Zeng Suqi, Dong Chenyu, Liu Chuan, Zhen Junhai, Pu Yu, Hu Jiaming, Dong Weiguo
Department of Gastroenterology, Renmin Hospital of Wuhan University, Wuhan, Hubei, China.
Digit Health. 2025 Mar 14;11:20552076251326217. doi: 10.1177/20552076251326217. eCollection 2025 Jan-Dec.
This study aimed to evaluate the related research on artificial intelligence (AI) in inflammatory bowel disease (IBD) through bibliometrics analysis and identified the research basis, current hotspots, and future development.
The related literature was acquired from the Web of Science Core Collection (WoSCC) on 31 December 2024. Co-occurrence and cooperation relationship analysis of (cited) authors, institutions, countries, cited journals, references, and keywords in the literature were carried out through CiteSpace 6.1.R6 software and the Online Analysis platform of Literature Metrology. Meanwhile, relevant knowledge maps were drawn, and keywords clustering analysis was performed.
According to WoSCC, 1919 authors, 790 research institutions, 184 journals, and 49 countries/regions published 176 AI-related papers in IBD during 1999-2024. The number of papers published has increased significantly since 2019, reaching a maximum by 2023. The United States had the highest number of publications and the closest collaboration with other countries. The clustering analysis showed that the earliest studies focused on "psychometric value" and then moved to "deep learning model," "intestinal ultrasound," and "new diagnostic strategies."
This study is the first bibliometric analysis to summarize the current status and to visually reveal the development trends and future research hotspots of the application of AI in IBD. The application of AI in IBD is still in its infancy, and the focus of this field will shift to improving the efficiency of diagnosis and treatment through deep learning techniques, big data-based treatment, and prognosis prediction.
本研究旨在通过文献计量学分析评估炎症性肠病(IBD)中人工智能(AI)的相关研究,并确定研究基础、当前热点及未来发展方向。
于2024年12月31日从科学网核心合集(WoSCC)获取相关文献。通过CiteSpace 6.1.R6软件和文献计量在线分析平台,对文献中的(被引)作者、机构、国家、被引期刊、参考文献和关键词进行共现和合作关系分析。同时绘制相关知识图谱,并进行关键词聚类分析。
根据WoSCC数据,在1999 - 2024年期间,1919位作者、790个研究机构、184种期刊以及49个国家/地区发表了176篇关于IBD中AI相关的论文。自2019年以来发表论文数量显著增加,2023年达到峰值。美国的出版物数量最多,且与其他国家的合作最为紧密。聚类分析表明,最早的研究集中在“心理测量值”,随后转向“深度学习模型”“肠道超声”和“新诊断策略”。
本研究是首次对IBD中AI应用的现状进行总结,并直观揭示其发展趋势和未来研究热点的文献计量分析。AI在IBD中的应用仍处于起步阶段,该领域的重点将转向通过深度学习技术、基于大数据的治疗和预后预测来提高诊断和治疗效率。