Using Bibliometric Data to Define and Understand Publishing Network Equity in Anesthesiology.

IF 4.6 2区 医学 Q1 ANESTHESIOLOGY
Anesthesia and analgesia Pub Date : 2024-11-01 Epub Date: 2024-06-12 DOI:10.1213/ANE.0000000000006877
Elizabeth W Duggan, Gary S Atwood, Joseph A Sanford, Mitchell H Tsai, Jamal K Egbaria, Nina Carmichael-Tanaka, Neal B Outland
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引用次数: 0

Abstract

Background: Anesthesiology departments and professional organizations increasingly recognize the need to embrace diverse membership to effectively care for patients, to educate our trainees, and to contribute to innovative research. 1 Bibliometric analysis uses citation data to determine the patterns of interrelatedness within a scientific community. Social network analysis examines these patterns to elucidate the network's functional properties. Using these methodologies, an analysis of contemporary scholarly work was undertaken to outline network structure and function, with particular focus on the equity of node and graph-level connectivity patterns.

Methods: Using the Web of Science, this study examines bibliographic data from 6 anesthesiology-specific journals between January 1, 2017, and August 26, 2022. The final data represent 4453 articles, 19,916 independent authors, and 4436 institutions. Analysis of coauthorship was performed using R libraries software. Collaboration patterns were assessed at the node and graph level to analyze patterns of coauthorship. Influential authors and institutions were identified using centrality metrics; author influence was also cataloged by the number of publications and highly cited papers. Independent assessors reviewed influential author photographs to classify race and gender. The Gini coefficient was applied to examine dispersion of influence across nodes. Pearson correlations were used to investigate the relationship between centrality metrics, number of publications, and National Institutes of Health (NIH) funding.

Results: The modularity of the author network is significantly higher than would be predicted by chance (0.886 vs random network mean 0.340, P < .01), signifying strong community formation. The Gini coefficient indicates inequity across both author and institution centrality metrics, representing moderate to high disparity in node influence. Identifying the top 30 authors by centrality metrics, number of published and highly cited papers, 79.0% were categorized as male; 68.1% of authors were classified as White (non-Latino) and 24.6% Asian.

Conclusions: The highly modular network structure indicates dense author communities. Extracommunity cooperation is limited, previously demonstrated to negatively impact novel scientific work. 2 , 3 Inequitable node influence is seen at both author and institution level, notably an imbalance of information transfer and disparity in connectivity patterns. There is an association between network influence, article publication (authors), and NIH funding (institutions). Female and minority authors are inequitably represented among the most influential authors. This baseline bibliometric analysis provides an opportunity to direct future network connections to more inclusively share information and integrate diverse perspectives, properties associated with increased academic productivity. 3 , 4.

利用文献计量学数据定义和理解麻醉学出版网络公平性。
背景:麻醉学部门和专业组织日益认识到需要接纳不同的成员,以便有效地护理病人、教育我们的受训人员并为创新研究做出贡献1。社会网络分析通过研究这些模式来阐明网络的功能特性。利用这些方法,我们对当代学术著作进行了分析,以勾勒出网络结构和功能,并特别关注节点和图层连接模式的公平性:本研究使用科学网(Web of Science)检查了 2017 年 1 月 1 日至 2022 年 8 月 26 日期间 6 种麻醉学专业期刊的书目数据。最终数据代表了 4453 篇文章、19916 位独立作者和 4436 家机构。共同作者分析使用 R 库软件进行。合作模式在节点和图层面进行评估,以分析共同署名的模式。使用中心度量法确定了有影响力的作者和机构;还根据发表论文的数量和高被引论文的数量对作者的影响力进行了编目。独立评估员审查了有影响力的作者照片,对种族和性别进行了分类。基尼系数用于检查各节点影响力的分散情况。皮尔逊相关性用于研究中心度指标、发表论文数量和美国国立卫生研究院(NIH)资助之间的关系:结果:作者网络的模块化程度明显高于偶然性预测(0.886 vs 随机网络平均值 0.340,P < .01),这标志着强大的社区形成。基尼系数显示了作者和机构中心度指标的不平等,代表了节点影响力的中度到高度差异。根据中心度指标、发表论文数量和高被引论文数量确定前 30 位作者,79.0% 的作者为男性;68.1% 的作者为白人(非拉丁裔),24.6% 为亚裔:结论:高度模块化的网络结构表明作者群体十分密集。结论:高度模块化的网络结构表明作者社群十分密集,但社群外的合作却十分有限,以前的研究曾证明这会对新颖的科学工作产生负面影响。网络影响力、文章发表(作者)和美国国立卫生研究院(NIH)资助(机构)之间存在关联。在最有影响力的作者中,女性和少数民族作者的比例不平等。这项基准文献计量分析提供了一个机会,引导未来的网络连接更加包容地共享信息和整合不同的观点,这些特性与学术生产力的提高息息相关。
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来源期刊
Anesthesia and analgesia
Anesthesia and analgesia 医学-麻醉学
CiteScore
9.90
自引率
7.00%
发文量
817
审稿时长
2 months
期刊介绍: Anesthesia & Analgesia exists for the benefit of patients under the care of health care professionals engaged in the disciplines broadly related to anesthesiology, perioperative medicine, critical care medicine, and pain medicine. The Journal furthers the care of these patients by reporting the fundamental advances in the science of these clinical disciplines and by documenting the clinical, laboratory, and administrative advances that guide therapy. Anesthesia & Analgesia seeks a balance between definitive clinical and management investigations and outstanding basic scientific reports. The Journal welcomes original manuscripts containing rigorous design and analysis, even if unusual in their approach.
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