Xia Yufei, Zhong Shupei, Lou Xinjing, Hua Meiqi, Wu Linyu, Gao Chen
Department of Radiology, The First Affiliated Hospital of Zhejiang Chinese Medical University (Zhejiang Provincial Hospital of Chinese Medicine), Hangzhou, China.
The First School of Clinical Medicine, Zhejiang Chinese Medical University, Hangzhou, China.
Quant Imaging Med Surg. 2024 Dec 5;14(12):8771-8784. doi: 10.21037/qims-24-1316. Epub 2024 Nov 13.
Extensive research on the application of artificial intelligence (AI) and radiomics in lung cancer has been published in recent years; however, it is necessary to identify the current status, hotspots, and trends in the field. Thus, this study conducted a bibliometric analysis of relevant studies to investigate the application of AI and radiomics in lung cancer.
Related publications were retrieved from the Web of Science Core Collection (WoSCC). CiteSpace generated the associated co-occurrence network maps in terms of institutions, authors, and keywords. Bibliometrix was used to perform a bibliometric analysis of relevant countries/regions and journals. In addition, the collected information was used to generate figures using R.
A total of 2,989 publications were included in this study, of which 2,804 (93.8%) were articles and 185 (6.2%) were reviews. In 2016, there was a rapid increase in the number of publications in this field. Most of the research originated from China (n=1,365, 45.7%). While Fudan University (n=109, 3.6%) attracted the greatest attention among all institutions. In terms of the authors, Gillies (28 publications, 0.9%) published the greatest number of articles. In terms of the journals, (n=177, 5.9%) and (5,152 citations) had the greatest number of publications and influence, respectively. The main keywords identified were "lung cancer", "deep learning", "classification", "computed tomography", and "features". Burst detection suggested that "texture", "image classification", and "false positive reduction" have recently appeared at the frontier of research.
This study used bibliometric methods to analyze the relevant literature to discuss the current research hotspots and future trends in the application of AI and radiomics in lung cancer. This information may help relevant researchers to shape the direction of future studies, such as innovations in AI techniques standardized feature extraction, and extend understandings of epidermal growth factor receptor mutations.
近年来,关于人工智能(AI)和放射组学在肺癌中的应用已发表了大量研究;然而,有必要明确该领域的现状、热点和趋势。因此,本研究对相关研究进行了文献计量分析,以探讨AI和放射组学在肺癌中的应用。
从科学网核心合集(WoSCC)中检索相关出版物。CiteSpace根据机构、作者和关键词生成了相关的共现网络图。Bibliometrix用于对相关国家/地区和期刊进行文献计量分析。此外,收集到的信息用于使用R生成图表。
本研究共纳入2989篇出版物,其中2804篇(93.8%)为文章,185篇(6.2%)为综述。2016年,该领域的出版物数量迅速增加。大多数研究来自中国(n = 1365,45.7%)。在所有机构中,复旦大学(n = 109,3.6%)受到的关注最多。在作者方面,吉利斯(发表28篇文章,0.9%)发表的文章数量最多。在期刊方面,《》(n = 177,5.9%)和《》(被引5152次)的出版物数量和影响力最大。确定的主要关键词为“肺癌”、“深度学习”、“分类”。