AI-driven text mining of the female reproductive system: enabling multiscale biomedical modeling and personalized medicine

  • Lee, Gaeun
  • Jeon, Jeehyo
  • Ham, Sharon Jeeho
  • Shin, Sieun
  • Kim, Seo Yeon
  • ... Bang, Seokyoung
  • 외 7명
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초록

The female reproductive system, including the endometrium, placenta, ovary, cervix, and fallopian tube, plays a critical role in conception, implantation, and fetal development. Recent advances in bioengineered models such as organoids, organ-on-a-chip platforms, and 3D bioprinting have expanded experimental capabilities, however, the rapid growth of this field has resulted in a large and fragmented body of literature, limiting systematic integration and analysis. Here, we present an artificial intelligence (AI)-driven text mining framework to systematically map research trends in the female reproductive system. A total of 347 peer-reviewed articles were collected and analyzed. Abstracts were embedded using BioBERT to capture contextual biomedical semantics. Subsequently, unsupervised topic modeling was performed using BERTopic with UMAP-based dimensionality reduction and HDBSCAN clustering. This analysis identified 15 fine-grained subtopics, which were further consolidated into six major thematic categories. The results show that current research is mainly focused on endometrial receptivity and implantation, placental barrier function and maternal-fetal interface, and tissue regeneration and biofabrication. In contrast, integrated multi-organ modeling and translational validation remain relatively underexplored. Overall, this AI-driven framework provides a quantitative and scalable approach to organizing complex biomedical literature. The findings offer a structured overview of the field and highlight emerging directions for multiscale modeling and personalized reproductive medicine.

키워드

EXTRACELLULAR-MATRIXLONG-TERM3-DIMENSIONAL CULTUREHUMAN ENDOMETRIUMORGANOID CULTUREEPITHELIAL-CELLSVITROOVARYSURVIVALOVIDUCT
제목
AI-driven text mining of the female reproductive system: enabling multiscale biomedical modeling and personalized medicine
저자
Lee, GaeunJeon, JeehyoHam, Sharon JeehoShin, SieunKim, Seo YeonKim, HongsockLee, Ju YeonWoo, HeejinAhn, JongwooLee, JungseubBang, SeokyoungYoon, SusikAhn, Jungho
DOI
10.1186/s40580-026-00554-0
발행일
2026-05
유형
Review
저널명
Nano Convergence
13
1