Afifuddin Mokh, Seo Wonchul
Textile Community College of Surakarta, Surakarta, Central Java, Indonesia.
Major in Industrial Data Science and Engineering, Department of Industrial and Data Engineering, Pukyong National University, Busan, South Korea.
PLoS One. 2025 Jun 26;20(6):e0326417. doi: 10.1371/journal.pone.0326417. eCollection 2025.
This study proposes a novel approach to anticipating technology convergence in the bio-healthcare sector by integrating text mining based on transformer models and supervised learning methodologies. The overarching goal is to develop a robust method for predicting technology convergence, leveraging the interrelationships between technology topics extracted from patents and research articles. Through the application of advanced techniques and by leveraging the strengths of transformer-based models such as BERTopic with KeyBERT and OpenAI integration to generate technology topics, we identified potential convergence opportunities and explored emerging trends within the dataset. The proposed method seeks to predict technology convergence effectively by employing various machine learning and deep learning techniques to train prediction models by integrating technological similarity, link prediction measures, and causal relationships between technology topics as input features, offering a more accurate and comprehensive understanding of the intricate relationships within the technological landscape. This study contributes to the literature on technology convergence by offering a novel methodology for anticipating future trends and identifying opportunities for interdisciplinary collaboration in the bio-healthcare sector. Overall, the outcomes of this study hold significant implications for businesses seeking to capitalize on emerging convergence opportunities for sustainable growth.
本研究提出了一种新方法,通过整合基于Transformer模型的文本挖掘和监督学习方法来预测生物医疗保健领域的技术融合。总体目标是开发一种强大的方法来预测技术融合,利用从专利和研究文章中提取的技术主题之间的相互关系。通过应用先进技术,并利用基于Transformer的模型(如结合KeyBERT的BERTopic和OpenAI集成)生成技术主题的优势,我们在数据集中识别了潜在的融合机会并探索了新兴趋势。所提出的方法旨在通过采用各种机器学习和深度学习技术,将技术相似性、链接预测度量以及技术主题之间的因果关系作为输入特征来训练预测模型,从而有效地预测技术融合,提供对技术领域内复杂关系更准确和全面的理解。本研究通过提供一种预测未来趋势和识别生物医疗保健领域跨学科合作机会的新方法,为技术融合文献做出了贡献。总体而言,本研究的结果对寻求利用新兴融合机会实现可持续增长的企业具有重大意义。