Development and validation of a multivariable preoperative prediction model for postoperative length of stay in a broad inpatient surgical population.
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W. Henderson | Michael R. Bronsert | Anne Lambert-Kerzner | R. Meguid | K. Colborn | Adam R. Dyas | Emily M. Mason
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