Application of Entropy-Based Features to Predict Defibrillation Outcome in Cardiac Arrest
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Unai Irusta | Raúl Alcaraz | José Joaquín Rieta | Iraia Isasi | Elisabete Aramendi | Daniel Alonso Moreno | Beatriz Chicote | Karlos Ibarguren | J. J. Rieta | R. Alcaraz | U. Irusta | E. Aramendi | Beatriz Chicote | I. Isasi | Karlos Ibarguren | Daniel Alonso Moreno
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