Predicting hospital admission from emergency department triage data for patients presenting with fall-related fractures

Intern Emerg Med. 2023 Jan;18(1):219-227. doi: 10.1007/s11739-022-03100-y. Epub 2022 Sep 22.

Abstract

Purpose: Predict in advance the need for hospitalization of adult patients for fall-related fractures based on information available at the time of triage to help decision-making at the emergency department (ED).

Methods: We developed machine learning models using routinely collected triage data at a regional hospital chain in Pennsylvania to predict admission to an inpatient unit. We considered all patients presenting to the ED for fall-related fractures. Patients who were 18 years or younger, who left the ED against medical advice, left the ED waiting room without being seen by a provider, and left the ED after initial diagnostics were excluded from the analysis. We compared models obtained using triage data (pre-model) with models developed using additional data obtained after physicians' diagnoses (post-model).

Results: Our results show good discriminatory power on predicting hospital admissions. Neural network models performed the best (AUC: pre-model = 0.938 [CI 0.920-0.956], post-model = 0.983 [0.974-0.992]). The logistic regression analysis provides additional insights into the data and the relationships between the variables.

Conclusions: Using limited data available at the time of triage, we developed four machine learning models aimed at predicting hospitalization for patients presenting to the ED for fall-related fractures. All the four models were robust and performed well. Neural network method, however, performed the best for both pre- and post-models. Simple, parsimonious machine learning models can provide high accuracy for predicting hospital admission.

Keywords: Emergency department; Hospitalization; Machine learning; Predictive models.

Publication types

  • Comment

MeSH terms

  • Accidental Falls*
  • Adult
  • Emergency Service, Hospital
  • Hospitalization
  • Hospitals
  • Humans
  • Triage* / methods