Predicting the risk of unplanned readmission or death within 30 days of discharge after a heart failure hospitalization.
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Carl van Walraven | Padma Kaul | C. van Walraven | F. McAlister | P. Kaul | J. Ezekowitz | Justin Ezekowitz | Anita G Au | J. Bakal | Anita G. Au | Finlay A. McAlister | Jeffrey A. Bakal
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