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As of now, a model for predicting the survival of patients with out-of-hospital cardiac arrest has not been established. This study aimed to develop a model for identifying predictors of survival over time in patients with out-of-hospital cardiac arrest during their stay in the emergency department, using ensemble-based machine learning. A total of 26 013 patients from the Korean nationwide out-of-hospital cardiac arrest registry were enrolled between January 1 and December 31, 2019. Our model, comprising 38 variables, was developed using the Survival Quilts model to improve predictive performance. We found that changes in important variables of patients with out-of-hospital cardiac arrest were observed 10 minutes after arrival at the emergency department. The important score of the predictors showed that the influence of patient age decreased, moving from the highest rank to the fifth. In contrast, the significance of reperfusion attempts increased, moving from the fourth to the highest rank. Our research suggests that the ensemble-based machine learning model, particularly the Survival Quilts, offers a promising approach for predicting survival in patients with out-of-hospital cardiac arrest. The Survival Quilts model may potentially assist emergency department staff in making informed decisions quickly, reducing preventable deaths.
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http://dx.doi.org/10.1097/CIN.0000000000001145 | DOI Listing |
J Thorac Cardiovasc Surg
September 2025
Division of Cardiac Surgery, Department of Surgery, University of Manitoba, Winnipeg, MB, Canada. Electronic address:
Introduction: The impact of sex on quality of life (QoL) and long-term mortality after thoracic aortic surgery is incompletely understood. We investigated whether sex-related differences in these outcomes exist following surgery.
Methods: Patients undergoing thoracic aortic surgery between 2004-2023 were identified using the Manitoba Thoracic Aortic Database, which was linked to population-level registries in the Manitoba Centre for Health Policy.
Prog Cardiovasc Dis
September 2025
Department of Cardiology, University of Texas Health Science Center, San Antonio, TX, USA.
Background: Cardiopulmonary resuscitation (CPR) is a vital intervention for managing cardiac arrest; however, enhancing survival rates remains a significant challenge. Recent advancements highlight the importance of integrating artificial intelligence (AI) to overcome existing limitations in prediction, intervention, and post-resuscitation care.
Methods: A thorough review of contemporary literature regarding AI applications in CPR was undertaken, explicitly examining its role in the early prediction of cardiac arrest, optimization of CPR quality, and enhancement of post-arrest outcomes.
Crit Care Med
September 2025
Division of Allergy, Pulmonary, and Critical Care Medicine, Department of Medicine, Vanderbilt University Medical Center, Nashville, TN.
JMIR Hum Factors
September 2025
Media Psychology Lab, Department of Communication Science, KU Leuven, Leuven, Belgium.
Background: Out-of-hospital cardiac arrests (OHCAs) are a leading cause of death worldwide, yet first responder apps can significantly improve outcomes by mobilizing citizens to perform cardiopulmonary resuscitation before professional help arrives. Despite their importance, limited research has examined the psychological and behavioral factors that influence individuals' willingness to adopt these apps.
Objective: Given that first responder app use involves elements of both technology adoption and preventive health behavior, it is essential to examine this behavior from multiple theoretical perspectives.
J Formos Med Assoc
September 2025
Department of Emergency Medicine, National Taiwan University Hospital Hsin-Chu Branch, Hsinchu, Taiwan; Department of Emergency Medicine, College of Medicine, National Taiwan University, Taipei, Taiwan. Electronic address:
Background: Accurately predicting the neurological outcomes in out-of-hospital cardiac arrest (OHCA) survivors is crucial. Conventional prediction scores should be validated across different settings. Additionally, machine learning (ML) models may provide improved predictive performance.
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