Prediction of survival in out-of-hospital cardiac arrest: the updated Swedish cardiac arrest risk score (SCARS) model

Author:

Sultanian Pedram1ORCID,Lundgren Peter12ORCID,Louca Antros1,Andersson Erik1,Djärv Therese3,Hessulf Fredrik45,Henningsson Anna45,Martinsson Andreas12,Nordberg Per67,Piasecki Adam45,Gupta Vibha1,Mandalenakis Zacharias12ORCID,Taha Amar12,Redfors Bengt1,Herlitz Johan18ORCID,Rawshani Araz128

Affiliation:

1. Department of Molecular and Clinical Medicine, Institute of Medicine, University of Gothenburg, Wallenberg Laboratory, Blå stråket 5, staircase H, Sahlgrenska University Hospital, 413 45 Gothenburg , Sweden

2. Department of Cardiology, Sahlgrenska University Hospital , Blå stråket 5, Västra Götalands län, 413 45 Gothenburg , Sweden

3. Department of Clinical Medicine, Medicine Solna, Karolinska Institutet, Framstegsgatan, 171 64 Solna, Sweden

4. Department of Anesthesiology and Intensive Care, Sahlgrenska University Hospital , Blå stråket 5, 413 45 Gothenburg, Sweden

5. Department of Anaesthesiology and Intensive Care, Institute of Clinical Sciences, Sahlgrenska Academy, University of Gothenburg , Blå stråket 5, 413 45 Gothenburg , Sweden

6. Center for Resuscitation Science, Department of Clinical Science and Education, Karolinska Institutets, Södersjukhuset , Jägargatan 20, staircase 1, 171 77 Stockholm, Sweden

7. Function Perioperative Medicine and Intensive Care, Karolinska University Hospital , Tomtebodavägen 18, 171 76 Stockholm , Sweden

8. The Swedish Registry for Cardiopulmonary Resuscitation , Medicinaregatan 18G, 413 90 Gothenburg , Sweden

Abstract

Abstract Aims 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. Methods and results We studied all cases registered in the Swedish Cardiopulmonary Resuscitation Registry during 2010 and 2020 (n = 55 615). We compared the predictive performance of extreme gradient boosting (XGB), light gradient boosting machine (LightGBM), logistic regression, CatBoost, random forest, and TabNet. For each framework, we developed models that optimized (i) a weighted F1 score to penalize models that yielded more false negatives and (ii) a precision–recall area under the curve (PR AUC). LightGBM assigned higher importance values to a larger set of variables, while XGB made predictions using fewer predictors. The area under the curve receiver operating characteristic (AUC ROC) scores for LightGBM were 0.958 (optimized for weighted F1) and 0.961 (optimized for a PR AUC), while for XGB, the scores were 0.958 and 0.960, respectively. The calibration plots showed a subtle underestimation of survival for LightGBM, contrasting with a mild overestimation for XGB models. In the crucial range of 0–10% likelihood of survival, the XGB model, optimized with the PR AUC, emerged as a clinically safe model. Conclusion 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 www.gocares.se.

Funder

Knut and Alice Wallenberg Foundation

Gothenburg University

Region Västra Götaland

Wallenberg Center for Molecular and Translational Medicine

Publisher

Oxford University Press (OUP)

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