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Clustering More than Two Million Biomedical Publications: Comparing the Accuracies of Nine Text-Based Similarity Approaches

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  • Kevin W Boyack
  • David Newman
  • Russell J Duhon
  • Richard Klavans
  • Michael Patek
  • Joseph R Biberstine
  • Bob Schijvenaars
  • André Skupin
  • Nianli Ma
  • Katy Börner

Abstract

Background: We investigate the accuracy of different similarity approaches for clustering over two million biomedical documents. Clustering large sets of text documents is important for a variety of information needs and applications such as collection management and navigation, summary and analysis. The few comparisons of clustering results from different similarity approaches have focused on small literature sets and have given conflicting results. Our study was designed to seek a robust answer to the question of which similarity approach would generate the most coherent clusters of a biomedical literature set of over two million documents. Methodology: We used a corpus of 2.15 million recent (2004-2008) records from MEDLINE, and generated nine different document-document similarity matrices from information extracted from their bibliographic records, including titles, abstracts and subject headings. The nine approaches were comprised of five different analytical techniques with two data sources. The five analytical techniques are cosine similarity using term frequency-inverse document frequency vectors (tf-idf cosine), latent semantic analysis (LSA), topic modeling, and two Poisson-based language models – BM25 and PMRA (PubMed Related Articles). The two data sources were a) MeSH subject headings, and b) words from titles and abstracts. Each similarity matrix was filtered to keep the top-n highest similarities per document and then clustered using a combination of graph layout and average-link clustering. Cluster results from the nine similarity approaches were compared using (1) within-cluster textual coherence based on the Jensen-Shannon divergence, and (2) two concentration measures based on grant-to-article linkages indexed in MEDLINE. Conclusions: PubMed's own related article approach (PMRA) generated the most coherent and most concentrated cluster solution of the nine text-based similarity approaches tested, followed closely by the BM25 approach using titles and abstracts. Approaches using only MeSH subject headings were not competitive with those based on titles and abstracts.

Suggested Citation

  • Kevin W Boyack & David Newman & Russell J Duhon & Richard Klavans & Michael Patek & Joseph R Biberstine & Bob Schijvenaars & André Skupin & Nianli Ma & Katy Börner, 2011. "Clustering More than Two Million Biomedical Publications: Comparing the Accuracies of Nine Text-Based Similarity Approaches," PLOS ONE, Public Library of Science, vol. 6(3), pages 1-11, March.
  • Handle: RePEc:plo:pone00:0018029
    DOI: 10.1371/journal.pone.0018029
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    10. Hanwen Xu & Addie Woicik & Hoifung Poon & Russ B. Altman & Sheng Wang, 2023. "Multilingual translation for zero-shot biomedical classification using BioTranslator," Nature Communications, Nature, vol. 14(1), pages 1-13, December.
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    14. Manuel A. Vázquez & Jorge Pereira-Delgado & Jesús Cid-Sueiro & Jerónimo Arenas-García, 2022. "Validation of scientific topic models using graph analysis and corpus metadata," Scientometrics, Springer;Akadémiai Kiadó, vol. 127(9), pages 5441-5458, September.
    15. Alicia Lara-Clares & Juan J Lastra-Díaz & Ana Garcia-Serrano, 2021. "Protocol for a reproducible experimental survey on biomedical sentence similarity," PLOS ONE, Public Library of Science, vol. 16(3), pages 1-28, March.
    16. Urdiales, Cristina & Guzmán, Eduardo, 2024. "An automatic and association-based procedure for hierarchical publication subject categorization," Journal of Informetrics, Elsevier, vol. 18(1).
    17. Ai Linh Nguyen & Wenyuan Liu & Khiam Aik Khor & Andrea Nanetti & Siew Ann Cheong, 2022. "Strategic differences between regional investments into graphene technology and how corporations and universities manage patent portfolios," Papers 2208.03719, arXiv.org.
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    19. Lovro Šubelj & Nees Jan van Eck & Ludo Waltman, 2016. "Clustering Scientific Publications Based on Citation Relations: A Systematic Comparison of Different Methods," PLOS ONE, Public Library of Science, vol. 11(4), pages 1-23, April.
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