Proceedings of the NHLBI Workshop on Artificial Intelligence in Cardiovascular Imaging

JACC: Cardiovascular Imaging - Tập 16 - Trang 1209-1223 - 2023
Damini Dey1, Rima Arnaout2, Sameer Antani3, Aldo Badano4, Louis Jacques5, Huiqing Li6, Tim Leiner7, Edward Margerrison4, Ravi Samala4, Partho P. Sengupta8, Sanjiv J. Shah9, Piotr Slomka1, Michelle C. Williams10,11, W. Patricia Bandettini6, Vandana Sachdev6
1Cedars-Sinai Medical Center, Los Angeles, California, USA
2Department of Medicine, University of California San Francisco, San Francisco, California, USA.
3National Library of Medicine, National Institutes of Health, Bethesda, Maryland, USA
4Office of Science and Engineering Laboratories, Center for Devices and Radiological Health, Food and Drug Administration, Silver Spring, Maryland, USA
5ADVI Health, LLC, Washington, DC, USA
6National Heart, Lung, and Blood Institute, National Institutes of Health, Bethesda, Maryland, USA
7Mayo Clinic Rochester, Minnesota USA
8Department of Medicine, Rutgers University, Newark, New Jersey, USA
9Department of Medicine, Northwestern University Feinberg School of Medicine, Chicago, Illinois, USA
10Centre for Cardiovascular Science, University of Edinburgh, Edinburgh, United Kingdom
11British Heart Foundation Data Science Centre, London, United Kingdom

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