Firearm Injury Risk Prediction Among Children Transported by 9-1-1 Emergency Medical Services
Craig D. Newgard,
Sean Babcock,
Susan Malveau
et al.
Abstract:Objective
Among children transported by ambulance across the United States, we used machine learning models to develop a risk prediction tool for firearm injury using basic demographic information and home ZIP code matched to publicly available data sources.
Methods
We included children and adolescents 0–17 years transported by ambulance to acute care hospitals in 47 states from January 1, 2014 through December 31, 2022. We used 96 predictors, including… Show more
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