系统评论1934-2023的数据挖掘:文献计量学分析

Haneen Al-Abdallat, Badi Rawashdeh
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摘要

系统评价巩固证据并推动临床实践指南、成本效益分析和政策决策;因此,它们的年发表率显著提高。我们使用文献计量学分析,通过检查关键词频率和系统综述分布来确定研究趋势、搜索最多的主题、作者和组织的生产力和合作、研究网络和研究差距。方法使用Salvador-Oliván和共同作者描述的系统综述过滤器在PubMed数据库中检索系统综述,该过滤器比PubMed SR过滤器具有更高的召回率。搜索期从1934年到2023年2月3日。使用Microsoft Excel和VOSviewer应用程序分析年度趋势、机构、作者和关键词,以及创建表格和网络图。结果共发表378,685篇文献。在过去的五年中,发表的文章数量一直在稳步上升。加拿大的多伦多大学和麦克马斯特大学(n = 1415和n = 1386)是贡献最多的大学。“疾病遗传易感性”、“术后并发症”、“肿瘤”、“中风”和“covid-19”是系统评价中出现频率最高的5个专业关键词。这项文献计量学研究考察了系统综述、出版趋势、大多数出版学科、作者和组织的生产力以及合作努力。这项研究的结果可能被证明是研究人员、政策制定者和医疗保健专业人员的宝贵资源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Mining of Systematic Reviews 1934-2023: A Bibliometric Analysis
Introduction Systematic reviews consolidate evidence and drive clinical practice guidelines, cost-effective analyses, and policy decisions; therefore, their annual publication rate has increased significantly. We used bibliometric analysis to identify research trends, the most searched topics, authors and organizations productivity and collaboration, the research network, and research gaps by examining keywords frequency and systematic reviews distribution. Methods We searched the PubMed database for systematic reviews using the systematic review filter described by Salvador-Oliván and coauthors, which has higher recall than the PubMed SR filter. The search period was from 1934 until February 3, 2023. Microsoft Excel and the VOSviewer application were used for analyzing yearly trends, institutions, authors, and keywords, as well as to create tables and network figures. Results A total of 378,685 articles were published. The number of articles published has been rising steadily during the past five years. The University of Toronto and McMaster University in Canada (n = 1415 and n = 1386) were the leading contributory universities. “Genetic predisposition to disease”, “postoperative complications”, “neoplasm”, “stroke”, and “covid-19” were the top 5 occurring keywords that are particular to a specialty in systematic reviews. Conclusion This bibliometric research examined systematic reviews, publication trends, the majority of publishing disciplines, authors and organizations productivity, and collaborative efforts. The results of this study could prove to be an invaluable resource for researchers, policymakers, and healthcare professionals.
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