TY - JOUR
T1 - Alerting on mortality among patients discharged from the emergency department
T2 - A machine learning model
AU - Barash, Yiftach
AU - Soffer, Shelly
AU - Ehud, Grossman
AU - Tau, Noam
AU - Sorin, Vera
AU - Bendavid, Eyal
AU - Irony, Avinoah
AU - Konen, Eli
AU - Zimlichman, Eyal
AU - Klang, Eyal
N1 - Publisher Copyright:
© Authors 2022
PY - 2022/3/1
Y1 - 2022/3/1
N2 - Objectives Physicians continuously make tough decisions when discharging patients. Alerting on poor outcomes may help in this decision. This study evaluates a machine learning model for predicting 30-day mortality in emergency department (ED) discharged patients. Methods We retrospectively analysed visits of adult patients discharged from a single ED (1/2014-12/2018). Data included demographics, evaluation and treatment in the ED, and discharge diagnosis. The data comprised of both structured and free-text fields. A gradient boosting model was trained to predict mortality within 30 days of release from the ED. The model was trained on data from the years 2014-2017 and validated on data from the year 2018. In order to reduce potential end-of-life bias, a subgroup analysis was performed for non-oncological patients. Results Overall, 363 635 ED visits of discharged patients were analysed. The 30-day mortality rate was 0.8%. A majority of the mortality cases (65.3%) had a known oncological disease. The model yielded an area under the curve (AUC) of 0.97 (95% CI 0.96 to 0.97) for predicting 30-day mortality. For a sensitivity of 84% (95% CI 0.81 to 0.86), this model had a false positive rate of 1:20. For patients without a known malignancy, the model yielded an AUC of 0.94 (95% CI 0.92 to 0.95). Conclusions Although not frequent, patients may die following ED discharge. Machine learning-based tools may help ED physicians identify patients at risk. An optimised decision for hospitalisation or palliative management may improve patient care and system resource allocation.
AB - Objectives Physicians continuously make tough decisions when discharging patients. Alerting on poor outcomes may help in this decision. This study evaluates a machine learning model for predicting 30-day mortality in emergency department (ED) discharged patients. Methods We retrospectively analysed visits of adult patients discharged from a single ED (1/2014-12/2018). Data included demographics, evaluation and treatment in the ED, and discharge diagnosis. The data comprised of both structured and free-text fields. A gradient boosting model was trained to predict mortality within 30 days of release from the ED. The model was trained on data from the years 2014-2017 and validated on data from the year 2018. In order to reduce potential end-of-life bias, a subgroup analysis was performed for non-oncological patients. Results Overall, 363 635 ED visits of discharged patients were analysed. The 30-day mortality rate was 0.8%. A majority of the mortality cases (65.3%) had a known oncological disease. The model yielded an area under the curve (AUC) of 0.97 (95% CI 0.96 to 0.97) for predicting 30-day mortality. For a sensitivity of 84% (95% CI 0.81 to 0.86), this model had a false positive rate of 1:20. For patients without a known malignancy, the model yielded an AUC of 0.94 (95% CI 0.92 to 0.95). Conclusions Although not frequent, patients may die following ED discharge. Machine learning-based tools may help ED physicians identify patients at risk. An optimised decision for hospitalisation or palliative management may improve patient care and system resource allocation.
KW - accident & emergency medicine
KW - information technology
UR - http://www.scopus.com/inward/record.url?scp=85097283353&partnerID=8YFLogxK
U2 - 10.1136/postgradmedj-2020-138899
DO - 10.1136/postgradmedj-2020-138899
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C2 - 33273105
AN - SCOPUS:85097283353
SN - 0032-5473
VL - 98
SP - 166
EP - 171
JO - Postgraduate Medical Journal
JF - Postgraduate Medical Journal
IS - 1157
ER -