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Machine learning for prediction of all-cause mortality in acute coronary syndrome

Topic: Artificial Intelligence (Machine Learning, Deep Learning)

Congress Presentation

About the speaker

Doctor Ammar Zaka

Gold Coast University Hospital, Southport (Australia)
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Access the full session

Deep learning and artificial intelligence to transform cardiovascular health

Speakers: Doctor A. Zaka, Doctor Y. Nishihara, Doctor A. Gupta, Mr A. Sturge, Mr K. Macierzanka...
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About the event

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ESC Congress 2024

30 August - 2 September 2024

Sessions Presentations