过去二十年基于人工智能的肺癌数字病理学研究趋势的全球文献计量图。

IF 2.9 3区 医学 Q2 HEALTH CARE SCIENCES & SERVICES DIGITAL HEALTH Pub Date : 2024-09-02 eCollection Date: 2024-01-01 DOI:10.1177/20552076241277735
Dan-Dan Xiong, Rong-Quan He, Zhi-Guang Huang, Kun-Jun Wu, Ying-Yu Mo, Yue Liang, Da-Ping Yang, Ying-Hui Wu, Zhong-Qing Tang, Zu-Tuan Liao, Gang Chen
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引用次数: 0

摘要

背景和目的:计算机技术的飞速发展为人工智能(AI)辅助医疗带来了革命性的变革。全切片成像技术与人工智能算法的整合促进了肺癌(LC)数字病理学的发展。然而,该领域缺乏全面的科学计量分析:方法:我们对 2004 年至 2023 年间发表在科学网核心期刊集 97 种学术期刊上、来自 39 个国家 502 个机构的 197 篇与肺癌数字病理学相关的论文进行了文献计量学分析:我们的分析发现,美国和中国是 LC 数字病理学领域的主要研究国家。然而,值得注意的是,目前的研究主要由国家间的独立研究组成,这强调了加强国家间学术合作和数据共享的必要性。目前 LC 数字病理学相关研究的重点和挑战在于通过改进深度学习算法来提高分类和预测的准确性。多组学研究的整合是一个前景广阔的未来研究方向。此外,研究人员正在越来越多地探索数字病理学在 LC 患者免疫疗法中的应用:总之,本研究为 LC 数字病理学提供了一个全面的知识框架,突出了该领域的研究趋势、热点和空白。它还为人工智能在 LC 患者临床决策中的应用提供了理论依据。
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Global bibliometric mapping of the research trends in artificial intelligence-based digital pathology for lung cancer over the past two decades.

Background and objective: The rapid development of computer technology has led to a revolutionary transformation in artificial intelligence (AI)-assisted healthcare. The integration of whole-slide imaging technology with AI algorithms has facilitated the development of digital pathology for lung cancer (LC). However, there is a lack of comprehensive scientometric analysis in this field.

Methods: A bibliometric analysis was conducted on 197 publications related to digital pathology in LC from 502 institutions across 39 countries, published in 97 academic journals in the Web of Science Core Collection between 2004 and 2023.

Results: Our analysis has identified the United States and China as the primary research nations in the field of digital pathology in LC. However, it is important to note that the current research primarily consists of independent studies among countries, emphasizing the necessity of strengthening academic collaboration and data sharing between nations. The current focus and challenge of research related to digital pathology in LC lie in enhancing the accuracy of classification and prediction through improved deep learning algorithms. The integration of multi-omics studies presents a promising future research direction. Additionally, researchers are increasingly exploring the application of digital pathology in immunotherapy for LC patients.

Conclusions: In conclusion, this study provides a comprehensive knowledge framework for digital pathology in LC, highlighting research trends, hotspots, and gaps in this field. It also provides a theoretical basis for the application of AI in clinical decision-making for LC patients.

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来源期刊
DIGITAL HEALTH
DIGITAL HEALTH Multiple-
CiteScore
2.90
自引率
7.70%
发文量
302
期刊最新文献
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