.figshare.12452597
【저자키워드】 Data integration, Data mining, Communication and replication, 【초록키워드】 knowledge, technology, classification, organization, Metadata, information, resource, connection, computational modeling, Abstract, domain, transfer, entity, Deep Learning Method, articles, funding source, significantly, reported, NIH, authors, ORCID, PubMed abstracts, 【제목키워드】 knowledge, building,