MedGraph: A semantic biomedical information retrieval framework using knowledge graph embedding for PubMed.

Front Big Data

Department of Information Science, University of Arkansas at Little Rock, Little Rock, AR, United States.

Published: October 2022

Here we study the semantic search and retrieval problem in biomedical digital libraries. First, we introduce MedGraph, a knowledge graph embedding-based method that provides semantic relevance retrieval and ranking for the biomedical literature indexed in PubMed. Second, we evaluate our approach using PubMed's Best Match algorithm. Moreover, we compare our method MedGraph to a traditional TF-IDF-based algorithm. Third, we use a dataset extracted from PubMed, including 30 million articles' metadata such as abstracts, author information, citation information, and extracted biological entity mentions. We pull a subset of the dataset to evaluate MedGraph using predefined queries with ground truth ranked results. To our knowledge, this technique has not been explored before in biomedical information retrieval. In addition, our results provide some evidence that semantic approaches to search and relevance in biomedical digital libraries that rely on knowledge graph modeling offer better search relevance results when compared with traditional methods in terms of objective metrics.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9627348PMC
http://dx.doi.org/10.3389/fdata.2022.965619DOI Listing

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