1. Development and validation of the SARICA score to predict survival after return of spontaneous circulation in out of hospital cardiac arrest using an interpretable machine learning framework
- Author
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Kenneth Boon Kiat Tan, Andrew Fu Wah Ho, Ahmad Reza Pourghaderi, Yip Han Chin, Nan Liu, Keqi Li, Marcus Eng Hock Ong, Xiang Yi Wong, Matthew Chin Heng Chua, Yu Kai Ang, and Sean Shao Wei Lam
- Subjects
Resuscitation ,education.field_of_study ,medicine.medical_specialty ,Emergency Medical Services ,business.industry ,Population ,Emergency Nursing ,Return of spontaneous circulation ,Confidence interval ,Out of hospital cardiac arrest ,Cardiopulmonary Resuscitation ,Machine Learning ,Cohort ,Emergency medicine ,Emergency Medicine ,Clinical endpoint ,Medicine ,Humans ,Generalizability theory ,Return of Spontaneous Circulation ,Cardiology and Cardiovascular Medicine ,business ,education ,Out-of-Hospital Cardiac Arrest ,Retrospective Studies - Abstract
Background Accurate and timely prognostication of patients with out-of-hospital cardiac arrest (OHCA) who achieved the return of spontaneous circulation (ROSC) is crucial in clinical decision-making, resource allocation, and communications with next-of-kins. We aimed to develop the Survival After ROSC in Cardiac Arrest (SARICA), a practical clinical decision tool to predict survival in OHCA patients who attained ROSC. Methods We utilized real-world Singapore data from the population-based Pan-Asian Resuscitation Outcomes Study between 2010-2018. We excluded patients without ROSC. The dataset was segmented into training (60%), validation (20%) and testing (20%) cohorts. The primary endpoint was survival (to 30-days or hospital discharge). AutoScore, an interpretable machine-learning based clinical score generation algorithm, was used to develop SARICA. Candidate factors were chosen based on objective demographic and clinical factors commonly available at the time of admission. Performance of SARICA was evaluated based on receiver-operating curve (ROC) analyses. Results 5970 patients were included, of which 855 (14.3%) survived. A three-variable model was determined to be most parsimonious. Prehospital ROSC, age, and initial heart rhythm were identified for inclusion via random forest selection. Finally, SARICA consisted of these 3 variables and ranged from 0 to 10 points, achieving an area under the ROC (AUC) of 0.87 (95% confidence interval: 0.84-0.90) within the testing cohort. Conclusion We developed and internally validated the SARICA score to accurately predict survival of OHCA patients with ROSC at the time of admission. SARICA is clinically practical and developed using an interpretable machine-learning framework. SARICA has unknown generalizability pending external validation studies.
- Published
- 2021