Western Journal of Emergency Medicine (Apr 2017)

Index to Predict In-hospital Mortality in Older Adults after Non-traumatic Emergency Department Intubations

  • Kei Ouchi,
  • Samuel Hohmann,
  • Tadahiro Goto,
  • Peter Ueda,
  • Emily L. Aaronson,
  • Daniel J. Pallin,
  • Marcia A. Testa,
  • James A. Tulsky,
  • Jeremiah D. Schuur,
  • Mara A. Schonberg

DOI
https://doi.org/10.5811/westjem.2017.2.33325
Journal volume & issue
Vol. 18, no. 4

Abstract

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Introduction: Our goal was to develop and validate an index to predict in-hospital mortality in older adults after non-traumatic emergency department (ED) intubations. Methods: We used Vizient administrative data from hospitalizations of 22,374 adults ≥75 years who underwent non-traumatic ED intubation from 2008–2015 at nearly 300 U.S. hospitals to develop and validate an index to predict in-hospital mortality. We randomly selected one half of participants for the development cohort and one half for the validation cohort. Considering 25 potential predictors, we developed a multivariable logistic regression model using least absolute shrinkage and selection operator method to determine factors associated with in-hospital mortality. We calculated risk scores using points derived from the final model’s beta coefficients. To evaluate calibration and discrimination of the final model, we used Hosmer-Lemeshow chi-square test and receiver-operating characteristic analysis and compared mortality by risk groups in the development and validation cohorts. Results: Death during the index hospitalization occurred in 40% of cases. The final model included six variables: history of myocardial infarction, history of cerebrovascular disease, history of metastatic cancer, age, admission diagnosis of sepsis, and admission diagnosis of stroke/ intracranial hemorrhage. Those with low-risk scores (10) had 58% risk of in-hospital mortality. The Hosmer-Lemeshow chi-square of the model was 6.47 (p=0.09), and the c-statistic was 0.62 in the validation cohort. Conclusion: The model may be useful in identifying older adults at high risk of death after ED intubation.