Updated research trend and clustering algorithm on virtual reality and pulmonary rehabilitation: Scopus-based bibliometric and visual analysis

J. Leelarungrayub, Pongkorn Chantaraj, Supattanawaree Thipcharoen, Jutamat Jintana
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Abstract

Background: Virtual reality (VR) is a new innovative technology that can enhance intervention and should promote the effectiveness of rehabilitation, but there is a lack of scientific evidence on the clustering and topic research trend, especially on VR and pulmonary rehabilitation (PR). More evidence about network clusters and trends will encourage the research in the future. Objective: This study aimed to explore, identify, cluster, and forecast analysis for the research trend of VR and PR from the research articles on the SCOPUS database. Materials and methods: In this study, the search terms “virtual reality” AND “pulmonary rehabilitation” were extracted from specific English research articles published on the SCOPUS database between 2013-2023. RStudio software was used to perform bibliometric and visual analysis. During the analysis in the bibliometric tool, the normalization process with Salton’s Cosine and network clustering via trend topic with the Walktrap algorithm was analyzed before specific visualization with the network clustering mapping, Treemap, and trend topic line by KamadaKawai layout algorithm. Results: From the 1,396 articles on “VR” published between 2010 and 2023, there were 13 research articles on “VR AND PR” published between 2013 and 2023. The bibliometric result from 13 articles showed total of 36 subdisciplines correlated networks among virtual reality (20, 7%), male (16, 6%), female (15, 5%), aged (12, 4%), chronic obstructive lung disease (12, 4%), exercise (11, 4%), human (10, 4%), humans (10, 4%), middle-aged (10, 4%), quality of life (10, 4%), article (9, 3%), pulmonary rehabilitation (9, 3%), controlled study (8, 3%), adult (6, 2%), chronic obstructive (6, 2%), clinical article (6, 2%), forced expiratory volume (6, 2%), pulmonary disease (6, 2%), randomized controlled trial (6, 2%), and forced vital capacity (5, 2%), etc., respectively. Three network clusters were reported after the normalization process and clustering evaluation by factorial analysis. The first cluster was composed of virtual reality, male, female, aged, chronic obstructive lung disease, exercise, human, humans, middle-aged, quality of life, article, pulmonary rehabilitation, controlled study, adult, chronic obstructive, clinical article, forced expiratory volume, randomized controlled trial, forced vital capacity, six-minute walk test, depression, technology, telerehabilitation, breathing exercise, Covid-19, dyspnea, functional status, hospital patient, and physical activity, respectively. The second cluster consisted of procedure and exercise therapy, and the last cluster consisted of exercise tolerance, lung, treatment outcome, health program, and convalescence. Finally, trend research topics were presented in virtual reality, male, female, aged, chronic obstructive lung disease, human, exercise, quality of life, and middle-aged, respectively, in 2023. Conclusion: Therefore, the contribution from data analysis in this article can identify the clustering and trend topics of VR, chronic obstructive lung disease, aging participants, exercise, and quality of life in future research.
虚拟现实与肺康复的最新研究趋势和聚类算法:基于 Scopus 的文献计量学和视觉分析
背景:虚拟现实(VR)是一种新的创新技术,它可以加强干预,并应促进康复的有效性,但目前缺乏有关集群和主题研究趋势的科学证据,尤其是有关 VR 和肺康复(PR)的研究。有关网络集群和趋势的更多证据将鼓励未来的研究。研究目的本研究旨在从 SCOPUS 数据库的研究文章中探索、识别、聚类并预测分析 VR 和 PR 的研究趋势。材料与方法:本研究以 "虚拟现实 "和 "肺康复 "为检索词,从 SCOPUS 数据库中 2013-2023 年间发表的特定英文研究文章中提取。使用 RStudio 软件进行文献计量和可视化分析。在文献计量学工具的分析过程中,使用 Salton's Cosine 进行归一化处理,并使用 Walktrap 算法通过趋势主题进行网络聚类,然后使用网络聚类映射、Treemap 和 KamadaKawai 布局算法趋势主题线进行具体的可视化分析。研究结果在 2010 年至 2023 年间发表的 1,396 篇有关 "VR "的文章中,2013 年至 2023 年间发表了 13 篇有关 "VR 与公关 "的研究文章。13 篇文章的文献计量结果显示,虚拟现实(20,7%)、男性(16,6%)、女性(15,5%)、老年(12,4%)、慢性阻塞性肺病(12,4%)、运动(11,4%)、人类(10,4%)、人类(10,4%)、中年(10,4%)之间共有 36 个子学科相关网络、生活质量 (10,4%)、文章 (9,3%)、肺康复 (9,3%)、对照研究 (8,3%)、成人 (6,2%)、慢性阻塞性 (6,2%)、临床文章 (6,2%)、强迫呼气量 (6,2%)、肺病 (6,2%)、随机对照试验 (6,2%) 和强迫生命容量 (5,2%)等。,分别为经过归一化处理和因子分析聚类评估后,报告了三个网络集群。第一个聚类分别由虚拟现实、男性、女性、老年、慢性阻塞性肺病、运动、人类、人类、中年、生活质量、文章、肺康复、对照研究、成人、慢性阻塞性、临床文章、强迫呼气量、随机对照试验、强迫生命容量、六分钟步行测试、抑郁、技术、远程康复、呼吸运动、Covid-19、呼吸困难、功能状态、医院患者和体育活动组成。第二组包括程序和运动疗法,最后一组包括运动耐量、肺、治疗效果、健康计划和康复。最后,在虚拟现实、男性、女性、老年、慢性阻塞性肺病、人类、运动、生活质量和中年等方面分别提出了 2023 年的趋势性研究课题。研究结论因此,本文的数据分析有助于确定未来研究中虚拟现实、慢性阻塞性肺病、老年参与者、运动和生活质量的聚类和趋势主题。
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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