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Artificial Intelligence in Nursing Decision-Making: A Bibliometric Analysis of Trends and Impacts
7
Zitationen
9
Autoren
2025
Jahr
Abstract
<b>Background:</b> Nursing decision-making is pivotal for patient safety and care quality. While artificial intelligence (AI) offers transformative potential in this field, a comprehensive analysis of global research trends is lacking. <b>Methods:</b> We conducted a bibliometric analysis of 238 publications (197 research papers, 41 reviews) from the Web of Science Core Collection (2003-2025) using CiteSpace and VOSviewer. <b>Results:</b> The results reveal growing interest (7.59% annually) in the field of AI in nursing decision-making, with contributions from 54 countries/regions. The USA leads in the number of publications, followed by China and Canada, while the United Kingdom stands out in terms of citation impact. Institutions such as Columbia University and Harvard Medical School dominate in both the publication volume and citation frequency. Journal analysis shows that the top three journals in terms of publication volume in this field are <i>Cin-Computers Informatics Nursing</i>, <i>Journal of Nursing Management</i>, and <i>Applied Clinical Informatics</i>. Keyword analysis highlights the significant potential of natural language processing technologies, particularly those based on large language models (e.g., ChatGPT), in nursing decision-making. Furthermore, emerging trends are evident, with the sudden appearance and rapid growth of keywords such as "patient safety" and "user acceptance", indicating a shift in research focus from purely technology-driven studies to a greater emphasis on the practical impact of AI technologies on nursing systems and their clinical applications. <b>Conclusions:</b> This study delineates the current landscape and evolving trends of AI in nursing decision-making, emphasizing its progression from theoretical frameworks to clinical integration, thereby providing valuable references for future research.
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