Research trends of digital transformation in healthcare systems: A bibliometric approach

Zarina Zulkifli

Article ID: 7701
Vol 8, Issue 10, 2024

VIEWS - 139 (Abstract) 96 (PDF)

Abstract


This study aims to guide future research by examining trends and structures in scholarly publications about digital transformation in healthcare. We analyzed English-language, open-access journal articles related to this topic from the Scopus database, irrespective of publication year. Using tools like Microsoft Excel, VOSviewer, and Scopus Analyzer, we found a growing research interest in this area. The most influential article, despite being recent, has been cited 836 times, indicating its impact. Notably, both Western and Eastern countries contribute significantly to this field, with research spanning multiple disciplines, including computer science, medicine, engineering, business, social sciences, and health professions. Our findings can help policymakers allocate resources to impactful research areas, prioritize multidisciplinary collaboration, and promote international partnerships. They also offer insights for technology investment, implementation, and policy decisions. However, this study has limitations. It relied solely on Scopus data and didn’t consider factors like author affiliations. Future research should explore specific collaboration types and the ethical, social, policy, and governance implications of digital transformation in healthcare.


Keywords


bibliometrics analysis; digital transformation; healthcare system; VOSviewer; Scopus

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References


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DOI: https://doi.org/10.24294/jipd.v8i10.7701

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