Pain is a significant public health problem as the number of individuals with a history of pain globally keeps growing. In response, many synergistic research areas have been coming together to address pain-related issues. This work conducts a review and analysis of a vast body of pain-related literature using the keyword co-occurrence network (KCN) methodology. In this method, a set of KCNs is constructed by treating keywords as nodes and the co-occurrence of keywords as links between the nodes. Since keywords represent the knowledge components of research articles, analysis of KCNs will reveal the knowledge structure and research trends in the literature. This study extracted and analyzed keywords from 264,560 pain-related research articles indexed in IEEE, PubMed, Engineering Village, and Web of Science published between 2002 and 2021. We observed rapid growth in pain literature in the last two decades: the number of articles has grown nearly threefold, and the number of keywords has grown by a factor of 7. We identified emerging and declining research trends in sensors/methods, biomedical, and treatment tracks. We also extracted the most frequently co-occurring keyword pairs and clusters to help researchers recognize the synergies among different pain-related topics.
翻译:随着全球有痛苦历史的人数不断增加,疼痛是一个重大的公共健康问题。作为回应,许多协同研究领域都聚集在一起,共同解决与疼痛有关的问题。这项工作利用“共同发生关键词网络”(KCN)的方法,对大量与疼痛有关的文献进行审查和分析。在这个方法中,将关键词作为节点和关键词共同作为节点之间的联系来构建一套KCN。关键词代表了研究文章的知识组成部分,因此,对KCN的分析将揭示文献中的知识结构和研究趋势。这项研究提取和分析了264,560个与疼痛有关的研究文章的关键词,这些研究文章在2002至2021年期间以IEEEE、PubMed、工程村和科学网索引形式出版。我们观察到疼痛文献在过去20年迅速增长:文章数量增加了近3倍,关键词的数量增加了7倍。我们发现传感器/方法、生物医学和治疗轨道中正在出现和不断下降的研究趋势。我们还提取了与疼痛有关的最经常出现的关键词。我们还提取了研究人员之间与帮助研究主题之间的协同效应。