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Zhubo Jiang

Showing results (1-10 of 5) with videos related to

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JACC. Cardiovascular Imaging|August 17, 2024
An Automated Machine Learning-Based Quantitative Multiparametric Approach for Mitral Regurgitation Severity GradingAnita Sadeghpour, Zhubo Jiang, Yoran M Hummel, et al.
JACC. Asia|June 18, 2026
Phenotypes of Secondary Tricuspid Regurgitation: Unsupervised Clustering Analysis of Artificial Intelligence-Derived Echocardiographic VariablesRobert Ngai Fung Chan, Chenxu Zhao, Raymond Ngai Chiu Chan, et al.
Journal of the American Society of Echocardiography : Official Publication of the American Society of Echocardiography|March 23, 2023
Fully Automated Artificial Intelligence Assessment of Aortic Stenosis by EchocardiographyHema Krishna, Kevin Desai, Brody Slostad, et al.
European Heart Journal. Digital Health|January 24, 2024
External validation of a deep learning algorithm for automated echocardiographic strain measurementsPeder L Myhre, Chung-Lieh Hung, Matthew J Frost, et al.
The Lancet. Digital Health|December 5, 2021
Automated interpretation of systolic and diastolic function on the echocardiogram: a multicohort studyJasper Tromp, Paul J Seekings, Chung-Lieh Hung, et al.
Pageof 1

Showing results (1-10 of 5) with videos related to

Sort By:
Pageof 1
JACC. Cardiovascular Imaging|August 17, 2024
An Automated Machine Learning-Based Quantitative Multiparametric Approach for Mitral Regurgitation Severity GradingAnita Sadeghpour, Zhubo Jiang, Yoran M Hummel, et al.
JACC. Asia|June 18, 2026
Phenotypes of Secondary Tricuspid Regurgitation: Unsupervised Clustering Analysis of Artificial Intelligence-Derived Echocardiographic VariablesRobert Ngai Fung Chan, Chenxu Zhao, Raymond Ngai Chiu Chan, et al.
Journal of the American Society of Echocardiography : Official Publication of the American Society of Echocardiography|March 23, 2023
Fully Automated Artificial Intelligence Assessment of Aortic Stenosis by EchocardiographyHema Krishna, Kevin Desai, Brody Slostad, et al.
European Heart Journal. Digital Health|January 24, 2024
External validation of a deep learning algorithm for automated echocardiographic strain measurementsPeder L Myhre, Chung-Lieh Hung, Matthew J Frost, et al.
The Lancet. Digital Health|December 5, 2021
Automated interpretation of systolic and diastolic function on the echocardiogram: a multicohort studyJasper Tromp, Paul J Seekings, Chung-Lieh Hung, et al.
Pageof 1