Chien Shuo-Chen, Yen Chia-Ming, Chang Yu-Hung, Chen Ying-Erh, Liu Chia-Chun, Hsiao Yu-Ping, Yang Ping-Yen, Lin Hong-Ming, Yang Tsung-En, Lu Xing-Hua, Wu I-Chien, Hsu Chih-Cheng, Chiou Hung-Yi, Chung Ren-Hua
Institute of Population Health Sciences, National Health Research Institutes, Miaoli County, Taiwan.
National Center for Geriatrics and Welfare Research, National Health Research Institutes, Yunlin County, Taiwan.
J Med Internet Res. 2025 Mar 4;27:e56692. doi: 10.2196/56692.
The global aging population poses critical challenges for long-term care (LTC), including workforce shortages, escalating health care costs, and increasing demand for high-quality care. Integrating artificial intelligence (AI), the Internet of Things (IoT), and edge intelligence (EI) offers transformative potential to enhance care quality, improve safety, and streamline operations. However, existing research lacks a comprehensive analysis that synthesizes academic trends, public interest, and deeper insights regarding these technologies.
This study aims to provide a holistic overview of AI, IoT, and EI applications in LTC for older adults through a comprehensive bibliometric analysis, public interest insights from Google Trends, and content analysis of the top-cited research papers.
Bibliometric analysis was conducted using data from Web of Science, PubMed, and Scopus to identify key themes and trends in the field, while Google Trends was used to assess public interest. A content analysis of the top 1% of most-cited papers provided deeper insights into practical applications.
A total of 6378 papers published between 2014 and 2023 were analyzed. The bibliometric analysis revealed that the United States, China, and Canada are leading contributors, with strong thematic overlaps in areas such as dementia care, machine learning, and wearable health monitoring technologies. High correlations were found between academic and public interest, in key topics such as "long-term care" (τ=0.89, P<.001) and "caregiver" (τ=0.72, P=.004). The content analysis demonstrated that social robots, particularly PARO, significantly improved mood and reduced agitation in patients with dementia. However, limitations, including small sample sizes, short study durations, and a narrow focus on dementia care, were noted.
AI, IoT, and EI collectively form a powerful ecosystem in LTC settings, addressing different aspects of care for older adults. Our study suggests that increased international collaboration and the integration of emerging themes such as "rehabilitation," "stroke," and "mHealth" are necessary to meet the evolving care needs of this population. Additionally, incorporating high-interest keywords such as "machine learning," "smart home," and "caregiver" can enhance discoverability and relevance for both academic and public audiences. Future research should focus on expanding sample sizes, conducting long-term multicenter trials, and exploring broader health conditions beyond dementia, such as frailty and depression.
全球人口老龄化给长期护理(LTC)带来了严峻挑战,包括劳动力短缺、医疗保健成本不断攀升以及对高质量护理的需求日益增加。整合人工智能(AI)、物联网(IoT)和边缘智能(EI)具有变革潜力,可提高护理质量、改善安全性并简化运营。然而,现有研究缺乏对这些技术的学术趋势、公众兴趣和更深入见解的综合分析。
本研究旨在通过全面的文献计量分析、谷歌趋势的公众兴趣洞察以及被引频次最高的研究论文的内容分析,全面概述人工智能、物联网和边缘智能在老年人长期护理中的应用。
使用来自科学网、PubMed和Scopus的数据进行文献计量分析,以确定该领域的关键主题和趋势,同时利用谷歌趋势评估公众兴趣。对被引频次最高的1%的论文进行内容分析,以更深入了解实际应用。
共分析了2014年至2023年间发表的6378篇论文。文献计量分析表明,美国、中国和加拿大是主要贡献者,在痴呆症护理、机器学习和可穿戴健康监测技术等领域存在强烈的主题重叠。在“长期护理”(τ=0.89,P<0.001)和“护理人员”(τ=0.72,P=0.004)等关键主题上,学术兴趣与公众兴趣之间存在高度相关性。内容分析表明,社交机器人,尤其是PARO,显著改善了痴呆症患者的情绪并减少了躁动。然而,研究也存在局限性,包括样本量小、研究持续时间短以及对痴呆症护理的关注范围狭窄。
人工智能、物联网和边缘智能在长期护理环境中共同构成了一个强大的生态系统,满足了老年人护理的不同方面。我们的研究表明,加强国际合作以及整合“康复”、“中风”和“移动健康”等新兴主题对于满足这一人群不断变化的护理需求至关重要。此外,纳入“机器学习”、“智能家居”和“护理人员”等高关注度关键词可以提高学术和公众受众的可发现性和相关性。未来的研究应侧重于扩大样本量、进行长期多中心试验以及探索痴呆症以外更广泛的健康状况,如衰弱和抑郁症。