Utility of the LACE index at the bedside in predicting 30-day readmission or death in patients hospitalized with heart failure.
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S. Lee | Payam Yazdan-Ashoori | H. V. Van Spall | Payam Yazdan-Ashoori | Shun Fu Lee | Quazi Ibrahim | Harriette G C Van Spall | Quazi Ibrahim
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