Research Focus Involving and Trends in Artificial Intelligence for Spinal Pain: A Bibliometric Analysis.

IF 2.5 2区 医学 Q2 ANESTHESIOLOGY
Pain physician Pub Date : 2025-05-01
Chaobo Feng, Zhuoxi Zhou, Yongen Miao, Sheng Yang, Guoxin Fan, Xiang Liao
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引用次数: 0

Abstract

Background: Spinal pain is a pervasive global health issue that poses significant challenges because of the disability and economic burden it causes. Despite the availability of various treatments for the condition, a definitive cure for spinal pain remains elusive, underscoring the need for innovative approaches. Artificial intelligence (AI) is considered a potential method for facilitating relief for patients suffering from spinal pain.

Objective: This study utilized a bibliometric analysis to explore the impact of AI on spinal pain research, examining publication trends, collaboration patterns, author contributions, and keyword clusters, to analyze research focus and trends in this field.

Study design: Bibliometric analysis.

Setting: Data were obtained from the Web of Science Core Collection (WoSCC).

Methods: The literature related to AI-assisted techniques in spinal pain treatment was collected from the WoSCC. The CiteSpace and R Bibliometrix software packages were used in the analysis.

Results: In total, 310 articles were included, with the number of publications and citations increasing progressively. The greatest number of publications and total citations came from the United States. The University of Washington was the institution associated with the most publications. Mork PJ was the byline that appeared most often in association with both publications and total citations. The European Spine Journal was the journal in which the most publications appeared, while Spine had the greatest number of citations. The literature with the most global citations was published by Jamalusin A in the European Spine Journal, while the literature with the most local citations was by Sandal LF on JMIR Research Protocols. The most frequent key words were "machine learning," "low back pain," "magnetic resonance imaging, etc. LIMITATIONS: Only the English-language articles in the WoSCC database were included, and proceeding papers, meeting abstracts, and book chapters were excluded. Furthermore, we included no research about wearable sensors, virtual reality, and so on. Additionally, the articles from the other databases were not included.

Conclusion: The research of applying AI as a treatment for spinal injury has appealed to interdisciplinary efforts, reflecting the potential for self-management, imaging processing, and clinical decision-making. An overall perspective is shown in our study, which facilitates understanding and provides research focuses and trends in this field.

人工智能治疗脊柱疼痛的研究焦点与趋势:文献计量学分析。
背景:脊柱疼痛是一个普遍存在的全球健康问题,由于其导致的残疾和经济负担,它构成了重大挑战。尽管有各种治疗方法,但脊椎疼痛的确切治疗方法仍然难以捉摸,这强调了创新方法的必要性。人工智能(AI)被认为是缓解脊柱疼痛的潜在方法。目的:本研究采用文献计量分析方法,探讨人工智能对脊柱疼痛研究的影响,考察出版物趋势、合作模式、作者贡献和关键词聚类,分析该领域的研究重点和趋势。研究设计:文献计量学分析。数据来源于Web of Science Core Collection (WoSCC)。方法:从WoSCC中收集人工智能辅助技术治疗脊柱疼痛的相关文献。采用CiteSpace和R Bibliometrix软件包进行分析。结果:共纳入文献310篇,发表次数和被引次数均呈递增趋势。最多的出版物和总引用来自美国。华盛顿大学是发表论文最多的机构。Mork PJ是在出版物和总引用中出现最多的署名。《欧洲脊柱杂志》是发表论文最多的杂志,而《脊柱》的引用次数最多。全球被引次数最多的文献由Jamalusin A发表在欧洲脊柱杂志上,而本地被引次数最多的文献由Sandal LF发表在JMIR Research Protocols上。最常见的关键词是“机器学习”、“腰痛”、“磁共振成像”等。限制:仅包括WoSCC数据库中的英文文章,不包括论文、会议摘要和书籍章节。此外,我们没有纳入可穿戴传感器、虚拟现实等方面的研究。此外,没有包括其他数据库中的文章。结论:应用人工智能治疗脊髓损伤的研究需要跨学科的努力,反映了自我管理、成像处理和临床决策的潜力。我们的研究展示了一个整体的视角,这有助于理解,并提供了该领域的研究重点和趋势。
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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来源期刊
Pain physician
Pain physician CLINICAL NEUROLOGY-CLINICAL NEUROLOGY
CiteScore
6.00
自引率
21.60%
发文量
234
期刊介绍: Pain Physician Journal is the official publication of the American Society of Interventional Pain Physicians (ASIPP). The open access journal is published 6 times a year. Pain Physician Journal is a peer-reviewed, multi-disciplinary, open access journal written by and directed to an audience of interventional pain physicians, clinicians and basic scientists with an interest in interventional pain management and pain medicine. Pain Physician Journal presents the latest studies, research, and information vital to those in the emerging specialty of interventional pain management – and critical to the people they serve.
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