Novel model for predicting inpatient mortality after emergency admission to hospital in Singapore: retrospective observational study.

Novel model for predicting inpatient mortality after emergency admission to hospital in Singapore: retrospective observational study.

Xie, Feng;Liu, Nan;Wu, Stella Xinzi;Ang, Yukai;Low, Lian Leng;Ho, Andrew Fu Wah;Lam, Sean Shao Wei;Matchar, David Bruce;Ong, Marcus Eng Hock;Chakraborty, Bibhas;
BMJ open 2019 Vol. 9 pp. e031382
223
xie2019novelbmj

Abstract

To identify risk factors for inpatient mortality after patients' emergency admission and to create a novel model predicting inpatient mortality risk.This was a retrospective observational study using data extracted from electronic health records (EHRs). The data were randomly split into a derivation set and a validation set. The stepwise model selection was employed. We compared our model with one of the current clinical scores, Cardiac Arrest Risk Triage (CART) score.A single tertiary hospital in Singapore.All adult hospitalised patients, admitted via emergency department (ED) from 1 January 2008 to 31 October 2017 (n=433 187 by admission episodes).The primary outcome of interest was inpatient mortality following this admission episode. The area under the curve (AUC) of the receiver operating characteristic curve of the predictive model with sensitivity and specificity for optimised cut-offs.15 758 (3.64%) of the episodes were observed inpatient mortality. 19 variables were observed as significant predictors and were included in our final regression model. Our predictive model outperformed the CART score in terms of predictive power. The AUC of CART score and our final model was 0.705 (95% CI 0.697 to 0.714) and 0.817 (95% CI 0.810 to 0.824), respectively.We developed and validated a model for inpatient mortality using EHR data collected in the ED. The performance of our model was more accurate than the CART score. Implementation of our model in the hospital can potentially predict imminent adverse events and institute appropriate clinical management.

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