Emergence of Artificial Intelligence and Machine Learning Models in Sudden Cardiac Arrest: A Comprehensive Review of Predictive Performance and Clinical Decision Support

Author:

Jain Hritvik1,Marsool Mohammed Dheyaa Marsool2,Odat Ramez M.3,Noori Hamid4,Jain Jyoti1,Shakhatreh Zaid3,Patel Nandan1,Goyal Aman5,Gole Shrey6,Passey Siddhant7

Affiliation:

1. Department of Internal Medicine, All India Institte of Medical Sciences (AIIMS), Jodhpur, India

2. Department of Internal Medicine, Al-Kindy College of Medicine, University of Baghdad, Baghdad

3. Department of Internal Medicine, Faculty of Medicine, Jordan University of Science and Technology, Irbid, Jordan

4. Nuffield Department of Clinical Neurosciences, University of Oxford, Oxford, United Kingdom

5. Department of Internal Medicine, Seth GS Medical College and KEM Hospital, Mumbai, India

6. Department of Immunology and Rheumatology, Stanford University, CA; and

7. Department of Internal Medicine, University of Connecticut Health Center, CT.

Abstract

Sudden cardiac death/sudden cardiac arrest (SCD/SCA) is an increasingly prevalent cause of mortality globally, particularly in individuals with preexisting cardiac conditions. The ambiguous premortem warnings and the restricted interventional window related to SCD account for the complexity of the condition. Current reports suggest SCD to be accountable for 20% of all deaths hence accurately predicting SCD risk is an imminent concern. Traditional approaches for predicting SCA, particularly “track-and-trigger” warning systems have demonstrated considerable inadequacies, including low sensitivity, false alarms, decreased diagnostic liability, reliance on clinician involvement, and human errors. Artificial intelligence (AI) and machine learning (ML) models have demonstrated near-perfect accuracy in predicting SCA risk, allowing clinicians to intervene timely. Given the constraints of current diagnostics, exploring the benefits of AI and ML models in enhancing outcomes for SCA/SCD is imperative. This review article aims to investigate the efficacy of AI and ML models in predicting and managing SCD, particularly targeting accuracy in prediction.

Publisher

Ovid Technologies (Wolters Kluwer Health)

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