2012, Número 4
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Ann Hepatol 2012; 11 (4)
Hospital performance reports based on severity adjusted mortality rates in patients with cirrhosis depend on the method of risk adjustment
Myers RP, Hubbard JN, Shaheen AAM, Dixon E, Kaplan GG
Idioma: Ingles.
Referencias bibliográficas: 53
Paginas: 526-535
Archivo PDF: 165.80 Kb.
RESUMEN
Sin resumen.
REFERENCIAS (EN ESTE ARTÍCULO)
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