Application of Cox Model to predict the survival of patients with Chronic Heart Failure: A latent class regression approach
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Marc de Kamps | Mark S. Gilthorpe | John L Mbotwa | John Mbotwa | Paul D. Baxter | M. Kamps | P. Baxter | M. Gilthorpe
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