{"title":"机器人辅助手术学习曲线的全球趋势和热点:文献计量学和可视化分析。","authors":"Xianfa Zhang, Jing Wang, Li'na Chen, Huarong Ding","doi":"10.1007/s11701-025-02391-5","DOIUrl":null,"url":null,"abstract":"<p><p>In recent years, there has been a substantial increase in the number of research papers published in the field of robotic-assisted surgery (RAS). Nevertheless, systematic analyses focusing on the key hotspots associated with the learning curves (LCs) of RAS, global collaboration models, and future trends remain relatively limited. This study employed bibliometric methods to conduct a comprehensive search and analysis of papers on the LC of RAS published in the Web of Science Core Collection between 2005 and 2025. A visual analysis was performed across multiple dimensions, including countries, institutions, sources, and authors. The results revealed an upward trend in the number of publications, with a peak observed in 2024. The United States ranked first in terms of publication volume, while Yonsei University emerged as the most productive institution. Mottrie Alexandre contributed to the highest number of publications, and Dindo d received the highest number of citations. Frequently occurring keywords included \"outcome\", \"experience\", \"minimally invasive surgery\", \"revision\", and \"laparoscopic surgery\". Clustering keywords were associated with \"rectal cancer\", \"en-y gastric bypass\", \"transoral robotic surgery\", \"spine surgery\", and \"endometrial cancer\". Furthermore, the top five keywords with the strongest citation bursts were \"laparoscopic radical prostatectomy\", \"total mesorectal excision\", \"da vinci\", \"prostatectomy\", and \"mrc clasicc trial\". This study offers valuable insights into the future development of this field and supports further exploration and innovation.</p>","PeriodicalId":47616,"journal":{"name":"Journal of Robotic Surgery","volume":"19 1","pages":"223"},"PeriodicalIF":2.2000,"publicationDate":"2025-05-20","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Global trends and hotspots in the learning curves of robotic-assisted surgery: a bibliometric and visualization analysis.\",\"authors\":\"Xianfa Zhang, Jing Wang, Li'na Chen, Huarong Ding\",\"doi\":\"10.1007/s11701-025-02391-5\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>In recent years, there has been a substantial increase in the number of research papers published in the field of robotic-assisted surgery (RAS). Nevertheless, systematic analyses focusing on the key hotspots associated with the learning curves (LCs) of RAS, global collaboration models, and future trends remain relatively limited. This study employed bibliometric methods to conduct a comprehensive search and analysis of papers on the LC of RAS published in the Web of Science Core Collection between 2005 and 2025. A visual analysis was performed across multiple dimensions, including countries, institutions, sources, and authors. The results revealed an upward trend in the number of publications, with a peak observed in 2024. The United States ranked first in terms of publication volume, while Yonsei University emerged as the most productive institution. Mottrie Alexandre contributed to the highest number of publications, and Dindo d received the highest number of citations. 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引用次数: 0
摘要
近年来,在机器人辅助手术(RAS)领域发表的研究论文数量大幅增加。然而,对RAS的学习曲线(lc)、全球协作模型和未来趋势相关的关键热点的系统分析仍然相对有限。本研究采用文献计量学方法,对Web of Science核心馆藏2005 - 2025年间发表的关于RAS LC的论文进行了全面检索和分析。在多个维度上进行了可视化分析,包括国家、机构、来源和作者。结果显示,论文发表数量呈上升趋势,2024年达到峰值。美国的论文发表量排名第一,延世大学的论文发表量排名第一。motrie Alexandre发表的论文最多,而Dindo d被引用的次数最多。频繁出现的关键词包括“结局”、“经验”、“微创手术”、“翻修”和“腹腔镜手术”。聚类关键词与“直肠癌”、“en-y胃旁路”、“经口机器人手术”、“脊柱手术”和“子宫内膜癌”相关。此外,引用次数最多的前5个关键词是“腹腔镜根治性前列腺切除术”、“直肠全系膜切除术”、“达芬奇”、“前列腺切除术”和“mrc经典试验”。这项研究为该领域的未来发展提供了宝贵的见解,并支持了进一步的探索和创新。
Global trends and hotspots in the learning curves of robotic-assisted surgery: a bibliometric and visualization analysis.
In recent years, there has been a substantial increase in the number of research papers published in the field of robotic-assisted surgery (RAS). Nevertheless, systematic analyses focusing on the key hotspots associated with the learning curves (LCs) of RAS, global collaboration models, and future trends remain relatively limited. This study employed bibliometric methods to conduct a comprehensive search and analysis of papers on the LC of RAS published in the Web of Science Core Collection between 2005 and 2025. A visual analysis was performed across multiple dimensions, including countries, institutions, sources, and authors. The results revealed an upward trend in the number of publications, with a peak observed in 2024. The United States ranked first in terms of publication volume, while Yonsei University emerged as the most productive institution. Mottrie Alexandre contributed to the highest number of publications, and Dindo d received the highest number of citations. Frequently occurring keywords included "outcome", "experience", "minimally invasive surgery", "revision", and "laparoscopic surgery". Clustering keywords were associated with "rectal cancer", "en-y gastric bypass", "transoral robotic surgery", "spine surgery", and "endometrial cancer". Furthermore, the top five keywords with the strongest citation bursts were "laparoscopic radical prostatectomy", "total mesorectal excision", "da vinci", "prostatectomy", and "mrc clasicc trial". This study offers valuable insights into the future development of this field and supports further exploration and innovation.
期刊介绍:
The aim of the Journal of Robotic Surgery is to become the leading worldwide journal for publication of articles related to robotic surgery, encompassing surgical simulation and integrated imaging techniques. The journal provides a centralized, focused resource for physicians wishing to publish their experience or those wishing to avail themselves of the most up-to-date findings.The journal reports on advance in a wide range of surgical specialties including adult and pediatric urology, general surgery, cardiac surgery, gynecology, ENT, orthopedics and neurosurgery.The use of robotics in surgery is broad-based and will undoubtedly expand over the next decade as new technical innovations and techniques increase the applicability of its use. The journal intends to capture this trend as it develops.