Research hotspots and frontiers of machine learning in renal medicine: a bibliometric and visual analysis from 2013 to 2024.

IF 1.8 4区 医学 Q3 UROLOGY & NEPHROLOGY
Feng Li, ChangHao Hu, Xu Luo
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Nevertheless, studies that have conducted a comprehensive bibliometric analysis of the field have yet to be identified.</p><p><strong>Objectives: </strong>This study employs bibliometric and visualization analyses to assess the progress of the application of machine learning in the renal field and to explore research trends and hotspots in the field.</p><p><strong>Methods: </strong>A search was conducted using the Web of Science Core Collection database, which yielded articles and review articles published from the database's inception to May 12, 2024. The data extracted from these articles and review articles were then analyzed. A bibliometric and visualization analysis was conducted using the VOSviewer, CiteSpace, and Bibliometric (R-Tool of R-Studio) software.</p><p><strong>Results: </strong>2,358 papers were retrieved and analyzed for this topic. From 2013 to 2024, the number of publications and the frequency of citations in the relevant research areas have exhibited a consistent and notable increase annually. The data set comprises 3734 institutions in 91 countries and territories, with 799 journals publishing the results. The total number of authors contributing to the data set is 14,396. China and the United States have the highest number of published papers, with 721 and 525 papers, respectively. Harvard University and the University of California System exert the most significant influence at the institutional level. Regarding authors, Cheungpasitporn, Wisit, and Thongprayoon Charat of the Mayo Clinic organization were the most prolific researchers, with 23 publications each. It is noteworthy that researcher Breiman I had the highest co-citation frequency. The journal with the most published papers was \"Scientific Reports,\" while \"PLoS One\" had the highest co-citation frequency. 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引用次数: 0

Abstract

Background: The kidney, an essential organ of the human body, can suffer pathological damage that can potentially have serious adverse consequences on the human body and even affect life. Furthermore, the majority of kidney-induced illnesses are frequently not readily identifiable in their early stages. Once they have progressed to a more advanced stage, they impact the individual's quality of life and burden the family and broader society. In recent years, to solve this challenge well, the application of machine learning techniques in renal medicine has received much attention from researchers, and many results have been achieved in disease diagnosis and prediction. Nevertheless, studies that have conducted a comprehensive bibliometric analysis of the field have yet to be identified.

Objectives: This study employs bibliometric and visualization analyses to assess the progress of the application of machine learning in the renal field and to explore research trends and hotspots in the field.

Methods: A search was conducted using the Web of Science Core Collection database, which yielded articles and review articles published from the database's inception to May 12, 2024. The data extracted from these articles and review articles were then analyzed. A bibliometric and visualization analysis was conducted using the VOSviewer, CiteSpace, and Bibliometric (R-Tool of R-Studio) software.

Results: 2,358 papers were retrieved and analyzed for this topic. From 2013 to 2024, the number of publications and the frequency of citations in the relevant research areas have exhibited a consistent and notable increase annually. The data set comprises 3734 institutions in 91 countries and territories, with 799 journals publishing the results. The total number of authors contributing to the data set is 14,396. China and the United States have the highest number of published papers, with 721 and 525 papers, respectively. Harvard University and the University of California System exert the most significant influence at the institutional level. Regarding authors, Cheungpasitporn, Wisit, and Thongprayoon Charat of the Mayo Clinic organization were the most prolific researchers, with 23 publications each. It is noteworthy that researcher Breiman I had the highest co-citation frequency. The journal with the most published papers was "Scientific Reports," while "PLoS One" had the highest co-citation frequency. In this field of machine learning applied to renal medicine, the article "A Clinically Applicable Approach to Continuous Prediction of Future Acute Kidney Injury" by Tomasev N et al., published in NATURE in 2019, emerged as the most influential article with the highest co-citation frequency. A keyword and reference co-occurrence analysis reveals that current research trends and frontiers in nephrology are the management of patients with renal disease, prediction and diagnosis of renal disease, imaging of renal disease, and development of personalized treatment plans for patients with renal disease. "Acute kidney injury," "chronic kidney disease," and "kidney tumors" are the most discussed diseases in medical research.

