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Erschienen in: Intensive Care Medicine 1/2017

29.09.2016 | Original

The effects of performance status one week before hospital admission on the outcomes of critically ill patients

verfasst von: Fernando G. Zampieri, Fernando A. Bozza, Giulliana M. Moralez, Débora D. S. Mazza, Alexandre V. Scotti, Marcelo S. Santino, Rubens A. B. Ribeiro, Edison M. Rodrigues Filho, Maurício M. Cabral, Marcelo O. Maia, Patrícia S. D’Alessandro, Sandro V. Oliveira, Márcia A. M. Menezes, Eliana B. Caser, Roberto S. Lannes, Meton S. Alencar Neto, Maristela M. Machado, Marcelo F. Sousa, Jorge I. F. Salluh, Marcio Soares

Erschienen in: Intensive Care Medicine | Ausgabe 1/2017

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Abstract

Purpose

To assess the impact of performance status (PS) impairment 1 week before hospital admission on the outcomes in patients admitted to intensive care units (ICU).

Methods

Retrospective cohort study in 59,693 patients (medical admissions, 67 %) admitted to 78 ICUs during 2013. We classified PS impairment according to the Eastern Cooperative Oncology Group (ECOG) scale in absent/minor (PS = 0–1), moderate (PS = 2) or severe (PS = 3–4). We used univariate and multivariate logistic regression analyses to investigate the association between PS impairment and hospital mortality.

Results

PS impairment was moderate in 17.3 % and severe in 6.9 % of patients. The hospital mortality was 14.4 %. Overall, the worse the PS, the higher the ICU and hospital mortality and length of stay. In addition, patients with worse PS were less frequently discharged home. PS impairment was associated with worse outcomes in all SAPS 3, Charlson Comorbidity Index and age quartiles as well as according to the admission type. Adjusting for other relevant clinical characteristics, PS impairment was associated with higher hospital mortality (odds-ratio (OR) = 1.96 (95 % CI 1.63–2.35), for moderate and OR = 4.22 (3.32–5.35), for severe impairment). The effects of PS on the outcome were particularly relevant in the medium range of severity-of-illness. These results were consistent in the subgroup analyses. However, adding PS impairment to the SAPS 3 score improved only slightly its discriminative capability.

Conclusion

PS impairment was associated with worse outcomes independently of other markers of chronic health status, particularly for patients in the medium range of severity of illness.
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Metadaten
Titel
The effects of performance status one week before hospital admission on the outcomes of critically ill patients
verfasst von
Fernando G. Zampieri
Fernando A. Bozza
Giulliana M. Moralez
Débora D. S. Mazza
Alexandre V. Scotti
Marcelo S. Santino
Rubens A. B. Ribeiro
Edison M. Rodrigues Filho
Maurício M. Cabral
Marcelo O. Maia
Patrícia S. D’Alessandro
Sandro V. Oliveira
Márcia A. M. Menezes
Eliana B. Caser
Roberto S. Lannes
Meton S. Alencar Neto
Maristela M. Machado
Marcelo F. Sousa
Jorge I. F. Salluh
Marcio Soares
Publikationsdatum
29.09.2016
Verlag
Springer Berlin Heidelberg
Erschienen in
Intensive Care Medicine / Ausgabe 1/2017
Print ISSN: 0342-4642
Elektronische ISSN: 1432-1238
DOI
https://doi.org/10.1007/s00134-016-4563-5

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