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用于评估肿瘤学中淋巴结状态的放射组学的文献计量学与可视化分析

Bibliometric and visual analysis of radiomics for evaluating lymph node status in oncology.

作者信息

Lyu Gui-Wen, Tong Tong, Yang Gen-Dong, Zhao Jing, Xu Zi-Fan, Zheng Na, Zhang Zhi-Fang

机构信息

Department of Radiology, The Third People's Hospital of Shenzhen, The Second Affiliated Hospital of Southern University of Science and Technology, Shenzhen, China.

Department of Ultrasound, Shenzhen People's Hospital, The Second Clinical Medical College, Jinan University, The First Affiliated Hospital, Southern University of Science and Technology, Shenzhen, China.

出版信息

Front Med (Lausanne). 2024 Nov 14;11:1501652. doi: 10.3389/fmed.2024.1501652. eCollection 2024.

Abstract

BACKGROUND

Radiomics, which involves the conversion of digital images into high-dimensional data, has been used in oncological studies since 2012. We analyzed the publications that had been conducted on this subject using bibliometric and visual methods to expound the hotpots and future trends regarding radiomics in evaluating lymph node status in oncology.

METHODS

Documents published between 2012 and 2023, updated to August 1, 2024, were searched using the Scopus database. VOSviewer, R Package, and Microsoft Excel were used for visualization.

RESULTS

A total of 898 original articles and reviews written in English and be related to radiomics for evaluating lymph node status in oncology, published between 2015 and 2023, were retrieved. A significant increase in the number of publications was observed, with an annual growth rate of 100.77%. The publications predominantly originated from three countries, with China leading in the number of publications and citations. Fudan University was the most contributing affiliation, followed by Sun Yat-sen University and Southern Medical University, all of which were from China. Tian J. from the Chinese Academy of Sciences contributed the most within 5885 authors. In addition, had the most publications and transcended other journals in recent 4 years. Moreover, the keywords co-occurrence suggested that the interplay of "radiomics" and "lymph node metastasis," as well as "major clinical study" were the predominant topics, furthermore, the focused topics shifted from revealing the diagnosis of cancers to exploring the deep learning-based prediction of lymph node metastasis, suggesting the combination of artificial intelligence research would develop in the future.

CONCLUSION

The present bibliometric and visual analysis described an approximately continuous trend of increasing publications related to radiomics in evaluating lymph node status in oncology and revealed that it could serve as an efficient tool for personalized diagnosis and treatment guidance in clinical patients, and combined artificial intelligence should be further considered in the future.

摘要

背景

放射组学涉及将数字图像转换为高维数据,自2012年以来已应用于肿瘤学研究。我们使用文献计量学和可视化方法分析了关于该主题的已发表文献,以阐述放射组学在评估肿瘤学中淋巴结状态方面的热点和未来趋势。

方法

使用Scopus数据库检索2012年至2023年期间发表的文献,并更新至2024年8月1日。使用VOSviewer、R包和Microsoft Excel进行可视化。

结果

共检索到2015年至2023年期间发表的898篇用英文撰写的与放射组学评估肿瘤学中淋巴结状态相关的原创文章和综述。观察到出版物数量显著增加,年增长率为100.77%。这些出版物主要来自三个国家,中国在出版物数量和引用次数方面领先。复旦大学是贡献最大的机构,其次是中山大学和南方医科大学,它们均来自中国。中国科学院的田J.在5885名作者中贡献最大。此外,[此处原文缺失具体期刊名]在最近4年中发表的文章最多,超越了其他期刊。此外,关键词共现表明,“放射组学”与“淋巴结转移”以及“主要临床研究”的相互作用是主要主题,此外,重点主题已从揭示癌症诊断转向探索基于深度学习的淋巴结转移预测,这表明人工智能研究的结合将在未来得到发展。

结论

目前的文献计量学和可视化分析描述了与放射组学评估肿瘤学中淋巴结状态相关的出版物数量大致呈持续增长趋势,并表明它可作为临床患者个性化诊断和治疗指导的有效工具,未来应进一步考虑结合人工智能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a411/11602298/8301c6992aaf/fmed-11-1501652-g001.jpg

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