Department of Radiology, Daping Hospital (Army Medical Center of PLA), Army Medical University, 400042 Chongqing, China.
Department of Gastroenterology, Xiyuan Hospital, China Academy of Chinese Medical Sciences, 100091 Beijing, China.
Front Biosci (Landmark Ed). 2022 Aug 31;27(9):254. doi: 10.31083/j.fbl2709254.
BACKGROUND: The past decade has seen major advances in the use of artificial intelligence (AI) to solve various biomedical problems, including cancer. This has resulted in more than 6000 scientific papers focusing on AI in oncology alone. The expansiveness of this research area presents a challenge to those seeking to understand how it has developed. A scientific analysis of AI in the oncology literature is therefore crucial for understanding its overall structure and development. This may be addressed through bibliometric analysis, which employs computational and visual tools to identify research activity, relationships, and expertise within large collections of bibliographic data. There is already a large volume of research data regarding the development of AI applications in cancer research. However, there is no published bibliometric analysis of this topic that offers comprehensive insights into publication growth, co-citation networks, research collaboration, and keyword co-occurrence analysis for technological trends involving AI across the entire spectrum of oncology research. The purpose of this study is to investigate documents published during the last decade using bibliometric indicators and network visualization. This will provide a detailed assessment of global research activities, key themes, and AI trends over the entire breadth of the oncology field. It will also specifically highlight top-performing authors, organizations, and nations that have made major contributions to this research domain, as well as their interactions via network collaboration maps and betweenness centrality metric. This study represents the first global investigation of AI covering the entire cancer field and using several validated bibliometric techniques. It should provide valuable reference material for reorienting this field and for identifying research trajectories, topics, major publications, and influential entities including scholars, institutions, and countries. It will also identify international collaborations at three levels: micro (that of an individual researcher), meso (that of an institution), and macro (that of a country), in order to inform future lines of research. METHODS: The Science Citation Index Expanded from the Web of Science Core Collection was searched for articles and reviews pertaining exclusively to AI in cancer from 2012 through 2022. Annual publication trends were plotted using Microsoft Excel 2019. CiteSpace and VOSViewer were used to investigate the most productive countries, researchers, journals, as well as the sharing of resources, intellectual property, and knowledge base in this field, along with the co-citation analysis of references and keywords. RESULTS: A total of 6757 documents were retrieved. China produced the most publications of any country (2087, 30.89%), and Sun Yat Sen University the highest number (167, 2.47%) of any institute. WEI WANG was the most prolific author (33, 0.49%). RUI ZHANG ranked first for highest betweenness centrality (0.21) and collaboration criteria. Scientific Reports was found to be the most prolific journal (208, 3.18%), while PloS one had the most co-citations (2121, 1.55%). Strong and ongoing citation bursts were found for keywords such as "tissue microarray", "tissue segmentation", and "artificial neural network". CONCLUSIONS: Deep learning currently represents one of the most cutting-edge and applicable branches of AI in oncology. The literature to date has dealt extensively with radiomics, genomics, pathology, risk stratification, lesion detection, and therapy response. Current hot topics identified by our analysis highlight the potential application of AI in radiomics and precision oncology.
背景:过去十年,人工智能(AI)在解决各种生物医学问题方面取得了重大进展,包括癌症。这导致了超过 6000 篇专门研究 AI 在肿瘤学中的科学论文。这个研究领域的广泛性使得那些试图了解其发展情况的人面临挑战。因此,对肿瘤学文献中的 AI 进行科学分析对于理解其整体结构和发展至关重要。这可以通过文献计量学分析来实现,该分析使用计算和可视化工具来识别大型文献数据集中的研究活动、关系和专业知识。关于癌症研究中 AI 应用开发的研究数据已经很多。然而,目前还没有发表的文献计量学分析,无法全面了解 AI 在整个肿瘤学领域的出版物增长、共引网络、研究合作以及技术趋势的关键词共现分析。本研究旨在使用文献计量指标和网络可视化对过去十年发表的文献进行分析。这将提供对全球研究活动、关键主题和 AI 趋势的详细评估,涵盖整个肿瘤学领域。它还将特别突出在该研究领域做出重大贡献的表现最佳的作者、组织和国家,以及他们通过网络合作图和中间中心性指标的相互作用。本研究代表了对涵盖整个癌症领域的 AI 的首次全球调查,并使用了几种经过验证的文献计量技术。它应该为重新定位该领域以及确定研究轨迹、主题、主要出版物和有影响力的实体(包括学者、机构和国家)提供有价值的参考材料。它还将确定三个层次的国际合作:微观(个人研究人员的合作)、中观(机构的合作)和宏观(国家的合作),以指导未来的研究。 方法:从 Web of Science 核心合集的科学引文索引扩展版中搜索了 2012 年至 2022 年间专门针对癌症的 AI 的文章和综述。使用 Microsoft Excel 2019 绘制年度出版物趋势图。使用 CiteSpace 和 VOSViewer 研究了最具生产力的国家、研究人员、期刊,以及该领域的资源、知识产权和知识库的共享情况,以及参考文献和关键词的共引分析。 结果:共检索到 6757 篇文献。中国发表的文献最多(2087 篇,30.89%),中山大学发表的文献最多(167 篇,2.47%)。WEI WANG 是最具生产力的作者(33 篇,0.49%)。RUI ZHANG 的中间中心性(0.21)和协作标准排名第一。Scientific Reports 是最具生产力的期刊(208 篇,3.18%),而 PloS one 的共引最多(2121 篇,1.55%)。发现“组织微阵列”、“组织分割”和“人工神经网络”等关键词的引文爆发强烈且持续。 结论:深度学习目前是肿瘤学中最先进和适用的人工智能分支之一。迄今为止的文献广泛涉及放射组学、基因组学、病理学、风险分层、病变检测和治疗反应。我们分析确定的当前热门话题突出了人工智能在放射组学和精准肿瘤学中的潜在应用。
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