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Latent representation of intracardiac electrograms using an AI-based autoencoder for rhythm classification

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Mr Long Lin

University Carlos III of Madrid, Madrid (Spain)
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Data meets diagnostics: use of artificial intelligence in arrhythmias

Speakers: Mr L. Lin, Doctor M. Coriano', Doctor G. Fujiki, Mr Y. Na, Doctor Z. Xiao...
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ESC Congress 2025

29 August - 1 September 2025

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