Detection of sudden cardiac death using the adaptive spectral method on the T wave: An experimental study on public databases
Main Article Content
Abstract
Keywords
ECG, muerte súbita cardíaca, alternancia de la onda T, SM-Adaptativo ECG, sudden cardiac death, T-wave alternans, SM-Adaptive
References
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