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A validation of machine learning-based risk scores in the prehospital setting.

Douglas SpanglerThomas HermanssonDavid SmekalHans Blomberg
Published in: PloS one (2019)
Machine learning-based risk scores outperformed a widely-used rule-based triage algorithm and human prioritization decisions in predicting hospital outcomes. Performance was robust in a prospectively gathered dataset, and scores demonstrated adequate calibration. Future research should explore the robustness of these methods when applied to other settings, establish appropriate outcome measures for use in determining the need for prehospital care, and investigate the clinical impact of interventions based on these methods.
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