Department of Emergency Medicine, The First Affiliated Hospital of Zhengzhou University, Zhengzhou, China.
School of Artificial Intelligence, Shenyang University of Technology, Shenyang, China.
J Nurs Scholarsh. 2024 May;56(3):466-477. doi: 10.1111/jnu.12954. Epub 2023 Dec 22.
To comprehend the current research hotspots and emerging trends in big data research within the global nursing domain.
Bibliometric analysis.
The quality articles for analysis indexed by the science core collection were obtained from the Web of Science database as of February 10, 2023.The descriptive, visual analysis and text mining were realized by CiteSpace and VOSviewer.
The research on big data in the nursing field has experienced steady growth over the past decade. A total of 45 core authors and 17 core journals around the world have contributed to this field. The author's keyword analysis has revealed five distinct clusters of research focus. These encompass machine/deep learning and artificial intelligence, natural language processing, big data analytics and data science, IoT and cloud computing, and the development of prediction models through data mining. Furthermore, a comparative examination was conducted with data spanning from 1980 to 2016, and an extended analysis was performed covering the years from 1980 to 2019. This bibliometric mapping comparison allowed for the identification of prevailing research trends and the pinpointing of potential future research hotspots within the field.
The fusion of data mining and nursing research has steadily advanced and become more refined over time. Technologically, it has expanded from initial natural language processing to encompass machine learning, deep learning, artificial intelligence, and data mining approach that amalgamates multiple technologies. Professionally, it has progressed from addressing patient safety and pressure ulcers to encompassing chronic diseases, critical care, emergency response, community and nursing home settings, and specific diseases (Cardiovascular diseases, diabetes, stroke, etc.). The convergence of IoT, cloud computing, fog computing, and big data processing has opened new avenues for research in geriatric nursing management and community care. However, a global imbalance exists in utilizing big data in nursing research, emphasizing the need to enhance data science literacy among clinical staff worldwide to advance this field.
This study focused on the thematic trends and evolution of research on the big data in nursing research. Moreover, this study may contribute to the understanding of researchers, journals, and countries around the world and generate the possible collaborations of them to promote the development of big data in nursing science.
了解全球护理领域大数据研究的当前热点和新兴趋势。
文献计量分析。
从 Web of Science 数据库中获取截至 2023 年 2 月 10 日科学核心集索引的高质量分析文章。通过 CiteSpace 和 VOSviewer 实现描述性、可视化分析和文本挖掘。
过去十年,护理领域的大数据研究呈稳步增长态势。全球共有 45 位核心作者和 17 本核心期刊为该领域做出了贡献。作者的关键词分析揭示了五个不同的研究重点集群。这些集群涵盖了机器学习/深度学习和人工智能、自然语言处理、大数据分析和数据科学、物联网和云计算,以及通过数据挖掘开发预测模型。此外,还对 1980 年至 2016 年的数据进行了比较分析,并对 1980 年至 2019 年的数据进行了扩展分析。这种文献计量制图比较使我们能够识别当前的研究趋势,并确定该领域未来的潜在研究热点。
数据挖掘与护理研究的融合随着时间的推移稳步推进并变得更加精细化。从技术角度来看,它已经从最初的自然语言处理扩展到包括机器学习、深度学习、人工智能和数据挖掘方法,这些方法融合了多种技术。从专业角度来看,它已经从解决患者安全和压疮问题扩展到涵盖慢性病、重症监护、应急响应、社区和疗养院环境以及特定疾病(心血管疾病、糖尿病、中风等)。物联网、云计算、雾计算和大数据处理的融合为老年护理管理和社区护理的研究开辟了新途径。然而,全球在利用大数据进行护理研究方面存在不平衡,强调需要提高全球临床工作人员的数据科学素养,以推动这一领域的发展。
本研究关注的是护理研究中大数据的主题趋势和演变。此外,本研究可能有助于了解全球的研究人员、期刊和国家,并促进他们之间的可能合作,以促进护理科学中的大数据发展。