Gj. Stukenborg et al., Comparison of the performance of two comorbidity measures, with and without information from prior hospitalizations, MED CARE, 39(7), 2001, pp. 727-739
Citations number
28
Categorie Soggetti
Public Health & Health Care Science","Health Care Sciences & Services
OBJECTIVES. This study compares the performance of two comorbidity risk adj
ustment methods (the Deyo et al adaptation of the Charlson index and the El
ixhauser et al method) in five groups of California hospital patients with
common reasons for hospitalization, and assesses the contribution to model
performance made by information drawn from prior hospital admissions.
METHODS. California hospital discharge abstract data for the calendar years
1994 through 1997 were used to create a longitudinal data set for patients
in the five disease groups. Eleven logistic regression models were estimat
ed to predict the risk of in-hospital death for patients in each group, wit
h both comorbidity risk adjustment methods applied to patient information a
vailable from only the index hospitalization, and to information available
from both the index and prior hospitalizations.
RESULTS. For every comparison made, the level of statistical performance (a
rea under the receiver operating characteristics curve) demonstrated by mod
els using the Elixhauser et al method was superior to that of models using
the Deyo et al adaptation method. Although most patients have information a
vailable from prior hospital admissions, this additional information yields
only small improvements in the performance of models using either comorbid
ity risk adjustment method.
CONCLUSIONS. Better discrimination is achieved with the Elixhauser et al me
thod using only information from the index hospitalization than is achieved
with the Deyo et al adaptation using information from all identified hospi
tal admissions. Both comorbidity risk adjustment methods achieve their best
performance when information from the index hospitalization and prior admi
ssions is separated into independent indicators of comorbid illness.