Title of article :
Assessing and combining repeated prognosis of physicians and temporal models in the intensive care
Author/Authors :
Minne، نويسنده , , Lilian and Toma، نويسنده , , Tudor and de Jonge، نويسنده , , Evert and Abu-Hanna، نويسنده , , Ameen، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
Objective
ly, we devised a method to develop prognostic models incorporating patterns of sequential organ failure to predict the eventual hospital mortality at each day of intensive care unit (ICU) stay. In this study, we investigate using a real world setting how these models perform compared to physicians, who are exposed to additional information than the models.
s
eloped prognostic models for days 2–7 of ICU stay by data-driven discovery of patterns of sequential qualitative organ failure (SOFA) scores and embedding the patterns as binary variables in three types of logistic regression models. Type A models include the severity of illness score at admission (SAPS-II) and the SOFA patterns. Type B models add to these covariates the mean, max and delta (increments) of SOFA scores. Type C models include, in addition, the mean, max and delta in expert opinion (i.e. the physicians’ prediction of mortality).
s
ians had a statistically significantly better discriminative ability compared to the models without subjective information (AUC range over days: 0.78–0.79 vs. 0.71–0.74) and comparable accuracy (Brier score range: 0.15–0.18 vs. 0.16–0.18). However when we combined both sources of predictions, in Type C models, we arrived at a significantly superior discrimination as well as accuracy than the objective and subjective models alone (AUC range: 0.80–0.83; Brier score range: 0.13–0.16).
sion
dels and the physicians draw on complementary information that can be best harnessed by combining both prediction sources. Extensive external validation and impact studies are imperative to further investigate the ability of the combined model.
Keywords :
temporal patterns , Predictive performance , Human intuition , Logistic regression models , intensive care
Journal title :
Artificial Intelligence In Medicine
Journal title :
Artificial Intelligence In Medicine