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KMID : 1023420240240010009
Journal of Dental Hygiene Science
2024 Volume.24 No. 1 p.9 ~ p.21
Patent Technology Trends of Oral Health: Application of Text Mining
Bak Hee-Kyeong

Kim Yong-Hwan
Kim Han-Na
Abstract
Background: The purpose of this study was to utilize text network analysis and topic modeling to identify interconnected relationships among keywords present in patent information related to oral health, and subsequently extract latent topics and visualize them. By examining key keywords and specific subjects, this study sought to comprehend the technological trends in oral health-related innovations. Furthermore, it aims to serve as foundational material, suggesting directions for technological advancement in dentistry and dental hygiene.

Methods: The data utilized in this study consisted of information registered over a 20-year period until July 31st, 2023, obtained from the patent information retrieval service, KIPRIS. A total of 6,865 patent titles related to keywords, such as ¡°dentistry,¡± ¡°teeth,¡± and ¡°oral health,¡± were collected through the searches. The research tools included a custom-designed program coded specifically for the research objectives based on Python 3.10. This program was used for keyword frequency analysis, semantic network analysis, and implementation of Latent Dirichlet Allocation for topic modeling.

Results: Upon analyzing the centrality of connections among the top 50 frequently occurring words, ¡°method,¡± ¡°tooth,¡± and ¡°manufacturing¡± displayed the highest centrality, while ¡°active ingredient¡± had the lowest. Regarding topic modeling outcomes, the ¡°implant¡± topic constituted the largest share at 22.0%, while topics concerning ¡°devices and materials for oral health¡± and ¡°toothbrushes and oral care¡± exhibited the lowest proportions at 5.5% each.

Conclusion: Technologies concerning methods and implants are continually being researched in patents related to oral health, while there is comparatively less technological development in devices and materials for oral health. This study is expected to be a valuable resource for uncovering potential themes from a large volume of patent titles and suggesting research directions.
KEYWORD
Big data, Data mining, Oral health, Patent, Topic modeling
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