Wang Meng, Peng Yun, Wang Ya, Luo Dehong
Department of Radiology, National Cancer Center/National Clinical Research Center for Cancer/Cancer Hospital & Shenzhen Hospital, Chinese Academy of Medical Sciences and Peking Union Medical College, Shenzhen, China.
Department of Radiology, The Second Affiliated Hospital, Jiangxi Medical College, Nanchang University, Nanchang, China.
Interact J Med Res. 2024 Jul 9;13:e51347. doi: 10.2196/51347.
BACKGROUND: Radiogenomics is an emerging technology that integrates genomics and medical image-based radiomics, which is considered a promising approach toward achieving precision medicine. OBJECTIVE: The aim of this study was to quantitatively analyze the research status, dynamic trends, and evolutionary trajectory in the radiogenomics field using bibliometric methods. METHODS: The relevant literature published up to 2023 was retrieved from the Web of Science Core Collection. Excel was used to analyze the annual publication trend. VOSviewer was used for constructing the keywords co-occurrence network and the collaboration networks among countries and institutions. CiteSpace was used for citation keywords burst analysis and visualizing the references timeline. RESULTS: A total of 3237 papers were included and exported in plain-text format. The annual number of publications showed an increasing annual trend. China and the United States have published the most papers in this field, with the highest number of citations in the United States and the highest average number per item in the Netherlands. Keywords burst analysis revealed that several keywords, including "big data," "magnetic resonance spectroscopy," "renal cell carcinoma," "stage," and "temozolomide," experienced a citation burst in recent years. The timeline views demonstrated that the references can be categorized into 8 clusters: lower-grade glioma, lung cancer histology, lung adenocarcinoma, breast cancer, radiation-induced lung injury, epidermal growth factor receptor mutation, late radiotherapy toxicity, and artificial intelligence. CONCLUSIONS: The field of radiogenomics is attracting increasing attention from researchers worldwide, with the United States and the Netherlands being the most influential countries. Exploration of artificial intelligence methods based on big data to predict the response of tumors to various treatment methods represents a hot spot research topic in this field at present.
背景:放射基因组学是一种新兴技术,它整合了基因组学和基于医学图像的放射组学,被认为是实现精准医学的一种有前景的方法。 目的:本研究旨在使用文献计量学方法定量分析放射基因组学领域的研究现状、动态趋势和进化轨迹。 方法:从科学网核心合集检索截至2023年发表的相关文献。使用Excel分析年度发表趋势。使用VOSviewer构建关键词共现网络以及国家和机构之间的合作网络。使用CiteSpace进行被引关键词突现分析并可视化参考文献时间线。 结果:共纳入3237篇论文并以纯文本格式导出。年度发表数量呈逐年增加趋势。中国和美国在该领域发表的论文最多,美国的被引次数最高,荷兰的每项平均被引次数最高。关键词突现分析显示,包括“大数据”“磁共振波谱”“肾细胞癌”“分期”和“替莫唑胺”在内的几个关键词近年来出现了被引突现。时间线视图表明,参考文献可分为8个聚类:低级别胶质瘤、肺癌组织学、肺腺癌、乳腺癌、放射性肺损伤、表皮生长因子受体突变、放疗晚期毒性和人工智能。 结论:放射基因组学领域正吸引着全球研究人员越来越多的关注,美国和荷兰是最具影响力的国家。基于大数据探索人工智能方法以预测肿瘤对各种治疗方法的反应是目前该领域的一个热点研究课题。
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