Guo Yuqi, Hao Zhichao, Zhao Shichong, Gong Jiaqi, Yang Fan
School of Social Work, University of North Carolina at Charlotte, Charlotte, NC, United States.
School of Social Work, The University of Alabama, Tuscaloosa, AL, United States.
J Med Internet Res. 2020 Jul 29;22(7):e18228. doi: 10.2196/18228.
As a critical driving power to promote health care, the health care-related artificial intelligence (AI) literature is growing rapidly.
The purpose of this analysis is to provide a dynamic and longitudinal bibliometric analysis of health care-related AI publications.
The Web of Science (Clarivate PLC) was searched to retrieve all existing and highly cited AI-related health care research papers published in English up to December 2019. Based on bibliometric indicators, a search strategy was developed to screen the title for eligibility, using the abstract and full text where needed. The growth rate of publications, characteristics of research activities, publication patterns, and research hotspot tendencies were computed using the HistCite software.
The search identified 5235 hits, of which 1473 publications were included in the analyses. Publication output increased an average of 17.02% per year since 1995, but the growth rate of research papers significantly increased to 45.15% from 2014 to 2019. The major health problems studied in AI research are cancer, depression, Alzheimer disease, heart failure, and diabetes. Artificial neural networks, support vector machines, and convolutional neural networks have the highest impact on health care. Nucleosides, convolutional neural networks, and tumor markers have remained research hotspots through 2019.
This analysis provides a comprehensive overview of the AI-related research conducted in the field of health care, which helps researchers, policy makers, and practitioners better understand the development of health care-related AI research and possible practice implications. Future AI research should be dedicated to filling in the gaps between AI health care research and clinical applications.
作为促进医疗保健的关键驱动力,与医疗保健相关的人工智能(AI)文献正在迅速增长。
本分析的目的是对与医疗保健相关的AI出版物进行动态和纵向的文献计量分析。
检索科学网(科睿唯安公司),以获取截至2019年12月发表的所有现有且被高度引用的英文AI相关医疗保健研究论文。基于文献计量指标,制定了一种检索策略,通过标题筛选合格论文,必要时使用摘要和全文。使用HistCite软件计算出版物的增长率、研究活动特征、出版模式和研究热点趋势。
检索共命中5235条记录,其中1473篇出版物纳入分析。自1995年以来,出版物产出平均每年增长17.02%,但2014年至2019年研究论文的增长率显著增至45.15%。AI研究中涉及的主要健康问题是癌症、抑郁症、阿尔茨海默病、心力衰竭和糖尿病。人工神经网络、支持向量机和卷积神经网络对医疗保健的影响最大。截至2019年,核苷、卷积神经网络和肿瘤标志物一直是研究热点。
本分析全面概述了医疗保健领域中与AI相关的研究,有助于研究人员、政策制定者和从业者更好地理解与医疗保健相关的AI研究的发展及可能的实践意义。未来的AI研究应致力于填补AI医疗保健研究与临床应用之间的差距。