Zhang Jiaming, Zhu Huijun, Wang Jue, Chen Yulu, Li Yihe, Chen Xinyu, Chen Menghua, Cai Zhengwen, Liu Wenqi
Department of Radiation Oncology, The Second Affiliated Hospital of Guangxi Medical University, Nanning, China.
Department of Oncology, The Second Affiliated Hospital of Guangxi Medical University, Nanning, China.
Front Oncol. 2023 Mar 17;13:1082423. doi: 10.3389/fonc.2023.1082423. eCollection 2023.
Machine learning is now well-developed in non-small cell lung cancer (NSCLC) radiotherapy. But the research trend and hotspots are still unclear. To investigate the progress in machine learning in radiotherapy NSCLC, we performed a bibliometric analysis of associated research and discuss the current research hotspots and potential hot areas in the future.
The involved researches were obtained from the Web of Science Core Collection database (WoSCC). We used R-studio software, the Bibliometrix package and VOSviewer (Version 1.6.18) software to perform bibliometric analysis.
We found 197 publications about machine learning in radiotherapy for NSCLC in the WoSCC, and the journal Medical Physics contributed the most articles. The University of Texas MD Anderson Cancer Center was the most frequent publishing institution, and the United States contributed most of the publications. In our bibliometric analysis, "radiomics" was the most frequent keyword, and we found that machine learning is mainly applied to analyze medical images in the radiotherapy of NSCLC.
The research we identified about machine learning in NSCLC radiotherapy was mainly related to the radiotherapy planning of NSCLC and the prediction of treatment effects and adverse events in NSCLC patients who were under radiotherapy. Our research has added new insights into machine learning in NSCLC radiotherapy and could help researchers better identify hot research areas in the future.
机器学习在非小细胞肺癌(NSCLC)放疗领域已得到充分发展。但其研究趋势和热点仍不明确。为探究机器学习在NSCLC放疗中的研究进展,我们对相关研究进行了文献计量分析,并讨论当前的研究热点及未来潜在的热点领域。
所涉及的研究从Web of Science核心合集数据库(WoSCC)获取。我们使用R-studio软件、Bibliometrix软件包以及VOSviewer(1.6.18版本)软件进行文献计量分析。
我们在WoSCC中发现了197篇关于机器学习在NSCLC放疗中的出版物,其中《医学物理》杂志发表的文章最多。德克萨斯大学MD安德森癌症中心是最频繁的发表机构,美国贡献了大部分出版物。在我们的文献计量分析中,“放射组学”是最频繁出现的关键词,并且我们发现机器学习主要应用于分析NSCLC放疗中的医学图像。
我们所确定的关于机器学习在NSCLC放疗中的研究主要与NSCLC的放疗计划以及接受放疗的NSCLC患者的治疗效果和不良事件预测相关。我们的研究为NSCLC放疗中的机器学习增添了新的见解,并有助于研究人员在未来更好地识别热门研究领域。