Automated Triage System for Intensive Care Admissions during the COVID-19 Pandemic Using Hybrid XGBoost-AHP Approach
Abstract
The sudden increase in patients with severe COVID-19 has obliged doctors to make
admissions to intensive care units (ICUs) in health care practices where capacity is exceeded by the
demand. To help with difficult triage decisions, we proposed an integration system Xtreme Gradient
Boosting (XGBoost) classifier and Analytic Hierarchy Process (AHP) to assist health authorities in
identifying patients’ priorities to be admitted into ICUs according to the findings of the biological
laboratory investigation for patients with COVID-19. The Xtreme Gradient Boosting (XGBoost)
classifier was used to decide whether or not they should admit patients into ICUs, before applying
them to an AHP for admissions’ priority ranking for ICUs. The 38 commonly used clinical variables
were considered and their contributions were determined by the Shapley’s Additive explanations
(SHAP) approach. In this research, five types of classifier algorithms were compared: Support Vector
Machine (SVM), Decision Tree (DT), K-Nearest Neighborhood (KNN), Random Forest (RF), and
Artificial Neural Network (ANN), to evaluate the XGBoost performance, while the AHP system
compared its results with a committee formed from experienced clinicians. The proposed (XGBoost)
classifier achieved a high prediction accuracy as it could discriminate between patients with COVID19 who need ICU admission and those who do not with accuracy, sensitivity, and specificity rates of
97%, 96%, and 96% respectively, while the AHP system results were close to experienced clinicians’
decisions for determining the priority of patients that need to be admitted to the ICU. Eventually,
medical sectors can use the suggested framework to classify patients with COVID-19 who require
ICU admission and prioritize them based on integrated AHP methodologies.
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