Automated characterization of cardiovascular diseases using relative wavelet nonlinear features extracted from ECG signals
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U. Rajendra Acharya | Joel E. W. Koh | Yuki Hagiwara | Jen Hong Tan | Ru San Tan | K. Vidya Sudarshan | Shu Lih Oh | Muhammad Adam | Joel E. W. Koh | J. Tan | U. Acharya | Yuki Hagiwara | Muhammad Adam | R. Tan | K. Sudarshan | U. R. Acharya
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