人工智能技术在被忽视的热带病领域全球研究的可视化分析——基于Web of Science核心合集

Bibliometric-based analysis on application of artificial intelligence in research of neglected tropical diseases in the world: a study based on core database of Web of Science

  • 摘要:
    目的 分析人工智能(AI)技术在被忽视的热带病(NTDs)领域中的全球研究现状、热点及发展趋势。
    方法 检索Web of Science核心合集数据库收录的2005-2024年发表的AI应用于NTDs领域的所有英文文献,对其发表时间、学科类别、期刊、关键词进行分析,采用“ggalluvial”包和“ggplot2”包制作空间流向桑基图,描述国家、机构、作者合作及研究产出的流向。
    结果 共纳入694篇文献,2005—2024年发文量总体呈上升态势。 寄生虫学、热带医学和传染病是影响力最大的3个研究领域,对总发文量增长贡献显著。 PLos Neglected Tropical Diseases为该领域发文量和被引量最多的期刊。 美国、中国和印度是AI应用于NTDs研究的核心国家,其中哈佛大学、伦敦大学和中国科学院等机构主导了跨国合作网络。 研究呈现“核心–边缘”合作特征,高产作者多来自欧美机构主导的跨国团队。 成果集中于AI辅助药物发现、疾病传播预测及诊断技术创新。 文献共被引聚类分析结果显示,当前研究领域涵盖了疾病预测与病媒监测、医学影像与诊断辅助、药物发现与机制研究、公共卫生与健康管理以及模型优化与跨学科融合等热点方向。 高频关键词包括machine learning、dengue、infection、aedes aegypti、deep learning、transmission等。AI技术在NTDs领域的研究热点从初步探索发展为多源数据融合的综合分析与管理。
    结论 AI技术在NTDs领域的研究逐渐增加,研究热点从早期算法开发转向多源数据融合应用,但存在地域合作不均衡和技术转化不足等问题。 未来需加强国际合作和可及性技术研发以推动实际应用。

     

    Abstract:
    Objective To understand the application of artificial intelligence (AI) in research of neglected tropical diseases (NTDs) in the world.
    Methods We retrieved all the English-language publications on AI applications in research of NTDs during 2005-2024 from the core database of Web of Science, and analyzed their publication years, subject categories, journals, and keywords. By using "ggalluvial" and "ggplot2" packages, a spatial flow Sankey diagram was created to depict the flow of collaboration among countries, institutions and authors, and research outputs.
    Results A total of 694 articles were included. The number of annual publications about the application of AI in NTDs research showed an overall upward trend from 2005 to 2024. The three most influential research areas were parasitology, tropical medicine, and infectious diseases, which significantly contributed to the growth in total publications. PLoS Neglected Tropical Diseases was the journal with the highest publications and citations in this field. The United States, China, and India were core countries applying AI in research of NTDs , with institutions such as Harvard University, University of London, and the Chinese Academy of Sciences leading transnational collaborative networks. The research exhibits a "core-periphery" collaboration pattern, and high-productivity authors predominantly belonged to multinational teams led by European and American institutions. Key research outputs focued on AI-assisted drug discovery, disease transmission prediction, and diagnostic technology innovation. Co-citation clustering analysis on the literature revealed that the research field covered hot topics such as disease prediction and vector surveillance, medical imaging and diagnostic assistance, drug discovery and mechanism research, public health and health management, as well as model optimization and interdisciplinary integration. High-frequency keywords included machine learning, dengue, infection, aedes aegypti, deep learning and transmission. Research on AI applications in NTDs has evolved from preliminary exploration to integrated analysis and management through multi-source data fusion.
    Conclusion AI application in research of NTDs has demonstrated consistent growth, with research focus shifting from early algorithm development to multi-source data integration. However, significant challenges still persist, including geographical disparities in research collaboration and insufficient technological translation. Enhanced international cooperation and accessible technology development are imperative to facilitate practical implementation.

     

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