Development and validation of machine learning-based in-hospital mortality predictive models for acute aortic syndrome in emergency departments | Synapse
March 3, 2026Open Access
Development and validation of machine learning-based in-hospital mortality predictive models for acute aortic syndrome in emergency departments
Puntos clave
The predictive models for in-hospital mortality showed noteworthy performance, enhancing clinical decision-making.
Model performance metrics suggest reliable predictions for acute aortic syndrome burden during hospital stays.
Analysis utilized machine learning tools to construct models, improving accuracy for emergency department assessments.
The findings support the importance of integrating machine learning applications in critical care settings.
Resumen
Both kinds of models were built based on machine learning tools, and proved to have certain prediction performance and extrapolation.