Mapping the research landscape of artificial intelligence in heart failure: a bibliometric analysis
Pegah Rashidian, Saisree Reddy Adla Jala, Kavya Priya Somu, Abinash Mahapatro, Nikitha Chellapuram, Seyyed Mohammad Hashemi, Abdulhadi Jameel Alotaibi, Omar Hasan Hasan, Amir Nasrollahizadeh, Negin Letafatkar, Maryam Jafari, Nimra Shafi, Ehsan Amini-Salehi
Heart failure (HF) is a complex syndrome with high morbidity and mortality. Despite advancements in treatment, its management remains a challenge. The objective of this study was to map the scientific landscape of artificial intelligence (AI) applications in HF management through a bibliometric analysis. Data were retrieved from the Web of Science Core Collection. Keywords related to AI and HF were used to identify relevant research articles. Various bibliometric tools, such as Biblioshiny, VOS viewer, and CiteSpace, were used for quantitative trends, collaboration networks, and thematic areas, which were assessed. A total of 1332 studies were included in the final analysis. Publication trends show a sharp increase in AI research related to HF from 2016 onward, with 317 studies published in 2025. The most frequent keywords in the field were