Using Machine Learning to Predict Patients Who Leave Without Being Seen in a Pediatric Emergency Department
Date
2023-04-14
Authors
Sarty, Julia
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Abstract
Background: Patients and their caregivers who seek care in an Emergency Department (ED)
may ultimately choose to leave without being seen by a physician. This occurrence is labeled
“left without being seen” (LWBS) and can account for up to 15% of all patients who come to an
ED. Patients who LWBS do not receive the care they sought in the ED and may experience
clinical deterioration related to delayed diagnosis or treatment.
Objective: To describe a LWBS cohort and identify key LWBS attributes in a Canadian
pediatric emergency department through thorough machine learning analysis. This prediction is
intended to be used in practice to prevent adverse outcomes related to LWBS. This study focuses
on the Pediatric Emergency Department at IWK Health in Halifax, Nova Scotia, Canada.
Methods: This was a single-centre, retrospective analysis of administrative ED data from April
1, 2017, to March 31, 2020, from IWK Health Emergency Department in Halifax, Nova Scotia.
Triage record data including 101,266 observations of children aged 16 and younger who visited
the IWK Emergency Department during a three-year period were used. Several classification
machine learning algorithms including Logistic Regression, Decision Tree Classifier, Random
Forest Classifier, K-Nearest Neighbors, and Extreme Gradient Boosting were used to predict
patients at high-risk for LWBS. SMOTE was used to handle the class imbalance and improve the
performance of the machine learning algorithms. Feature importance was used on the best performing model to identify the features that are associated with LWBS.
Results: The highest-performing model utilized SMOTE balancing and the XGBoost
classification algorithm. Using this model, and data from our partner hospital, an easy-to-follow
set of rules were developed for identifying patients at risk of LWBS in real time.
Conclusions: Results show the feasibility of predictive analytics in identifying LWBS patients.
This can support proactive decision-making about those patients who are at risk of LWBS.
Description
This thesis aims to identify the strength of key features associated with LWBS in the IWK ED, and to predict whether an individual patient record is likely to be assigned LWBS.
Keywords
Emergency Department, Left Without Being Seen, Machine Learning, Administrative Data, Pediatric