A bibliometric analysis of worldwide cancer research using machine learning methods

Cancer Innovation Pub Date : 2023-04-11 DOI:10.1002/cai2.68
Lianghong Lin, Likeng Liang, Maojie Wang, Runyue Huang, Mengchun Gong, Guangjun Song, Tianyong Hao
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引用次数: 0

Abstract

With the progress and development of computer technology, applying machine learning methods to cancer research has become an important research field. To analyze the most recent research status and trends, main research topics, topic evolutions, research collaborations, and potential directions of this research field, this study conducts a bibliometric analysis on 6206 research articles worldwide collected from PubMed between 2011 and 2021 concerning cancer research using machine learning methods. Python is used as a tool for bibliometric analysis, Gephi is used for social network analysis, and the Latent Dirichlet Allocation model is used for topic modeling. The trend analysis of articles not only reflects the innovative research at the intersection of machine learning and cancer but also demonstrates its vigorous development and increasing impacts. In terms of journals, Nature Communications is the most influential journal and Scientific Reports is the most prolific one. The United States and Harvard University have contributed the most to cancer research using machine learning methods. As for the research topic, “Support Vector Machine,” “classification,” and “deep learning” have been the core focuses of the research field. Findings are helpful for scholars and related practitioners to better understand the development status and trends of cancer research using machine learning methods, as well as to have a deeper understanding of research hotspots.

Abstract Image

利用机器学习方法对全球癌症研究的文献计量分析
随着计算机技术的进步和发展,将机器学习方法应用于癌症研究已成为一个重要的研究领域。为了分析该研究领域的最新研究现状和趋势、主要研究主题、主题演变、研究合作和潜在方向,本研究对2011年至2021年间从PubMed收集的6206篇关于癌症研究的文献进行了文献计量分析。Python被用作文献计量分析的工具,Gephi被用于社交网络分析,Latent Dirichlet Allocation模型被用于主题建模。文章的趋势分析不仅反映了机器学习与癌症交叉点的创新研究,也展示了其蓬勃发展和日益增长的影响。在期刊方面,《自然通讯》是最具影响力的期刊,《科学报告》是最多产的期刊。美国和哈佛大学使用机器学习方法对癌症研究做出了最大贡献。就研究主题而言,“支持向量机”、“分类”和“深度学习”一直是研究领域的核心焦点。研究结果有助于学者和相关从业人员更好地了解癌症研究的发展现状和趋势,并对研究热点有更深入的了解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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