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肺癌机器学习的进展与未来趋势:一项全面的文献计量分析

Advancements and future trends in machine learning for lung cancer: a comprehensive bibliometric analysis.

作者信息

Zhang Wenhao, Zhuang Dongmei, Wei Wenzhuo, Li Yusen, Ma Lijun, Du He, Jin Anran, He Jingyi, Li Xiaoming

机构信息

Department of Psychiatry, Chaohu Hospital of Anhui Medical University, Hefei, Anhui, China.

Department of Medical Psychology, School of Mental Health and Psychological Science, Anhui Medical University, Hefei, China.

出版信息

Clin Transl Oncol. 2025 Jun 4. doi: 10.1007/s12094-025-03945-7.

Abstract

BACKGROUND

In recent years, significant progress has been made in lung cancer screening, diagnosis, and treatment with the continuous development of machine learning (ML).

METHODS

To systematically explore the evolution and core driving factors of ML in lung cancer research since 2004, we conducted a comprehensive bibliometric analysis of 1,826 academic papers retrieved from the Web of Science Core Collection.

RESULTS

This study reveals that the USA is at the forefront of applying ML in lung cancer research. The institutional analysis indicates that Harvard University plays a key role as a leading institution in this field. In the author co-occurrence network analysis, Madabhushi Anant stood out as a significant contributor to the application of ML in lung cancer research. Additionally, journal co-occurrence analysis shows that the SCI REP-UK published the highest volume of papers in this area. It is worth noting that several prestigious medical journals, including NEW ENGL J MED, NATURE, and CA-CANCER J CLIN, have shown significant interest in this research field. The burst citation analysis of keywords and references indicates that research hotspots have evolved from early attention to "breast cancer" and "radiotherapy" (2004-2012) to a focus on "computer-aided diagnosis" (2013-2017). Since 2018, "texture analysis", "computer-aided detection", "survival prediction", and "radiomics" have emerged as new research trends.

CONCLUSION

As ML continues to be applied more extensively and deeply in lung cancer, "computer-aided detection," "survival prediction," and "radiomics" are emerging as vital areas, deserving more attention from researchers.

摘要

背景

近年来,随着机器学习(ML)的不断发展,肺癌筛查、诊断和治疗取得了显著进展。

方法

为了系统地探索2004年以来ML在肺癌研究中的发展演变及核心驱动因素,我们对从Web of Science核心合集中检索到的1826篇学术论文进行了全面的文献计量分析。

结果

本研究表明,美国在肺癌研究中应用ML处于前沿地位。机构分析表明,哈佛大学作为该领域的领先机构发挥着关键作用。在作者共现网络分析中,马达布希·阿南特是ML在肺癌研究应用中的重要贡献者。此外,期刊共现分析显示,英国的《科学报告》在该领域发表的论文数量最多。值得注意的是,包括《新英格兰医学杂志》《自然》和《癌症临床医师杂志》在内的几本著名医学期刊对该研究领域表现出了浓厚兴趣。关键词和参考文献的爆发式引文分析表明,研究热点已从早期关注“乳腺癌”和“放射治疗”(2004 - 2012年)演变为关注“计算机辅助诊断”(2013 - 2017年)。自2018年以来,“纹理分析”“计算机辅助检测”“生存预测”和“放射组学”已成为新的研究趋势。

结论

随着ML在肺癌中继续得到更广泛和深入的应用,“计算机辅助检测”“生存预测”和“放射组学”正在成为重要领域,值得研究人员更多关注。

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