人工智能在尘肺病及并发症领域应用的文献计量和可视化分析

Bibliometric and visual analysis of artificial intelligence applications in pneumoconiosis and its complications

  • 摘要:
    背景 尘肺病作为一种由长期吸入粉尘颗粒导致的职业性肺部疾病,具有进行性发展、不可逆性、并发症多的特点,严重危害职业人群健康,加剧社会经济负担。
    目的 分析人工智能在尘肺病及其并发症领域应用的研究发展脉络与研究热点。
    方法 检索该领域2024年10月1日之前发表在中国知网和Web of Science上的文献,分别以作者、机构以及关键词为切入点进行分析。使用Citespace、R语言中Bibliometrix、VOSviewer软件进行可视化分析。
    结果 本研究共纳入1068篇文献(中文208篇,英文860篇),研究结果显示人工智能在尘肺病及其并发症领域应用的研究近五年呈爆发式增长趋势。发文机构主要集中在高校及其合作医疗单位。该领域研究热点为医学影像识别与分析、辅助诊断及风险预测。人工智能、肺结核、深度学习、慢性阻塞性肺疾病、机器学习等主题词中心度较高。
    结论 随着计算机技术的发展迭代,人工智能在尘肺病及其并发症领域应用的关注度逐渐上升,其研究视角从单纯发病预测,逐渐扩展至影像识别及健康监测等多元化领域,早期尘肺筛查、辅助鉴别诊断及健康监测将是未来的研究重点。

     

    Abstract:
    Background Pneumoconiosis, a group of lung disease caused by long-term inhalation of occupational dust, features progressive development, irreversibility, and a high incidence of complications. It seriously endangers the health of the occupational population and exacerbates the socioeconomic burden.
    Objective To understand the development and major research themes of artificial intelligence research concerning pneumoconiosis and its complications.
    Methods Relevant academic papers before 2024-10-01 were retrieved from China National Knowledge Infrastructure and Web of Science, and analyzed separately according to the author, institutions, and keywords, then visualized with Citespace, the Bibliometrix package in R, and VOSviewer software.
    Results This study included 1068 articles (208 Chinese and 860 English). The results showed that artificial intelligence application in pneumoconiosis and its complications has seen explosive growth in the past five years. Institutions were mainly concentrated in universities and their affiliated medical units. Identified research hotspots included medical image recognition and analysis, auxiliary diagnosis, and risk prediction. Keywords like artificial intelligence, tuberculosis, deep learning, chronic obstructive pulmonary disease, and machine learning showed high centrality.
    Conclusion As computer technology advances, the use of artificial intelligence in addressing pneumoconiosis and its related complications is steadily expanding. Its research perspective has gradually expanded from simple disease prediction to diversified fields such as image recognition and health monitoring. Early pneumoconiosis screening, auxiliary differential diagnosis, andhealth monitoring will be the focus of future research.

     

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