Global research landscape on artificial intelligence in echocardiography from 1997 to 2024: Bibliometric analysis

Objective With the widespread use of artificial intelligence (AI) in medical imaging, research on AI-powered echocardiography has gained increasing attention. However, a systematic study of global research trends and key developments in this area remains limited. The study aims to explore the curren...

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Main Authors: Leichong Chen, Wenwen Chen, Ye Zhu, Zisang Zhang, Tingting Liu, Li Zhang
Format: Article
Language:English
Published: SAGE Publishing 2025-06-01
Series:Digital Health
Online Access:https://doi.org/10.1177/20552076251351201
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author Leichong Chen
Wenwen Chen
Ye Zhu
Zisang Zhang
Tingting Liu
Li Zhang
author_facet Leichong Chen
Wenwen Chen
Ye Zhu
Zisang Zhang
Tingting Liu
Li Zhang
author_sort Leichong Chen
collection DOAJ
description Objective With the widespread use of artificial intelligence (AI) in medical imaging, research on AI-powered echocardiography has gained increasing attention. However, a systematic study of global research trends and key developments in this area remains limited. The study aims to explore the current research hotspots of AI-driven echocardiography by bibliometric methods, providing data support and academic insights for future research. Methods The Web of Science Core Collection database was utilized to search articles in this area from 1997 to 2024. The filtered data were analyzed and visualized by VOSviewer and CiteSpace software. Results In total, 605 documents were involved, since 2020, there has been an exponential increase in the publications. The United States held the top position in both the volume of publications and citation counts. And the top organization in citations was Stanford University. Three authors with the most publications were Lovstakken Lasse, Ouyang David, and Sengupta Partho P. The journal with the most citations was the Journal of the American Society of Echocardiography . Based on keyword analysis, the current research hotspots were mainly focused on image segmentation, heart failure, deep learning, and pulmonary hypertension. Conclusion Research on the application of AI in echocardiography is currently flourishing, with broad prospects. In the future, it is crucial to promote interdisciplinary collaboration on an international scale, especially between countries and research institutions. Future research will focus on developing large language models that can integrate multimodal information, while also addressing key issues such as improving model interpretability.
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spelling doaj-art-25ee90a68df04d64bfe918239f8e378c2025-08-20T03:28:21ZengSAGE PublishingDigital Health2055-20762025-06-011110.1177/20552076251351201Global research landscape on artificial intelligence in echocardiography from 1997 to 2024: Bibliometric analysisLeichong Chen0Wenwen Chen1Ye Zhu2Zisang Zhang3Tingting Liu4Li Zhang5 Hubei Province Key Laboratory of Molecular Imaging, Wuhan, China Hubei Province Key Laboratory of Molecular Imaging, Wuhan, China Hubei Province Key Laboratory of Molecular Imaging, Wuhan, China Hubei Province Key Laboratory of Molecular Imaging, Wuhan, China Department of Library, Union Hospital, Tongji Medical College, , Wuhan, China Hubei Province Key Laboratory of Molecular Imaging, Wuhan, ChinaObjective With the widespread use of artificial intelligence (AI) in medical imaging, research on AI-powered echocardiography has gained increasing attention. However, a systematic study of global research trends and key developments in this area remains limited. The study aims to explore the current research hotspots of AI-driven echocardiography by bibliometric methods, providing data support and academic insights for future research. Methods The Web of Science Core Collection database was utilized to search articles in this area from 1997 to 2024. The filtered data were analyzed and visualized by VOSviewer and CiteSpace software. Results In total, 605 documents were involved, since 2020, there has been an exponential increase in the publications. The United States held the top position in both the volume of publications and citation counts. And the top organization in citations was Stanford University. Three authors with the most publications were Lovstakken Lasse, Ouyang David, and Sengupta Partho P. The journal with the most citations was the Journal of the American Society of Echocardiography . Based on keyword analysis, the current research hotspots were mainly focused on image segmentation, heart failure, deep learning, and pulmonary hypertension. Conclusion Research on the application of AI in echocardiography is currently flourishing, with broad prospects. In the future, it is crucial to promote interdisciplinary collaboration on an international scale, especially between countries and research institutions. Future research will focus on developing large language models that can integrate multimodal information, while also addressing key issues such as improving model interpretability.https://doi.org/10.1177/20552076251351201
spellingShingle Leichong Chen
Wenwen Chen
Ye Zhu
Zisang Zhang
Tingting Liu
Li Zhang
Global research landscape on artificial intelligence in echocardiography from 1997 to 2024: Bibliometric analysis
Digital Health
title Global research landscape on artificial intelligence in echocardiography from 1997 to 2024: Bibliometric analysis
title_full Global research landscape on artificial intelligence in echocardiography from 1997 to 2024: Bibliometric analysis
title_fullStr Global research landscape on artificial intelligence in echocardiography from 1997 to 2024: Bibliometric analysis
title_full_unstemmed Global research landscape on artificial intelligence in echocardiography from 1997 to 2024: Bibliometric analysis
title_short Global research landscape on artificial intelligence in echocardiography from 1997 to 2024: Bibliometric analysis
title_sort global research landscape on artificial intelligence in echocardiography from 1997 to 2024 bibliometric analysis
url https://doi.org/10.1177/20552076251351201
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