Predicting Emergency Department Visits for Patients with Type II Diabetes
Javad M Alizadeh, Jay S Patel, Gabriel Tajeu, Yuzhou Chen, Ilene L, Hollin, Mukesh K Patel, Junchao Fei, Huanmei Wu

TL;DR
This study develops and validates machine learning models to predict emergency department visits among patients with Type II diabetes, aiming to improve early intervention and healthcare planning.
Contribution
It introduces a comprehensive ML workflow integrating EMR and social determinants data, identifying key predictors for ED visits in T2D patients.
Findings
Ensemble Learning and Random Forest achieved ROC of 0.82.
Key predictors include age, visitation gaps, and income-related measures.
Models can aid clinicians in early intervention to reduce ED visits.
Abstract
Over 30 million Americans are affected by Type II diabetes (T2D), a treatable condition with significant health risks. This study aims to develop and validate predictive models using machine learning (ML) techniques to estimate emergency department (ED) visits among patients with T2D. Data for these patients was obtained from the HealthShare Exchange (HSX), focusing on demographic details, diagnoses, and vital signs. Our sample contained 34,151 patients diagnosed with T2D which resulted in 703,065 visits overall between 2017 and 2021. A workflow integrated EMR data with SDoH for ML predictions. A total of 87 out of 2,555 features were selected for model construction. Various machine learning algorithms, including CatBoost, Ensemble Learning, K-nearest Neighbors (KNN), Support Vector Classification (SVC), Random Forest, and Extreme Gradient Boosting (XGBoost), were employed with tenfold…
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Taxonomy
TopicsChronic Disease Management Strategies · Diabetes Management and Education · Hyperglycemia and glycemic control in critically ill and hospitalized patients
