Liu Xi, Chen Xiaoyu, Jiang Yang, Chen Yiming, Zhang Dechuan, Fan Longling
Department of Radiology, Chongqing Hospital of Traditional Chinese Medicine, Chongqing, China.
College of Faculty of Science, Kunming University of Science and Technology, Kunming, China.
Curr Med Imaging. 2025;21:e15734056402094. doi: 10.2174/0115734056402094250530075121.
Lung cancer is one of the main threats to global health, among lung diseases. Low-Dose Computed Tomography (LDCT) provides significant benefits for its screening but also brings new diagnostic challenges that require close attention.
By searching the Web of Science core collection, we selected articles and reviews published in English between 2005 and June 2024 on topics such as “Low-dose”, “CT image”, and “Lung”. These literatures were analyzed by bibliometric method, and CiteSpace software was used to explore the cooperation between countries, the cooperative relationship between authors, highly cited literature, and the distribution of keywords to reveal the research hotspots and trends in this field.
The number of LDCT research articles show a trend of continuous growth between 2019 and 2022. The United States is at the forefront of research in this field, with a centrality of 0.31; China has also rapidly conducted research with a centrality of 0.26. The authors' co-occurrence map shows that research teams in this field are highly cooperative, and their research questions are closely related. The analysis of highly cited literature and keywords confirmed the significant advantages of LDCT in lung cancer screening, which can help reduce the mortality of lung cancer patients and improve the prognosis. “Lung cancer” and “CT” have always been high-frequency keywords, while “image quality” and “low dose CT” have become new hot keywords, indicating that LDCT using deep learning techniques has become a hot topic in early lung cancer research.
The study revealed that advancements in CT technology have driven in-depth research from application challenges to image processing, with the research trajectory evolving from technical improvements to health risk assessments and subsequently to AI-assisted diagnosis. Currently, the research focus has shifted toward integrating deep learning with LDCT technology to address complex diagnostic challenges. The study also presents global research trends and geographical distributions of LDCT technology, along with the influence of key research institutions and authors. The comprehensive analysis aims to promote the development and application of LDCT technology in pulmonary disease diagnosis and enhance diagnostic accuracy and patient management efficiency.
The future will focus on LDCT reconstruction algorithms to balance image noise and radiation dose. AI-assisted multimodal imaging supports remote diagnosis and personalized health management by providing dynamic analysis, risk assessment, and follow-up recommendations to support early diagnosis.
肺癌是肺部疾病中对全球健康的主要威胁之一。低剂量计算机断层扫描(LDCT)在肺癌筛查中具有显著优势,但也带来了需要密切关注的新诊断挑战。
通过检索科学网核心合集,我们选取了2005年至2024年6月期间以英文发表的关于“低剂量”“CT图像”和“肺”等主题的文章和综述。采用文献计量学方法对这些文献进行分析,并使用CiteSpace软件探索国家间合作、作者合作关系、高被引文献以及关键词分布,以揭示该领域的研究热点和趋势。
2019年至2022年期间,LDCT研究文章数量呈持续增长趋势。美国在该领域研究中处于领先地位,中心性为0.31;中国也迅速开展了相关研究,中心性为0.26。作者共现图谱显示该领域研究团队合作性高,研究问题紧密相关。对高被引文献和关键词的分析证实了LDCT在肺癌筛查中的显著优势,有助于降低肺癌患者死亡率并改善预后。“肺癌”和“CT”一直是高频关键词,而“图像质量”和“低剂量CT”已成为新的热点关键词,表明采用深度学习技术的LDCT已成为早期肺癌研究的热门话题。
该研究表明,CT技术的进步推动了从应用挑战到图像处理的深入研究,研究轨迹从技术改进发展到健康风险评估,进而到人工智能辅助诊断。目前,研究重点已转向将深度学习与LDCT技术相结合,以应对复杂的诊断挑战。该研究还呈现了LDCT技术的全球研究趋势和地理分布,以及关键研究机构和作者的影响力。综合分析旨在促进LDCT技术在肺部疾病诊断中的发展和应用,提高诊断准确性和患者管理效率。
未来将聚焦于LDCT重建算法,以平衡图像噪声和辐射剂量。人工智能辅助多模态成像通过提供动态分析、风险评估和随访建议来支持早期诊断,从而实现远程诊断和个性化健康管理。