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Published in: Intensive Care Medicine 1/2012

Open Access 01-01-2012 | Original

Effect of changes over time in the performance of a customized SAPS-II model on the quality of care assessment

Authors: Lilian Minne, Saeid Eslami, Nicolette de Keizer, Evert de Jonge, Sophia E. de Rooij, Ameen Abu-Hanna

Published in: Intensive Care Medicine | Issue 1/2012

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Abstract

Purpose

The aim of our study was to explore, using an innovative method, the effect of temporal changes in the mortality prediction performance of an existing model on the quality of care assessment. The prognostic model (rSAPS-II) was a recalibrated Simplified Acute Physiology Score-II model developed for very elderly Intensive Care Unit (ICU) patients.

Methods

The study population comprised all 12,143 consecutive patients aged 80 years and older admitted between January 2004 and July 2009 to one of the ICUs of 21 Dutch hospitals. The prospective dataset was split into 30 equally sized consecutive subsets. Per subset, we measured the model’s discrimination [area under the curve (AUC)], accuracy (Brier score), and standardized mortality ratio (SMR), both without and after repeated recalibration. All performance measures were considered to be stable if <2 consecutive points fell outside the green zone [mean ± 2 standard deviation (SD)] and none fell outside the yellow zone (mean ± 4SD) of pre-control charts. We compared proportions of hospitals with SMR>1 without and after repeated recalibration for the year 2009.

Results

For all subsets, the AUCs were stable, but the Brier scores and SMRs were not. The SMR was downtrending, achieving levels significantly below 1. Repeated recalibration rendered it stable again. The proportions of hospitals with SMR>1 and SMR<1 changed from 15 versus 85% to 35 versus 65%.

Conclusions

Variability over time may markedly vary among different performance measures, and infrequent model recalibration can result in improper assessment of the quality of care in many hospitals. We stress the importance of the timely recalibration and repeated validation of prognostic models over time.
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Metadata
Title
Effect of changes over time in the performance of a customized SAPS-II model on the quality of care assessment
Authors
Lilian Minne
Saeid Eslami
Nicolette de Keizer
Evert de Jonge
Sophia E. de Rooij
Ameen Abu-Hanna
Publication date
01-01-2012
Publisher
Springer-Verlag
Published in
Intensive Care Medicine / Issue 1/2012
Print ISSN: 0342-4642
Electronic ISSN: 1432-1238
DOI
https://doi.org/10.1007/s00134-011-2390-2

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