Yuan Lei, Shen Zhiming, Shan Yibo, Zhu Jianwei, Wang Qi, Lu Yi, Shi Hongcan
Department of Thoracic Surgery, Northern Jiangsu People's Hospital Affiliated to Yangzhou University, Yangzhou, China.
Institute of Translational Medicine, Medical College, Yangzhou University, Yangzhou, China.
Front Oncol. 2024 Jul 8;14:1432212. doi: 10.3389/fonc.2024.1432212. eCollection 2024.
Pathomics has emerged as a promising biomarker that could facilitate personalized immunotherapy in lung cancer. It is essential to elucidate the global research trends and emerging prospects in this domain.
The annual distribution, journals, authors, countries, institutions, and keywords of articles published between 2018 and 2023 were visualized and analyzed using CiteSpace and other bibliometric tools.
A total of 109 relevant articles or reviews were included, demonstrating an overall upward trend; The terms "deep learning", "tumor microenvironment", "biomarkers", "image analysis", "immunotherapy", and "survival prediction", etc. are hot keywords in this field.
In future research endeavors, advanced methodologies involving artificial intelligence and pathomics will be deployed for the digital analysis of tumor tissues and the tumor microenvironment in lung cancer patients, leveraging histopathological tissue sections. Through the integration of comprehensive multi-omics data, this strategy aims to enhance the depth of assessment, characterization, and understanding of the tumor microenvironment, thereby elucidating a broader spectrum of tumor features. Consequently, the development of a multimodal fusion model will ensue, enabling precise evaluation of personalized immunotherapy efficacy and prognosis for lung cancer patients, potentially establishing a pivotal frontier in this domain of investigation.
病理组学已成为一种有前景的生物标志物,可促进肺癌的个性化免疫治疗。阐明该领域的全球研究趋势和新兴前景至关重要。
使用CiteSpace和其他文献计量工具对2018年至2023年发表的文章的年度分布、期刊、作者、国家、机构和关键词进行可视化和分析。
共纳入109篇相关文章或综述,呈总体上升趋势;“深度学习”“肿瘤微环境”“生物标志物”“图像分析”“免疫治疗”和“生存预测”等术语是该领域的热门关键词。
在未来的研究工作中,将采用涉及人工智能和病理组学的先进方法,利用组织病理学组织切片对肺癌患者的肿瘤组织和肿瘤微环境进行数字分析。通过整合全面的多组学数据,该策略旨在加深对肿瘤微环境的评估、表征和理解,从而阐明更广泛的肿瘤特征。因此,将随之开发多模态融合模型,能够精确评估肺癌患者的个性化免疫治疗疗效和预后,有望在该研究领域建立一个关键前沿。