Wuhan Hospital of Traditional Chinese Medicine, Wuhan, China.
Hubei University of Chinese Medicine, Wuhan, China.
Medicine (Baltimore). 2024 Sep 6;103(36):e39610. doi: 10.1097/MD.0000000000039610.
BACKGROUND: Obesity, a multifactorial and complex health condition, has emerged as a significant global public health concern. Integrating machine learning techniques into obesity research offers great promise as an interdisciplinary field, particularly in the screening, diagnosis, and analysis of obesity. Nevertheless, the publications on using machine learning methods in obesity research have not been systematically evaluated. Hence, this study aimed to quantitatively examine, visualize, and analyze the publications concerning the use of machine learning methods in obesity research by means of bibliometrics. METHODS: The Web of Science core collection was the primary database source for this study, which collected publications on obesity research using machine learning methods over the last 20 years from January 1, 2004, to December 31, 2023. Only articles and reviews that fit the criteria were selected for bibliometric analysis, and in terms of language, only English was accepted. VOSviewer, CiteSpace, and Excel were the primary software utilized. RESULTS: Between 2004 and 2023, the number of publications on obesity research using machine learning methods increased exponentially. Eventually, 3286 publications that met the eligibility criteria were searched. According to the collaborative network analysis, the United States has the greatest volume of publications, indicating a significant influence on this research. coauthor's analysis showed the authoritative one in this field is Leo Breiman. Scientific Reports is the most widely published journal. The most referenced publication is "R: a language and environment for statistical computing." An analysis of keywords shows that deep learning, support vector machines, predictive models, gut microbiota, energy expenditure, and genome are hot topics in this field. Future research directions may include the relationship between obesity and its consequences, such as diabetic retinopathy, as well as the interaction between obesity and epidemiology, such as COVID-19. CONCLUSION: Utilizing bibliometrics as a research tool and methodology, this study, for the first time, reveals the intrinsic relationship and developmental pattern among obesity research using machine learning methods, which provides academic references for clinicians and researchers in understanding the hotspots and cutting-edge issues as well as the developmental trend in this field to detect patients' obesity problems early and develop personalized treatment plans.
背景:肥胖是一种多因素、复杂的健康状况,已成为全球重大公共卫生关注问题。将机器学习技术融入肥胖研究领域具有广阔的前景,这是一个跨学科领域,特别是在肥胖的筛查、诊断和分析方面。然而,关于使用机器学习方法进行肥胖研究的出版物尚未得到系统评估。因此,本研究旨在通过文献计量学定量检查、可视化和分析过去 20 年来使用机器学习方法进行肥胖研究的出版物。
方法:本研究的主要数据库来源是 Web of Science 核心合集,该数据库收集了 2004 年 1 月 1 日至 2023 年 12 月 31 日期间使用机器学习方法进行肥胖研究的出版物。仅选择符合标准的文章和综述进行文献计量学分析,且仅接受英语。VOSviewer、CiteSpace 和 Excel 是主要使用的软件。
结果:2004 年至 2023 年间,使用机器学习方法进行肥胖研究的出版物数量呈指数级增长。最终,共检索到符合入选标准的 3286 篇出版物。根据合作网络分析,美国发表的论文数量最多,表明其对该研究具有重大影响。合著者分析表明,该领域的权威人士是 Leo Breiman。发表论文最多的期刊是 Scientific Reports。被引频次最高的出版物是“R: a language and environment for statistical computing”。关键词分析表明,深度学习、支持向量机、预测模型、肠道微生物群、能量消耗和基因组是该领域的热门话题。未来的研究方向可能包括肥胖及其后果(如糖尿病视网膜病变)之间的关系,以及肥胖与流行病学(如 COVID-19)之间的相互作用。
结论:本研究首次利用文献计量学作为研究工具和方法,揭示了使用机器学习方法进行肥胖研究的内在关系和发展模式,为临床医生和研究人员提供了学术参考,有助于他们了解该领域的热点和前沿问题以及发展趋势,以便及早发现患者的肥胖问题并制定个性化的治疗方案。
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