Conclusions: The field of renal medicine is witnessing a surge in the application of machine learning. On one hand, this study offers a novel perspective on applying machine learning techniques to kidney-related diseases based on bibliometric analysis. This analysis provides a comprehensive overview of the current status and emerging research areas in the field, as well as future trends and frontiers. Conversely, this study furnishes data on collaboration and exchange between countries, regions, institutions, journals, authors, keywords, and reference co-citations. This information can facilitate the advancement of future research endeavors, which aim to enhance interdisciplinary collaboration, optimize data sharing and quality, and further advance the application of machine learning in the renal field.

肾脏医学中机器学习的研究热点和前沿:2013-2024 年文献计量学和可视化分析。
背景:肾脏是人体的重要器官,它的病理损伤可能会对人体造成严重的不良后果,甚至影响生命。此外,大多数由肾脏引发的疾病在早期阶段往往不易察觉。一旦发展到晚期,就会影响个人的生活质量,给家庭和社会造成负担。近年来,为了很好地解决这一难题,机器学习技术在肾脏医学中的应用受到了研究人员的广泛关注,并在疾病诊断和预测方面取得了许多成果。然而,对该领域进行全面文献计量学分析的研究尚未发现:本研究采用文献计量学和可视化分析方法评估机器学习在肾脏领域的应用进展,并探讨该领域的研究趋势和热点:使用科学网核心数据库进行检索,结果显示了从数据库建立之初到2024年5月12日期间发表的文章和综述文章。然后对从这些文章和评论文章中提取的数据进行了分析。使用 VOSviewer、CiteSpace 和 Bibliometric (R-Studio 的 R-Tool) 软件进行了文献计量和可视化分析。从 2013 年到 2024 年,相关研究领域的论文数量和被引频次呈现出持续、显著的逐年增长态势。数据集包括 91 个国家和地区的 3734 个机构,799 种期刊发表了相关成果。为数据集做出贡献的作者总数为 14,396 人。中国和美国发表的论文数量最多,分别为 721 篇和 525 篇。在机构层面,哈佛大学和加州大学系统的影响力最大。在作者方面,梅奥诊所组织的 Cheungpasitporn、Wisit 和 Thongprayoon Charat 是发表论文最多的研究人员,各发表了 23 篇论文。值得注意的是,研究员 Breiman I 的共同引用频率最高。发表论文最多的期刊是《科学报告》,而《PLoS One》的共同引用频率最高。在机器学习应用于肾脏医学这一领域,Tomasev N 等人于 2019 年发表在《NATURE》上的文章 "A Clinically Applicable Approach to Continuous Prediction of Future Acute Kidney Injury "成为共同引用频率最高、最具影响力的文章。关键词和参考文献共现分析显示,当前肾脏病学的研究趋势和前沿领域是肾脏疾病患者的管理、肾脏疾病的预测和诊断、肾脏疾病的影像学以及肾脏疾病患者个性化治疗方案的制定。"急性肾损伤"、"慢性肾病 "和 "肾肿瘤 "是医学研究中讨论最多的疾病:肾脏医学领域正在掀起机器学习应用的热潮。一方面,本研究基于文献计量分析,为将机器学习技术应用于肾脏相关疾病提供了一个新的视角。该分析全面概述了该领域的现状和新兴研究领域,以及未来趋势和前沿领域。此外,本研究还提供了国家、地区、机构、期刊、作者、关键词和参考文献共引之间的合作与交流数据。这些信息有助于推进未来的研究工作,从而加强跨学科合作,优化数据共享和质量,进一步推动机器学习在肾脏领域的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Urology and Nephrology
International Urology and Nephrology 医学-泌尿学与肾脏学
CiteScore
3.40
自引率
5.00%
发文量
329
审稿时长
1.7 months
期刊介绍: International Urology and Nephrology publishes original papers on a broad range of topics in urology, nephrology and andrology. The journal integrates papers originating from clinical practice.
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