Emerging trends and hotspots in lung cancer-prediction models research.

IF 1.7 Q2 MEDICINE, GENERAL & INTERNAL Annals of Medicine and Surgery Pub Date : 2024-10-18 eCollection Date: 2024-12-01 DOI:10.1097/MS9.0000000000002648
Qiong Ma, Hua Jiang, Shiyan Tan, Fengming You, Chuan Zheng, Qian Wang, Yifeng Ren
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Abstract

Objective: In recent years, lung cancer-prediction models have become popular. However, few bibliometric analyses have been performed in this field.

Methods: This study aimed to reveal the scientific output and trends in lung cancer-prediction models from a global perspective. In this study, publications were retrieved and extracted from the Web of Science Core Collection (WoSCC) database. CiteSpace 6.1.R3 and VOSviewer 1.6.18 were used to analyze hotspots and theme trends.

Results: A marked increase in the number of publications related to lung cancer-prediction models was observed. A total of 2711 institutions from in 64 countries/regions published 2139 documents in 566 academic journals. China and the United States were the leading country in the field of lung cancer-prediction models. The institutions represented by Fudan University had significant academic influence in the field. Analysis of keywords revealed that lncRNA, tumor microenvironment, immune, cancer statistics, The Cancer Genome Atlas, nomogram, and machine learning were the current focus of research in lung cancer-prediction models.

Conclusions: Over the last two decades, research on risk-prediction models for lung cancer has attracted increasing attention. Prognosis, machine learning, and multi-omics technologies are both current hotspots and future trends in this field. In the future, in-depth explorations using different omics should increase the sensitivity and accuracy of lung cancer-prediction models and reduce the global burden of lung cancer.

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肺癌预测模型研究的新趋势与热点
目的:近年来,肺癌预测模型越来越流行。然而,在这一领域很少进行文献计量分析。方法:本研究旨在从全球视角揭示肺癌预测模型的科学产出和趋势。在本研究中,从Web of Science Core Collection (WoSCC)数据库中检索和提取出版物。CiteSpace 6.1。使用R3和VOSviewer 1.6.18分析热点和主题趋势。结果:与肺癌预测模型相关的出版物数量显著增加。来自64个国家/地区的2711家机构在566种学术期刊上发表了2139篇论文。中国和美国是肺癌预测模型领域的领先国家。以复旦大学为代表的研究机构在该领域具有重要的学术影响力。关键词分析显示,lncRNA、肿瘤微环境、免疫、癌症统计、The cancer Genome Atlas、nomogram、machine learning是目前肺癌预测模型的研究热点。结论:近二十年来,肺癌风险预测模型的研究越来越受到重视。预后、机器学习和多组学技术都是该领域当前的热点和未来的发展趋势。未来,利用不同组学的深入探索,将提高肺癌预测模型的敏感性和准确性,减轻全球肺癌负担。
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来源期刊
Annals of Medicine and Surgery
Annals of Medicine and Surgery MEDICINE, GENERAL & INTERNAL-
自引率
5.90%
发文量
1665
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