cover image: Document clustering and topic mdelling of scopus abstracts on phage therapy

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Document clustering and topic mdelling of scopus abstracts on phage therapy

17 Sep 2024

In recent years, the resurgence of phage therapy has garnered significant attention as a promising alternative to traditional antibiotics, offering a potential solution to the growing threat posed by antibiotic resistance. This study presents an in-depth analysis of the evolving trends, key themes, and gaps in phage therapy research, employing advanced computational techniques to systematically review and categorise a vast dataset of Scopus abstracts. The collection initially comprised 6002 articles, which was refined to 5122 documents after filtering out those without abstracts. We then applied natural language processing (NLP) techniques to the document set, including various approaches for document clustering and topic modelling. The calculated coherence of the topic modelling, performed using the novel BERTopic approach, indicates a reasonable level of interpretability of the obtained topics. This study not only categorises the evolving trends, key themes, and gaps in phage therapy research but also showcases the potential of combining NLP and machine learning for organizing scientific literature. It provides a nuanced understanding of the study theme and highlights areas for further investigation and policy development. Although the study focussed on phage therapy research, which is of high relevance due to the potential of phage therapy as an alternative to traditional antibiotics, the methodology employed is versatile and can be applied to various other disciplines, including climate and agriculture, environmental sciences, and economics. These key findings and insights underscore the transformative potential of advanced computational methods in shaping the future of scientific research and policy-making, particularly in addressing the pressing challenge of antimicrobial resistance and guiding strategic initiatives across various sectors.
machine learning disease prevention food safety antimicrobial resistance product quality scientific research report research method simulation infectious disease health control eu initiative information technology applications document plant disease policymaking eu strategy medicinal product

Authors

Joint Research Centre, European Commission, Munoz Pineiro, Amalia, Puertas Gallardo, Antonio, Ceresa, Mario, Consoli, Sergio

Catalogue number
KJ-01-24-038-EN-N
Citation
European Commission: Joint Research Centre, Munoz Pineiro, A., Puertas Gallardo, A., Ceresa, M. and Consoli, S., Document clustering and topic mdelling of scopus abstracts on phage therapy , Publications Office of the European Union, 2024, https://data.europa.eu/doi/10.2760/2621872
DOI
https://data.europa.eu/doi/10.2760/2621872
ISBN
978-92-68-20705-5
Pages
37
Published in
Belgium
Themes
Information — Documentation , Medical and biological research

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