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BMC Emerg Med ; 21(1): 112, 2021 10 07.
Article in English | MEDLINE | ID: mdl-34620086

ABSTRACT

BACKGROUND: Currently, the risk stratification of critically ill patient with chest pain is a challenge. We aimed to use machine learning approach to predict the critical care outcomes in patients with chest pain, and simultaneously compare its performance with HEART, GRACE, and TIMI scores. METHODS: This was a retrospective, case-control study in patients with acute non-traumatic chest pain who presented to the emergency department (ED) between January 2017 and December 2019. The outcomes included cardiac arrest, transfer to ICU, and death during treatment in ED. In the randomly sampled training set (70%), a LASSO regression model was developed, and presented with nomogram. The performance was measured in both training set (70% participants) and testing set (30% participants), and findings were compared with the three widely used scores. RESULTS: We proposed a LASSO regression model incorporating mode of arrival, reperfusion therapy, Killip class, systolic BP, serum creatinine, creatine kinase-MB, and brain natriuretic peptide as independent predictors of critical care outcomes in patients with chest pain. Our model significantly outperformed the HEART, GRACE, TIMI score with AUC of 0.953 (95%CI: 0.922-0.984), 0.754 (95%CI: 0.675-0.832), 0.747 (95%CI: 0.664-0.829), 0.735 (95%CI: 0.655-0.815), respectively. Consistently, our model demonstrated better outcomes regarding the metrics of accuracy, sensitivity, specificity, positive predictive value, negative predictive value, and F1 score. Similarly, the decision curve analysis elucidated a greater net benefit of our model over the full ranges of clinical thresholds. CONCLUSION: We present an accurate model for predicting the critical care outcomes in patients with chest pain, and provide substantial support to its application as a decision-making tool in ED.


Subject(s)
Chest Pain , Critical Care Outcomes , Machine Learning , Aged , Case-Control Studies , Chest Pain/therapy , Emergency Service, Hospital , Female , Humans , Male , Middle Aged , Percutaneous Coronary Intervention , Retrospective Studies , Triage
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