Prediction of survival in out-of-hospital cardiac arrest: the updated Swedish cardiac arrest risk score (SCARS) model
European Heart Journal - Digital Health

Abstract
Out-of-hospital cardiac arrest (OHCA) is a major health concern worldwide. Although one-third of all patients achieve a return of spontaneous circulation and may undergo a difficult period in the intensive care unit, only 1 in 10 survive. This study aims to improve our previously developed machine learning model for early prognostication of survival in OHCA.
We studied all cases registered in the Swedish Cardiopulmonary Resuscitation Registry during 2010 and 2020 (
We improved our previous prediction model by creating a parsimonious model with an AUC ROC at 0.96, with excellent calibration and no apparent risk of underestimating survival in the critical probability range (0–10%). The model is available at
Contributors

Peter Lundgren
Author

Antros Louca
Author

Erik Andersson
Author

Therese Djärv
Author

Fredrik Hessulf
Author

Anna Henningsson
Author

Andreas Martinsson
Author

Per Nordberg
Author

Adam Piasecki
Author

Vibha Gupta
Author

Zacharias Mandalenakis
Author

Amar Taha
Author

Bengt Redfors
Author

Johan Herlitz
Author

Araz Rawshani
Author


