Badi Rawashdeh, Haneen Al-Abdallat, Emre Arpali, Beje Thomas, Ty B Dunn, Matthew Cooper
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引用次数: 0
Abstract
Background: Machine learning (ML), a major branch of artificial intelligence, has not only demonstrated the potential to significantly improve numerous sectors of healthcare but has also made significant contributions to the field of solid organ transplantation. ML provides revolutionary opportunities in areas such as donor-recipient matching, post-transplant monitoring, and patient care by automatically analyzing large amounts of data, identifying patterns, and forecasting outcomes.
Aim: To conduct a comprehensive bibliometric analysis of publications on the use of ML in transplantation to understand current research trends and their implications.
Methods: On July 18, a thorough search strategy was used with the Web of Science database. ML and transplantation-related keywords were utilized. With the aid of the VOS viewer application, the identified articles were subjected to bibliometric variable analysis in order to determine publication counts, citation counts, contributing countries, and institutions, among other factors.
Results: Of the 529 articles that were first identified, 427 were deemed relevant for bibliometric analysis. A surge in publications was observed over the last four years, especially after 2018, signifying growing interest in this area. With 209 publications, the United States emerged as the top contributor. Notably, the "Journal of Heart and Lung Transplantation" and the "American Journal of Transplantation" emerged as the leading journals, publishing the highest number of relevant articles. Frequent keyword searches revealed that patient survival, mortality, outcomes, allocation, and risk assessment were significant themes of focus.
Conclusion: The growing body of pertinent publications highlights ML's growing presence in the field of solid organ transplantation. This bibliometric analysis highlights the growing importance of ML in transplant research and highlights its exciting potential to change medical practices and enhance patient outcomes. Encouraging collaboration between significant contributors can potentially fast-track advancements in this interdisciplinary domain.
背景:机器学习(ML)是人工智能的一个主要分支,它不仅显示出显著改善医疗保健许多部门的潜力,而且在实体器官移植领域也做出了重大贡献。机器学习通过自动分析大量数据、识别模式和预测结果,在供体-受体匹配、移植后监测和患者护理等领域提供了革命性的机会。目的:对ML在移植中的应用进行全面的文献计量学分析,以了解当前的研究趋势及其影响。方法:7月18日,对Web of Science数据库进行了全面的搜索策略。使用ML和移植相关关键词。在VOS查看器应用程序的帮助下,对确定的文章进行文献计量变量分析,以确定出版数量、引用数量、贡献国家和机构以及其他因素。结果:在首次确定的529篇文章中,427篇被认为与文献计量学分析相关。在过去四年中,特别是在2018年之后,出版物激增,这表明人们对这一领域的兴趣日益浓厚。美国发表了209篇论文,成为贡献最多的国家。值得注意的是,《Journal of Heart and Lung Transplantation》和《American Journal of Transplantation》成为发表相关文章最多的领先期刊。频繁的关键词搜索显示,患者生存、死亡率、结局、分配和风险评估是关注的重要主题。结论:越来越多的相关出版物突出了ML在实体器官移植领域的日益增长的存在。这项文献计量分析强调了ML在移植研究中日益增长的重要性,并强调了其改变医疗实践和提高患者预后的令人兴奋的潜力。鼓励重要贡献者之间的合作可以潜在地加快这一跨学科领域的进展。