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Emergency department triage prediction of clinical outcomes using machine learning models

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Figure

Table 1 Predictor variables and outcomes in 135,470 adult emergency department visits
Table 2 The 20 most common emergency department diagnoses for critical care and hospitalization outcome
Fig. 1 Prediction ability of the reference model and machine learning models for intensive care use and in-hospital mortality in the test set.indicates the net benefit
Table 3 Prediction performance of the reference and machine learning models in the test set
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