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Neuronal nets and logistic regression analysis provide improved prediction of infective endocarditis compared to the modified Duke Score: a post-hoc analysis of the prospective PRO-ENDOCARDITIS study

Topic: Artificial Intelligence (Machine Learning, Deep Learning)

Congress Presentation

About the speaker

Mr Lukas Hermann Vogel

University of Duisburg-Essen - West-German Heart and Vascular Center, Essen (Germany)
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e-Cardiology/Digital health - Artificial intelligence 2

Speakers: Mr L. Vogel, Professor S. Kasim, Doctor C. Veiga, Mr M. Knorr, Doctor J. Verjans...

About the event


ESC Congress 2022

26 August - 29 August 2022

Sessions Presentations

ESC 365 is supported by

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