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Artificial intelligence in cardiovascular procedures: a bibliometric and visual analysis study

Koushik Rao Gadhachanda, Mohammed Dheyaa Marsool Marsool, Ali Bozorgi, Daniyal Ameen, Sandeep Samethadka Nayak, Amir Nasrollahizadeh, Abdulhadi Alotaibi, Alireza Farzaei, Mohammad‐Hossein Keivanlou, Soheil Hassanipour, Ehsan Amini‐Salehi, Anil Kumar Jonnalagadda

Year
2025
Citations
9

Abstract

Background: The integration of artificial intelligence (AI) into cardiovascular procedures has significantly advanced diagnostic accuracy, outcome prediction, and robotic-assisted surgeries. However, a comprehensive bibliometric analysis of AI’s impact in this field is lacking. This study examines research trends, key contributors, and emerging themes in AI-driven cardiovascular interventions. Methods: We retrieved relevant publications from the Web of Science Core Collection and analyzed them using VOSviewer, CiteSpace, and Biblioshiny to map research trends and collaborations. Results: AI-related cardiovascular research has grown substantially from 1993 to 2024, with a sharp increase from 2020 to 2023, peaking at 93 publications in 2023. The USA (127 papers), China (79), and England (31) were the top contributors, with Harvard University leading institutional output (17 papers). Frontiers in Cardiovascular Medicine was the most prolific journal. Core research themes included “machine learning,” “mortality,” and “cardiac surgery,” with emerging trends in “association,” “implantation,” and “aortic stenosis,” underscoring AI’s expanding role in predictive modeling and surgical outcomes. Conclusion: AI demonstrates transformative potential in cardiovascular procedures, particularly in diagnostic imaging, predictive modeling, and patient management. This bibliometric analysis highlights the growing interest in AI applications and provides a framework for integrating AI into clinical workflows to enhance diagnostic accuracy, treatment strategies, and patient outcomes.

Keywords

MedicineWorkflowTransformative learningBibliometricsPsychological interventionMEDLINEArtificial intelligenceData scienceLibrary scienceComputer science

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