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Bibliometric analysis of 100 top cited articles of heart failure–associated diseases in combination with machine learning
7
Zitationen
7
Autoren
2023
Jahr
Abstract
This analysis provides a comprehensive overview of the artificial intelligence (AI)-related research conducted in the field of heart failure, which helps healthcare institutions and researchers better understand the prospects of AI in heart failure and formulate more scientific and effective research plans. In addition, our bibliometric evaluation can assist healthcare institutions and researchers in determining the advantages, sustainability, risks, and potential impacts of AI technology in heart failure.
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